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Electricity Price Forecasting Method Based on Quantum Immune Optimization BP Neural Network Algorithm

机译:基于量子免疫优化BP神经网络算法的电力价格预测方法

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This paper presents electricity price forecasting method based on quantum immune optimization Back Propagation (BP) neural network algorithm. The prediction model of electric price can be constructed with BP neural network algorithm, however, the BP neural network is readily trapped in local optimal in the electricity price prediction. With this regard, based on the quantum immune optimization algorithm, a modified BP neural network price prediction method is proposed. A realistic New Zealand power company is used to test the proposed algorithm, the numerical results show that, compared the traditional BP neural network, the proposed quantum immune optimization BP algorithm has much higher accuracy in the prediction of electricity price. Thus, it is a better and more practical pricing prediction method and has better actual prediction effect. And it also demonstrates that this optimization algorithm not only greatly improves the accuracy of electricity price prediction, but also makes the prediction process faster and more efficient, which can effectively reduce errors and shorten the prediction period.
机译:本文介绍了基于量子免疫优化反向传播(BP)神经网络算法的电力价格预测方法。电价的预测模型可以用BP神经网络算法构建,然而,BP神经网络在电价预测中容易被捕获在局部最佳状态。在这方面,基于量子免疫优化算法,提出了一种改进的BP神经网络价格预测方法。一个现实的新西兰电力公司用于测试所提出的算法,数值结果表明,比较传统的BP神经网络,所提出的量子免疫优化BP算法在电价预测中具有更高的准确性。因此,它是一种更好,更实用的定价预测方法,具有更好的实际预测效果。它还表明,这种优化算法不仅大大提高了电价预测的准确性,而且还使预测过程更快,更高效,可以有效地减少误差并缩短预测时段。

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