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Article

Simulation Methodology Based on Wind and Thermal Performance for Early Building Optimization Design in Taiwan

Department of Architecture, National Cheng Kung University, 1 University Road, Tainan City 701, Taiwan
*
Author to whom correspondence should be addressed.
Sustainability 2021, 13(18), 10033; https://doi.org/10.3390/su131810033
Submission received: 16 August 2021 / Revised: 2 September 2021 / Accepted: 3 September 2021 / Published: 7 September 2021

Abstract

:
In a subtropical climate like that of Taiwan, the high temperature and humid environmental conditions often result in discomfort and health effects for building occupants. With regard to building geometry, the wind environment and thermal comfort assessment, which can enhance energy efficiency and the comfort and health of occupants, both ought to be considered as soon as possible in the design process. In view of the limited comprehensive design evaluation methods and design workflows regarding wind and thermal performance currently available, this research aims to develop an early decision support workflow that includes suggested performance evaluation methods and design optimization processes. The results of our case study show that the building had clear performance results using the proposed evaluation methods, making it easier for architects to understand and compare alternatives. Appropriate analysis and visualization of the results also effectively assisted architects in determining design solutions and making relevant decisions. The methods and results in this article can facilitate performance-based buildings for healthy and energy-efficient built environments.

1. Introduction

As energy issues become increasingly important to building design and people’s demand for a comfortable quality of life increases, the discussions surrounding building environmental performance assessment have increased considerably in recent years. For passive architectural design based on different climates, these performance assessments are especially important in the early stage of building design, since many critical design decisions (e.g., orientation, layout, massing, fenestration, and shading [1]) are usually made at this stage and have the most significant impact on overall building performance (e.g., building life-cycle cost) [2,3].
Most of the building consumption is related to the use of active systems to maintain the occupants’ comfort. The passive design can maximally utilize the local conditions (e.g., sunlight/wind/surroundings) to improve occupants’ comfort and decrease energy consumption. For example, in the subtropical climate of Taiwan, where summers are hot and humid, thermal comfort both indoor and outdoor has always been a crucial issue. The environmental conditions of high temperatures and humidity make people feel uncomfortable and can even affect physical and mental health [4,5], and effective ventilation has often been seen as a desirable solution [6,7,8]. Natural ventilation supplies and removes air to and from indoor and outdoor spaces through natural wind forces and buoyancy, which has shown great potential for reducing the energy required for cooling and ventilating a building and improving thermal comfort [6,7,9,10]. Ventilation as an essential determinant of indoor air quality and thermal comfort has been highlighted in previous studies [11,12], and is considered to be one of the main passive design strategies in tropical climates to avoid air-conditioning [13,14,15].
To realize the potential benefits of natural ventilation, the characteristics of local climate must be thoroughly considered, and the wind field and thermal comfort performance of each design alternative must be evaluated in the design process. However, the previous studies mostly focus on comfort parameters at a certain time and position in space, and there are few overall evaluation methods that span time and space that can be used in the design process [13,16].
The assessment of wind environment performance includes the building’s natural ventilation and the pedestrian level wind field around the building. In terms of a building’s natural ventilation, evaluation indicators consist of minimum ventilation rate [17], ventilation efficiency [18], and age of air [19], among others. The information required for these evaluation indicators is usually unknown in the early design stage, making its adoption difficult for early design assessment [20]. The pedestrian level wind field also has relevant indicators [21,22,23,24], but they are mainly used for picking strong wind situations and are unsuitable for checking normal wind conditions [25]. Evaluating pedestrian wind field requires two pieces of data: defined wind speed level and the allowable occurrence frequency of each level. Therefore, it requires long-term record data to conduct evaluation, rendering this factor difficult to implement in early design.
Many thermal comfort indices are available [16,26,27], such as physiological equivalent temperature (PET) [28], universal thermal climate index (UTCI) [29], and standard effective temperature (SET) [30]. These indices usually require such meteorological data as temperature, humidity, and wind speed for calculation. For example, PET was developed from the Munich Energy-balance Model for Individuals (MEMI) and is defined as equivalent to the air temperature required to reproduce the core and skin temperatures in a standardized indoor setting and for a standardized person, respectively [28,31]. PET is controlled by meteorological parameters (air temperature, air humidity, wind velocity, mean radiant temperature) and thermo-physiological parameters (heat resistance of clothing, activity of humans). UTCI is an equivalent temperature (°C) that is a measure of the human physiological response to the thermal environment. UTCI is defined as the capability of an organism to retain its body temperature within a particular limit even if the surrounding temperature is completely different. The four parameters required to calculate UTCI are air temperature, relative humidity, wind speed at 10 m above ground level, and mean radiant temperature (MRT) [32]. These indices are calculated separately according to the data of each position.
