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Model Predictive Control for Real-Time Residential Energy Scheduling under Uncertainties

机译:不确定条件下实时住宅能源调度的模型预测控制

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This paper proposes a real-time strategy based on Model Predictive Control (MPC) for the energy scheduling of a grid-connected smart residential user equipped with deferrable and non-deferrable electrical appliances, a renewable energy source (RES), and an electrical energy storage system (EESS). The proposed control scheme relies on an iterative finite horizon on-line optimization, implementing a quadratic cost function to minimize the electricity bill of the user's load demand and to limit the peak-to-average ratio (PAR) of the energy consumption profile whilst considering operational constraints. At each time step, the optimization problem is solved providing the cost-optimal energy consumption profile for the user's deferrable loads and the optimal charging/discharging profile for the EESS, taking into account forecast uncertainties by using the most updated predicted values of local RES generation and non-deferrable loads consumption. The performance and effectiveness of the proposed framework are evaluated for a case study where the dynamics of the considered residential energy system is simulated under uncertainties both in the forecast of the RES generation and the non-deferrable loads energy consumption.
机译:本文提出了一种基于模型预测控制(MPC)的实时策略,用于装备有可延迟和不可延迟电器,可再生能源(RES)和电能的并网智能住宅用户的能源调度存储系统(EESS)。拟议的控制方案基于迭代的有限水平在线优化,实现二次成本函数,以最大程度减少用户负荷需求的电费并限制能耗曲线的峰均比(PAR),同时考虑操作限制。在每个时间步上,通过使用本地RES生成的最新预测值,将预测不确定性考虑在内,从而解决了优化问题,为用户的可延期负荷提供了成本最优的能耗曲线和EESS的最佳充电/放电曲线以及无延迟的负载消耗。在一个案例研究中评估了所提出框架的性能和有效性,该案例研究了在RES发电量预测和非递减负荷能耗中都存在不确定性的情况下,模拟了所考虑的住宅能源系统的动力学。

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