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Review

Improving Efficiency of Electric Energy System and Grid Operating Modes: Review of Optimization Techniques

by
Aleksandra V. Varganova
1,
Vadim R. Khramshin
1 and
Andrey A. Radionov
2,*
1
Power Engineering and Automated Systems Institute, Nosov Magnitogorsk State Technical University, 455000 Magnitogorsk, Russia
2
Department of Automation and Control, Moscow Polytechnic University, 107023 Moscow, Russia
*
Author to whom correspondence should be addressed.
Energies 2022, 15(19), 7177; https://doi.org/10.3390/en15197177
Submission received: 31 August 2022 / Revised: 17 September 2022 / Accepted: 27 September 2022 / Published: 29 September 2022

Abstract

:
Continuously growing tariff rates for energy carriers required to generate electrical and thermal energy bring about the need to search for alternatives. Such alternatives are intended for the reduction in the electricity and heat net costs as well as the expenses for the operation and maintenance of system elements and damage from power outages or deteriorated power quality. A way to reduce electricity and heat costs is the introduction of distributed energy resources capable of operating on both conventional (natural gas) and alternative (solar and wind energy, biomass, etc.) fuels. The problem of reducing electricity and, in some cases, heat costs are solved by applying mathematical optimization techniques adapted to a specific element or system of the industry in question. When it comes to power industry facilities, optimization, as a rule, includes reducing active power losses by controlling the system mode or specific power unit parameters; planning generating equipment operating modes; defining the optimal equipment composition; improving the regime and structural reliability of grids; scheduling preventive maintenance of equipment; searching for effective power unit operating modes. Many of the problems listed are solved using direct enumeration techniques; modern technical tools allow quickly solving such local problems with a large number of source data. However, in the case of integrated control over the power system or its individual elements, optimization techniques are used that allow considering a lot of operating limitations and the target function multicriteriality. This paper provides an analytical review of optimization techniques adapted to solving problems of improving the efficiency of the power facility operating modes. The article is made on the basis of the research conducted by the authors in the area of optimization of operating modes for electric energy systems and grids. The authors drew conclusions on the applicability of mathematical optimization methods in the power energy area. While conducting the research, the authors relied on their expertise in the development and introduction of the method to optimize the operation modes of energy supply systems with heterogeneous energy sources.

1. Introduction

Multiple ways are available to improve the efficiency of the power facility operating modes. Unfortunately, there is no universal way to solve all problems associated with energy systems and grids in an integral manner. Each occurring issue is settled in a unique way, adapted to the facility, its operating conditions, and limitations of the operation parameters of elements and/or systems depending on and/or affecting it.
These complex problems are solved by applying mathematical optimization techniques.
In the energy sector, the conventional optimization problems are:
  • Selecting the best configurations of power grids and systems;
  • Distributing loads between power sources of both existing and designed power supply systems;
  • Improving the efficiency of using energy resources;
  • Defining the optimal strategy for the energy system development—the construction or reconstruction of an entire system or its individual facilities (choosing the location, capacity, and term for commissioning new power plants, substations, ETLs);
  • Choosing optimal routes for power facility inspection;
  • Choosing the optimal composition of generating equipment;
  • Choosing the best goods transportation routes, including fuel transportation;
  • Improving the performance and structural reliability of power supply systems;
  • Reducing damages from power outages and deteriorated power quality.
Despite a lot of mathematical optimization techniques, when it comes to power industry facilities, their number sharply reduces due to their limited application since multicriterial target function is to be set, and there are limitations in the form of equalities and inequalities, depending on the rated or operating parameters of not only equipment and lines but also grids, such as permissible node voltages and continuous maximum currents and powers.
Another feature of applying optimization techniques to electric energy facilities is, as a rule, the decomposition principle. The complex problem is split into parts, and each subproblem is solved using one or another optimization technique.
The article provides the existing approaches to the practical improvement of the efficiency of the operation modes in electric energy systems and grids by means of the application of mathematical optimization methods. The authors’ intention was to demonstrate a wide range of problems in the area to familiarize the reader with the optimization method application and algorithmization and present the options for their adaptation to the electric power facilities.
The paper consists of the following sections:
-
Conventional approaches to optimizing the electric energy system and grid operating modes—this section provides key optimization methods applied for the solution of optimization problems in the energy area and observes their applications, advantages, flaws as well as their practical relevance;
-
Optimizing electric energy systems and grid operating modes using original mathematical models—this section provides applied solutions developed by the scientists in terms of mode optimization in the power energy facilities and their points of view. It also describes the unique nature of such solutions and comprises the authors’ conclusions concerning the feasibility of the application of the cases provided for solving the problems at real facilities;
-
IT solutions for optimization problems in the electric power industry—this section considers the existing software introduced at the real electric power facilities to solve optimization problems. Such products allow forecasting and correcting the operation modes.
-
Conclusions.

2. Conventional Approaches to Optimizing the Electric Energy System and Grid Operating Modes

As already mentioned above, the key challenge in solving energy optimization problems is numerous limitations imposed on both independent (not affected by the system operating mode, e.g., the energy characteristics of turbogenerators) and dependent (affected by the system operating mode, e.g., the line power, defined when the grid is reconfigured while solving the optimization problem) parameters. Many of them are non-linear and very complex. This fact does not allow applying numerous optimization techniques described in the mathematical literature.
As a rule, the steady-state modes of power systems, power plants, and grids are subject to optimization. Depending on the facility considered, various optimality criteria are applied.
Intra-plant optimization problems most frequently use technical optimality criteria, except for the cases when several fuels are simultaneously exploited at the power plant. These criteria include:
  • Minimum energy resource (fuel, water, steam) consumption;
  • Maximum efficiency (minimum energy loss);
  • Minimum cost of energy carriers required to generate electrical or electrical and thermal energy.
This is acceptable since semi-fixed costs do not depend on the electrical and thermal load.
When optimizing the grid operating mode, the following criteria can be used:
  • Minimum energy loss in the grid;
  • Minimum cost of the energy loss;
  • Minimum damage from power outages or deteriorated power quality.
When considering the power supply systems of specific consumers, then the key criteria will be:
  • Minimum power consumption;
  • Minimum energy loss in the grid.
Under the conditions of electric energy systems, the most proper optimality criterion is minimum total costs; however, in many cases, it is replaced by minimum fuel costs.
The tasks of short-term planning are set as follows (Figure 1):
  • Choice of the optimal composition of operating units—F(P;n);
  • Optimal distribution of active and reactive power between sources—F(Pi;Qi);
  • Reduction in active power losses in electrical networks—↓ΔP;
  • Development of optimal energy balances and coverage schedules—F(Sload);
  • Determination of the value and placement of the operational power reserve—F(P;n;X;Y);
  • Frequency regulation— Energies 15 07177 i001 f;
  • Voltage regulation— Energies 15 07177 i001 U.
Consider the basic optimization techniques used to solve energy facility problems [1].
When calculating the optimal energy system operating modes, the following groups of optimization techniques are applied [2,3] (Figure 2).
To solve optimization problems, mathematical programming techniques are predominantly used. They are focused on obtaining target functions within the set limits, e.g., the turbogenerator power within its energy characteristic (from the minimum allowable to the maximum allowable active power with the steam consumption required for generation). In fact, mathematical programming techniques apply a direct enumeration of all possible options within the set limits until the desired target function value is found.
Given the multivariance of the search values, these techniques perform enumeration even for the knowingly false value ranges; however, modern technologies allow solving such problems very quickly. The target function of the optimization model can be linear or non-linear. Respectively, linear and non-linear programming techniques are used. In some cases, variables can be discrete or integer. Thus, discrete and integer programming techniques are used. If the data are probabilistic or non-deterministic, appropriately, stochastic programming techniques and the game theory mathematical tools are used [1].
As already noted, under the conditions of electric power facilities, optimization can be conducted according to several criteria. In this case, multicriteria optimization techniques are used to search for optimal solutions. The essence of these techniques is to find a compromise solution for all given optimization criteria. In order to distribute the power plant load between thermal power plants operating in multiple, the incremental rate method is used based on the priority loading of the most energy-efficient units, which is determined by the minimum increment rate of their consumption. In other words, the load is distributed in the sequence of increasing consumption increment rates of units operating in multiple [3]. In this case, the unit’s idle consumption effect is not considered since when operating in multiple, these values remain constant for any load distribution option and, therefore, do not affect the option energy efficiency. The operating mode optimality condition also stipulates the minimum total fuel costs in the energy system.
An important optimization problem is to improve the energy system efficiency at large industrial companies. Solving the operating mode optimization problem for an energy system of an industrial company with internal power plants and a significant amount of secondary energy resources has the following specific points:
  • Along with the fuel and power transmission costs, the target cost function includes the expenses associated with the purchase of electricity in the retail market (in some cases, in the wholesale market);
  • The technical and economic features of station units will have breakpoints since power plants frequently use fuel mixes; the composition of the latter depends on the station power output;
  • Limitations are added as inequalities imposed on the power supplied by the energy retail company for each point (group of points) of supply.
When solving the optimization problem for a relatively small number of units, the most convenient way to consider constraint equation discontinuity is by applying the dynamic programming technique in a discrete formulation [4].
Table 1 shows the target function type and the application area and key drawbacks for some of the most common optimization techniques.

