Optimizing Economy with Comfort in Climate Control System Scheduling for Indoor Ice Sports Venues’ Spectator Zones Considering Demand Response
Abstract
1. Introduction
2. Optimization Model
2.1. Objective Functions
2.1.1. Users’ Comfort in Spectator Stands Objective
2.1.2. Economic Objective
2.2. Constraint
2.2.1. Humidity Constraints
2.2.2. Temperature Constraints
2.2.3. Equipment Operating Constraints
2.3. Thermal Model
2.3.1. Humidity Variation Model
- (1)
- Calculation of Spectator Stands Humidity
2.3.2. Temperature Variation Model
2.4. Solution Algorithm
2.4.1. Solution Procedure for Multi-Objective Optimization
- (1)
- Footprint Scent Marking Behavior
- (2)
- Sniffing Behavior
2.4.2. A TOPSIS-Based Method for Optimal Selection
3. Case Study
3.1. Case Description
3.2. Data Source of Weather and Electricity Price
3.3. Results
3.3.1. Pareto Frontiers
3.3.2. Optimal Scheduling Results Analysis
3.3.3. Demand-Side Response Analysis
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Symbols/Letters
Symbol/Letters | Description/Meaning | Symbol/Letters | Description/Meaning | Symbol/Letters | Description/Meaning |
ambient temperature of the spectator stands at time t | set point temperature of the spectator stands | humidity of the spectator stands | |||
set point humidity of the spectator stands | Z | spectator stands | operational cost | ||
environmental cost | cost of electricity consumption | cost of maintenance | |||
cost of startup and shutdown of machine | time interval | electricity costs of ventilation system | |||
electricity costs of dehumidification | electricity costs of radiant heating | maintenance costs of ventilation system | |||
maintenance costs of dehumidification | maintenance costs of radiant heating | startup and shutdown costs of ventilation system | |||
startup and shutdown costs of dehumidification | startup and shutdown costs of radiant heating | cooling load provided by the ventilation system | |||
coefficient of performance of the ventilation system | power of dehumidifier | power of ventilation system | |||
binary variables of ventilation system | binary variables of radiation heaters | binary variables of dehumidifier | |||
power of radiation heaters | cost coefficient of maintenance of dehumidifier | electricity price | |||
cost coefficient of maintenance of ventilation | cost coefficient of startup and shutdown of dehumidifier | cost coefficient of maintenance of radiation heaters | |||
cost coefficient of startup and shutdown of machine of ventilation | environmental cost of carbon emissions from electricity | cost coefficient of startup and shutdown of radiation heaters | |||
EF | carbon emission factors for electricity | atmospheric pressure | humidity at time t | ||
maximum relative humidity setpoint | lower limit of the temperature | intermediate coefficient of conversion of temperature, relative humidity and specific humidity | |||
temperature at time t | the impact of the ventilation system on the humidity | upper limit of the temperature | |||
air humidity in the ice sports venue at time t − 1 | effect of dehumidifier operation on the humidity | the effect of air infiltration on the humidity | |||
the moisture generated by audience respiration | volume of air in the Z area (m3) | airflow rate of the ventilation system (m3/h) | |||
humidity of the incoming air (kgH2O/kgair) | temperature of the outside air at time t (K) | relative humidity of the outside air at time t (%) | |||
the intermediate coefficient of conversion of temperature, relative humidity and specific humidity outside | the total capacity of the ice sports venue (persons) | air leakage (m3/h) | |||
occupancy rate of the venue (%) | air density (kgair/m3) | the clustering coefficient | |||
hourly moisture emission per person (kg/h) | ambient temperature at time t − 1 (K) | the impact of dehumidifier operation on the moisture content of the air (kg/h) | |||
ambient temperature at time t (K) | the effect of ventilation system operation on temperature (K) | the effect of radiant heating on temperature (K) | |||
effect of outdoor air heat conduction through the envelope on temperature (K) | effect of ice temperature through thermal radiation on temperature (K) | the effect of lighting on temperature (K) | |||
