Long-term Load Forecasting for Optimal Power System Planning and Decision-Making

Hachimenum Nyebuchi Amadi, Oke. I. Awochi, Abam. S. Innocent
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Abstract

Forecasting the future load growth of an area based on its load demand is often a proactive measure to ensure a steady electricity power supply to that area. The study focused on long-term load forecasting for power system planning, specifically examining the electric load demand from consumers on distribution transformers within Port Harcourt City, located in Rivers State, Nigeria. The study encompassed a comprehensive review of both statistical and artificial intelligence-based approaches. Historical load data for distribution transformer readings spanning 2008 to 2017 were acquired from the Port Harcourt Electricity Distribution Company (PHEDC) and subjected to analysis using the curve-fitting technique. For the period between 2015 and 2030, a yearly load forecast simulation was conducted using the Fourier Series model, implemented with MATLAB software. This simulation aimed to provide insights into future load demand, facilitating careful and informed decision-making in the investment, operation, and maintenance of power system equipment. The effectiveness of the forecasting investigation was assessed using the Root Mean Square Error (RMSE), confirming the efficiency, reliability, and validity of the employed model. The study's forecasted results are presented as a valuable guide and practical tool for policymakers and the utility company (PHEDC) to enhance proper planning and decision-making processes. Considering the observed trend in the results, it is suggested that installing additional transformer units in the region would be necessary to alleviate the loads on existing overloaded transformer units within the power system network.
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用于优化电力系统规划和决策的长期负荷预测
根据负荷需求预测一个地区未来的负荷增长通常是确保该地区电力供应稳定的一项积极措施。这项研究的重点是电力系统规划的长期负荷预测,特别是对尼日利亚河流州哈科特港市配电变压器上的用户电力负荷需求进行研究。该研究对基于统计和人工智能的方法进行了全面审查。研究人员从哈科特港配电公司(PHEDC)获取了 2008 年至 2017 年配电变压器读数的历史负荷数据,并使用曲线拟合技术对其进行了分析。在 2015 年至 2030 年期间,使用 MATLAB 软件实施的傅立叶序列模型进行了年度负荷预测模拟。该模拟旨在深入了解未来的负荷需求,以便在电力系统设备的投资、运行和维护方面做出谨慎和明智的决策。使用均方根误差 (RMSE) 评估了预测调查的有效性,确认了所使用模型的效率、可靠性和有效性。研究的预测结果为政策制定者和公用事业公司(PHEDC)提供了宝贵的指导和实用工具,以加强正确的规划和决策过程。考虑到观察到的结果趋势,建议有必要在该地区安装更多变压器单元,以减轻电力系统网络中现有过载变压器单元的负荷。
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