Overall, while these wind and thermal comfort-related indicators can be obtained at a specific time period and at a specific location, they cannot give an overall evaluation that represents the performance of design alternatives. However, the fact is that the effects of buildings on the surrounding, internal, and external environments vary with seasonal conditions and locations. In particular, the life cycle of a building after construction may exceed 50 years [33], so the impacts of a building on the future environment can be quite far-reaching. Therefore, from the architectural design perspective, the influences on the future environment in time and space should be considered more comprehensively. With the limitations of the existing evaluation methods, how to evaluate the overall architectural design performance of dynamic time and space to assist architects’ decision-making in the early design stage is an important issue.
With the development of various emerging tools (e.g., parametric design, evolutionary algorithms), a smooth and effective process of integrated design and environmental evaluation is taking shape. One promising method is to use automated mathematical building performance optimization (BPO) to introduce various assessments into the early design process. Performance optimization is a process that aims at selection of the optimal solutions through mathematical optimization algorithms (e.g., Genetic Algorithm, Simulated Annealing, Particle Swarm Optimization) from a set of available alternatives for a given design or control problem, according to custom performance indicators [34]. BPO integrated optimization algorithm with environmental evaluation methods (e.g., building performance simulation) to explore various design options (e.g., different combinations of orientation, building dimension, WWR and shading device) and obtain the optimal or near optimal solutions (e.g., lowest life-cycle cost, lowest cooling or heating loads, and highest thermal comfort). For better building performance, designers modified their design variables and then ran many simulations to the effect of the design changes on the results. The method would be inefficient procedure in time and labor especially when building design is more complex and more design parameters need to be studied. The BPO technologies can overcome the difficulties and enhance the application of simulation tools [35]. Compared with the traditional “full-field exploration method” that performs a one-by-one assessment, BPO shortens the evaluation time using optimization algorithms and can thus realize the best design alternative more quickly and effectively [36,37].
Recently, the design method using BPO has been rapidly developed. A large number of studies have shown that BPO can significantly improve building performance [38]. For example, Kämpf and Robinson used a hybrid CMA-ES/HDE algorithm and RADIANCE for evaluation to search for the best architectural and urban geometrical solutions using solar radiation [39]. Delgarm used artificial bee colony algorithm and optimized building orientation, window size, materials, and HVAC setting temperature, resulting in an energy consumption reduction of 2.9–11.3% and improving thermal comfort by 49.1–56.8% [40]. Zhang used genetic algorithm and optimized building orientation, depth, window-to-wall ratio (WWR), and shading type, thereby reducing building energy consumption by 24–28% and thermal discomfort by 9–23% [41]. Carlucci used NSGA-II algorithm to optimize window materials and light and dark control strategies to obtain the best combination according to thermal discomfort and lighting discomfort and optimization efficiency [42]. Talaei used SPEA-2 to optimize the building-integrated microalgae bioreactor design on the facade according to maximum useful daylight intensity (UDI) and minimum energy use intensity (EUI) [43].
As mentioned, early design decisions in the building design process have the greatest impact on the life cycle costs of a building’s environmental performance. Despite the great potential for high-performance building design, BPO largely remains a research tool and is challenging to use in early design practice [38,44]. The main obstacles include a lack of appropriate tools, a lack of such resources such as time and expertise, and requirements for clearly defined issues (e.g., constraints, objective function, and finite list of design options) [35].
The aim of this manuscript was to develop an early-stage BPO workflow based on integrating design thinking and environmental assessment in the architectural design process. Due to its importance to environmental impact and energy consumption, we focused environmental assessment in this study on the terms of wind field and thermal comfort. Because of the lack of relevant and applicable indicators, the evaluation objectives and methods for decision-making of early design are proposed in this study. Finally, we conducted a case study to confirm the applicability of the process and method in practical design work.