effect of body heat dissipation on temperature (K) | air density (kg/m3) | mass of the air in the spectator stands (kg) | |||
specific heat capacity of air (1.005 kJ/(kg·K)) | air leakage flow rate (m3/h) | heat transfer coefficient of the building envelope (kW/(m2·K)) | |||
A | surface area of the building envelope (m2) | air mass flow rate (kg/h) | total power of the light in the spectator stands (kW) | ||
setpoint temperature for ventilation system | schedule of audience occupancy as a percentage (%) | maximum capacity of the audience (Person) | |||
heat generated by indoor occupants (W/(h·Person)) | radiative heat of the surfaces in zones Y | radiative heat of the surfaces in zones Z | |||
radiative heat of the surfaces in zones X | contact area between zones Y and Z (m2) | shape factor between zones X and Z | |||
contact area between zones X and Z (m2) | emissivity coefficient | proportional constant (kW/m2) | |||
shape factor between zones Y and Z | width of the vertical plane of the contact surface between zones X and Z | width of the X and Z contact surface | |||
temperature of zone X at time t (K) | width of the vertical plane of the contact surface between zones Y and Z | width of the Y and Z contact surface | |||
height of the X and Z contact surface | height of the Y and Z contact surface |
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Parameter | Value | Unit | Parameter | Value | Unit |
---|---|---|---|---|---|
288.15 (Winter); 291.15 (Transition season) 293.15 (Summer) | K | 0.00044 | kW/(m2·K) | ||
0.0845 | kgH2O/kgair | A | 1937.49 | m2 | |
200 | kW | 193.452 | kg/h | ||
70 | kW | 1225 | kg/h | ||
176 | kW | 0.18 | kW/(h·Person) | ||
1 | h | 205 | Person | ||
70 (Summer); 60 (Transition season, Winter) | % | 1 | - | ||
60 | kg/s | 0.00567 | kW/m2 | ||
157.92 | m3/h | 279.15 | K | ||
261 | Person | 293.15 | K | ||
0.92 | - | 288.15 (Winter, Transition season); 293.15 (Summer) | K | ||
0.391 | kg/h | 0.0745 | kgH2O/kgair | ||
1.225 | kg/m3 | 293.15 (Summer) 283.15 (Winter) 285.15 (Transition season) | K | ||
120 | kg/h | 0.0045 | CNY·kWh−1 | ||
0.828 | kg/m2·h | 0.0105 | CNY·kWh−1 | ||
1800 | m2 | 0.0037 | CNY·kWh−1 | ||
0.0189 | kgH2O/kgair | 0.0024 | CNY·kWh−1 | ||
0.00245 | kgH2O/kgair | 0.0058 | CNY·kWh−1 | ||
268.15 | K | 0.0065 | CNY·kWh−1 | ||
281.15 (Winter) 283.15 (Transition season); 285.15 (Summer) | K | 0.5688 | CO2·kWh−1 | ||
291.15 (Winter), 293.15 (Transition season); 299.15 (Summer) | K | 0.058 | CNY·kg CO2 | ||
1.005 | kJ/(kg·K) | COP | 3 |
Time Period | Time | Electricity Tariffs (CNY/kWh) |
---|---|---|
Peak | 10:00–13:00, 17:00–22:00 | 1.71 |
Flat | 7:00–10:00, 13:00–17:00, and 22:00–23:00 | 1.00 |
Valley | 23:00–24:00, 0:00–7:00 | 0.36 |
Metrics | NSGA-II | MOEA/D | MOBBO |
---|---|---|---|
Time | 295.85 s | 86.21 s | 237,860.78 s |
HV | 6946.8083 | 506.7154 | 4567.56 |
IGD | 10.4241 | 161.1774 | 62.13 |
Objective | Maximum Comfort | Minimum Cost | TOPSIS | |||
---|---|---|---|---|---|---|
F1 | F2 | F1 | F2 | F1 | F2 | |
Typical day in summer | 24.02 | 1298.7 | 32.46 | 837.86 | 29.21 | 954.56 |
Typical day in transition season | 10.92 | 565.34 | 22.68 | 327.98 | 13.75 | 481.32 |
Typical day in winter | 13.52 | 1528.33 | 29.87 | 1189.40 | 21.22 | 1297.45 |
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Du, Z.; Liu, Y.; Xue, Y.; Liu, B. Optimizing Economy with Comfort in Climate Control System Scheduling for Indoor Ice Sports Venues’ Spectator Zones Considering Demand Response. Algorithms 2025, 18, 446. https://doi.org/10.3390/a18070446
Du Z, Liu Y, Xue Y, Liu B. Optimizing Economy with Comfort in Climate Control System Scheduling for Indoor Ice Sports Venues’ Spectator Zones Considering Demand Response. Algorithms. 2025; 18(7):446. https://doi.org/10.3390/a18070446
Chicago/Turabian StyleDu, Zhuoqun, Yisheng Liu, Yuyan Xue, and Boyang Liu. 2025. "Optimizing Economy with Comfort in Climate Control System Scheduling for Indoor Ice Sports Venues’ Spectator Zones Considering Demand Response" Algorithms 18, no. 7: 446. https://doi.org/10.3390/a18070446
APA StyleDu, Z., Liu, Y., Xue, Y., & Liu, B. (2025). Optimizing Economy with Comfort in Climate Control System Scheduling for Indoor Ice Sports Venues’ Spectator Zones Considering Demand Response. Algorithms, 18(7), 446. https://doi.org/10.3390/a18070446