基于进化神经网络的电价预测

D. Srinivasan, F. Yong, A. Liew
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引用次数: 13

摘要

进化技术具有有效的搜索空间探索能力,具有与问题相对应的种群模型。它们捕捉系统变量之间的非线性依赖关系的能力吸引了经济分析师将其用于金融时间序列预测领域。虽然隐藏层中有足够数量神经元单元的简单神经网络能够跟踪任何确定性系统的动态,但权值搜索空间过于复杂,无法使用简单的基于反向传播的训练算法进行搜索。本文提出并评估了寻找神经网络最优权值的两种替代方法,以捕获电价数据的混沌动态。第一种方法采用进化算法对神经网络进行进化,第二种方法采用粒子群算法对神经网络进行训练。这些进化方法的全局搜索能力被用于寻找最优神经网络来预测加州电力交易所的电价。
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Electricity Price Forecasting Using Evolved Neural Networks
Evolutionary techniques have capabilities of efficient search space exploration with population models corresponding to the problem. Their ability to capture the non linear dependencies among the system variables has invited economic analysts towards their use in the field of financial time series prediction. Although simple neural networks with sufficient number neuron units in the hidden layer are capable of following dynamics of any deterministic system, the weight search space becomes too complex to be searched using a simple back propagation based training algorithm. This paper presents and evaluates two alternative methods for finding the optimum weights of a neural network to capture the chaotic dynamics of electricity price data. The first method uses evolutionary algorithm to evolve a neural network, and the second method uses particle swarm optimization for NN training. The global search capabilities of these evolutionary methods is used for finding the optimum neural network for forecasting electricity price from the California Power Exchange.
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