2. Methodology

2.1. BPO Workflow

Architectural design is a very complex task that involves various design decisions with different aspects and levels of detail. Therefore, the entire design process is often divided into separate stages, each with different design issues, and decision-making is also made in such stages to gradually develop the architectural design. Design issues arising in the early process may be layout of plan, geometry of building mass, and opening location, all of which will affect building performance in different environmental terms.
The early-design BPO workflow in this manuscript demonstrates a two-step decision-making process. The design variables, the simulation conducted, and the evaluation indicators used in each step are shown in Figure 1. Focusing on wind field and thermal factors, solar-related assessments were conducted in the first step due to their speed and efficiency, while further considerations of ventilation and comfort were performed in the second step. Through multi-objective optimization (MOO), we analyzed each step and then obtained optimized design alternatives to assist with decision-making.

2.2. Platform and Tools

The proposed BPO workflow was established through Grasshopper, a visual programming language and environment that runs within the Rhinoceros 3D computer-aided design (CAD) application [45]. The detailed content of optimization workflow is shown in Figure 2, including parametric modeling, simulation setting, simulation operation, evaluation definition, multi-objective optimization, and result visualization.
Building information and variables were modeled and controlled parametrically with the graphical algorithm editor Grasshopper. In step 1 of the solar-related assessment, we adopted Ladybug [46] for sunlight hour simulation and DIVA [47] for solar radiation simulation. In step 2, Flowdesigner [48] was adopted for wind field simulation, and Ladybug was again used for thermal comfort calculations to evaluate ventilation and thermal comfort. We then converted these simulation results into evaluation indicators and input them into the optimization tool Wallacei [49] for multi-objective optimization. Wallacei optimizes the design alternative using the Nondominated Sorting Genetic Algorithm II (NSGA-II) algorithm [50], which can weigh different goals in a limited time and find a solution with excellent performance [51,52].

2.3. Evaluation Indicators

In this section, we explain in detail the evaluation indicators used in the two steps. These indicators are all proposed to evaluate the overall performance of the building design.

2.3.1. Step 1

Solar radiation is the most significant factor affecting the environment in the microclimate [53]. The relationship between the sun and the massing of buildings has an interactive effect on both indoor and outdoor thermal energy performance. The evaluations in step 1 include Outdoor Sunlight Density and Annual Building Radiation Density.
  • Outdoor Sunlight Density ( S U N _ D )
The evaluation indicator of Outdoor Sunlight Density ( h r / m 2 ) is defined in the following equation:
S U N _ D   h r / m 2 = i = 1 N S U N h r i N
where N is the number of grids for simulation, and S U N h r i is the sunlight hours of each grid ( h r ) obtained by simulation.
The sunlight density can vary according to the seasonal conditions or time periods being analyzed as different seasons have different expectations regarding sunlight density. For example, in the subtropical climate, S U N _ D can be divided into S U N _ D h o t for the hot season and S U N _ D c o o l for the cool season. In the hot season, S U N _ D h o t should be as small as possible, while in the cool season, a larger S U N _ D c o o l is better.
  • Annual Building Radiation Density ( B R A D _ D )
The evaluation indicator of Annual Building Radiation Density ( k W h / m 2 · y r ) is defined in the equation below:
B R A D _ D   k W h / m 2 · y r = i = 1 N R A D i A f l o o r
where R A D i is the annual cumulative radiation of each grid on the building envelope ( k W h / y r ) obtained by simulation, and A f l o o r is the total area of the building floor ( m 2 ), which can be obtained by dividing the building volume by a fixed floor height in the early design phase.
In a subtropical climate, this index is considered to be as small as possible to avoid increasing indoor cooling load by excessive solar radiation.

