基于遗传算法的组合权值动态优化神经网络集成预测研究

Wang Le
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引用次数: 0

摘要

为了进一步提高短期负荷预测的准确性,对天气和节假日数据进行归一化,分别采用径向基函数、广义回归神经网络和概率神经网络三种方法进行建模和预测,并基于遗传算法进行神经网络集成预测。通过使用正确组合的遗传算法通过优化权值来动态优化该时间的值,结果表明,通过优化组合得到的预测精度比单一方法预测得到了明显的提高。通过两周的负荷预测数据,表明该方法具有预测精度高、性能稳定、精度高和良好的实用性。
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Research of Neural Network Ensemble Forecasting Based on Genetic Algorithm to Optimize the Combination Weights Dynamically
In order to further improve the accuracy of short-term load forecasting, normalized the weather and holidays data, the paper respectively uses three methods of Radial Basis Function, General Regression Neural Network and Probabilistic Neural Network to do modeling and forecasting, and do neural network ensemble forecasting based on genetic algorithm. By using the right combination of genetic algorithm to dynamically optimize the value of that time by optimizing the weights, the results show that, the resulting prediction accuracy by optimizing the combination of more than a single method to predict has been significantly improved. Through the two-week data to predict load, show that the method has prediction accuracy, stable performance, high precision and good practicality.
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