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Real-Time Price-Based Demand Response Management for Residential Appliances via Stochastic Optimization and Robust Optimization

机译:通过随机优化和鲁棒优化的实时基于价格的住宅设备需求响应管理

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摘要

This paper evaluates the real-time price-based demand response (DR) management for residential appliances via stochastic optimization and robust optimization approaches. The proposed real-time price-based DR management application can be imbedded into smart meters and automatically executed on-line for determining the optimal operation of residential appliances within 5-minute time slots while considering uncertainties in real-time electricity prices. Operation tasks of residential appliances are categorized into deferrableon-deferrable and interruptibleon-interruptible ones based on appliances' DR preferences as well as their distinct spatial and temporal operation characteristics. The stochastic optimization adopts the scenario-based approach via Monte Carlo (MC) simulation for minimizing the expected electricity payment for the entire day, while controlling the financial risks associated with real-time electricity price uncertainties via the expected downside risks formulation. Price uncertainty intervals are considered in the robust optimization for minimizing the worst-case electricity payment while flexibly adjusting the solution robustness. Both approaches are formulated as mixed-integer linear programming (MILP) problems and solved by state-of-the-art MILP solvers. The numerical results show attributes of the two approaches for solving the real-time optimal DR management problem for residential appliances.
机译:本文通过随机优化和鲁棒优化方法评估了基于实时价格的住宅设备的需求响应(DR)管理。所提出的基于实时价格的灾难恢复管理应用程序可以嵌入到智能电表中,并自动在线执行,以在考虑实时电价不确定性的同时,在5分钟的时间内确定家用电器的最佳运行状态。根据家用电器的DR偏好以及它们独特的时空操作特性,将家用电器的操作任务分为可延期/不可延期和可中断/不可中断。随机优化通过蒙特卡洛(MC)模拟采用基于场景的方法,以将一整天的预期用电量降至最低,同时通过预期的下行风险公式来控制与实时电价不确定性相关的财务风险。在鲁棒性优化中考虑了价格不确定性间隔,以最大程度减少最差情况下的用电,同时灵活地调整解决方案的鲁棒性。两种方法都被表述为混合整数线性规划(MILP)问题,并由最新的MILP求解器解决。数值结果表明了两种解决家用电器实时最优DR管理问题的方法的属性。

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