3. Optimizing Electric Energy System and Grid Operating Modes Using Original Mathematical Models

Existing mathematical optimization techniques solve problems in various power industry areas [5,6]. The key difficulties in solving such problems are the source data uncertainty [7], the complexity of electric energy generation, transmission, distribution, and consumption, and the power supply reliability [8]. No universal optimization technique exists, and completely different methods are used to achieve specific goals. Classical optimization techniques are modified and/or combined with others to achieve the target results.
In this industry, energy saving and efficiency are among the important problems to be solved. These issues were of interest to researchers as far back as the last millennium when thermal power plants were actively commissioned [9,10].
For energy-intensive companies, these problems arose almost immediately after the increase in power consumption and the complexity of production, transmission, distribution, and consumption of energy resources and power. G.V. Nikiforov [11], I. Shkoda [12], J. Bausa [13], and P. Hilber [14] considered ways to save heat and electricity and improve power plant efficiency through the optimal operation of boiler-turbine equipment of thermal power plants. Ref. [15] describes techniques for improving the efficiency of operating modes of industrial power plant boilers and turbogenerators through the well-planned distribution of thermal and electric power. The approach is based on applying dynamic programming techniques. A.U. Lipets [16] described ways to improve the efficiency of power units using gas as the main fuel by increasing the superheat temperature, extracting heat from boilers, heating fuel gas, and using the heat of flue gases and secondary superheated steam. N.M. Zinger described the choice of power plant’s optimal heat supply modes depending on the heat load and the environmental temperature pattern [17,18].
Particular attention is paid to the issues of optimal reactive power generation by power plants. Thus, the authors considered an optimization model based on the fuzzy adaptive genetic algorithm; however, the application of this method is limited to rural grids only [19]. The article applies the dynamic programming technique to solve this problem [20].
V.A. Stennikov in [21], using the Lagrange method, distributed thermal energy between its sources in a reasonable way according to the criterion of minimum costs per total load, with and without considering the thermal power limitations. The proposed technique allows determining the sequence of sources to reach their maximum load.
Some scientific papers also focus a lot on the impact of the energy fuel parameters on the power plant’s technical and economic performance. R.E. Aleshinsky analyzed the fuel quality impact on the thermal power plant’s boiler efficiency [22]. In 2004, E.K. Verbovetsky [23] developed a software package to estimate the impact of fuel resources on the technical and economic performance of power equipment of plants operating on coal dust. The authors described the optimal approach to “… supplying dust with high concentrations during coal combustion…” in a boiler based on setting and defining the cost-effective boiler parameters and coal grade [24].
The reasonable use of energy resources is among the key ways to improve the energy efficiency of electric energy and power supply systems for industrial companies. Ref. [25] considered ways of feasible use of energy resources by distributing the consumption of the fuel required to generate electricity and heat at TPPs to increase their competitiveness in the heat and electricity markets.
The environmental factor affects solving optimization problems for power supply systems with industrial TPPs. Paper [26] considered the optimization of the operating modes of power systems with TPPs by the minimum cost of the power plant energy resources, considering the limitation of harmful emissions into the atmosphere. The issues of using secondary energy resources (coke and blast-furnace gases) as the TPP fuel are being solved for the industrial power supply system of large metallurgical enterprises. The authors of [27] described an approach that allows the most effective use of secondary energy resources by determining the optimal fuel mix composition for a power plant using the direct enumeration method. In article [28], the issues of optimal coal supply and storage were solved. The authors of [29] considered the issue of optimal air supply to the burner for boiler efficiency improvement. Paper [30] considered the issues of the environmental friendliness of power plants. The optimal level of the boiler’s NOx emissions is defined using a genetic algorithm. The authoring team of [31] considered the issues of improving the efficiency of mills at coal-fired power plants.
In addition, for power supply systems fed from an energy system, one of the key optimization issues is also defining the feasible external source power, considering the power purchased and electricity tariffs specified in the supply agreement. The block diagram of such a network is shown in Figure 3.
These issues were studied as far back as the last century [32], but this problem remains relevant even now [33]. The authors of [33] described an approach that allows defining the maximum power purchased from the energy system, considering the aforementioned factors. Paper [33] provided an optimization algorithm to define the feasible power purchased from the energy system, considering internal generation and active power losses in the power supply system. The algorithm is based on a modified dynamic programming and sequential equivalenting technique. These issues were also studied in power supply systems that use renewable energy sources [34].
In some energy system sections, a shortage of active power occurs, leading to an increase in the electricity net cost and tariff rates. The choice of ways to control the power supply system in operating modes is most affected by the issues of providing its greatest economic feasibility subject to the required conditions for communication with the energy system. As a rule, two control methods were used: selecting an advantageous composition of elements and mode parameters. When choosing an efficient operating mode, these two problems have to be solved jointly in most cases. A.V. Pazderin [35], M.L. Korolev [36], V.S. Khachatryan [37], N.I. Serebryannikov [38], K.A. Smirnov [39], and V.M. Letun [40] studied these issues. This optimization problem was solved by applying the Newton, incremental rates, and Lagrange methods.
A well-planned development strategy for the electric energy and power supply system is also a priority optimization problem. A.S. Berdin [41] studied the development and implementation of a methodology that allows analyzing and determining the power supply system development strategy based on the fuzzy-set theory provisions, considering “... the uncertainty of a part of the source data”. A.I. Fedotov [42] studied the issues of energy-efficient industrial enterprise operation by optimizing the costs of power consumed from the grid, considering the process specifics. Paper [43] described a method for developing the optimal power consumption by an industrial enterprise, and in [44], this problem was considered for the telecommunications sector.
Thus, the primary optimization problems should be set and solved for the joint operation of energy and power supply systems. T.M. Alyabyshev [45] and V.A. Kozlov [46] formulated generalized problems of optimal control over electric energy systems.
The research team of V.I. Poroshin, A.P. Romanenko, B.I. Ayuev, and S.I. Demidov offer an applied approach to the intrahour optimization of the energy system operating mode using the ERGEN—CORRECTOR software package in the Interregional Dispatching Office (IDO) of the Urals [47]. The considered software package allows the IDO dispatcher to determine the optimal active power settings of control objects for 20–60 min according to the criterion of minimum fuel costs for energy sources.
In order to obtain feasible configurations of electrical systems and grids, research teams considered the issues of simulating electric energy and power supply systems and power grids to optimize their operating modes. P.S. Abakshin [48] studied this area.
The scope of Numerous studies includes defining the optimal load of the electrical and thermal energy sources. N.N. Galashov [49] and V.A. Stennikov [21] proposed optimizing the TPP turbogenerator and boiler loads to improve their performance.
Just in the middle of the last century, scientists began to develop software to optimize the PP power equipment operation to solve the set problem. A.T. Kurnosov analyzed the opportunities of the TPP technical and economic parameter calculation software, integrated into the plant’s process, which allows for defining the heat load distribution between boiler equipment and computing the cost of electric and heat energy [50]. This problem is currently solved by using quite a number of software products (this issue is considered in more detail in Section 4).
A team of authors developed a model to optimize steady-state operating modes by active power based on a combination of linear programming and resource decomposition techniques using the PRES and PRES-SUTKI software packages that allow planning long- and short-term electric energy system operating modes [48].
