Direct Load Control Strategy of Centralized Chiller Plants for Emergency Demand Response: A Field Experiment
Abstract
:1. Introduction
- A direct load control strategy for the chiller plant was implemented in a large industrial building to demonstrate its performance during emergency DR.
- The DR process was quantified using a set of performance metrics to demonstrate the capability of chillers to participate in emergency DR.
- The experiences and lessons learned during the experiment were discussed, particularly focusing on the impact of the existing control logic on the DR process.
2. Methodology
3. Experiment Case and Scheme
3.1. Experiment Case Description
3.2. Direct Load Control Strategy
3.3. Data Monitoring and Collection
3.3.1. Data Measurement Equipment
3.3.2. Measuring Point Layout
3.4. Experimental Scheme
3.5. Flexibility Evaluation Metrics
4. Experimental Results
5. Discussion
5.1. Impact of Control Logic
5.2. Limitations
- Our test case did not consider scenarios where multiple chillers operate simultaneously. Due to the coupling of cooling load distribution among them, the control strategy for chillers should be studied more thoroughly. For example, shutting down only some of the operating chillers may increase the load rate of the remaining units, thereby failing to significantly reduce the system’s power consumption.
- In our experiment, only the core zones of the building were monitored, while some peripheral zones were not equipped with temperature sensors. These zones may receive more solar radiation compared to the core zones, leading to greater temperature increases during DR events.
- The experiment was conducted in an industrial facility located in a subtropical climate zone. However, the actual potential of buildings in different climate zones and of different types (e.g., large commercial and office buildings) to participate in grid emergency DR requires more extensive experiments for exploration.
6. Conclusions
- Shutting down the chiller is an effective and rapid response strategy that does not significantly impact the thermal comfort of building occupants. The system can achieve load reduction in about 10 min. Experimental results during hot summer conditions indicate that the system power can be reduced by 380~459 kW. With a DR duration of 20 min, the temperature increase in various areas of the building is less than 1 °C. Even with a shutdown of 50 min, the temperature remains within an acceptable range, with no reports of thermal discomfort from occupants.
- With the extension of the DR duration, the system can reduce more energy, but this also leads to a more pronounced rebound phenomenon after the DR ends. Experimental results indicate that it takes about 40 min to recover the indoor temperature to its original state.
- The internal control logic of the system is an important factor influencing the emergency DR process. When buildings participate in DR, it is essential to consider modifying the existing control logic to avoid excessive rebound power that could create secondary shocks to the power grid. Additionally, stable operation of the system helps to enhance the confidence of building operators in subsequent participation in DR.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Equipment | Nominal Parameters | Number |
---|---|---|
Centrifugal chiller | Cooling capacity: 2461 kW Power: 463 kW | 1 |
Screw chiller | Cooling capacity: 1340 kW Power: 225 kW | 1 |
Chilled water pump | Flow rate: 488 m3/h, 279 m3/h Head: 40 mH2O Power: 90 kW, 55 kW | 2 |
Condenser water pump | Flow rate: 569 m3/h, 349 m3/h Head: 30 mH2O Power: 75 kW, 45 kW | 2 |
Cooling tower | Flow rate: 381 m3/h Fan power: 11 kW | 4 |
Number | Start Time | Duration |
---|---|---|
1 | 2020/6/17 17:06 | 18 min |
2 | 2020/6/18 11:00 | 25 min |
3 | 2020/6/18 16:11 | 52 min |
Number | |||||
---|---|---|---|---|---|
1 | 12 min | 380 kW | 18 min | 110 kW | 38 min |
2 | 12 min | 430 kW | 25 min | 94 kW | 42 min |
3 | 13 min | 459 kW | 52 min | 376 kW | 42 min |
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Zhu, J.; Tian, Z.; Niu, J.; Lu, Y.; Zhou, H.; Li, Y. Direct Load Control Strategy of Centralized Chiller Plants for Emergency Demand Response: A Field Experiment. Buildings 2025, 15, 462. https://doi.org/10.3390/buildings15030462
Zhu J, Tian Z, Niu J, Lu Y, Zhou H, Li Y. Direct Load Control Strategy of Centralized Chiller Plants for Emergency Demand Response: A Field Experiment. Buildings. 2025; 15(3):462. https://doi.org/10.3390/buildings15030462
Chicago/Turabian StyleZhu, Jie, Zhe Tian, Jide Niu, Yakai Lu, Haizhu Zhou, and Yitong Li. 2025. "Direct Load Control Strategy of Centralized Chiller Plants for Emergency Demand Response: A Field Experiment" Buildings 15, no. 3: 462. https://doi.org/10.3390/buildings15030462
APA StyleZhu, J., Tian, Z., Niu, J., Lu, Y., Zhou, H., & Li, Y. (2025). Direct Load Control Strategy of Centralized Chiller Plants for Emergency Demand Response: A Field Experiment. Buildings, 15(3), 462. https://doi.org/10.3390/buildings15030462