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Article

Islanding Detection in Grid-Connected Urban Community Multi-Microgrid Clusters Using Decision-Tree-Based Fuzzy Logic Controller for Improved Transient Response

by
Yellapragada Venkata Pavan Kumar
1,2,*,
Sivakavi Naga Venkata Bramareswara Rao
3 and
Ramani Kannan
2
1
School of Electronics Engineering, VIT-AP University, Amaravati 522237, Andhra Pradesh, India
2
Department of Electrical and Electronics Engineering, Universiti Teknologi Petronas (UTP), Seri Iskandar 32610, Perak, Malaysia
3
Department of Electrical and Electronics Engineering, Sir C. R. Reddy College of Engineering, Eluru 534007, Andhra Pradesh, India
*
Author to whom correspondence should be addressed.
Urban Sci. 2023, 7(3), 72; https://doi.org/10.3390/urbansci7030072
Submission received: 15 April 2023 / Revised: 10 June 2023 / Accepted: 29 June 2023 / Published: 3 July 2023

Abstract

:
The development of renewable-energy-based microgrids is being considered as a potential solution to lessen the unrelenting burden on the centralized utility grid. Furthermore, recent studies reveal that integrated multi-microgrid cluster systems developed in urban communities maximize the effectiveness of microgrids and greatly decrease the utility grid dependence. However, due to the uncertain nature of renewable energy sources and frequent load variations, these systems face issues with unintentional islanding operations. This can create severe damage to the microgrid’s performance in its stable operating condition and lead to undesired transient responses. Hence, islanding must be identified rapidly to take preventive measures to address the issue. This requires the development of a suitable anti-islanding technique that is faster in terms of accuracy and timely detection. With this intention, this paper proposes a decision-tree-based fuzzy logic (DT-FL) controller for the rapid identification of islands in an urban community multi-microgrid cluster. The DT-FL controller’s operation includes two steps. First, the decision tree extracts the electrical parameters at the point of common coupling of the multi-microgrid system. Second, these extracted parameters are utilized for the online tuning of the fuzzy logic controller, for the fast detection of islanding. The multi-microgrid cluster under study, along with the proposed islanding technique, is implemented in the MATLAB-2021a software. The efficacy of the proposed DT-FL controller is validated by comparing its performance with that of the conventional fuzzy logic controller under different test scenarios. From the results, it is observed that the proposed DT-FL controller shows superior performance in terms of the islanding detection time as well as the transient response of the system when compared with the conventional controller.

