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Short-Term Power Load Point Prediction Based on the Sharp Degree and Chaotic RBF Neural Network

机译:基于锐度和混沌RBF神经网络的短期电力负荷点预测

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In order to realize the predicting and positioning of short-term load inflection point, this paper made reference to related research in the field of computer image recognition. It got a load sharp degree sequence by the transformation of the original load sequence based on the algorithm of sharp degree. Then this paper designed a forecasting model based on the chaos theory and RBF neural network. It predicted the load sharp degree sequence based on the forecasting model to realize the positioning of short-term load inflection point. Finally, in the empirical example analysis, this paper predicted the daily load point of a region using the actual load data of the certain region to verify the effectiveness and applicability of this method. Prediction results showed that most of the test sample load points could be accurately predicted.
机译:为了实现短期载荷拐点的预测和定位,本文参考了计算机图像识别领域的相关研究。通过基于锐度算法对原始载荷序列进行变换,得到了载荷锐度序列。然后,基于混沌理论和RBF神经网络,设计了一种预测模型。基于预测模型对负荷急剧度序列进行预测,实现短期负荷拐点的定位。最后,在实证分析中,利用某地区的实际负荷数据预测了某地区的日负荷点,验证了该方法的有效性和适用性。预测结果表明,大多数测试样本加载点都可以准确预测。

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