Optimising Behavioural Control Based on Actual HVAC Use in Naturally Ventilated Buildings
Abstract
1. Introduction
2. Methodology
2.1. Construction of a Multi-Objective Database
2.1.1. Methods of Quantifying and Characterising Actual HVAC Behaviours in Building Simulation
2.1.2. Proposal of Decision Variables Based on Importance Analysis
2.1.3. Construction of a “Decision Variable-Target Variable” Mapping Database Based on Batch Simulation
2.2. Construction of a Multi-Objective Rapid Prediction Model Based on ANN
2.3. Multi-Objective Optimisation Strategy Decision-Making Model Based on NSGA-II
2.3.1. Proposal of the Fitness Function
- (1)
- Construction of the Fitness Function
- (2)
- Range of Values for Decision Variables
- (3)
- Acquisition of Reference Values for Optimisation Objectives
- The reference standards of occupants’ behaviour are based on the typical fixed schedule of 08:00–17:00 and the stochastic behavioural schedules generated with the method described in Section 2.1.1. The method was established in the preliminary research [37];
- Based on the two types of building envelope structure and HVAC behavioural patterns, the AC load per unit area and the comprehensive uncomfortable hours of the case building are worked out by EnergyPlus simulation and calculation. Equation (5) transforms the total uncomfortable hours into a proportion of those hours to enable comparative analysis. As shown in Table 6, the optimisation target for comparative analysis is set using four typical reference points: B1, B2, B3, and B4.whereis the proportion of uncomfortable hours;n is the number of air-conditioned rooms in the building;is the area of the ith room;is the simulated uncomfortable hours in the ith room;is the number of hours occupied by occupants in the ith room.
2.3.2. Algorithm Implementation of the Decision-Making Model Based on NSGA-II
- (1)
- Evaluation of target variables;
- (2)
- Control of the range of values of decision variables;
- (3)
- Control of the range of values of target variables;
- (4)
- Configuration of NSGA-II parameters.
3. Results
3.1. Construction and Calibration of the Multi-Objective Rapid Prediction Model
3.2. Construction of the Multi-Objective Optimisation Decision-Making Model
4. Discussion
4.1. Generation of Behavioural Optimisation Strategies Based on the Decision-Making Model
4.2. Generation of Integrated Optimisation Strategies Based on the Decision-Making Model
5. Conclusions
- (1)
- Take the case building as an example. A rapid prediction model for building air conditioning (AC) energy consumption and indoor thermal comfort was constructed based on a BP neural network. Using important influencing factors of the target variables as decision variables, the model efficiently and accurately predicts the AC load per unit area and the comprehensive uncomfortable hours for the case building under the various operating scenarios, providing data support for multi-objective optimisation decision-making.
- (2)
- A multi-objective optimisation decision-making model regarding AC energy consumption and indoor thermal comfort was constructed. Implementing the model generates passive optimisation strategies for the design phase, behavioural optimisation strategies for the operational phase, and integrated optimisation strategies for both phases of the case building. Furthermore, it can output corresponding strategy combinations based on predefined optimisation objectives, providing a scientific basis for building energy retrofitting and operational management.
- (3)
- Research was conducted on the application of multi-objective optimisation decision-making models, examining behavioural and integrated optimisation strategies under different operating conditions:
- The P04 operating condition, as outlined in the current Design standard for energy efficiency of public buildings, serves as a case study. Substantial AC energy savings and improvements in thermal comfort can be realised by adjusting the stage-based cooling/heating setpoint temperature and the coupling pattern between NV and AC operations. This has led to meeting the optimisation objectives for B1, B2, B3, and B4. Additionally, it has been demonstrated that reducing AC energy consumption to 40.7 kWh/m2 is possible while reducing the proportion of uncomfortable hours to 53%.