1. Introduction

The demand for electrical energy is a useful tool for measurement in the economy of any country around the world. Energy demands have become more complex as a result of the rising standards of living worldwide. By 2050, the urban population is anticipated to rise from 55% to 69%, resulting in a massive energy demand [1,2]. Moreover, the energy sector’s continuous urbanization and growth has significantly increased the load on the electric grid, leading to frequent grid failures. All of these elements have paved the way to the installation of distributed generation (DG) systems, which will lessen the reliance on the utility grid [3]. Hence, local energy-producing facilities based on renewable energy are added to the conventional central utility system [4,5]. Over the past several years, improvements in distributed generators (DGs) have been essential in addressing problems with traditional power system networks. A probable solution to the unavailability and exhaustion of fossil fuels, as well as to the rapid increase in electric load, environmental pollution, and the high costs of petroleum products and gases, may be found in the significant rise of DGs. A range of technological, governmental, and current issues in the conventional electric system have been successfully addressed by DGs [6]. This ground-breaking technology has led to the replacement of the conventional electric power system with microgrids, which are low-voltage active distribution systems. A microgrid (MG) is a network of energy storage, distributed generation (DG), and various loads that can be managed by monitoring and protection systems. Circuit breakers are typically used at the point of common connection to link microgrids to the main grid on the distribution side (PCC). The MG is synchronized with the utility under normal operating conditions and will be disconnected from the utility grid and operate in an autonomous mode to meet high energy demands if it experiences any problems, such as voltage or frequency variations [7]. The DG units in a microgrid have substantially less capacity than the enormous generators used in traditional systems; the MG is vulnerable to climate change due to its lower energy density and dependency on regional topographical considerations. Because of their proximity to consumers, they can supply electricity and heat loads with the proper voltage and frequency while minimizing transmission losses, preventing the power network from becoming congested. By keeping the lights on when the regular power source is available, they raise the technical standards, economic benefits, and environmental reliability of the current power system. These interruptions might cause significant changes in some system characteristics, which might result in instability in the power system. Therefore, it is important to identify and fix any disturbances as soon as possible to maintain the continuity of the power supply. Several utilities view the islanded operation mode of DG units as a feasible strategy to preserve continuity and reliability due to the significant diffusion of renewable energy resources (RES) in distribution systems. However, islanding operations require a quick, accurate, and economical islanding detection method, which has no impact on the supply’s quality. As a result, several islanding control mechanisms have been created and implemented on these DG units. According to IEEE Std. 1547-2003 [8], islanding must be identified within 2 s of it taking place. The following are the literature works that have discussed the islanding techniques that are used in a microgrid system.
The authors of [9] proposed a hybrid method for islanding detection to identify the islanding phenomenon in a distribution system. The proposed approach is a hybrid technique that combines a passive approach and a remote detection approach. The next stage is the proposal of an adaptive control method to guarantee the steady operation of islanded subsections. The proposed technique makes use of error rates for system parameters such as voltage and power to re-adjust generator controls and keep the system stable. In [10], the researchers suggest a unique islanding detection approach based on an adaptive neuro-fuzzy inference system (ANFIS) that is integrated with various passive monitoring strategies. One of the objectives of this study is to minimize the negative effects of the islanding detection (IDT) approach on PQ, while preserving the detection accuracy and minimizing the non-detection zone (NDZ). The suggested method’s main component is data mining, which enables all necessary data to be obtained using relay metering sensors installed on the PCC. To create a decentralized IDT for numerous and hybrid DG-based microgrids, each DG connected at the PCC in [11] injects a low-frequency disturbance signal through a d-axis current controller that is integrated with the suggested hybrid analysis technique. The suggested approach is capable of identifying island formation due to (1) individual DGs becoming isolated from the rest of the system, with or without a load, and (2) additional DGs becoming isolated from the grid with or without a load. The study in [12] suggests a novel method for the quick identification of islanding events in a microgrid (MG). The suggested method consists of two steps, the first of which is to extract certain useful features from the voltage and current information. The discrete Fourier transform is used to examine these signals for the second harmonic termination (DFT). LSTM is a novel artificial intelligence method that uses a unique recurrent neural network structure. In [13], a passive IDT based on the rate of change of frequency deviation technique is investigated within the MG under various levels of power imbalance. Moreover, [14] demonstrates the phenomenon as quickly and accurately as possible using the rate of change of power technique based on the terminal voltage of a photovoltaic inverter. However, in [15], the authors extracted electrical feature quantities that had a strong correlation with islanding detection. In addition, an islanding detection method based on CatBoost was proposed for an MG in this paper to effectively determine the thresholds of multiple electrical feature quantities and reduce the dead zone in the islanding detection process. The authors in [16] used the superimposed angle of negative sequence impedance for the detection of islands in a reconfigurable system. The authors in [17] used a combinatorial strategy combining various passive schemes in an attempt to reduce the detection time and the non-detection zone (NDZ). However, the authors in [18] proposed a hybrid active and passive islanding technique. The method was used to obtain a solution for the NDZ by using fuzzy classifiers and applying a suitable active or passive method. An approach to unplanned island detection in a microgrid with a micro-phasor measurement unit is suggested in [19]. To determine if an island or fault will develop, the unit extracts specific features from recorded voltage data utilizing the discrete fractional Fourier transform’s multi-domain nature.
From the literature, it is identified that the development of knowledge-based classifiers frequently relies on classification methods based on decision tree, Bayes classification, and SVM approaches. Deep learning methodologies are now most frequently used when creating classification algorithms. When there are enormous amounts of data accessible, these strategies are highly useful. However, gathering such information for educational purposes might be challenging. Thus, one of the best ways to visualize a decision in these situations is through a decision tree. When the next step in the decision-making process depends on the information analysis from previous steps, a decision tree can be interpreted as a representation of regular human reasoning. Moreover, studies in the literature have focused on implementing classification methods to determine islanding in single microgrid systems. Thus, by keeping these aspects in view, this paper proposes a decision-tree-based fuzzy controller for effective islanding detection with an improved transient response in a multi-microgrid system, which is formed by integrating two adjacent microgrids in an urban community.
The remainder of the article is structured as follows. Section 2 presents the description of the system under study and also the modeling of the various constituent units of the system; Section 3 discusses the proposed decision-tree-based fuzzy logic controller; Section 4 presents a discussion of the simulation findings; and the conclusions are presented in Section 5.

2. Description and Modeling of Multi-Microgrid (MMG) System under Study

The architecture of a multi-microgrid system in an urban community, which is entirely based on the AC power park, is illustrated in Figure 1. The system consists of two microgrids, each of which is viewed as a standalone structure functioning in a remote location with a constant AC voltage of 415 V. Each MG is associated with different energy sources, DC/DC converters, and building loads. Because the voltage generated by renewable energy sources is low, it is boosted to a value of 500 V (DC), which is comparable to 415 V of AC voltage. The individual MGs are modeled to operate in both isolated and grid-connected modes. The multi-microgrid system under study is connected to a utility grid via the point of common coupling. MG-1 is modeled with a solar PV energy source with the MPPT algorithm, a DC/DC converter, a 3-Φ inverter, and residential building loads. Similarly, MG-2 is modeled with a fuel cell, DC/DC converter, 3-Φ inverter, and academic institute building loads. All component ratings are given in Appendix A.

