Forecasting of Chinese Hydropower Generation Using WASD-Neuronet

Yurong Cheng, Haiting Ye, Xiaoyu Guo, Chuan Ma, Bolin Liao, Long Jin
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Abstract

Hydropower resource is one of the renewable energy sources. With the increasing Chinese economy, people are paying much more attention to sustainable development. The increasing hydropower load is the basis of the development of power industry. Due to the characteristics of electrical energy, predicting the hydropower accurately is a potentially beneficial way to plan hydropower reasonably. This paper presents a neural network method to predict hydropower generation whose data is influenced by several factors such as social economic, population and climate. By using the past 52-year rough data, a 3-layer feedforward neuronet equipped with the weights and structure determination (WASD) method is constructed for the prediction of the Chinese hydropower generation in this paper. By processing mass of data, we could basically predict the hydropower generation using such a WASD neuronet. To a large extent, the trend of developing Chinese hydropower generation in the next years will keep growing.
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基于wasd神经网络的中国水力发电预测
水电资源是可再生能源之一。随着中国经济的不断发展,人们越来越关注可持续发展。水电负荷的不断增加是电力工业发展的基础。由于电能的特性,准确预测水电是合理规划水电的潜在有利途径。本文提出了一种神经网络方法来预测受社会经济、人口和气候等多种因素影响的水力发电。本文利用过去52年的粗糙数据,构建了一个3层前馈神经网络,并结合权值和结构确定(WASD)方法对中国水力发电进行预测。通过对大量数据的处理,我们基本上可以利用WASD神经网络来预测水力发电。在很大程度上,未来几年中国水力发电的发展趋势将持续增长。
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