Assessing the impact of load forecasting accuracy on battery dispatching strategies with respect to Peak Shaving and Time-of-Use (TOU) applications for industrial consumers

V. Papadopoulos, Thijs Delerue, Jurgen Van Ryckeghem, J. Desmet
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引用次数: 6

Abstract

Energy Storage Systems will play crucial role in controlling the grid of the future when increased penetration of renewable energy sources will take place. Especially batteries are expected to occupy a considerable share of the total energy storage market by simultaneously providing services to different stakeholders such as energy producers, transmission/distribution operators, residential, commercial and industrial consumers. Nowadays, Peak shaving and Time-of-Use applications are the most common services that standalone battery storage systems can provide to industrial consumers (without integrated PV-systems and/or wind turbines). A big part of the existing literature addressing such applications aims at developing an offline algorithm for optimal battery deployment based on a known load profile (or accurately predicted) without taking into consideration real time conditions. This paper investigates the impact of industrial load forecasting errors on dispatching strategies of battery storage systems on economically driven peak shaving and Time-of-Use applications. An artificial neural network has been developed and used as a prediction model of an industrial load profile. The neural network was trained, validated and tested on historical load data with time resolution of 15 minutes, provided by the local distribution operator of the Belgian electric grid. The performance of the neural network in terms of output-target regression and mean absolute error is 0.833 and 10.02% respectively. Afterwards, a simulation was carried out comparing four different scenarios of peak shaving. The results show that the prediction accuracy of the presented neural network is not competitive enough. Peak shaving based on predicted profiles becomes reliable for lower forecasting errors. For this purpose, further access into the process and types of loads of the user is required in order to come up with a more sophisticated prediction model.
评估负荷预测准确性对工业用户调峰和分时(TOU)应用的电池调度策略的影响
当可再生能源日益普及时,储能系统将在控制未来电网方面发挥至关重要的作用。特别是电池预计将占据相当大的份额,同时为不同的利益相关者提供服务,如能源生产商、输配电运营商、住宅、商业和工业消费者。如今,调峰和分时应用是独立电池存储系统可以为工业用户提供的最常见的服务(没有集成的光伏系统和/或风力涡轮机)。解决此类应用的现有文献的很大一部分旨在开发基于已知负载轮廓(或准确预测)而不考虑实时条件的最佳电池部署的离线算法。本文研究了工业负荷预测误差对经济驱动的调峰和分时系统调度策略的影响。建立了一种人工神经网络,并将其作为工业负荷分布的预测模型。该神经网络在比利时当地电网运营商提供的15分钟时间分辨率的历史负载数据上进行了训练、验证和测试。神经网络在输出-目标回归和平均绝对误差方面的性能分别为0.833和10.02%。然后,对四种不同的调峰方案进行了仿真比较。结果表明,该神经网络的预测精度不具有足够的竞争力。基于预测曲线的调峰变得可靠,预测误差更小。为此,需要进一步访问用户的流程和负载类型,以便提出更复杂的预测模型。
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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