2.1. Solar PV System Modeling

The market for photovoltaic (PV) systems is rapidly expanding in the modern world as a result of the sharp rise in the price of fossil fuels as well as efforts to reduce greenhouse gas emissions. PV models are among the several modeling techniques that are accessible. In this work, however, we have focused on one diode model of a PV system, as illustrated in Figure 2a, and the characteristics are shown in Figure 2b, demonstrating its advantages. Although two-diode models are more accurate, they take into account combination losses in the solar cell depletion zone. Moreover, two-diode and three-diode models provide many benefits because adding extra diodes to a structure increases the computational complexity. When compared to other models, the single-diode model is precise and easy to build. In this work, the perturb and observation MPPT algorithm is adopted [20]; the implementation is shown in Figure 2c. The mathematical modeling of the solar PV system can be obtained from Figure 2a and is given in Equations (1) to (4) [21].
I p = [ I s c + T s c ( T 298 ) ] I R 10 3
I r s = I s c [ exp ( q . V o c n s K A T ) 1 ] 1
I 0 = I r s ( T T N ) 3 exp ( q E g 0 A K ( 1 T N 1 T ) )
I = N p I p N p I 0 exp ( q ( V N s + I . R s N p ) A . ( K . T N q ) 1 ) 1 R s h ( V . N p N s + I . R s )
where I p —photocurrent, I s c —current under short circuit (SC), T s c —temperature under SC, T —operating temperature of the cell, I R —cell irradiance current, I r s —reverse saturation current, q —charge, V o c —open circuit voltage, K —Boltzmann’s constant, A —ideal factor, N s —series-connected cells, N p —parallel-connected cells, I 0 —saturation current of the module, T N —nominal temperature, I —output current, E g 0 —semiconductor energy gap, R s —series resistance, V —voltage of the diode.

2.2. Proton Exchange Membrane Fuel Cell (PEMFC) Modeling

Without a battery, fuel cells are electrochemical devices that convert chemical energy into electrical energy. Because of the electrolyte used in the cell, a proton exchange membrane fuel cell was taken into consideration for this work. An electrolyte is contained in the proton exchange membrane fuel cell (PEMFC), connected between the anode and cathode chambers. In a PEM fuel cell, oxygen from the atmosphere enters the compartment of the cathode, while fuel from gases enters the anode. Thus, electrochemical processes occur to produce a current. The equation of ‘Nernst’ for the calculation of the thermodynamic energy ‘En’ is considered for fuel cell modeling, as given in Equations (5) to (7) [21].
E n = ( 1.27616 0.00008 T ) + ( 0.0000045 × T × ( ln P H 2 + ln P O 2 ) )
D i s o l v e d o x y z e n = P O 2 ( 5.08 × 10 6 exp ( 498 T ) ) 1
H 2 O ( l i q u i d ) + E l e c t r i c a l   E n e r g y = H 2 + 0.5 O 2 ( g a s e o u s )
where P —effective pressure, T —stack temperature.

2.3. DC to DC Converter Modeling

Renewable energy sources produce inconsistent voltages at their output, which is not sufficient to meet electricity needs. As a result, to improve the performance of grid-connected renewable energy systems today, it is crucial to use a DC/DC converter that generates higher outputs for lower inputs. The fundamental operation of a DC/DC boost converter is dependent on the behavior of an inductor, which prevents abrupt changes in current while permitting changes in the inductor’s magnetic field energy. The equivalent circuit of the boost converter is shown in Figure 3a, and the working principle is explained using Figure 3b,c [21].
During the ON state, the inductor starts charging and stores magnetic energy, and, during the OFF state, the current decreases, thereby increasing the impedance of the circuit. The state space equations of the converter are given in Equations (8) to (10).
d I L d t = V C ( 1 D L ) + V i n L
d V c d t = I L ( 1 D C ) + V c R C
V 0 = V C
Here, I L —inductor current, V C —capacitor voltage, D —duty ratio.

2.4. Control Circuit for DC to AC Converter (Three-Phase Inverter) Modeling

In general, the power electronic inverter is crucial for renewable-energy-based microgrid systems due to its effective functioning. Nowadays, artificial-intelligence-based control techniques to produce the required gate pulses to the inverter are gaining popularity. Keeping this in view, in this work, a radial basis neural network is trained for the tuning of the PI controller. The Simulink implementation of the control circuit for the production of gate pulses to the inverter is shown in Figure 4.