In 1997, N.N. Galashov and V.V. Bespalov [49] developed a software package that allows simulating the basic elements and calculating the power plant (thermal and nuclear) thermal circuits by the given values of electric power, flow, parameters, and steam supply. At the beginning of the 1990s, V.B. Borisoglebsky [51] proposed the use of computers for technical and economic calculations at TPPs.
In particular, [52] considered a system that allows monitoring and forecasting of the reactive power of photovoltaic power plants operating within the power system, which in general allows controlling the voltage. Article [53] provides a model of a photovoltaic power plant, which allows forecasting the impact of a power unit on the power supply system and power quality and defining the optimal reactive power determining the effective voltage. The authors of paper [54] solved this problem using a particle swarm, which sped up finding the optimal solution for choosing the voltage. New approaches are being developed to estimate the performance of systems with renewable energy sources. Studying the Gray Wolf Optimization approach, which provides fast convergence of solving optimization problems for systems with solar power plants, will allow the development of an automated system for real-time calculation and forecasting of such system parameters in the future [55].
The issues of mathematical simulation of power systems with hydroelectric power plants are also being solved, facilitating the forecast of the parameters for all possible operating modes [56]. In such systems, solving voltage control problems is also important [57].
D.A. Arzamastsev, A.V. Lipes, and A.L. Myzin [58] gave special attention to the issues of the energy system’s grid optimal development strategy. They set the basic energy system optimal development problems, provide “… techniques for forecasting the electric energy system loads and power consumption”, and describe in detail the key optimization techniques to solve these problems.
At the end of the 20th century, options were considered [59] for the reconstruction of boiler houses into small TPPs by installing gas turbine units there to improve the efficiency of using energy fuel “… in decentralized heat supply systems”. The paper provides calculations confirming the feasible operation of such TPPs according to the heat and not the electric schedule. Article [60] also discusses the prospects for commissioning combined cycle and gas turbine plants when revamping TPPs, which have some advantages compared to steam turbine plants, such as saving energy resources and reducing the electric and heat energy costs.
Defining the optimal generating equipment composition is among the most important optimization problems in the electric power industry. T.Sh. Gayibov [61] proposed defining the feasible composition of generator equipment operating in the energy system by the criterion of minimum costs.
In most cases, the electric energy system’s steady-state operating modes are optimized. Many scientific teams are engaged in the calculation of steady-state modes; some studies are given as an example. N.V. Goncharyuk [62] provided a technique for calculating equivalent circuits with “…accurately considered transformation ratios in the original control system”, which allows solving the problems of short-term planning of the operating modes (including optimal ones) of the considered grids.
The primary optimization problem of electric energy systems, as aforementioned, is defining the feasible active power distribution between generators. S.K. Gursky proposed using an adaptive algorithm for “… solving the problem of defining the incremental rates of active power losses in the grid” to determine the optimal PP load [63] since this approach allows setting the source data as the nodal substation and PP loads for a certain period. Later, the author of [64] proposed applying the guaranteed relative level method based on the dynamic programming technique and considering the limitations on the minimum consumption for both the entire energy system and individual PPs for the short-term optimization of the PP units’ operation. Paper [65] described a software package that allows for the optimal thermal and electric energy distribution between two turbogenerators; however, the package does not consider the grid operating mode. Ref. [66] also studied this field.
In order to solve optimization problems for electric energy systems, non-linear programming techniques are used. In articles [67,68], O.T. Geraskin used the simplex technique. According to [69], the curvature of the given target function surface and limitations can be considered, respectively, by the second-order Newton and search vector projection methods. V.A. Igumenshchev [70] and A.V. Malafeev [71] used the dynamic programming technique, which allows defining the internal electric energy source generator loads according to the criterion of minimum fresh steam costs to optimize the operation mode of the industrial power supply system. A.A. Gerasimenko [72] proposed optimizing the electrical system operating modes by reactive power (according to the criterion of minimum losses in the grid) through the reduced gradient method, which allows defining the feasible parameters in a single calculation step by the average load.
D.A. Arzamastsev [73,74] provided an algorithm to define the optimal reactive power distribution for industrial power supply systems based on the sequential equivalenting and indefinite Lagrange multiplier techniques, provided that the power balance and the acceptable voltage level are maintained in the node. As the target function, the total reactive power generation and distribution costs are taken, reduced to active power losses. Later, V.A. Igumenshchev [75] proposed a dynamic model for optimizing reactive power in nodes with sharply variable loads according to the criterion of minimum losses in the grid, considering the limitations on the permissible parameters of excitation systems and the synchronous machine rotor swinging angles and voltage fluctuations in industrial power supply systems. As an optimization technique, a combination of successive intervals and successive equivalenting techniques is used.
Despite the wide application of these techniques in the last century, they remain relevant today. Section 4 considers software products developed on the basis of these optimization techniques. A.I. Afanasiev [76] provided a technique for optimizing instantaneous modes of open-loop lines by voltage, transformation ratio, and reactive power according to the criterion of minimum power losses, based on the reduced gradient method, considering penalty functions; violation of voltage limitations was introduced as a penalty criterion. A technique for calculating seasonal operating modes was obtained based on the developed methodology, the criterion of which is the minimum damage from losses and deteriorated quality of electric energy (by voltage deviation).
E.V. Tsvetkov [77] considered a technique for defining the optimal electric energy system operating modes by active power, considering the balance of power and the grid factor using the Lagrange method. V.Z. Manusov considered the use of a genetic algorithm to optimize electric energy systems by active power [78]. A.P. Chmutov [79] considers the issues of optimizing the voltage regime of urban and rural grids based on the theory of linear inequalities. T.B. Leshchinskaya [80,81] provided an algorithm for the multicriteria problem of optimizing urban power supply systems, considering the source data uncertainty. The basic criteria are the minimum total capital investment in the grid elements, minimum power losses, and minimum total 10 (20) kV line length based on the Bayesian information criterion.
Along with the aforementioned techniques, separable and approximating programming is widely used; it approximates the target function using curved segments and thereby reduces the optimization problem solution to linear programming [82,83]. T.Sh. Gayibov [61] proposes the branch-and-bound algorithm to optimize the PP’s operating equipment composition, where the optimality criterion is minimum total energy system costs for the considered period. Along with the aforementioned optimization problems, B.I. Ayuev [84,85] provides marginal state optimization models for given weighting directions using the Lagrange method to analyze, plan, and control electric energy system modes.
Many current studies are devoted to optimizing the operating modes of power supply systems with distributed generation sources: solar [86,87] and wind [88] power plants. It is also important to study the behavior of promising electric energy systems, distinguished by a large number of pumped storage, wind, and solar power plants; therefore, large thermal and hydroelectric power plants should continue their operation [89]. Automated simulation models of such systems will also allow estimating their parameters.
SmartGrids system simulation is becoming an urgent problem, and power plants are simulated [90] to predict their optimal operating modes. Ref. [91] considered an approach that allows for improving the Microgrid operation efficiency using the directed graph theory. Optimizing power consumption is also important for these systems. Ref. [92] solved this problem by applying the odd optimization method. Optimization models that allow defining the optimal storage volume [93,94,95] and considering the renewable source reliability are being developed [96].