- Utilising B1 as the reference point, the multi-objective optimisation decision-making model regulates AC energy consumption limits. It combines passive and behavioural strategies to create integrated optimisation strategies for varying indoor thermal comfort levels. Consequently, the proportion of uncomfortable hours has been reduced to 6.23%.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Characteristic Stages of AC Usage | Duration Date | |
|---|---|---|
| Cooling season | Mid-summer | 21 June~10 September |
| Early and late summer | 11 May~20 June 11 September~30 September | |
| Late spring and early autumn | 21 April~10 May 1 October~20 October | |
| Transitional period | 11 April~20 April 21 October~31 October | |
| Heating season | Early spring and late autumn | 1 November~20 November 21 March~10 April |
| Early and late winter | 11 February~20 March 21 November~10 December | |
| Mid-winter | 11 December~10 February | |
| Coupling Pattern | Feature Description |
|---|---|
| M0 | A default pattern, reflecting the actual operational characteristics of AC and NV operation. |
| M1 | Fixed ventilation in the morning: From 8:00 to 9:00, regardless of whether the air conditioner is on or off, the exterior windows are opened for a fixed period |
| M2 | Fixed ventilation overnight: From 17:00 to 8:00 the following day, regardless of whether the air conditioner is on or off, the exterior windows are open for a fixed period. |
| M3 | Opposition all day: The opening status of exterior windows and air conditioning is always in opposition between 0:00 and 24:00. |
| M4 | Opposition overnight: From 17:00 to 8:00 the following day, the opening status of exterior windows and air conditioning is always in opposition; from 8:00 to 17:00, regardless of whether the air conditioner is on or off, the exterior windows remain closed. |
| Code | Decision Variable | Unit | Relative Importance of AC Energy Consumption | Relative Importance of Thermal Comfort |
|---|---|---|---|---|
| 1 | Cooling setpoint temperature | °C | 100.0% | 100.0% |
| 2 | Air permeability performance | ach | 67.0% | 4.7% |
| 3 | Heating setpoint temperature | °C | 46.6% | 33.7% |
| 4 | People density in collective offices | m2/person | 17.3% | 0.3% |
| 5 | Coupling pattern between NV and AC operation | - | 7.8% | 0.9% |
| 6 | SHGC of the external window | - | 4.5% | 2.8% |
| 7 | Power density of equipment | W/person | 2.9% | 1.0% |
| 8 | Heat transfer coefficient of the external wall | W/(m2·K) | 2.5% | 1.4% |
| 9 | Heat transfer coefficient of the external window | W/(m2·K) | 1.8% | 0.8% |
| 10 | Heat transfer coefficient of the roof | W/(m2·K) | 1.5% | 1.3% |
| 11 | Window-to-wall ratio of the south elevation | - | 1.3% | 0.7% |
| 12 | Window-to-wall ratio of the north elevation | - | 1.2% | 0.5% |
| 13 | Heat transfer coefficient of the internal wall | W/(m2·K) | 0.9% | 0.9% |