2.5. Load Profiles Considered for Modeling of MG-1 and MG-2

In this case study, a 20-flat residential building is considered for MG-1 modeling, and a small academic institute building is considered for MG-2 modeling. The types of loads and their distribution in a day are assumed as shown in Table 1, Table 2 and Table 3. For simulation, a 4-h duration in a day is assumed as 0.05 s.

3. Proposed Decision-Tree-Based Fuzzy Logic (DT-FL) Controller

The proposed decision-tree-based fuzzy logic controller adopts a passive method by taking the data mining methodology into account for islanding detection in a multi-microgrid cluster. This process involves creating a straightforward and reliable fuzzy classifier with an initial decision tree for islanding detection. It becomes vital to address structural problems with the identification of classifier systems as a result of the complexity and dimensionality of the classification problems arising. The identification of the appropriate initial partition of the input domain and the choice of pertinent features are important considerations. Moreover, when the classifier is recognized as a component of an expert system, language interpretability is another crucial factor that needs to be taken into consideration. While the interpretability factor is frequently unnoticed, the first two aspects are frequently tackled through educated estimates. When the significance of each of these factors is understood, automatic data-based classification systems that are accurate, compact, and understandable may be identified.
The input space is divided into rectangles by DT-based classifiers, whereas fuzzy models produce non-axis parallel decision boundaries. Because of this, rule-based classifiers have more flexible decision bounds than crisp DTs, which is their main advantage. As a result, fuzzy classifiers may be easier to understand than DT classifiers. The suggested method is implemented mainly in two stages: (1) features are extracted in the first stage, and (2) a classification task is carried out in the second stage to detect islands. Hence, one of the crucial responsibilities associated with the suggested approach is feature selection. Thus, we have obtained the change in frequency deviation, change in voltage deviation, and rate of change in frequency at the point of common coupling of the MMG. The decision tree uses the extracted features as inputs to select the most important aspects that contribute to the decision-making process and the initial categorization limits. Trapezoidal fuzzy membership functions are generated from the DT classification boundaries of the most significant features, and a corresponding rule base is formed for classification. However, depending on the similarity measure, certain fuzzy MFs are combined, which lowers the overall number of fuzzy MFs. A streamlined fuzzy rule basis for islanding detection is created from the fuzzy MFs that have been decreased in size. A DT is a high-dimensional classifier DT, in which each branch of the tree indicates the result of a test, while each internal node evaluates the usefulness of a predictor. The leaf nodes, also known as the ending nodes, reflect the classification. The classification problem’s dimension is indicated by how many predictors are utilized. The confidence in the decision is connected to each decision (tree leaf). In simple terms, this is the ratio of the specific class to all the other classes in the dataset for a given node [22].
A robust, accessible data mining and analysis workbench called “Insightful Miner” enables enterprises to provide tailored predictive intelligence whenever required. Its user-friendly interface was created with statisticians and business analysts, who lack specialist programming skills, in mind. With Insightful Miner, one can identify the solutions that one needs to tackle particular business problems quickly and effortlessly and share one’s findings with one’s colleagues throughout the company. Insightful Miner performs better in this scenario by offering a strong statistical analysis and visualization capacity, as typical data mining tools become less and less effective as the data sets grow in size. Hence, for the suggested study, this has been chosen to develop the DT structure. The most relevant characteristics that are used in the decision-making process are produced by the DT analysis using the best splitting setting, which includes the extracted features at the PCC. In this study, a total of 11 features are extracted at the PCC of the multi-microgrid system, which are given in Table 4. However, in the end, the classification tree shown in Figure 5 is developed using only three features. As a result, DT only gives information on the three most important features that influence the decision making, rendering the remaining eight features superfluous. Fuzzy membership functions are created from the categorization boundaries of the most significant characteristics produced by DT and used in the fuzzy rule basis for islanding.
After obtaining the DT’s partition boundaries from the classification, we create fuzzy membership functions and the DT is converted into a fuzzy rule base. Rectangular MFs are created for each independent variable from the DT boundaries. The process of fuzzification replaces a numerical attribute X k with a fuzzy attribute A k (k = 1, 2, 3 … i) described by Β k linguistic terms. We refer to these linguistic concepts as fuzzy sets. As the numerical attribute values are defined as a vector of real numeric values, we have ‘M’ instances of these values ( x 1 , x 2 , x 3 x M ) . Each l th numerical value of this vector ( l = 1 , 2 M ) is fuzzified into membership degrees of Β k linguistic terms. As a result, these values of the membership function of each Β k linguistic concept define the value of each instance of the fuzzy attribute. Thus, the j th linguistic term of A k is designated as A j , k ( j = 1 , 2 Β k ) . Fuzzy set A j , k with respect to X k is defined by a membership function μ A j , k ( x ) : Χ k ( 0 , 1 ) . Formally, a fuzzy set A j , k is described in terms of a pair of sets given by A j , k = [ ( x , μ A j , k ( x ) ) , x Χ k ] [23]. The DT output obtained from the aforementioned DT-fuzzy transformation method is changed into the corresponding fuzzy rule base. Three input parameters extracted from the PCC of the MMG cluster are designated as ‘X1’, which is a change in frequency deviation, ‘X2’, which is a change in voltage deviation, and ‘X3’, which is the rate of change in the frequency deviation. For islanding detection, the categorization borders are determined based on the values of the above three variables, as mentioned in Appendix A. The contour plot of the input parameters extracted at the PCC of the system considered for testing and the output parameter is shown in Figure 6.
The developed membership functions for X1 are (P1, P2), for X2 are (Q1, Q2, Q3), and for X3 are (R1, R2). Rectangular shapes characterize the fuzzy MFs produced by the DT classification boundaries. However, the rectangular borders are somewhat warped by heuristic adjustment, which adds fuzziness to the membership functions. Following tests on numerous values in the vicinity of the starting values produced from the DT, the coordinates of the trapezoidal fuzzy MFs are adopted. The fuzzy membership function plots of the input and output variables are shown in Figure 7. The flow chart implementation for the proposed DT-based fuzzy logic controller is shown in Figure 8.
The corresponding fuzzy rules are formed as follows.
Rule 1: if X1 is P1 and X2 is Q2, then an island occurs.
Rule 2: if X1 is P2 and X2 is Q3, then an island occurs.
Rule 3: if X1 is P2 and X2 is Q1 and X3 is R1, then an island occurs.
Rule 4: if X1 is P2 and X2 is Q1 and X3 is R2, then no island occurs.