2.3.2. Step 2

To ensure effective heat removal and air quality, the flow path required for natural ventilation should be considered and provided in the early stage of building design. In step 2, the ventilation and comfort of the design alternatives are further considered. In this stage, the workflow introduces airflow simulation, and the evaluations include Building Natural Ventilation Potential, Pedestrian Wind Comfort Ratio, and Outdoor PET Comfort Ratio.
  • Building Natural Ventilation Potential ( B N V P )
Natural ventilation is one of the most important energy-saving technologies in passive building design. In climate areas with stable wind fields, using wind pressure to promote building ventilation is a suitable option. The general calculation method of ventilation rate ( Q ) is shown in Equation (3). As in Equation (3), when the pressure difference ( Δ P ) is greater, the ventilation rate ( Q ) is higher.
Q = C d A o p e n i n g 2 Δ P ρ
where Q is ventilation rate (unit), C d is flow coefficient (unit), A o p e n i n g is the area of the opening ( m 2 ), Δ P is the pressure difference between indoor and outdoor (Pa), and ρ is air density ( kg / m 3 ).
Because of the lack of interior information in early design, this study proposed calculating wind pressure differences to evaluate the building natural ventilation potential by setting up corresponding wind pressure sensor points on the windward and leeward sides of the building. The evaluation indicator of Building Natural Ventilation Potential (Pa) based on average wind pressure is defined in Equations (4) and (5). Since many sensor points are distributed in different locations, the overall ventilation performance is represented by their average value.
Δ P j = P i j P o j
B N V P = j = 1 K Δ P j K
where Δ P j is the difference between windward and leeward wind pressure on the building (Pa), K is the number of pressure difference calculations, P i j is wind pressure on the windward side (Pa), and P o j is wind pressure on the leeward side (Pa).
  • Pedestrian Wind Comfort Ratio ( P W C R )
To create a favorable outdoor pedestrian activity space, pedestrian wind comfort should be carefully examined because it is related to the effect of wind on the comfort and safety of pedestrians and cyclists. An outdoor wind speed that is too low will cause stagnant wind and accumulate pollutants in the air. A wind speed that reaches 0.5 m/s is considered to be able to effectively remove pollutants [54]. Furthermore, when the wind speed exceeds 3.3 m/s, which is equivalent to reaching Beaufort scale 3, it is not recommended for pedestrians to be outdoors for extended periods of time. Therefore, we set a wind speed in the range of 0.5–3.3 m/s is set as the pedestrian wind comfort zone. The evaluation indicator of Pedestrian Wind Comfort Ratio (%) is defined by Equation (6).
P W C R = j = 1 N V C j N 0 , 1 , W j = 1 , 0.5 V j 3.3 0 , V j < 0.5   o r   V j > 3.3
where V j is wind velocity of each grid in the site obtained from CFD simulation under prevailing wind condition (m/s), and V C j is 1 or 0 according to wind velocity value V j .
PWCR represents the percentage of the area in the site where the wind velocity meets the pedestrian wind comfort zone standard. A higher P W C R value indicates a larger outdoor area of wind comfort and the overall better wind performance of the design.
  • Outdoor PET Comfort Ratio ( P E T C R )
Physiologically equivalent temperature (PET) is one of the most commonly used indicators for measuring thermal stress in outdoor spaces [28]. To examine the effect of building design on the thermal comfort of outdoor spaces, we adopted PET to develop the evaluation indicators for this study. According to a study of occupants’ thermal comfort in the subtropical climate of Taiwan [55], a PET in the range of 26–30 °C is set as the outdoor thermal comfort zone. The evaluation indicator of Outdoor PET Comfort Ratio (%) is defined in Equation (7).
PET is calculated using parameters under specific conditions (e.g., air temperature, air humidity, wind velocity, mean radiant temperature, and clothing and activity of humans at a specific time and position). To evaluate the performance of dynamic time and space, an evaluation time must be given (e.g., 10 a.m. to 3 p.m. on the 21st of every month, a total of 60 h). Based on the given times and wind velocities at different grid points, the PET values at different times and locations can be calculated, and P E T C R represents the comfort ratio at these times and positions.
P E T C R = T C i j N × t 0 , 1 , T C i j = 1 , 26 T i j 30 0 , T i j < 26   o r   T i j > 30
where T i j is the PET of each grid point and each given time, calculated by Ladybug (°C), T C i j is 1 or 0 according to PET value T i j , and t is the number of hours of evaluation time.

