Short-Term Electrical Load Forecasting of 150 kV Ternate System Using Optimally Pruned Extreme Learning Machine (OPELM)

None Andi Muhammad Ilyas, None Fahrizal Djohar, None Muhammad Natsir Rahman, None Ansar Suyuti, None Sri Mawar Said, None Indar Chaerah Gunadin, None Satriani Said Akhmad, None Yulinda Sakinah Munim, None Mukhlis Muslimin, None Tanridio Silviati Abdurrahman, None Zulaeha Mabud, None Ramly Rasyid, None Faris Syamsuddin, None Suparman Suparman, None Hafid Syaifuddin
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Abstract

Short-term electrical loads forecasting is one of the most important factors in the design and operation of electrical systems. The purpose of electric load forecasting is to balance electricity demand and electricity supply. The load characteristics of Ternate City vary, so this study uses the Optimally Pruned Extreme Learning Machine (OPELM) method to predict electrical loads. The advantages of OPELM are the fast-learning speed and the selection of the right model, even though the data has a non-linear pattern. The accuracy of the OPELM method can be determined using a comparison method, namely the ELM method. Mean Absolute Percentage Error (MAPE) is used as the accuracy criterion. The results of the comparison of accuracy criteria show that the predictive performance of OPELM is better than that of ELM. The minimum error average of the OPELM forecast test results shows a MAPE of 5,2557%, for Saturday's forecast, while the ELM method gives a MAPE of 6.4278% on the same day.
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基于最优剪枝极限学习机(OPELM)的150 kV电力系统短期负荷预测
短期负荷预测是电力系统设计和运行的重要内容之一。电力负荷预测的目的是平衡电力需求和电力供应。因此,本研究采用最优修剪极限学习机(OPELM)方法进行电力负荷预测。OPELM的优点是学习速度快,即使数据具有非线性模式,也能选择正确的模型。OPELM方法的精度可以通过一种比较方法来确定,即ELM方法。使用平均绝对百分比误差(MAPE)作为精度标准。精度标准的比较结果表明,OPELM的预测性能优于ELM。OPELM预报测试结果的最小误差平均值显示,周六预报的MAPE为5,2557%,而ELM方法在同一天的MAPE为6.4278%。
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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