利用神经网络预测未来几小时的电力需求

P. Mandal, T. Senjyu, K. Uezato, T. Funabashi
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引用次数: 23

摘要

提出了一种考虑温度作为气候因子的短期负荷预测的实用方法。该方法基于人工神经网络(ANN)结合相似日方法,在非常特殊的区域取得了很好的效果。通过对日本冲绳电力公司的实际数据进行仿真,验证了所提出方法的有效性。预测负荷是由人工神经网络得到的,它是相似日数据的修正输出。利用与预报日天气状况相似的天数信息预测负荷曲线。使用带加权因子的欧几里得范数来评估预测日与先前搜索日之间的相似性。特别注意在夏季、冬季、春季和秋季的不同季节建模的准确性。此外,该预报员功能强大,易于使用,并在天气快速变化的情况下产生准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting several-hours-ahead electricity demand using neural network
This paper presents a practical method for short-term load forecasting considering the temperature as climate factor. The method is based on artificial neural network (ANN) combined similar days approach, which achieved a good performance in the very special region. Performance of the proposed methodology is verified with simulations of actual data pertaining to Okinawa Electric Power Co. in Japan. Forecasted load is obtained from ANN, which is the corrected output of similar days data. Load curve is forecasted by using information of the days being similar to weather condition of the forecast day. An Euclidean norm with weighted factors is used to evaluate the similarity between a forecast day and searched previous days. Special attention was paid to model accurately in different seasons, i.e., summer, winter, spring, and autumn. Moreover, the forecaster is robust, easy to use, and produces accurate results in the case of rapid weather changes.
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