3. Case Study and Results

3.1. Case Description

We applied the developed workflow to a public housing building design in Taichung, Taiwan, which has a humid subtropical climate. The description of the site is shown in Figure 3, and its area is 5716 m2. The housing is required to contain 270 households and has three types of households, as shown in Figure 4. As Figure 5a shows, this case took six buildings (building A–building F) to form three outdoor spaces for the basic concept. We then changed the geometries based on the concept building and the design methods, including plan distortion, height staggering, and building hollowing, as shown in Figure 5b.
The basic climate analyses of the site were conducted using 1998–2012 TMY3 hourly weather data. According to the hourly temperature distribution, May–October was considered the hot season (most hourly temperatures exceed 30 °C) and December–March the cool season (most hourly temperatures are below 18 °C). The two seasons have similar prevailing wind directions and wind velocities, as shown in Table 1.

3.2. Step 1: Primary Building Massing

In step 1, the process focused on the optimization of primary building massing for better solar-related performance. We varied building massing alternatives by distorting the plan’s geometry and staggering the height and assessed and optimized them using the indicators of Annual Building Radiation Density (BRAD_D), Outdoor Hot Season Sunlight Density (SUN_Dhot), and Outdoor Cool Season Sunlight Density (SUN_Dcool).

3.2.1. Design Variations

The examples of distorted plan geometry are shown in Figure 6, which had a total of 90 variations. The examples of staggered building height are shown in Figure 7, which had a total of 96 variations. A total of 8640 building massing design options were included in step 1.

3.2.2. Simulation and MOO Setting

Sunlight hour simulation and solar radiation simulation must be performed before calculating the evaluation indicators Outdoor Sunlight Density and Annual Building Radiation Density. To calculate SUN_Dhot and SUN_Dcool, we used the Ladybug tool according to the different months of the hot season and cool season to simulate cumulative sunlight hours.
To calculate BRAD_D, we carried out annual cumulative radiation simulation of building envelops with the DIVA tool. In the DIVA simulation, the ground reflectivity was set to 0.2, and the building reflectivity was set to 0.8. For quick evaluation in early design, the simulation quality was set to low, which represents a simple reflection simulation.
We adopted the Wallacei tool to optimize the evaluation indicators SUN_Dhot, SUN_Dcool, and BRAD_D through evolutionary algorithms. The crossover probability was set to 0.9 and mutation probability to 1/29, where 29 was the number of genes. According to the NSGA-II algorithm adopted by Wallacei, Pareto-optimal solutions can be obtained in the MOO process and provided to architects for design decisions [35]. Since the evaluation indicator SUN_Dcool should be as large as possible, 1 was divided by SUN_Dcool to optimize the design solutions that minimized SUN_Dhot, 1/SUN_Dcool, and BRAD_D.

3.2.3. Results of Step 1

We set the generation size to 40, and there were 20 generations, meaning a total of 800 optimization iterations were proceeded to optimize. The optimization process took about 72 h, which is considered acceptable in the early design. Table 2 shows the low and high value results and the performance advance of three solar-related evaluation indicators. Figure 8 shows the scatter plots of all design alternatives and Pareto solutions.
The step 1 optimization process obtained 40 Pareto solutions, and the performance of each Pareto solution in the three evaluation indicators is shown in Figure 9. The design solutions were then sorted according to the performance results of BRAD_D, SUN_Dhot, and SUN_Dcool, respectively. The rankings are depicted in color variation, where green represents most in line with the objective performance, and orange represents farthest from the objective. In the ranking of the indicators, the top 5 of the 40 design solutions are marked in bold.
The results of Figure 9 show that obtaining a design solution that fully meets expectations is not easy, as the results of the three indicators are conflicting. When one of the indicators performs well, at least one of the other indicators needs improvement. For example, although the top five designs in the ranking of annual building radiation density are in line with expectations with regard to cool season sunlight density, they had very poor performance in the sunlight density of the hot season. In particular, the values of sunlight density in the hot and cool seasons usually increase and decrease simultaneously; thus, a trade-off between these two indicators is necessary for decision making.
To assist with the decision-making, we then used k-means clustering [56] to divide the Pareto solutions into three clusters, as shown in Figure 10. Cluster A includes the solutions with poor performance of the hot season and better performance of the cool season. Cluster B includes the solutions with better performance of the hot season and poor performance of the cool season. Cluster C includes the solutions that have moderate performance in both the hot and cool seasons. The results of Cluster A, Cluster B, and Cluster C in the different evaluation indicators are shown in Figure 11. The results show no significant difference between the three clusters in terms of radiation density. Through these results and design layouts (e.g., the plan layouts in Figure 12), the designers can determine solutions based on environmental performance and preferences.
The results show that Cluster A contains the best performance of two indicators (BRAD_D and SUN_Dcool). Therefore, this manuscript has selected a solution in Cluster A as demonstration to hollow the building and evaluate wind and comfort in step 2. It is worth noting that the solution decisions in this part would predictably vary according to the project objectives or preferences of architects or owners. The selected solution is A-16 of which building description and performance are shown in Figure 13. It can be found that A-16 is almost the best solution in BRAD_D and SUN_Dcool, but quite poor performance in SUN_Dhot.