| 14 | Building orientation | ° | 0.8% | 0.7% |
| Characteristic Stages of AC Usage | Code | Input | AC Load per Unit Area | Comprehensive Uncomfortable Hours | ||
|---|---|---|---|---|---|---|
| Output | Function Mapping Relationship | Output | Function Mapping Relationship | |||
| Late spring and early autumn | C1 | xi,C1, i ∈ [1, 13] | y1,C1 | y1,C1 = FC1(x1,C1,x2,C1,…,x13,C1) | y2,C1 | y2,C1 = PC1(x1,C1,x2,C1,…,x13,C1) |
| Early and late summer | C2 | xi,C2, i ∈ [1, 13] | y1,C2 | y1,C2 = FC2(x1,C2,x2,C2,…,x13,C2) | y2,C2 | y2,C2 = PC2(x1,C2,x2,C2,…,x13,C2) |
| Mid-summer | C3 | xi,C3, i ∈ [1, 13] | y1,C3 | y1,C3 = FC3(x1,C3,x2,C3,…,x13,C3) | y2,C3 | y2,C3 = PC3(x1,C3,x2,C3,…,x13,C3) |
| Early spring and late autumn | H1 | xi,H1, i ∈ [1, 13] | y1,H1 | y1,H1 = FH1(x1,H1,x2,H1,…,x13,H1) | y2,H1 | y2,H1 = PH1(x1,H1,x2,H1,…,x13,H1) |
| Early and late winter | H2 | xi,H2, i ∈ [1, 13] | y1,H2 | y1,H2 = FH2(x1,H2,x2,H2,…,x13,H2) | y2,H2 | y2,H2 = PH2(x1,H2,x2,H2,…,x13,H2) |
| Mid-winter | H3 | xi,H3, i ∈ [1, 13] | y1,H3 | y1,H3 = FH3(x1,H3,x2,H3,…,x13,H3) | y2,H3 | y2,H3 = PH3(x1,H3,x2,H3,…,x13,H3) |
| Type | ID | Decision Variable | Unit | Range of Values |
|---|---|---|---|---|
| Building design scheme | IN_01 | Heat transfer coefficient of the external wall | W/(m2·K) | [0.15, 2.50] |
| IN_02 | Heat transfer coefficient of the roof | W/(m2·K) | [0.15, 3.00] | |
| IN_03 | Heat transfer coefficient of the internal wall | W/(m2·K) | [1.00, 5.00] | |
| IN_04 | Heat transfer coefficient of the external window | W/(m2·K) | [2.20, 6.40] | |
| IN_05 | SHGC of the external window | - | [0.15, 1.00] | |
| IN_06 | Window-to-wall ratio of the south elevation | - | {0.4} | |
| IN_07 | Window-to-wall ratio of the north elevation | - | {0.4} | |
| IN_08 | Air permeability performance | ach | [0.1, 0.8] | |
| IN_09 | Building orientation | ° | {0} | |
| Internal disturbance elements | IN_10 | People density in collective offices | m2/person | {10} |
| IN_11 | Power density of equipment | W/person | {150} | |
| Occupants’ adaptive behaviours | IN_12 | Coupling pattern between NV and AC operation | - | {M0, M1, M2, M3, M4} |
| IN_13 | Cooling/heating setpoint temperature | °C | [18, 30] |
| Reference Point | Reference Standard for Thermal Performance of Building Envelopes | HVAC Behavioural Pattern | AC Load per Unit Area (kWh/m2) | Proportion of Uncomfortable Hours |
|---|---|---|---|---|
| B1 | Design standard for energy efficiency of public buildings (GB 50189-2015) | Stochastic behavioural schedule | 59.326 | 84.82% |
| B2 | Fixed schedule | 75.536 | 80.65% | |
| B3 | Technical standard for nearly zero energy buildings (GB/T 51350-2019) | Stochastic behavioural schedule | 44.366 | 70.93% |
| B4 | Fixed schedule | 55.942 | 63.00% |
| Code of the Prediction Model | Characteristic Stages of AC Usage | Hidden Layer Nodes | Number of Iterations | Linear Fitting of the Predicted and the Simulated Results | |