4. Simulation Results and Discussion

To identify the performance of the proposed DT-FL controller for the detection of an island in a multi-microgrid cluster, different test conditions are considered. The obtained characteristics are then compared with the conventional fuzzy controller to understand the effectiveness of the proposed methodology. The system under study, along with the DT-FL, is modeled in the MATLAB software 2021a, ver. 9.1, for a 64-bit PC. The test conditions considered for the identification of islanding in a system with the proposed DT-FL controller are shown in Table 5.

4.1. Analysis of the System under Test Condition A

When ‘condition A’, which is given in Table 5, is executed, the input values extracted using the DT are Δ f = 3.19 ;   Δ V = 1.05 ;   and   d ( Δ f ) d t = 0.16 . However, as per the fuzzy rule base developed from Equations (11) to (14), the FIS output generated by the system corresponding to these input parameters is ‘0.5’, which the condition defines as an “island”, as shown in Figure 8. Further, the input and output parameters that are obtained during online extraction are shown in Figure 9.
Later, the analysis is further extended to study the frequency response, voltage characteristics at the PCC of the multi-microgrid system, and total harmonic distortion (THD) during the execution of test condition A. From the frequency response shown in Figure 10, it is observed that the islanding condition is quickly identified by the proposed DT-FL and conventional FL controllers at 0.02 s. This is satisfactory according to IEEE Std. 1547-2003 [24,25]. At 0.02 s, the deviation in the frequency with the conventional FL controller is higher and it is greater than ±5% when compared with the proposed DT-FL controller. From the voltage characteristics shown in Figure 11, it is observed that the settling time of the system with the conventional FL controller after the occurrence of the islanding condition is greater compared to the proposed DT-FL controller. Because of the large settling time, the transient response is poor with the conventional FLC, whereas the transient response of the system is improved with the proposed DT-FL controller.
The THD plot of the system is shown in Figure 12. From the plot, it is observed that with the conventional FL controller, the THD is 7.05%, and with the proposed DT-FL controller, the THD is 4.10%. Thus, from this discussion, it is observed that with test condition A, the proposed DT-FL controller gives good results.

4.2. Analysis of the System under Test Condition B

When ‘condition B’, shown in Table 5, is executed, Δ f = 3.087 , Δ V = 0.95 , and d d t ( Δ f ) = 0.16 are the input values extracted using DT. With the fuzzy rule base developed from Equations (11) to (14), the FIS output produced by the system corresponding to these input parameters is ‘0.5’, which is also the condition for the island. The input and output parameters obtained during online extraction are shown in Figure 13. The analysis of the system is carried out from the frequency response, voltage plot, and THD plot.
From Figure 14, it is observed that after 0.02 s, i.e., immediately after the occurrence of the island, the deviation in the frequency with the conventional FL is larger than that with the proposed DT-FL controller, which may lead to the system’s instability. This situation can be minimized with the proposed DT-FL controller.
From the voltage characteristics shown in Figure 15, it is observed that a more distorted waveform is obtained with the conventional FL controller when a sudden load dismissal occurs at the PCC, whereas a smooth voltage waveform is obtained with the proposed DT-FL controller despite the load removal. From the THD plot of the system, shown in Figure 16, it is observed that with the conventional FL controller, the THD is 15.01%, and with the proposed DT-FL controller, the THD is improved and is 5.35%. However, in both cases, the THD is not within the limits defined by the IEEE standards. Nonetheless, during this test condition, the proposed DT-FL controller performed better than the conventional FL controller.

