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A short-term load forecasting model of natural gas based on optimized genetic algorithm and improved BP neural network

机译:基于优化遗传算法和改进BP神经网络的天然气短期负荷预测模型

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摘要

This paper proposes an appropriate combinational approach which is based on improved BP neural network for short-term gas load forecasting, and the network is optimized by the real-coded genetic algorithm. Firstly, several kinds of modifications are carried out on the standard neural network to accelerate the convergence speed of network, including improved additional momentum factor, improved self-adaptive learning rate and improved momentum and self-adaptive learning rate. Then, it is available to use the global search capability of optimized genetic algorithm to determine the initial weights and thresholds of BP neural network to avoid being trapped in local minima. The ability of GA is enhanced by cat chaotic mapping. In light of the characteristic of natural gas load for Shanghai, a series of data preprocessing methods are adopted and more comprehensive load factors are taken into account to improve the prediction accuracy. Such improvements facilitate forecasting efficiency and exert maximum performance of the model. As a result, the integration model improved by modified additional momentum factor gets more ideal solutions for short-term gas load forecasting, through analyses and comparisons of the above several different combinational algorithms.
机译:本文提出了一种基于改进的BP神经网络的短期燃气负荷预测组合方法,并采用实编码遗传算法对该网络进行了优化。首先,对标准神经网络进行了多种修改,以加快网络的收敛速度,包括改善附加动量因子,改善自适应学习率以及改善动量和自适应学习率。然后,可以使用优化遗传算法的全局搜索功能来确定BP神经网络的初始权重和阈值,从而避免陷入局部最小值。通过猫混沌映射增强了GA的能力。根据上海天然气负荷的特点,采用了一系列数据预处理方法,并考虑了更全面的负荷因子,以提高预测的准确性。这种改进有助于预测效率并发挥模型的最大性能。结果,通过对上述几种不同组合算法的分析和比较,改进后的附加动量因子改进的积分模型为短期燃气负荷预测提供了更理想的解决方案。

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