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Non-Linear Auto-Regressive Modeling based Day-ahead BESS Dispatch Strategy for Distribution Transformer Overload Management

机译:基于非线性自动回归建模的现代BESS调度策略,用于分配变压器过载管理

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Distribution Transformer (DT) overload management is a promising application for Battery Energy Storage Systems (BESSs) in urban areas with space constraints and growing load. However, the BESS operation must be optimized so as to ensure minimum impact on both the battery cycling and the DT life. Hence, a day-ahead dispatch strategy can allow the BESS to maintain its state of charge and identify the crucial load-peaks to cater to ensuring minimum stress on the DT. The present work proposes a non-linear autoregressive with exogenous input (NARX) framework for short-term load forecasting. The nonlinearity is approximated by an artificial neural network. The proposed method uses past electricity consumption data of a distribution utility in New Delhi, India and the corresponding weather data to predict the future load demand on a particular DT serving a locality. The results obtained from the proposed method are used for defining the charging/discharging level of the BESS on a day-ahead basis to minimize the transformer loss-of-life. The results obtained from the proposed NARX model are encouraging and the model successfully forecasts the load for three days with a mean absolute percentage error (MAPE) of 6.17%.
机译:分配变压器(DT)过载管理是城市地区电池储能系统(BESS)的有希望的应用,具有空间限制和越来越多的负荷。但是,必须优化BESS操作,以确保对电池循环和DT寿命的最小影响。因此,前方调度策略可以允许贝尔斯维持其充电状态并识别到迎合的关键负载峰,以确保DT上的最小应力。本工作提出了一种非线性归类与外源投入(NARX)框架进行短期负荷预测。非线性由人工神经网络近似。该方法使用新德里,印度和相应的天气数据的分配实用程序的经过电力消耗数据来预测对服务局部的特定DT的未来负载需求。从所提出的方法获得的结果用于在前方的一天内定义贝尔斯的充电/放电水平,以最小化变压器寿命。从所提出的鼻梁模型获得的结果是令人鼓舞的,并且模型成功预测了载荷三天,其平均绝对百分比误差(MAPE)为6.17%。

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