4.3. Analysis of the System under Test Condition C

When ‘condition C’, shown in Table 5, is executed, the input parameters extracted using DT are also the same as in test condition 1, shown in Figure 9. In this case, the tripping of CB2 for MG-2 causes the generation of the FIS output corresponding to these input parameters to be ‘0.5’. During the analysis, it is identified that the same frequency response is obtained with both the conventional FL and proposed DT-FL controllers, which is shown in Figure 17. However, there is a voltage drop with the conventional FL controller. This voltage is increased with the use of the proposed DT-FL controller, as shown in Figure 18.
From the THD plot of the system, shown in Figure 19, it is observed that the THD value with the conventional FL controller is computed as 2.50%, while it is improved and computed as 1.03% with the proposed DT-FL controller. In both cases, the THD is within the limits defined by the IEEE standards. Thus, during all the test conditions given in Table 6, the proposed DT-FL controller performs better than the conventional FL controller with respect to power quality indices such as the frequency response, voltage fluctuations, and the THD of the system.
Similarly, Table 6 shows the performance comparison between the conventional and proposed DT-based fuzzy logic controllers. In this work, a total of 10 test cases were considered to verify the accuracy of the conventional and proposed controllers with and without noise. From Table 6, quantitatively, it is observed that the proposed DT-FL controller effectively gives better results.

5. Conclusions

In this paper, a DT-based FL controller for fast islanding detection in an urban community multi-microgrid cluster is proposed. The decision tree is used to extract the features through the PCC of the system under study. The proposed DT-FL controller’s performance is compared with that of the conventional FL controller, which proves its superiority. A summary of the achievements is given as follows.
Islanding detection is achieved satisfactorily, with better transient response characteristics for the voltage and frequency.
The THD limits are also maintained as per the IEEE standards.
The frequency response is maintained within the limits suggested by the IEEE standards, using the proposed DT-FL controller.
The transient response of the system is improved by reducing the settling time after the occurrence of the island.
Thus, the proposed DT-FL controller helps to achieve smooth and rapid islanding detection and an improved transient response in grid-connected urban community multi-microgrid clusters.

Author Contributions

Conceptualization, Y.V.P.K.; Data curation, S.N.V.B.R.; Formal analysis, Y.V.P.K.; Funding acquisition, Y.V.P.K.; Investigation, S.N.V.B.R.; Methodology, S.N.V.B.R.; Project administration, R.K.; Resources, R.K.; Software, Y.V.P.K.; Supervision, R.K.; Validation, S.N.V.B.R.; Visualization, R.K.; Writing—original draft, Y.V.P.K.; Writing—review and editing, Y.V.P.K. and S.N.V.B.R. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the SERB International Research Experience (SIRE) scheme of the Science and Engineering Research Board (SERB), a statutory body under the Department of Science and Technology (DST), Government of India, with grant number SIR/2022/000760.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. The ratings of the components considered for modeling in Simulink.
Table A1. The ratings of the components considered for modeling in Simulink.
ParameterTypical Ratings
AC voltage of MG-1 and MG-2415 V
DC voltage of MG-1 and MG-2500 V
Transformer T1415 (Δ)/13.8 kV (Y-Gnd), 60 Hz
Transformer T213.8 kV (Y-Gnd)/69 kV (Δ), 60 Hz
Length of distributed transmission line20 kM
Load A10 MW + j3.5MVAR
Load B7.5 MW + j12MVAR
Solar PV open circuit voltage50 V
Solar PV short circuit current4.5 A
Fuel cell stack temperature343 K
Fuel cell no-load voltage0.75 V
Frequency limits59.95 Hz–60.05 Hz
Voltage limits0.8 PU to 1.2 PU
THD limits5%
M.F. P1[2.18, 2.3, 30, 34]
M.F. P2[−9.5, −8.5, 1.95, 2.18]
M.F. Q1[0.64, 0.6, 18, 19]
M.F. Q2[−0.5, −0.4, 18, 19]
M.F. Q3[−0.5, −0.4, 0.55, 0.64]
M.F. R1[0.16, 0.2, 0.5, 0.6]
M.F. R2[−0.05, −0.03, 0.12, 0.16]
FIS output: Islanding0.5
FIS output: Non-Islanding0
Utility grid power100 MVA
Utility grid voltage69 kV
Frequency60 Hz

