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Sizing the battery energy storage system on a university campus with prediction of load and photovoltaic generation

机译:在大学校园内施加电池储能系统,预测负载和光伏发电

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In this paper, the charge and discharge strategies were conducted for a future battery energy storage system (BESS) at the National Penghu University of Science and Technology. OpenDSS software was used to establish the power distribution system. A probabilistic neural network model was used to predict the daily load and photovoltaic (PV) generation curve for controlling the charge-discharge of the BESS. This study considered both the actual and predicted values of PV generation systems as well as the daily charge-discharge control of the BESS used to balance the peak and off-peak electricity consumption to shave peak loads under the two- and three-phase electricity-pricing methods. The average monthly electric bill and contract capacity were calculated, and the effects of different BESS capacities from the load curve were observed. The results were used to evaluate and determine the capacity required by the BESS. The prediction errors for the load and PV generation of the year were 6.22% and 7.14%, respectively. The electric bills and contract capacities of the actual and predicted values were compared, and the resulting difference was low; this implies that the proposed prediction method is practicable.
机译:在本文中,在全国澎湖科技大学的未来电池储能系统(BESS)进行了收费和放电策略。 Opendss软件用于建立配电系统。概率性神经网络模型用于预测用于控制贝塞的充电放电的日常载荷和光伏(PV)产生曲线。本研究考虑了PV生成系统的实际和预测值,以及用于平衡峰值和非峰值电消耗的BES的每日充放电控制,以在两相和三相电力下刮起峰值载荷 - 定价方法。计算平均每月电费和合同能力,观察到不同冰雹容量的影响。结果用于评估和确定百丝活的能力。该年载量和PV生成的预测误差分别为6.22%和7.14%。比较实际和预测值的电费和合同容量,结果差异低;这意味着所提出的预测方法是切实可行的。

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