A data-driven method for the optimal control of centralized cooling station in an office park

Caiyu Li, Zihui Lv, Yang Geng, Hao Tang, Xiaobin Gu, Borong Lin, Wenwen Zhou
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Abstract

An effective way to reduce the energy consumption of a building is to optimize the control strategy for the HVAC system. Load prediction is suggested and used to match the supply and demand for air conditioning and achieve energy savings. However, the gap between load prediction models and real-time optimal control of HVAC systems still exists. Hence, this paper proposed an optimization method for dynamically determining the best setpoints of chillers and chilled water pumps under a specific load. The energy consumption model of each equipment in the centralized cooling station is established and validated using the operational data. Then an optimization problem is defined to find the optimal setpoints for each equipment under certain load, to realize the lowest energy consumption. To verify the validity of the proposed method, a period of real operational data in an office park is used. The proposed method is applied on one centralized cooling station in the office park and results in an 4% lower overall energy consumption than the existing intelligent control strategies in the park. This method provides feasible directions and reference for realizing overall optimal control of the whole HVAC system in the future.

办公园区集中冷却站优化控制的数据驱动方法
降低建筑能耗的有效方法是优化暖通空调系统的控制策略。负荷预测被建议并用于匹配空调供需,实现节能。然而,负荷预测模型与暖通空调系统实时优化控制之间仍存在差距。因此,本文提出了一种优化方法,用于动态确定特定负荷下冷水机组和冷冻水泵的最佳设定点。利用运行数据建立并验证了集中冷却站各设备的能耗模型。然后定义了一个优化问题,即在特定负载下为每台设备找到最佳设定点,以实现最低能耗。为了验证所提方法的有效性,使用了一个办公园区的一段实际运行数据。所提出的方法被应用于该办公园区的一个集中制冷站,与园区现有的智能控制策略相比,总体能耗降低了 4%。该方法为今后实现整个暖通空调系统的整体优化控制提供了可行的方向和参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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