|---|---|---|---|---|---|
| AC load per unit area | Comprehensive uncomfortable hours | ||||
| C1 | Late spring and early autumn | 13 | 1900 | ![]() | ![]() |
| MRE | 4.1% | 6.9% | |||
| C2 | Early and late summer | 9 | 1000 | ![]() | ![]() |
| MRE | 3.1% | 8.1% | |||
| C3 | Mid-summer | 11 | 2000 | ![]() | ![]() |
| MRE | 1.1% | 7.9% | |||
| H1 | Early spring and late autumn | 10 | 1610 | ![]() | ![]() |
| MRE | 4.4% | 4.0% | |||
| H2 | Early and late winter | 11 | 1000 | ![]() | ![]() |
| MRE | 4.3% | 6.1% | |||
| H3 | Mid-winter | 10 | 1850 | ![]() | ![]() |
| MRE | 4.0% | 9.7% | |||
| Type | Decision Variable | Code | Unit | Range of Values | |
|---|---|---|---|---|---|
| For Behavioural Optimisation | For Integrated Optimisation | ||||
| Building design scheme | Heat transfer coefficient of the external wall | IN_01 | W/(m2·K) | Fixed values under different operating conditions | [0.15, 2.50] |
| Heat transfer coefficient of the roof | IN_02 | W/(m2·K) | [0.15, 3.00] | ||
| Heat transfer coefficient of the internal wall | IN_03 | W/(m2·K) | [1.00, 5.00] | ||
| Heat transfer coefficient of the external window | IN_04 | W/(m2·K) | [2.20, 6.40] | ||
| SHCG of the external window | IN_05 | - | [0.15, 1.00] | ||
| Window-to-wall ratio of the south elevation | IN_06 | - | {0.4} | {0.4} | |
| Window-to-wall ratio of the north elevation | IN_07 | - | {0.4} | {0.4} | |
| Air permeability performance | IN_08 | ach | Fixed values under different operating conditions | [0.1, 0.8] | |
| Building orientation (northwards deflection) | IN_09 | ° | {0} | {0} | |
| Internal disturbance elements | People density in collective offices | IN_09 | m2/person | {10} | {10} |
| Power density of equipment | IN_10 | W/person | {150} | {150} | |
| Adaptive behaviours | Coupling pattern between NV and AC operation | IN_12 | - | {M0, M1, M2, M3, M4} | {M0, M1, M2, M3, M4} |
| Cooling setpoint temperature | IN_13 | °C | [18, 30] | [18, 30] | |
| Heating setpoint temperature | °C | [18, 30] | [18, 30] | ||
| Building Design Parameters | IN_01 | IN_02 | IN_03 | IN_04 | IN_05 | IN_08 | |
|---|---|---|---|---|---|---|---|
| Heat Transfer Coefficient [W/(m2·K)] | SHGC of the External Window | Air Permeability (ach) | |||||
| Code | Operating Condition | External Wall | Roof | Internal Wall | External Window | ||
| P01 | Actual condition of the case building | 2.42 | 2.98 | 3.93 | 5.78 | 0.819 | 0.7 |
| P02 | Baseline condition of typical buildings in the 1980s | 2.0 | 1.5 | 2.0 | 6.4 | 0.8 | 0.8 |
| P03 | Baseline condition of typical buildings in the 2000s | 1.0 | 0.7 | 2.0 | 3.0 | 0.5 | 0.5 |
| P04 | Standard condition from GB 50189-2015 | 0.8 | 0.5 | 2.0 | 2.6 | 0.4 | 0.3 |
| P05 | Low standard condition from GB/T 51350-2019 | 0.4 | 0.35 | 2.0 | 2.2 | 0.15 | 0.1 |
| P06 | High standard condition from GB/T 51350-2019 | 0.15 | 0.15 | 2.0 | 2.2 | 0.15 | 0.1 |