4. IT Solutions for Optimization Problems in The Electric Power Industry

Automation of decision-making in the design and operation of facilities in various industries is now taking on a massive scale. This is determined by the need to quickly process a large amount of data, analyze them, and give recommendations for improvement (for example). Energy is one of the leaders in implementing digital technologies. The use of modern software products that allow automating the design, forecasting, monitoring, control, and management of energy facilities has become a part of everyday work.
Currently, the software market is represented by a wide range of software systems, modules, and simulators capable of calculating and analyzing optimal operating conditions of electric energy systems.
Widespread software products are RastrWin, COSMOS, SDO-6, PSS®E, AREM, DIgSILENT PowerFactory, Lincor, ANARES-2000, and MUSTANG.
The ANARES-2000, SDO-6, RastrWin, Lincor, and Siemens PTI software products allow for reducing the active power loss in the grid by optimizing its modes. Some software such as OPRES, AREM, ETAP Electrical Power System Software, and NEPLAN allow defining the optimal unit locations, generated power, and the number of compensators.
TPP mode optimization programming and computing suite and OptiRamp® allow defining the optimal loads for power equipment of industrial enterprises’ internal energy sources; however, these packages can only perform intra-station optimization.
Table 2 shows the analyses of the software that allows calculating and optimizing the electric energy facility modes.

5. Conclusions

An analysis of existing optimization techniques in the electric power industry shows a variety of approaches to solving problems of the optimal electric energy system and grid control, sufficiently developed and implemented at operating facilities.
The considered optimization techniques solve the following issues:
  • Defining the reasonable active power and heat load distribution between the PP units and between the PPs of the power supply and energy systems;
  • Defining the optimal electric and thermal energy and reactive power source location places;
  • Defining the optimal grid configuration at the design stage also allows for improving the system efficiency;
  • Feasible use of energy resources, in particular, defining the optimal fuel mix composition at PPs, etc.
However, developing the electric power industry poses new challenges for researchers in the field of improving the efficiency of electric energy systems and grids.
The review will be valuable for the researchers and developers and will provide them with a guide to both fundamental and contemporary achievements in the area of optimizing the modes of energy systems and grids. It will also help them to assess the feasibility of optimization methods’ application on the basis of the scientific experience, the advantages and flaws of the methods outlined by other scientists, as well as the methods’ potential adaptability to a certain task. This review also allows evaluating the application of optimization methods during the development of engineering analysis automated systems mostly focused on forecasting, calculation, and optimization of complex electric energy systems and grids.

