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Price-responsive model-based optimal demand response control of inverter air conditioners using genetic algorithm

机译:基于价格响应模型的遗传算法的变频空调最优需求响应控制

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The rapid developments of advanced metering infrastructure and dynamic electricity pricing provide great opportunities for residential electrical appliances, especially air conditioners (ACs), to participate in demand response (DR) programs to reduce peak power consumptions and electricity bills. One of the biggest challenges faced by residential DR participants is the lack of intelligent DR control methods which enable residential ACs to automatically respond to dynamic electricity prices. Most existing studies on DR control of residential ACs focus on single-speed ACs. However, inverter ACs which have higher part-load efficiencies have been extensively installed in today's residential buildings. This paper presents a novel model-based DR control method for residential inverter ACs to automatically and optimally respond to day-ahead electricity prices. A control-oriented room thermal model and steady-state model of inverter ACs are developed and integrated to predict the coupled thermal response of the room and AC for the purpose of model-based control. Optimal scheduling of indoor air temperature set-points is formulated as a nonlinear programming problem which seeks the preferred trade-offs among electricity costs, thermal comfort and peak power reductions. Genetic algorithm (GA) is used to search the optimal solution of the nonlinear programming problem. Simulation results show that compared with the baseline case, the proposed model-based optimal control method can reduce the whole electricity costs and the peak power demands during DR hours while meeting thermal comfort constraints. Besides, sensitivity analyses on the trade-off weightings in the optimization objective function demonstrate that electricity costs, occupant comfort and peak power reductions are sensitive to the weightings and the use of the weightings is effective in achieving the best trade-off.
机译:先进的计量基础设施的快速发展和动态电价为住宅电器,尤其是空调(AC)提供了巨大的机会,可以参与需求响应(DR)计划,以减少峰值能耗和电费。住宅灾难恢复参与者面临的最大挑战之一是缺乏智能化的灾难恢复控制方法,该方法使住宅AC能够自动响应动态电价。现有的大多数关于住宅AC的DR控制的研究都集中在单速AC上。然而,具有更高的部分负载效率的逆变器交流电已广泛安装在当今的住宅建筑中。本文提出了一种新颖的基于模型的住宅逆变器AC的DR控制方法,以自动且最佳地响应日间电价。开发并集成了面向控制的逆变器AC的房间热模型和稳态模型,以预测基于模型控制的房间和AC的耦合热响应。室内空气温度设定点的最佳调度被公式化为一个非线性规划问题,该问题寻求在电费,热舒适度和峰值功率降低之间进行取舍。遗传算法(GA)用于搜索非线性规划问题的最优解。仿真结果表明,与基线情况相比,基于模型的最优控制方法能够在满足热舒适性约束的同时,降低DR时段的总用电成本和峰值用电需求。此外,在优化目标函数中权衡权重的敏感性分析表明,电力成本,乘员舒适度和峰值功率降低对权重敏感,并且权重的使用有效地实现了最佳权衡。

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