| Parameter | Reference Point | Reference Value | Optimisation Potential Compared with the Reference Point | |||||
|---|---|---|---|---|---|---|---|---|
| P01 | P02 | P03 | P04 | P05 | P06 | |||
| AC load per unit area | B1 | 59.326 kWh/m2 | 52.86% | 40.30% | 56.75% | 34.06% | 76.22% | 78.85% |
| B2 | 75.536 kWh/m2 | 62.97% | 53.11% | 66.03% | 48.21% | 81.32% | 83.39% | |
| B3 | 44.366 kWh/m2 | 36.96% | 20.17% | 42.17% | 11.83% | 68.20% | 71.72% | |
| B4 | 55.942 kWh/m2 | 50.00% | 36.68% | 54.13% | 30.07% | 74.78% | 77.57% | |
| Proportion of uncomfortable hours | B1 | 84.82% | 92.01% | 85.58% | 90.98% | 84.27% | 95.01% | 94.29% |
| B2 | 80.65% | 91.59% | 84.84% | 90.51% | 83.46% | 94.76% | 94.00% | |
| B3 | 70.93% | 90.44% | 82.76% | 89.21% | 81.19% | 94.04% | 93.18% | |
| B4 | 63.00% | 89.24% | 80.59% | 87.86% | 78.83% | 93.29% | 92.32% | |
| Optimisation Objective | Optimal Behavioural Strategy: Cooling/Heating Setpoint Temperature (°C)|Coupling Pattern Between NV and AC Operation | Reference Point Dominance (“√” for Dominated, “×” for Non-Dominated) | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Proportion of Uncomfortable Hours | AC Load per Unit Area (kWh/m2) | H1 | H2 | H3 | C1 | C2 | C3 | B1 | B2 | B3 | B4 |
| 10% | 69.72 | 24|M4 | 25|M3 | 25|M4 | 26|M3 | 25|M4 | 24|M3 | × | × | × | √ |
| 20% | 63.28 | 19|M1 | 18|M4 | 25|M4 | 26|M3 | 25|M4 | 24|M4 | × | × | × | √ |
| 30% | 56.76 | 23|M1 | 23|M4 | 24|M4 | 26|M3 | 30|M2 | 24|M3 | √ | √ | × | × |
| 40% | 51.45 | 19|M4 | 18|M4 | 25|M4 | 25|M3 | 30|M2 | 25|M4 | √ | √ | √ | √ |
| 50% | 45.99 | 19|M4 | 24|M4 | 25|M4 | 27|M4 | 25|M4 | 30|M2 | √ | √ | × | √ |
| 60% | 38.62 | 24|M4 | 25|M3 | 25|M4 | 25|M0 | 30|M2 | 30|M2 | √ | √ | √ | √ |
| 70% | 31.84 | 19|M3 | 18|M0 | 25|M4 | 26|M3 | 30|M2 | 30|M2 | √ | √ | √ | × |
| 80% | 28.52 | 19|M4 | 18|M3 | 23|M4 | 26|M3 | 30|M2 | 30|M2 | √ | √ | × | × |
| 90% | 24.38 | 24|M4 | 25|M3 | 25|M4 | 26|M3 | 25|M4 | 24|M3 | × | × | × | × |
| Optimisation Objective | Behavioural Optimisation Strategy: Cooling/Heating Setpoint Temperature (°C)|Coupling Pattern Between NV and AC Operation | Reference Point Dominance (“√” for Dominated) | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Proportion of Uncomfortable Hours | AC Load per Unit Area (kWh/m2) | H1 | H2 | H3 | C1 | C2 | C3 | B1 | B2 | B3 | B4 |
| 53% | 44.32 | 19|M1 | 24|M3 | 24|M4 | 27|M0 | 25|M4 | 30|M2 | √ | √ | √ | √ |
| 55% | 44.23 | 20|M1 | 22|M3 | 25|M4 | 26|M0 | 25|M3 | 30|M2 | √ | √ | √ | √ |
| 57% | 43.48 | 21|M2 | 18|M0 | 18|M0 | 27|M1 | 30|M2 | 24|M3 | √ | √ | √ | √ |
| 60% | 44.05 | 20|M0 | 18|M0 | 18|M3 | 29|M1 | 30|M4 | 24|M2 | √ | √ | √ | √ |
| 62% | 40.7 | 22|M1 | 20|M3 | 25|M4 | 29|M2 | 26|M4 | 30|M2 | √ | √ | √ | √ |
| Operating Condition | Numerical Distribution of the Cooling/Heating Setpoint Temperature | ||
|---|---|---|---|
| Heating | ![]() | ![]() | ![]() |