Author Contributions

Conceptualization, A.A.R. and A.V.V.; methodology, V.R.K.; writing—original draft preparation, A.V.V.; writing—review and editing, V.R.K.; visualization, V.R.K.; project administration, A.A.R.; funding acquisition, A.V.V. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Wentzel, E.S. Operations Research. Problems, Principles, Methodology: Textbook for Universities; Prentice-Hall: Moscow, Russia, 2004; 208p. [Google Scholar]
  2. Venikov, V.A.; Zhuravlev, V.G.; Filippova, T.A. Optimizing Power Plants and Energy System Mode; Prentice-Hall: Moscow, Russia, 1990; 352p. [Google Scholar]
  3. Gornshtein, V.M.; Miroshnichenko, B.P.; Ponomarev, A.V. Energy System Mode Optimizing Techniques; Prentice-Hall: Moscow, Russia, 1981; 336p. [Google Scholar]
  4. Malafeev, A.V.; Kochkina, A.V.; Igumenshchev, V.A. Optimizing Steady-State Modes of Industrial Power Supply Systems with Heterogeneous Generating Sources in Solving Medium-Term Planning Problems; Prentice-Hall: Moscow, Russia, 2013; 112p. [Google Scholar]
  5. Belyaev, N.A.; Korovkin, N.V.; Frolov, O.V.; Chudnyi, V.S. Methods for Optimization of Power-System Operation Modes. Russ. Electr. Eng. 2013, 2, 74–80. [Google Scholar] [CrossRef]
  6. Frangopoulos, C.A.; von Spakovsky, M.R.; Sciubba, E. A Brief review of Methods for the Design and Synthesis Optimization of Energy Systems. Appl. Thermodyn. 2002, 4, 151–160. [Google Scholar]
  7. Assad, U.; Hassan, M.A.S.; Farooq, U.; Kabir, A.; Khan, M.Z.; Bukhari, S.S.H.; Jaffri, Z.A.; Olah, J.; Popp, J. Smart Grid, Demand Response and Optimization: A Critical Review of Computational Methods. Energies 2022, 15, 2003. [Google Scholar] [CrossRef]
  8. Aschidamini, G.L.; da Cruz, G.A.; Resener, M.; Ramos, M.J.S.; Pereira, L.A.; Ferraz, B.P.; Haffner, S.; Pardalos, P.M. Expansion Planning of Power Distribution Systems Considering Reliability: A Comprehensive Review. Energies 2022, 15, 2275. [Google Scholar] [CrossRef]
  9. Avdeev, A.F. Effective Fuel Combustion is The Most Important Energy Efficiency Condition. Energetik 1976, 6, 1–3. [Google Scholar]
  10. Boyko, N.D. Improving the Planning of Technical and Economic Indicators of Power Plants and Grids. Energetik 1985, 6, 5–7. [Google Scholar]
  11. Nikiforov, G.V. Energy Saving: The Energy Producer Concept and The Energy-Intensive Partner and Consumer Position. Energetik 1999, 8, 5–6. [Google Scholar]
  12. Shkoda, I.; Shut, N.A.; Bryntsev, A.P.; Rudenkov, B.M. TPP Opportunities for Saving Energy and Reducing Harmful Emissions into The Atmosphere. Energetik 1994, 6, 19. [Google Scholar]
  13. Bausa, J.; Tsatsaronis, G. Dynamic Optimization of Startup and Load-increasing Processes in Power Plant. ASME J. Eng. Gas Turbines Power 2001, 123, 246–254. [Google Scholar] [CrossRef]
  14. Hilber, P. Maintenance optimization for power distribution systems. In Engineering; Royal Institute of Technology: Stockholm, Sweden, 2008; 125p. [Google Scholar]
  15. Varganova, A.V.; Oryol, D.A.; Korinchenko, G.M.; Goncharova, I.N.; Bayramgulova, Y.N. Industrial Heat Power Plants Repair Condition Optimization. Electrotech. Syst. Complexes 2018, 3, 27–33. [Google Scholar] [CrossRef]
  16. Lipets, A.U.; Dirina, L.V.; Vikhrev, Y.V. Improving the Power and Efficiency of Large Power Units Operating on Gas. Energetik 2005, 2, 13–16. [Google Scholar]
  17. Singer, N.M.; Mirkina, A.I. Choosing the Optimal Mode of Heat Supply from a TPP. Power Technol. Eng. 1971, 5, 14–18. [Google Scholar]
  18. Zinger, N.M.; Lyubarskaya, A.I.; Belova, N.P.; Monakhov, G.V.; Kaplan, S.D. Computation of The Optimal Mode of Heat Supply from a TPP to a Region with a Heterogeneous Heat Load. Power Technol. Eng. 1980, 3, 32–35. [Google Scholar]
  19. Ting, L.; Tao, W.; Haoran, Y.; Haoming, L. Power optimization allocation strategy for energy storage station responding to dispatch instruction. In Proceedings of the International Symposium on Smart Electric Distribution Systems and Technologies (EDST), Vienna, Austria, 8–11 September 2015; pp. 177–182. [Google Scholar] [CrossRef]
  20. Li, X. Application of Fuzzy Adaptive Genetic Algorithm in Reactive Power Compensation Optimization of Power Station. In Proceedings of the International Symposium on Computer Science and Society, Kota Kinabalu, Malaysia, 16–17 July 2011; pp. 214–217. [Google Scholar] [CrossRef]
  21. Stennikov, V.A.; Khamisov, O.V.; Stennikov, N.V. Optimizing the Joint Operation of Thermal Energy Sources. Power Technol. Eng. 2011, 3, 27–33. [Google Scholar]
  22. Aleshinsky, R.E.; Veksler, F.M.; Govsievich, E.R.; Edelman, V.I. Qualitative Characteristics of Coal Fuel: Their Impact on The Technical and Economic Indicators of TPPs. Energetik 2003, 1, 17–20. [Google Scholar]
  23. Verbovetsky, E.K.; Maydanik, M.N. Computer Software for Expert Estimate of The Fuel Quality Impact on The Technical and Economic Indicators of The Coal-Fired Power Plant Equipment. Energetik 2004, 1, 15–17. [Google Scholar]
  24. Golyshev, L.V.; Dovgoteles, G.A. Optimizing Dust Supply Modes with High Concentrations when Combusting ASh Coal in the TPP-210A Boiler/L.V. Golyshev, G.A. Dovgoteles. Power Technol. Eng. 2007, 3, 34–38. [Google Scholar]
  25. Astakhov, N.L. On Techniques for Distributing the TPP Fuel Consumption Between Electricity and Heat. Energetik 2002, 11, 8–10. [Google Scholar]
  26. Golovanov, A.P.; Pavlova, I.V. Optimizing Energy System Operating Modes Considering Environmental Factors. Electricity 1992, 4, 40–43. [Google Scholar]
  27. Varganova, V.A.; Lygin, M.M.; Khramshin, V.R. Fuel Mix Optimization of Utility Boilers of Industrial Power Stations. In Proceedings of the International Conference on Industrial Engineering, Applications and Manufacturing (ICIEAM), Moscow, Russia, 15–18 May 2018; pp. 1–4. [Google Scholar] [CrossRef]
  28. Li, Y.; Li, R. Simulation and Optimization of the Power Station Coal-Fired Logistics System Based on Witness Simulation Software. In Proceedings of the Workshop on Power Electronics and Intelligent Transportation System, Guangzhou, China, 2–3 August 2008; pp. 394–398. [Google Scholar] [CrossRef]
  29. Lu, X.; Wei, G.; Yang, S.; Wang, C. Properties analysis and optimization of primary air volume in power station. In Proceedings of the International Conference on Electronics, Communications and Control (ICECC), Ningbo, China, 9–11 September 2011; pp. 3848–3851. [Google Scholar] [CrossRef]
  30. Huang, J.; Chi, X.; Jiang, A.; Mao, J. On data-driven soft sensor of NOx emission in power station boiler. In Proceedings of the 30th Chinese Control Conference, Yantai, China, 22–24 July 2011; pp. 1678–1683. [Google Scholar]
  31. Fang, Y.; Qin, X.; Fang, Y. Optimization of power station boiler coal mill output based on the particle swarm algorithm. In Proceedings of the IEEE International Conference on Industrial Engineering and Engineering Management, Hong Kong, China, 10–13 December 2012; pp. 612–616. [Google Scholar] [CrossRef]
  32. Bogdanov, V.A.; Shulzhenko, S.V. Defining the Marginal Consumption of Energy Systems—An Optimization Problem with Integral Limitations. Power Technol. Eng. 1988, 12, 7–10. [Google Scholar]
  33. Varganova, A.V.; Dzhagarov, N.F. Integrated Optimization of Industrial Thermal Power Plants Conditions. Electrotech. Syst. Complexes 2020, 4, 11–16. [Google Scholar] [CrossRef]
  34. Ma, X.; Zhang, Z.; Bai, H.; Ren, J.; Cheng, S.; Kang, X. A Mid/Long-Term Optimization Model of Power System Considering Cross-Regional Power Trade and Renewable Energy Absorption Interval. Energies 2022, 15, 3594. [Google Scholar] [CrossRef]
