Smart charging of community storage units using Markov chains

T. Alskaif, W. Schram, G.B.M.A. Litjens, W. Sark
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引用次数: 13

Abstract

Community Energy Storage (CES) is emerging as an alternative solution to home local energy storage for increasing the utilization of Renewable Energy Sources (RESs) in households. In this paper, a stochastic smart charging framework for CES in residential microgrids is proposed. A linear optimization problem for scheduling the charging process of the community battery to times when electricity prices are low, while accommodating the aggregated surplus renewable energy of households, is formulated. The goal is to satisfy the aggregated residual load of households at every time slot. To do so, a Markov chain-based forecasting approach is used for generating synthetic aggregated surplus solar Photovoltaics (PV) power and residual load profiles day-ahead. Numerical results are obtained using a history of real load and solar PV generation profiles of 10 households in the city of Amersfoort, the Netherlands. The forecasting performance is evaluated and compared with a persistence model by means of Root Mean Squared Error (RMSE). Then, the technical and economic performance of the smart charging process is presented for different annual periods. Results show that based on a time-varying electricity tariff and depending on the annual period, the CES with a smart charging process can bring a cost saving up to 68% in comparison with the traditional scenario without a storage.
基于马尔可夫链的社区存储单元智能充电
社区能源存储(CES)正在成为家庭本地能源存储的替代解决方案,以提高家庭可再生能源(RESs)的利用率。本文提出了一种面向住宅微电网的随机智能充电框架。提出了将社区电池充电过程安排在电价较低的时段,同时兼顾家庭可再生能源总剩余的线性优化问题。目标是满足每个时段的家庭总剩余负荷。为此,使用基于马尔可夫链的预测方法来生成综合剩余太阳能光伏发电(PV)功率和剩余负荷曲线。数值结果是利用荷兰阿默斯福特市10户家庭的实际负荷历史和太阳能光伏发电概况得到的。利用均方根误差(RMSE)对模型的预测性能进行了评价和比较。然后,给出了不同年周期智能充电过程的技术经济性能。结果表明,基于时变电价和不同的年周期,与不带储能的传统方案相比,具有智能充电过程的CES可节省高达68%的成本。
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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