3.3. Step 2: Massing Adjustment and Opening

In step 2, the building massing of A-16 was hollowed by several openings, and we performed the optimal process to facilitate design solutions that consider ventilation and comfort performance. The evaluation indicators optimized in this step are Building Natural Ventilation Potential (BNVP), Pedestrian Wind Comfort Ratio (PWCR), and Outdoor PET Comfort Ratio (PETCR).

3.3.1. Subsubsection

The building alternatives are varied by hollowing the building massing of A-16. The examples of the hollowed building are shown in Figure 14, with a total of 640 design options in this step.

3.3.2. Simulation and MOO Setting

We first conducted CFD simulation through Flowdesigner in Grasshopper to evaluate Building Natural Ventilation Potential (BNVP), Pedestrian Wind Comfort Ratio (PWCR), and Outdoor PET Comfort Ratio (PETCR). The standard k-ε turbulent model was selected in the simulation. The CFD results were then used to calculated BNVP and PWCR. The simulation results were further input into Ladybug to analyze the PET values.
As calculation of PET is based on specific times and locations, to evaluate the PETCR, the time and area to be analyzed must be defined first. In this manuscript, the analysis area was divided by each 2 × 2 m grid, for a total of 1002 analysis grid points. The analyzed time was a total of 48 h, as shown in Table 3. The information and sources that PET required are shown in Table 4.
Since these three evaluation indicators representing degree of potential and comfort should be as large as possible, for the objective functions for optimization, we divided 1 by BNVP, PWCR, and PETCR. We then used The Wallacei tool to find the design solutions with minimal 1/BNVP, 1/PWCR, and 1/PETCR.

3.3.3. Results of Step 2

We set the generation size to 30, and there are three generations, meaning a total of 90 optimization iterations were proceeded to optimize. The optimization process took about 23.5 h. Table 5 shows the low and high value results and the performance advance of ventilation and comfort evaluation indicators.
The step 2 optimization process obtained 30 Pareto solutions, and the performance of each pareto solution in the three evaluation indicators is shown in Figure 15. The design solutions are sorted according to the performance results of BNVP, PWCR, and PETCR, respectively. In the ranking of the indicators, the top three of the 30 design solutions are marked in bold. The results show that the design solutions with better BNVP performance have poorer PWCR performance and vice versa. The design solutions with better PETCR performance also perform better in BNVP, while performing moderately in PWCR.
As before, we also conducted k-means clustering in step 2. As shown in Figure 16, Cluster a includes the solutions with better performance in BNVP and PETCR but poorer in PWCR. Cluster b includes the solutions with better performance in PWCR but poorer in BNVP and PETCR. Cluster c includes the solutions with better performance in BNVP but poorer in PWCR and PETCR. The results of Cluster a, Cluster b, and Cluster c in different evaluation indicators are shown in Figure 17.
According to the results, when the architect prioritizes the building ventilation potential, the solutions in Cluster c would be chosen; the solutions in Cluster b would be chosen when the architect is most concerned about the building’s outdoor space comfort; and if the architect would like solutions with more comprehensive performance, the solutions in Cluster a may be their focus for development solutions for the next design stage.