  35. Pazderin, A.V.; Yuferev, S.V. Steady-State Calculation of Electrical Power System by The Newton’s Method in Optimization. In Proceedings of the IEEE Bucharest PowerTech, Bucharest, Romania, 28 June–2 July 2009; pp. 1–6. [Google Scholar] [CrossRef]
  36. Korolev, M.L.; Makeechev, V.A.; Sukhanov, O.A.; Sharov, Y.V. Optimizing Electric Energy System Modes Based on Simulation. Electricity 2006, 3, 2–16. [Google Scholar]
  37. Khachatryan, V.S.; Etmekchyan, E.A.; Arakelyan, V.P. A Simplified Technique for Calculating the Electric Energy System Steady-State Mode. Electricity 1992, 2, 9–14. [Google Scholar]
  38. Serebryanikov, N.I.; Shitsman, S.E. Improving the System of Financial Incentives for Optimizing the Energy Associations and TPP Operating Modes. Power Technol. Eng. 1993, 5, 5–9. [Google Scholar]
  39. Smirnov, K.A. Optimizing Energy System Modes Considering Voltage Limitations. Electricity 1997, 6, 8–12. [Google Scholar]
  40. Letun, V.M.; Gluz, I.S. Optimal Power Plant Operation Mode Control under The Wholesale Market Conditions. Power Technol. Eng. 2003, 3, 8–12. [Google Scholar]
  41. Berdin, A.S.; Kokin, S.E.; Semenova, L.A. Optimizing Power Supply Systems under Uncertainty. Ind. Energy 2010, 4, 29–35. [Google Scholar]
  42. Fedotov, A.I.; Vagapov, G.V. Optimizing Energy Costs for Enterprises with Long-Term Operation Mode. Ind. Energy 2010, 10, 2–6. [Google Scholar]
  43. Safonov, G.P.; Sorokin, A.M.; Buldakov, A.V.; Vorob’ev, P.V. The Optimization of the Production Process for Electrical Insulation Systems. Russ. Electr. Eng. 2007, 3, 167–169. [Google Scholar] [CrossRef]
  44. Aris, A.M.; Shabani, B. Sustainable Power Supply Solutions for Off-Grid Base Stations. Energies 2015, 8, 10904–10941. [Google Scholar] [CrossRef]
  45. Alyabysheva, T.M.; Morzhin, Y.I.; Protopopova, T.N.; Tsvetkov, E.V. On Techniques for Optimizing the Energy System Modes and Associations. Power Technol. Eng. 2005, 1, 44–49. [Google Scholar]
  46. Kozlov, V.A. On The Issue of Optimizing Power Supply Systems. Ind. Energy 1992, 2, 2–3. [Google Scholar]
  47. Poroshin, V.I.; Romanenko, A.P.; Ayuev, B.I.; Demidov, S.I. Real-Time Mode Optimization for the UES of the Urals by Active Power. Energetik 1993, 5, 15–16. [Google Scholar]
  48. Abakshin, P.S. A Model for Optimizing Long-Term Energy Modes of the UES of Russia by Active Power. Power Technol. Eng. 2004, 3, 58–62. [Google Scholar]
  49. Galashov, N.N.; Bespalov, V.V. An Automated Simulation Package and PC Computation of Power Unit Thermal Circuits. Energetik 1997, 9, 23–24. [Google Scholar]
  50. Kurnosov, A.T.; Tsarfina, A.G.; Klimovskikh, E.S. Mathematical Model for Computer Forecasting the TPP Operation. Power Technol. Eng. 1974, 4, 24–27. [Google Scholar]
  51. Borisoglebsky, V.B. Developing Software for Technical and Economic Calculations on TAP 34 PCs. Energetik 1990, 1, 11. [Google Scholar]
  52. Dai, J.; Tang, Y.X.; Yan, Q. Reactive Power Optimization Coordinated Control Strategy of the Large-Scale PV Power Station. In Proceedings of the International Conference on Power System Technology (POWERCON), Guangzhou, China, 6–8 November 2018; pp. 1632–1637. [Google Scholar] [CrossRef]
  53. Shuo, W. Simulation analysis of influence of MW-level grid-connected photovoltaic power station on distribution networks. In Proceedings of the International Conference on Sustainable Power Generation and Supply (SUPERGEN 2012), Hangzhou, China, 8–9 September 2012; pp. 1–6. [Google Scholar] [CrossRef]
  54. Hao, Y.; Yi, Y.; Tang, J.; Shi, M. Active Reactive Power Control Strategy Based on Electrochemical Energy Storage Power Station. In Proceedings of the IEEE 3rd Conference on Energy Internet and Energy System Integration (EI2), Changsha, China, 8–10 November 2019; pp. 90–94. [Google Scholar] [CrossRef]
  55. Mate, N.; Bhongade, S. Automatic generation control of two-area ST-thermal power plant optimized with grey wolf optimization. In Proceedings of the IEEE 7th Power India International Conference (PIICON), Bikaner, India, 25–27 November 2016; pp. 1–6. [Google Scholar] [CrossRef]
  56. Sovban, E.A.; Filippova, T.A.; Panteleev, V.I.; Trufakin, S.S. The Features of Mathematical Optimization Models of Modes Hydro-Power Stations. In Proceedings of the XIV International Scientific-Technical Conference on Actual Problems of Electronics Instrument Engineering (APEIE), Novosibirsk, Russia, 2–6 October 2018; pp. 428–432. [Google Scholar] [CrossRef]
  57. Jinhua, Z. Optimization Study on Voltage Level and Transmission Capacity. IEEE Trans. Power Syst. 2009, 24, 193–197. [Google Scholar] [CrossRef]
  58. Arzamastsev, D.A.; Lipes, A.V.; Myzin, A.L. Energy System Development Optimization Models: Textbook for Universities; Prentice-Hall: Moscow, Russia, 1987; 272p. [Google Scholar]
  59. Khlebalin, Y.M.; Nikolaev, Y.E.; Andreev, D.A. Optimizing the GTU Power when Reconstructing Boiler Houses into Small TPPs. Ind. Heat Power Eng. 1998, 9, 28–32. [Google Scholar]
  60. Brzhezyansky, S.E. Economic Incentives for the Implementation of CCPs and GTUs when Reconstructing TPPs. Energetik 2000, 4, 2–3. [Google Scholar]
  61. Gayibov, T.S. Optimizing Power Plant Operating Unit Composition by Piecewise Linear Approximation of Nonlinear Dependencies. Power Technol. Eng. 2009, 5, 32–37. [Google Scholar]
  62. Goncharuk, N.V. Technique for Equivalenting Grids. Electricity 2000, 8, 11–17. [Google Scholar]
  63. Gursky, S.K. An Adaptive Technique for Load Distribution Between Energy System Power Plants. Electricity 1974, 9, 5–10. [Google Scholar]
  64. Gursky, S.K.; Domnikov, S.V. Active Power Distribution Using the Guaranteed Relative Level Method. Electricity 1982, 9, 10–16. [Google Scholar]
  65. Flos, S.L.; Zhalyaletdinova, V.K.; Galkin, N.I.; Dorokhina, V.I.; Napolskikh, L.V.; Doroshenko, A.I. Optimal Load Distribution Between the TPP Turbogenerators Using Computers. Power Technol. Eng. 1987, 6, 10–13. [Google Scholar]
  66. Navarro, R.; Rojas, H.; De Oliveira, I.S.; Luyo, J.E.; Molina, Y.P. Optimization Model for the Integration of the Electric System and Gas Network: Peruvian Case. Energies 2022, 15, 3847. [Google Scholar] [CrossRef]
  67. Geraskin, O.T. Optimizing Electric Energy System Modes Using the Experiment Planning Method. News High. Educ. Inst. Energy 1977, 8, 10–14. [Google Scholar]
  68. Geraskin, O.T. Optimizing Electric Energy System Modes Using the Generalized Simplex Nonlinear Programming Technique. News High. Educ. Inst. Energy 1978, 9, 9–13. [Google Scholar]
  69. Geraskin, O.T. Optimizing Electric Energy System Modes Using Modified Newton Method with The Hesse Matrix Approximation. News High. Educ. Inst. Energy 1979, 1, 14–19. [Google Scholar]
  70. Igumenshchev, V.A.; Malafeev, A.V. Optimizing Operating Modes of Electric Energy Systems of Industrial Enterprises with Internal Power Plants; Nosov Magnitogorsk State Technical University: Magnitogorsk, Russia, 2011; 126p. [Google Scholar]
  71. Malafeev, A.V. Optimizing the Load of Power Plants of an Industrial Enterprise with a Heterogeneous Composition of Generating Sources. News High. Educ. Inst. Electromech. 2009, 1, 70–80. [Google Scholar]
  72. Gerasimenko, A.A.; Lipes, A.V. Optimizing Energy System Modes Based on The Reduced Gradient Method. Electricity 1989, 9, 1–7. [Google Scholar]
  73. Arzamastsev, D.A.; Bartolomey, P.I.; Kholyan, A.M. ACS and Optimization of Energy System Modes; High School: Moscow, Russia, 1983; 208p. [Google Scholar]
  74. Arzamastsev, D.A.; Igumenshchev, V.A. Calculating the Optimal Reactive Power Distribution Using the Sequential Equivalenting Technique. Electricity 1976, 1, 70–72. [Google Scholar]
