利用神经网络方法进行短期预测

D. Srinivasan, A. Liew, J.S.P. Chen
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引用次数: 11

摘要

电力公司面临的主要问题之一是未知的未来电力需求,需要正确估计。作者描述了一种神经网络方法来改善电力需求的短期预测。该网络基于非统计神经模型,即反向传播,对电力负荷的预测是有效的。负荷被分解为反映白天活动水平差异的日模式、代表一周中某一天对负荷影响的周模式、有关季节性增长的趋势成分和反映由于天气波动而导致的负荷偏差的天气成分。将该网络的性能与一些常用的传统平滑方法和随机方法进行了比较,以证明该方法的优越性
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Short term forecasting using neural network approach
One of the major problems facing the electric utility is the unknown future demand of electricity, which needs to be estimated correctly. The authors describe a neural network approach to improve short term forecasts of electricity demand. This network is based on the nonstatistical neural paradigm, back propagation, which is found to be effective for forecasting of electrical load. The load is decomposed into a daily pattern reflecting the difference in activity level during the day, a weekly pattern representing the day-of-the week effect on load, a trend component concerning the seasonal growth and a weather component reflecting the deviations in load due to weather fluctuations. The performance of this network has been compared with some commonly used conventional smoothing methods, and stochastic methods in order to demonstrate the superiority of this approach.<>
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