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Figure 1. Schematic of urban community multi-microgrid cluster with proposed DT-FL controller.
Figure 1. Schematic of urban community multi-microgrid cluster with proposed DT-FL controller.
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Figure 2. Solar PV system. (a) Equivalent circuit. (b) P-V characteristics. (c) P&O MPPT algorithm.
Figure 2. Solar PV system. (a) Equivalent circuit. (b) P-V characteristics. (c) P&O MPPT algorithm.
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Figure 3. DC-DC converter. (a) Equivalent circuit, (b) ON state depiction, (c) OFF state depiction.
Figure 3. DC-DC converter. (a) Equivalent circuit, (b) ON state depiction, (c) OFF state depiction.
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Figure 4. Control circuit for production of required gate pulses to the inverter of ith MG.
Figure 4. Control circuit for production of required gate pulses to the inverter of ith MG.
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Figure 5. Structure of decision-tree-based classifier for detection of islands.
Figure 5. Structure of decision-tree-based classifier for detection of islands.
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Figure 6. Contour plot of the input and output parameters.
Figure 6. Contour plot of the input and output parameters.
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Figure 7. Membership function plots of input and output variables. (a) for input X1, (b) for input X2, (c) For input X3, (d) for output.
Figure 7. Membership function plots of input and output variables. (a) for input X1, (b) for input X2, (c) For input X3, (d) for output.
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Figure 8. Flow chart implementation for the proposed DT-FL controller.
Figure 8. Flow chart implementation for the proposed DT-FL controller.
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Figure 9. FIS output produced with extracted parameters.
Figure 9. FIS output produced with extracted parameters.
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Figure 10. Frequency at PCC of the system with conventional FL and proposed DT-FL controllers.
Figure 10. Frequency at PCC of the system with conventional FL and proposed DT-FL controllers.
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Figure 11. Voltage profile at PCC with (a) conventional FL control and (b) proposed DT-FL controller.
Figure 11. Voltage profile at PCC with (a) conventional FL control and (b) proposed DT-FL controller.
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Figure 12. THD of the system with (a) conventional FL and (b) proposed DT-FL controller.
Figure 12. THD of the system with (a) conventional FL and (b) proposed DT-FL controller.
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Figure 13. FIS output produced with extracted parameters.
Figure 13. FIS output produced with extracted parameters.
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Figure 14. Frequency at PCC of the system with conventional FL and proposed DT-FL controllers.
Figure 14. Frequency at PCC of the system with conventional FL and proposed DT-FL controllers.
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Figure 15. Voltage profile at PCC with (a) conventional FL and (b) proposed DT-FL controller.
Figure 15. Voltage profile at PCC with (a) conventional FL and (b) proposed DT-FL controller.
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Figure 16. THD of the system with (a) conventional FL and (b) proposed DT-FL controller.
Figure 16. THD of the system with (a) conventional FL and (b) proposed DT-FL controller.
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Figure 17. Frequency at PCC of the system with conventional FL and proposed DT-FL controllers.
Figure 17. Frequency at PCC of the system with conventional FL and proposed DT-FL controllers.
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Figure 18. Voltage profile at PCC with (a) conventional FL and (b) proposed DT-FL controller.
Figure 18. Voltage profile at PCC with (a) conventional FL and (b) proposed DT-FL controller.
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Figure 19. THD of the system with (a) conventional FL and and (b) proposed DT-FL controller.
Figure 19. THD of the system with (a) conventional FL and and (b) proposed DT-FL controller.
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Table 1. Loads considered for modeling of MG-1 and MG-2 based on assumptions.
Table 1. Loads considered for modeling of MG-1 and MG-2 based on assumptions.
S. No.Load NameLoad TypeRating (kW + jkVAR)