  75. Igumenshchev, V.A.; Salamatov, I.A.; Kovalenko, Y.P. A Technique for Optimal Reactive Power Control in Power Supply Systems. Electricity 1987, 1, 16–21. [Google Scholar]
  76. Afanasiev, A.I.; Idelchik, V.I.; Kovalevich, V.N.; Kononov, Y.G. Optimizing Open Distribution Grid Operational Modes by Voltage and Reactive Power. Electricity 1995, 3, 19–22. [Google Scholar]
  77. Tsvetkov, E.V. Calculating Optimal Energy System Modes when Considering Losses in Grids. Electricity 1984, 8, 1–7. [Google Scholar]
  78. Manusov, V.Z.; Pavlyuchenko, D.A. Evolutionary Algorithm for Optimizing the Electric Energy System Modes by Active Power. Electricity 2004, 3, 2–8. [Google Scholar]
  79. Chmutov, A.P. Optimizing the Voltage Regime in Distribution Grids Using the Theory of Linear Inequalities. Power Technol. Eng. 1991, 3, 62–66. [Google Scholar]
  80. Leshchinskaya, T.B.; Glazunov, A.A.; Shvedov, G.V. Algorithm for Solving Multi-Criteria Optimization Problems with Uncertain Data Exemplified by Choosing the Optimal Power of High Voltage Load Center. Electricity 2004, 10, 8–14. [Google Scholar]
  81. Leschinskaya, T.B. Applying Multi-Criteria Choice Techniques in Optimizing Rural Power Supply Systems. Electricity 2003, 1, 14–22. [Google Scholar]
  82. Bartolomey, P.I.; Grudinin, N.I. Optimizing Energy System Modes Using Approximating and Separable Programming Techniques. News Ac. Sc. Energy 1993, 1, 72–77. [Google Scholar]
  83. Bartolomey, P.I.; Grudinin, N.I. Calculating Steady-State Electrical System Modes and Optimizing Them Using Quadratic Approximation Technique. News Ac. Sc. Energy 1992, 5, 95–103. [Google Scholar]
  84. Ayuev, B.I.; Davydov, V.V.; Erokhin, P.M. Optimization Models of The Closest Marginal States of Electrical Systems. Electricity 2011, 3, 2–9. [Google Scholar]
  85. Ayuev, B.I.; Davydov, V.V.; Erokhin, P.M. Optimization Computational Models of Marginal States of Electrical Systems for a Given Weighting Direction. Electricity 2010, 12, 2–7. [Google Scholar]
  86. Alsadi, S.; Khatib, T. Photovoltaic Power Systems Optimization Research Status: A Review of Criteria, Constrains, Models, Techniques, and Software Tools. Appl. Sci. 2018, 8, 1761. [Google Scholar] [CrossRef]
  87. Zhu, L.; He, J.; He, L.; Huang, W.; Wang, Y.; Liu, Z. Optimal Operation Strategy of PV-Charging-Hydrogenation Composite Energy Station Considering Demand Response. Energies 2022, 15, 5915. [Google Scholar] [CrossRef]
  88. Teshager, B.G.; Minxiao, H.; Patrobers, S.; Khan, Z.W.; Tuan, L.K.; Shah, F.M. Direct power control strategy based variable speed pumped storage system for the reduction of the wind power fluctuation impact on the grid stability. In Proceedings of the IEEE 12th International Conference on Compatibility, Power Electronics and Power Engineering (CPE-POWERENG 2018), Doha, Qatar, 10–12 April 2018; pp. 1–6. [Google Scholar] [CrossRef]
  89. Gerdun, P.; Ahmed, N.; Vernekar, V.; Töpfer, M.; Weber, H. Dynamic Operation of a Storage Power Plant (SPP) with Voltage Angle Control as Ancillary Service. In Proceedings of the International Conference on Smart Energy Systems and Technologies (SEST), Porto, Portugal, 9–11 September 2019; pp. 1–6. [Google Scholar] [CrossRef]
  90. Dzobo, O. Virtual power plant energy optimisation in smart grids. In Proceedings of the Southern African Universities Power Engineering Conference/Robotics and Mechatronics/Pattern Recognition Association of South Africa (SAUPEC/RobMech/PRASA), Bloemfonteins, South Africa, 28–30 January 2019; pp. 714–718. [Google Scholar] [CrossRef]
  91. Wang, Z.; Geng, Z.; Fang, X.; Tian, Q.; Lan, X.; Feng, J. The Optimal and Economic Planning of a Power System Based on the Microgrid Concept with a Modified Seagull Optimization Algorithm Integrating Renewable Resources. Appl. Sci. 2022, 12, 4743. [Google Scholar] [CrossRef]
  92. Cheng, Y.; Zhang, Y.; Chen, Q. Energy Management Strategy of Fuel-Cell Backup Power Supply Systems Based on Whale Optimization Fuzzy Control. Electronics 2022, 11, 2325. [Google Scholar] [CrossRef]
  93. Podder, A.K.; Islam, S.; Kumar, N.M.; Chand, A.A.; Rao, P.N.; Prasad, K.A.; Logeswaran, T.; Mamun, K.A. Systematic Categorization of Optimization Strategies for Virtual Power Plants. Energies 2020, 13, 6251. [Google Scholar] [CrossRef]
  94. Klansupar, C.; Chaitusaney, S. Optimal Sizing of Grid-Scaled Battery with Consideration of Battery Installation and System Power-Generation Costs. Energies 2022, 15, 4742. [Google Scholar] [CrossRef]
  95. Hussain, M.; Larik, R.M.; Ahmed, K. An MI-SOCP Model for the Economic Dispatch Problem in BESS Distribution Using Optimal Placement. Eng. Proc. 2022, 20, 39. [Google Scholar] [CrossRef]
  96. Kiehbadroudinezhad, M.; Merabet, A.; Abo-Khalil, A.G.; Salameh, T.; Ghenai, C. Intelligent and Optimized Microgrids for Future Supply Power from Renewable Energy Resources: A Review. Energies 2022, 15, 3359. [Google Scholar] [CrossRef]
  97. Anares. Available online: http://www.anares.ru (accessed on 27 August 2022).
  98. Institute of Energy Systems Named after, L.A. Melentyeva SB RAS. Available online: http://www.sei.irk.ru (accessed on 27 August 2022).
  99. RTDS Technologies Inc. Available online: http://www.rtds.com (accessed on 27 August 2022).
  100. ZAO. Institute of Energy Systems. Available online: http://www.enersys.ru (accessed on 27 August 2022).
  101. Technoinfoservis LTD. Available online: http://www.tic.com.ua (accessed on 27 August 2022).
  102. NIPT. Sistemy Upravleniia Energiei. Available online: http://www.rastrwin.ru (accessed on 27 August 2022).
  103. Regimov. Available online: http://regimov.net (accessed on 27 August 2022).
  104. DIgSILENT GmbH. Available online: http://www.digsilent.de (accessed on 27 August 2022).
  105. Energy Siemens. Available online: http://www.energy.siemens.com (accessed on 27 August 2022).
  106. ELEKS, Ltd. Available online: http://www.eleks.com (accessed on 27 August 2022).
  107. Statistics&Control, Inc. West Des Moines. Available online: http://www.stctrl.com (accessed on 27 August 2022).
  108. CSoft Development. Available online: http://www.csoft.ru (accessed on 27 August 2022).
  109. NEPLAN, AG. Available online: http://www.neplan.ch (accessed on 27 August 2022).
  110. ETAP Automation, Inc. Irvine. Available online: http://www.etap.com (accessed on 27 August 2022).
Figure 1. Optimized condition parameters in electric power systems and networks.
Figure 1. Optimized condition parameters in electric power systems and networks.
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Figure 2. Energy optimization methods.
Figure 2. Energy optimization methods.
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Figure 3. Structural diagram of the power supply system with its own and external sources.
Figure 3. Structural diagram of the power supply system with its own and external sources.
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Table 1. Optimization Techniques.
Table 1. Optimization Techniques.
TechniqueDescription
Incremental rate techniqueTarget function
(example)
F = ∑Bi(Pi) + γ(∑PiPc), [1]
where F is the target function; Bi is the heat consumption by the i-th unit, Pi is the unit load; γ is the incremental rate, Pc is the station service power
Application areaCalculating the optimal power distribution between any number of stations or units within a station
DrawbacksThe method does not take into account:
-
The possibility of using different fuels with different costs at the station;
-
Fuel costs associated with the transition from one state to another;
-
The impact of changes in the number of harmful emissions on the energy cost.
Lagrange multiplier techniqueTarget function
(general form)
L(X,λ) = F(X) + ∑λiφi(x) [1]