4. Discussion and Conclusions

With the development of various building performance simulation tools, applying these tools to ensure advanced building design performance in the design process has become a popular trend. For the huge potential with regard to enhancing energy efficiency and the comfort and health of occupants, wind environment and thermal comfort assessments have great relevance with building geometry and ought to be evaluated as early as possible. Assessing wind and thermal topics in early design has two main barriers: a lack of evaluation methods for overall building performance and a clear evaluation process. In this manuscript, evaluation methods were suggested, and the workflow based on BPO was proposed, with the BPO workflow demonstrated by a case study to display the process in detail.
The results showed that the proposed evaluation methods produced evident performance results of buildings that allow architects to easily understand and compare alternatives. Furthermore, these evaluation indicators include conflictive items, providing the workflow with well-defined optimization objectives to facilitate trade-off Pareto solutions. Since the characteristics of architectural design largely depend on the designer’s preferences and decisions, the focus of this manuscript was more on assisting with decision-making rather than the design results. For example, in the BPO workflow demonstration in Section 3, the optimized results are appropriately analyzed and visualized, which is identified to effectively help architects with determining design solutions and making decisions.
Although climatic conditions and case-limited design variations in this manuscript resulted in slight differences of some evaluation indicators, a greater extent of performance differences could be expected when the workflow is used in cases with greater design variations (e.g., larger massing transforms). The evaluation indicators used in this study (e.g., comfort zone of the wind velocity and PET value) are largely based on subtropical climate conditions. The comfort zone under different conditions (e.g., climate, population, or preference) would likely differ; therefore, these indicators should be adjusted according to design cases.
In general, the workflow proposed makes evaluating the wind and thermal environment and obtaining optimized design solutions more feasible in the limited time of early design. Moreover, the proposed overall performance indicators and visualization techniques can assist architects with their understanding and decision-making based on the simulation results. These efforts can thus facilitate the generation of performance-based buildings and create a healthier and more energy efficient environment.

Author Contributions

Conceptualization, C.-H.L., M.-Y.C. and Y.-S.T.; methodology, C.-H.L. and M.-Y.C.; software, M.-Y.C.; validation, C.-H.L. and M.-Y.C.; formal analysis, C.-H.L.; data curation, M.-Y.C.; writing—original draft preparation, C.-H.L.; writing—review and editing, Y.-S.T.; visualization, C.-H.L. and M.-Y.C.; supervision, Y.-S.T. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by Ministry of Science and Technology (110-2221-E-006-070).

