Trend-guided Small Hydropower System Power Prediction Based on Extreme Learning Machine

Chunjie Lian, Hua Wei, Shengchao Qin, Zongsheng Li
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引用次数: 3

Abstract

A trend-guided extreme learning machine prediction model (TG-ELM) is proposed, which enriches the physical mechanism of the input and output of the traditional extreme learning machine (ELM), and solves the problems that a large amount of raw data in the traditional hydropower prediction model depends on a single data normalization process, which causes the prediction accuracy of the entire prediction model to decrease. The model first smoothed and repaired abnormal output data of the small hydropower group, and then extracted the trend of power change from the processed power curve, and used this trend as a new feature input for the extreme learning machine model to provide a correct and unique prediction trend for the prediction of the extreme learning machine. The model is applied to the power generation forecast of small hydropower groups in Guangxi, which greatly improves the accuracy of the power generation forecast and shortens the calculation time of the forecast. Based on the historical data of the power generation of the small hydropower group in Guangxi in August 2019 for simulation analysis, the root mean square error and average absolute error of the prediction are 4.16 WM and 6.11%, respectively. Compared with prediction methods such as backpropagation neural network and support vector machine, the proposed prediction model has distinct advantages and is more suitable for industrial applications.
基于极限学习机的趋势导向小水电系统功率预测
提出了一种趋势导向的极限学习机预测模型(TG-ELM),丰富了传统极限学习机(ELM)输入输出的物理机制,解决了传统水电预测模型中大量原始数据依赖单一数据归一化过程导致整个预测模型预测精度下降的问题。该模型首先对小水电组异常输出数据进行平滑修复,然后从处理后的功率曲线中提取功率变化趋势,并将此趋势作为极限学习机模型的新特征输入,为极限学习机的预测提供正确且唯一的预测趋势。将该模型应用于广西小水电机组的发电量预测,大大提高了发电量预测的准确性,缩短了预测的计算时间。基于广西小水电集团2019年8月发电量历史数据进行仿真分析,预测均方根误差为4.16 WM,平均绝对误差为6.11%。与反向传播神经网络和支持向量机等预测方法相比,该预测模型具有明显的优势,更适合于工业应用。
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