1FanLoad-10.07 + j0.019
2LightLoad-20.03 + j0.006
3AC_type1Load-31.3 + j0.429
4TVLoad-50.07 + j0.019
5RefrigeratorLoad-60.4 + j0.14
6GrinderLoad-70.5 + j0.17
7Washing machineLoad-80.51 + j0.16
8ComputerLoad-90.46 + j0.148
9Water coolerLoad-100.51 + j0.16
10Machine_type1Load-112.2 + j0.724
Table 2. Assumed load profile of the residential building in MG-1.
Table 2. Assumed load profile of the residential building in MG-1.
Load ParticularsLoad Distribution in a Day
Load TypeQty/FlatQty/
20 Flats
0–4 h4–8 h8–12 h12–16 h16–20 h20–24 h
Qty ONLoad Qty ONLoadQty ONLoad Qty ONLoad Qty ONLoad Qty ONLoad
kWkVARkWkVARkWkVARkWkVARkWkVARkWkVAR
Load-1360603.611.15603.611.14402.420.76402.40.77452.70.86301.80.57
Load-2480200.40.12400.80.24250.50.15100.20.06601.20.36701.40.42
Load-31201620.86.831215.65.12810.43.421823.47.69911.73.841722.17.26
Load-512020.120.04120.720.23150.90.29150.90.29160.960.3150.90.29
Load-61202082.62082.62082.62082.62082.62082.6
Load-71202101471.121472.24420.6452.50.81051.6
Load-81200001050.8157.52.4630.96841.28841.28
Total Load33.9 + j10.7340.72 + j11.2536.7 + j11.8639.9 + j1331.06 + j1047.1 + j14.02
Table 3. Assumed load profile of the academic institute building in MG-2.
Table 3. Assumed load profile of the academic institute building in MG-2.
Load DetailsLoad Distribution over a Day
Load TypeQty/Flat0–4 h4–8 h8–12 h12–16 h16–20 h20–24 h
Qty ONLoad Qty ONLoadQty ONLoad Qty ONLoad Qty ONLoad Qty ONLoad
kWkVARkWkVARkWkVARkWkVARkWkVARkWkVAR
Load-1200201.20.38402.40.7615092.8518010.83.42704.21.335030.95
Load-23005010.3250.50.1515030.915030.95010.31202.40.72
Load-32556.52.1456.52.1410134.271519.56.4110134.2779.12.99
Load-91502092.9640185.927533.7511.11004514.8803611.845022.57.4
Load-1110000000715.45.06715.45.06000000
Load-10201051.61051.620103.220103.21051.61051.6
Total Load22.7 + j7.3832.4 + j10.5784.15 + j27.38103.7 + j33.7959.2 + j19.3422 + j13.66
Table 4. Extracted features at PCC of the system.
Table 4. Extracted features at PCC of the system.
Extracted Feature at PCCNotationUnits
Change in frequency Δ f Hz
Change in voltage Δ V PU
Rate of change in frequency d d t ( Δ f ) Hz/s
Rate of change in voltage d d t ( Δ V ) PU/s
Rate of change in power d d t ( Δ P ) MW/s
Ratio of change in frequency to change in power Δ f Δ P Hz/MW
Current THD I T H D PU
Voltage THD V T H D PU
Change in power factor Δ P F --
Absolute phase voltage times of power factor U cos θ --
Rate of change of absolute phase voltage times of power factor d d t U cos θ --
Table 5. Various testing scenarios considered for the simulation.
Table 5. Various testing scenarios considered for the simulation.
S. No.ConditionDescription of Procedure
1ATrip the circuit breaker (CB1) of MG-1 by connecting a PCC load of 7.5 MW + j12.5MVAR
2BA sudden drop in the loads connected at the PCC by 25%, i.e., 1.89 MW + j3MVAR
3CTrip the circuit breaker (CB2) of MG-2 by isolating the PCC loads
Table 6. Performance comparison of conventional and proposed DT-FL controllers.
Table 6. Performance comparison of conventional and proposed DT-FL controllers.
Test CasesActual ClassConventional FL Controller without Noise
FIS-0.5 (Island)FIS-0 (Non-Island)Accuracy (%)
10Island8080
Non-island0880
Proposed DT-FL Controller without Noise
FIS-0.5 (Island)FIS-0 (Non-Island)Accuracy (%)
Island100100
Non-island010100
Conventional FL Controller with Noise (20 dB)
FIS-0.5 (Island)FIS-0 (Non-Island)Accuracy (%)
Island7070
Non-island0770
Proposed DT-FL Controller with Noise (20 dB)
FIS-0.5 (Island)FIS-0 (Non-Island)Accuracy (%)
Island9090
Non-island0990
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MDPI and ACS Style

Venkata Pavan Kumar, Y.; Naga Venkata Bramareswara Rao, S.; Kannan, R. Islanding Detection in Grid-Connected Urban Community Multi-Microgrid Clusters Using Decision-Tree-Based Fuzzy Logic Controller for Improved Transient Response. Urban Sci. 2023, 7, 72. https://doi.org/10.3390/urbansci7030072

AMA Style

Venkata Pavan Kumar Y, Naga Venkata Bramareswara Rao S, Kannan R. Islanding Detection in Grid-Connected Urban Community Multi-Microgrid Clusters Using Decision-Tree-Based Fuzzy Logic Controller for Improved Transient Response. Urban Science. 2023; 7(3):72. https://doi.org/10.3390/urbansci7030072

Chicago/Turabian Style

Venkata Pavan Kumar, Yellapragada, Sivakavi Naga Venkata Bramareswara Rao, and Ramani Kannan. 2023. "Islanding Detection in Grid-Connected Urban Community Multi-Microgrid Clusters Using Decision-Tree-Based Fuzzy Logic Controller for Improved Transient Response" Urban Science 7, no. 3: 72. https://doi.org/10.3390/urbansci7030072

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