| H1: Early spring and late autumn | H2: Early and late winter | H3: Mid-winter | |
| Cooling | ![]() | ![]() | ![]() |
| C1: Late spring and early autumn | C2: Early and late summer | C3: Mid-summer | |
| Operating Condition | Numerical Distribution of the Coupling Pattern Between NV and AC Operation | ||
|---|---|---|---|
| Heating | ![]() | ![]() | ![]() |
| H1: Early spring and late autumn | H2: Early and late winter | H3: Mid-winter | |
| Cooling | ![]() | ![]() | ![]() |
| C1: Late spring and early autumn | C2: Early and late summer | C3: Mid-summer | |
| Proportion of Uncomfortable Hours | Integrated Optimisation Strategy | Behavioural Optimisation Strategy | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Heat Transfer Coefficient [W/(m2·K)] | SHGC of the External Window | Air Permeability (ach) | Cooling/Heating Setpoint Temperature (°C)|Coupling Pattern Between NV and AC Operation | |||||||||
| External Wall | Roof | Internal Wall | External Window | H1 | H2 | H3 | C1 | C2 | C3 | |||
| 6.23% | 0.15 | 0.15 | 1.06 | 2.2 | 0.33 | 0.1 | 24|M0 | 24|M4 | 24|M2 | 25|M0 | 24|M1 | 24|M1 |
| 10.00% | 0.15 | 0.31 | 2.81 | 2.85 | 0.29 | 0.12 | 26|M3 | 25|M1 | 24|M0 | 26|M3 | 25|M4 | 24|M1 |
| 20.00% | 0.36 | 0.31 | 3.37 | 2.77 | 0.29 | 0.11 | 27|M2 | 22|M2 | 24|M0 | 27|M0 | 25|M2 | 24|M1 |
| 30.00% | 0.41 | 0.51 | 4.24 | 2.4 | 0.22 | 0.18 | 27|M3 | 21|M1 | 24|M4 | 20|M3 | 25|M0 | 24|M1 |
| 40.00% | 0.72 | 0.48 | 3.88 | 3.94 | 0.53 | 0.1 | 29|M0 | 22|M4 | 19|M0 | 27|M4 | 24|M0 | 24|M2 |
| 50.00% | 1.6 | 0.49 | 1.06 | 3.34 | 0.59 | 0.29 | 29|M1 | 25|M4 | 18|M0 | 26|M1 | 29|M4 | 24|M4 |
| 60.00% | 1.69 | 0.67 | 3.27 | 3.11 | 0.93 | 0.26 | 20|M0 | 23|M1 | 18|M0 | 27|M0 | 29|M2 | 24|M2 |
| 70.00% | 0.42 | 1.11 | 1.2 | 3.68 | 0.25 | 0.59 | 28|M0 | 19|M2 | 22|M1 | 23|M3 | 29|M2 | 25|M2 |
| 80.00% | 0.91 | 0.69 | 1.28 | 3.78 | 0.62 | 0.53 | 24|M4 | 18|M1 | 21|M3 | 25|M4 | 26|M3 | 26|M3 |
| 84.82% | 1.38 | 1.61 | 4.45 | 3.1 | 0.47 | 0.15 | 28|M1 | 20|M2 | 29|M4 | 25|M4 | 28|M4 | 30|M1 |
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Wu, J.; Qiu, R.; Ying, X.; Chen, S.; Zhao, X. Optimising Behavioural Control Based on Actual HVAC Use in Naturally Ventilated Buildings. Energies 2025, 18, 6130. https://doi.org/10.3390/en18236130
Wu J, Qiu R, Ying X, Chen S, Zhao X. Optimising Behavioural Control Based on Actual HVAC Use in Naturally Ventilated Buildings. Energies. 2025; 18(23):6130. https://doi.org/10.3390/en18236130
Chicago/Turabian StyleWu, Jiajing, Rongxin Qiu, Xiaoyu Ying, Shuqin Chen, and Xueyuan Zhao. 2025. "Optimising Behavioural Control Based on Actual HVAC Use in Naturally Ventilated Buildings" Energies 18, no. 23: 6130. https://doi.org/10.3390/en18236130
APA StyleWu, J., Qiu, R., Ying, X., Chen, S., & Zhao, X. (2025). Optimising Behavioural Control Based on Actual HVAC Use in Naturally Ventilated Buildings. Energies, 18(23), 6130. https://doi.org/10.3390/en18236130
























