Optimal integration of solar home systems and appliance scheduling for residential homes under severe national load shedding

Sakhile Twala , Xianming Ye , Xiaohua Xia , Lijun Zhang
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Abstract

In developing countries like South Africa, users experienced more than 1 030 hours of load shedding outages in just the first half of 2023 due to inadequate power supply from the national grid. Residential homes that cannot afford to take actions to mitigate the challenges of load shedding are severely inconvenienced as they have to reschedule their demand involuntarily. This study presents optimal strategies to guide households in determining suitable scheduling and sizing solutions for solar home systems to mitigate the inconvenience experienced by residents due to load shedding. To start with, we predict the load shedding stages that are used as input for the optimal strategies by using the K-Nearest Neighbour (KNN) algorithm. Based on an accurate forecast of the future load shedding patterns, we formulate the residents’ inconvenience and the loss of power supply probability during load shedding as the objective function. When solving the multi-objective optimisation problem, four different strategies to fight against load shedding are identified, namely (1) optimal home appliance scheduling (HAS) under load shedding; (2) optimal HAS supported by solar panels; (3) optimal HAS supported by batteries, and (4) optimal HAS supported by the solar home system with both solar panels and batteries. Among these strategies, appliance scheduling with an optimally sized 9.6 kWh battery and a 2.74 kWp panel array of five 550 Wp panels, eliminates the loss of power supply probability and reduces the inconvenience by 92% when tested under the South African load shedding cases in 2023.

在国家严重削峰填谷的情况下,住宅太阳能系统与家电调度的优化整合
在南非等发展中国家,仅在 2023 年上半年,由于国家电网供电不足,用户就经历了超过 1030 个小时的断电。没有能力采取行动缓解负荷中断挑战的居民家庭不得不重新安排需求,这给他们带来了严重的不便。本研究提出了最佳策略,以指导家庭确定合适的太阳能家用系统调度和大小解决方案,从而减轻居民因负荷削减而带来的不便。首先,我们使用 K-Nearest Neighbour (KNN) 算法预测负荷削减阶段,作为优化策略的输入。在准确预测未来甩负荷模式的基础上,我们将甩负荷期间居民的不便和供电损失概率作为目标函数。在求解多目标优化问题时,我们确定了四种不同的应对甩负荷的策略,即:(1)甩负荷下的最优家电调度(HAS);(2)太阳能电池板支持下的最优家电调度;(3)蓄电池支持下的最优家电调度;以及(4)同时使用太阳能电池板和蓄电池的太阳能家庭系统支持下的最优家电调度。在这些策略中,在 2023 年南非停电情况下进行测试时,使用最佳大小的 9.6 kWh 电池和由 5 块 550 Wp 太阳能电池板组成的 2.74 kWp 太阳能电池板阵列的家电调度消除了停电概率,并将不便程度降低了 92%。
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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