where F is the target function; X is the criterion to be optimized; λ is the indefinite Lagrange multiplier
Application areaDefining favorable operating modes of power units, obtaining the optimal load distribution between several units
DrawbacksIntroducing additional variables to be eliminated with additional equations
Linear programming techniqueTarget function
(general form)
F(x) = a1x1 + a2x2 + …+anxn, [1]
where F is the target function; xn is the criterion to be optimized; an is the coefficients
Application areaSolving problems associated with the distribution of resources, production planning, and arrangement of the transport work
DrawbacksApplying independent limitations
Dynamic programming techniqueTarget function
(example)
C n = j = 1 n k = 1 m C k , j ( y j ) + C st   k ,   j ( y j ) min ,
where yj is the optimal control at the j-th step; Ck,j(yj) is the consumption cost of a primary energy carrier to produce the steam required to generate electricity at a full load of sources; Cst k,j(yj) is the cost of steam consumption through the extraction points; n is the number of power plant boilers connected to a single steam pipeline; m is the total number of different primary energy carriers used at the power plant
Application areaSolving the following: trajectory selection; consequential decision-making; the use of manpower; inventory management
DrawbacksDuration of the calculations for systems with a large number of data
Table 2. Software products designed to calculate and optimize the electric energy system modes.
Table 2. Software products designed to calculate and optimize the electric energy system modes.
TitleDeveloperKey Functions
ANARES-2000IDUES LLC, Novosibirsk, Russia, and ISEM SB RAS, Irkutsk, Russia [97]Calculation, planning, design, and analysis of electric energy system modes. The steady state is calculated based on the modified Newton method in Cartesian coordinates with the exact choice of the optimal step for multi-component circuits of any configuration. The grid is optimized based on the gradient descent method and allows reducing active power losses, considering limitations on active and reactive power and voltage by:
-
Voltage and transformation ratio control;
-
Defining the optimal circuit breaking point
SDO-6Artemiev V.E., Voitov O.N., Mantrov V.A.,
Nasvitsevich B.G., Semenova L.V. ISEM SB RAS, Irkutsk, Russia [98]
Calculating symmetrical steady-state modes using the Newton-Raphson method with a variable step. The steady-state modes are optimized according to the following criteria:
-
Minimum active and reactive power losses in the grid;
-
Minimum generation costs (active and reactive load components), considering fuel tariffs and active power flows for controlled lines and sections
RTDS (Real Time Digital Simulator)RTDS Technologies Inc., Winnipeg, Canada [99]Real-time simulation, calculation, and analysis of the energy system steady-state modes
COSMOSPrikhno V.L. [100]Real-time calculation of the energy system modes based on telemetric data. The package calculates steady-state modes and optimizes energy systems in terms of reactive power
AREMTechnoinfoservice LTD, Kyiv, Ukraine [101]Autonomously analyzing grids based on the power balance method by directly entering the grid configuration parameters and importing them. The module allows optimizing the grid modes:
-
Defining the optimal transformation ratios of transformers;
-
choosing circuit breaking points;
-
Defining reactive power for compensation;
-
Choosing the optimal power of compensators
RastrWinYekaterinburg Public Fund named after D.A. Arzamastsev, Yekaterinburg, Russia [102]The software package allows calculating the steady-state grid modes considering the frequency deviation. The grids are optimized in terms of power losses, reactive power flows, and voltage
MUSTANGODU North-West, Riga, Latvia [103]The software package is designed to calculate the steady-state grid modes using the Newton-Raphson method. The heavy mode convergence has been improved using the Matveev method
DIgSILENT PowerFactoryDIgSILENT GmbH, Gomaringen, Germany [104]The software package allows calculating symmetrical and asymmetric steady-state modes of arbitrary configuration DC and AC grids. The package allows for linear and non-linear optimization of energy system modes, considering power flows across sections and active and reactive power control limits
PSS®E Siemens PTISiemens Corporation, Erlangen, Germany [105]PSS®E allows calculating the grid flow distribution using the iterative Newton-Raphson method. The software package optimally distributes power according to the criterion of minimum operating costs to reduce active and reactive power losses, fuel and active and reactive power generation costs, and reduce or increase active power flows and reactive power generation reserve
DAKARELEKS Software Representation for the CIS Countries—Lviv, Ukraine [106]The DAKAR software is designed to calculate and analyze the electric energy system steady-state modes using the EMF compensation techniques, with or without considering the frequency change in normal, marginal, and post-emergency states
OptiRamp®Statistics and Control, Inc., West Des Moines, USA [107]The Enterprise Electric Power Optimization and Management System (EEPOMS) is intended for planning, controlling, monitoring, and optimizing power generation. It defines the optimal thermal and electric energy distribution with the minimum fuel consumption or minimum losses of the enterprise, as well as for the maximum efficiency of the PP units. The optimization criterion may vary depending on certain factors
Energy CSCSoft Development, Moscow, Russia [108]The software package calculates the steady-state modes of complex electric energy systems. It identifies the most advanced modes, considering the growth of loads and the transformation of circuits
NEPLANNEPLAN AG, Küsnacht, Germany [109]The software product is designed for industrial power supply and energy system analysis, planning, optimization, and control. NEPLAN allows defining optimal circuit breaking points, reactive power source installation places, and grid reconstruction plan
ETAP Electrical Power System SoftwareETAP Automation Inc., Irvine, USA [110]The package allows calculating steady-state and optimal steady-state modes. ETAP defines the optimal flow distribution (active and reactive power) using the internal point method, considering the barrier function according to the criterion of minimum power losses in distribution grids. The package also allows defining the optimal reactive power source installation places, their rated parameters, number, and generated power according to the criterion of minimum source installation and maintenance costs
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Varganova, A.V.; Khramshin, V.R.; Radionov, A.A. Improving Efficiency of Electric Energy System and Grid Operating Modes: Review of Optimization Techniques. Energies 2022, 15, 7177. https://doi.org/10.3390/en15197177

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Varganova AV, Khramshin VR, Radionov AA. Improving Efficiency of Electric Energy System and Grid Operating Modes: Review of Optimization Techniques. Energies. 2022; 15(19):7177. https://doi.org/10.3390/en15197177

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Varganova, Aleksandra V., Vadim R. Khramshin, and Andrey A. Radionov. 2022. "Improving Efficiency of Electric Energy System and Grid Operating Modes: Review of Optimization Techniques" Energies 15, no. 19: 7177. https://doi.org/10.3390/en15197177

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