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Model predictive control for thermal energy storage and thermal comfort optimization of building demand response in smart grids

机译:智能电网建筑需求响应的热能储存和热舒适优化模型预测控制

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摘要

Demand response (DR) can effectively manage electricity use to improve the efficiency and reliability of power grids. Shutting down part of operating chillers directly in central air-conditioning systems can meet the urgent power reduction needs of grids. But during the special events of fast DR, how to optimally control the active cold storage considering the indoor environment of buildings and the needs of grids at the same time is rarely addressed. A model predictive control (MPC) approach, with the features of shrunk prediction horizon, self-correction and simple parameter determination of embedded models, is therefore developed to optimize the operation of a central air-conditioning system integrated with cold storage during fast DR events. The chiller power demand and cooling discharging rate of the storage are optimized to maximize the building power reduction and meanwhile to ensure the acceptable indoor environment. Case studies are conducted to test and validate the proposed method. Results show that the proposed MPC approach can effectively handle the optimal controls of cold storage during DR events for required power reduction and acceptable indoor environment. Due to the feedback mechanism of MPC, the control performance is not negatively influenced by the simplified parameter identification of models, which will be convenient for real applications. While achieving the expected building power reduction for the power grid, the indoor environment is effectively improved in the DR events using the MPC and the maximum indoor temperature is reduced significantly without extra energy consumed.
机译:需求响应(DR)可以有效地管理电力以提高电网的效率和可靠性。直接在中央空调系统中关闭操作冷却器的部分,可以满足电网的紧急功率降低需求。但在快速博士的特殊活动期间,如何在考虑建筑物的室内环境和同时的电网需求的情况下最佳地控制主动冷库。很少得到解决。因此,模型预测控制(MPC)方法,具有缩小预测地平线,自我校正和简单参数确定的嵌入式模型的特征,以优化在快速DR事件中集成的中央空调系统的操作。冷却器电源和冷却放电速率优化,以最大化建筑功率降低,同时确保可接受的室内环境。进行案例研究以测试和验证所提出的方法。结果表明,该提议的MPC方法可以有效地处理博士事件中的冷库的最佳控制,以进行所需的功率降低和可接受的室内环境。由于MPC的反馈机制,通过模型的简化参数识别,控制性能不会产生负面影响,这将是方便的真实应用。在实现电网的预期建筑功率降低的同时,使用MPC的DR事件中有效地改善室内环境,并且最大的室内温度显着降低,而无需额外的能量。

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