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. The BPO workflow for early design decision.
Figure 1. The BPO workflow for early design decision.
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Figure 2. Detailed content of optimization workflow.
Figure 2. Detailed content of optimization workflow.
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Figure 3. The site description.
Figure 3. The site description.
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Figure 4. Household types and dimensions.
Figure 4. Household types and dimensions.
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Figure 5. Concept building and design methods. (a) The composition concept of design building by 6 sub-buildings; (b) The three design methods to change building geometry.
Figure 5. Concept building and design methods. (a) The composition concept of design building by 6 sub-buildings; (b) The three design methods to change building geometry.
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Figure 6. Examples of plan geometric variations.
Figure 6. Examples of plan geometric variations.
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Figure 7. Examples of building height variations.
Figure 7. Examples of building height variations.
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Figure 8. The scatter plots of all 800 alternatives and Pareto solutions.
Figure 8. The scatter plots of all 800 alternatives and Pareto solutions.
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Figure 9. The evaluation indicator performance of each Pareto solution (step 1). (a) The ranking based on BRAD_D; (b) The ranking based on SUN_Dhot; (c) The ranking based on SUN_Dcool.
Figure 9. The evaluation indicator performance of each Pareto solution (step 1). (a) The ranking based on BRAD_D; (b) The ranking based on SUN_Dhot; (c) The ranking based on SUN_Dcool.
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Figure 10. Clusters of solutions by k-means clustering (step 1). (a) The cluster distribution based on plane of SUN_Dhot and 1/SUN_Dcool; (b) The cluster distribution based on plane of BRAD_D and 1/SUN_Dcool.
Figure 10. Clusters of solutions by k-means clustering (step 1). (a) The cluster distribution based on plane of SUN_Dhot and 1/SUN_Dcool; (b) The cluster distribution based on plane of BRAD_D and 1/SUN_Dcool.
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Figure 11. Performance of clusters regarding different indicators (step 1). (a) Performance on BRAD_D; (b) Performance on SUN_Dhot; (c) Performance on SUN_Dcool.
Figure 11. Performance of clusters regarding different indicators (step 1). (a) Performance on BRAD_D; (b) Performance on SUN_Dhot; (c) Performance on SUN_Dcool.
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Figure 12. The plan layouts of clusters A, B, and C.
Figure 12. The plan layouts of clusters A, B, and C.
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Figure 13. Building description and performance of A-16.
Figure 13. Building description and performance of A-16.
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Figure 14. Examples of building hollowed variations.
Figure 14. Examples of building hollowed variations.
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Figure 15. The evaluation indicator performance of each Pareto solution (step 2). (a) The ranking based on BNVP; (b) the ranking based on PWCR; (c) the ranking based on PETCR.
Figure 15. The evaluation indicator performance of each Pareto solution (step 2). (a) The ranking based on BNVP; (b) the ranking based on PWCR; (c) the ranking based on PETCR.
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Figure 16. Clusters of solutions by k-means clustering (step 2). (a) The cluster distribution based on plane of 1/BNVP and 1/PWCR; (b) The cluster distribution based on plane of 1/PETCR and 1/PWCR.
Figure 16. Clusters of solutions by k-means clustering (step 2). (a) The cluster distribution based on plane of 1/BNVP and 1/PWCR; (b) The cluster distribution based on plane of 1/PETCR and 1/PWCR.
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Figure 17. Performance of clusters on different indicators (step 2). (a) Performance on BNVP; (b) Performance on PWCR; (c) Performance on PETCR.
Figure 17. Performance of clusters on different indicators (step 2). (a) Performance on BNVP; (b) Performance on PWCR; (c) Performance on PETCR.
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Table 1. Seasonal division and climate information.
Table 1. Seasonal division and climate information.
MonthsMost h
Temperature
Prevailing Wind
DirectionVelocity
Hot Season5–10>30 °CNorth2.13 m/s
Cool Season12–3<18 °CNorth2.15 m/s
Table 2. Results of value and performance advance (all 800 variations).
Table 2. Results of value and performance advance (all 800 variations).
IndicatorsLow ValueHigh ValueMax Performance Advance
BRAD_D (kWh/m2∙yr)417.52467.5750.0512.0%
SUN_Dhot (h/m2)841.701042.54200.8423.9%
SUN_Dcool (h/m2)283.77354.1170.3424.8%
Table 3. Analyzed time for PET calculation.
Table 3. Analyzed time for PET calculation.
MonthsDayTime
Hot Season5–10217–10, 15–18
Cool Season12–32113–16
Total48 h
Table 4. Information and sources for PET calculation in Ladybug.
Table 4. Information and sources for PET calculation in Ladybug.
ParametersData SourceChange of Value
TemperatureWeather file (.epw)Values based on time
HumidityWeather file (.epw)Values based on time
Wind SpeedCFD simulationValues based on time/grid
Sky CoverWeather file (.epw)Values based on time
Solar RadiationLadybug ToolsValues based on time/grid
Table 5. Results of value and performance advance (all 90 variations).
Table 5. Results of value and performance advance (all 90 variations).
IndicatorsLow ValueHigh ValueMax Performance Advance
BNVP (Pa)2.372.680.3113.0%
PWCR (%)39.576.737.294.1%
PETCR (%)55.558.63.15.6%
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Lin, C.-H.; Chen, M.-Y.; Tsay, Y.-S. Simulation Methodology Based on Wind and Thermal Performance for Early Building Optimization Design in Taiwan. Sustainability 2021, 13, 10033. https://doi.org/10.3390/su131810033

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Lin C-H, Chen M-Y, Tsay Y-S. Simulation Methodology Based on Wind and Thermal Performance for Early Building Optimization Design in Taiwan. Sustainability. 2021; 13(18):10033. https://doi.org/10.3390/su131810033

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Lin, Chuan-Hsuan, Min-Yang Chen, and Yaw-Shyan Tsay. 2021. "Simulation Methodology Based on Wind and Thermal Performance for Early Building Optimization Design in Taiwan" Sustainability 13, no. 18: 10033. https://doi.org/10.3390/su131810033

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