Prediction of Petroleum Price Using Back Propagation Artificial Neural Network Based on Chaotic Self-Adaptive Particle Swarm Algorithm

Mengshan Li, Genqin Sun, Huaijin Zhang, Keming Su, Bingsheng Chen, Yan Wu
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引用次数: 0

Abstract

Petroleum price are affected by some uncertainties and nonlinear factors, how to predict the price effectively is the focus of the present study. In this paper, a 3 layers back propagation artificial neural network model based on particle swarm optimization algorithm combined with chaos theory and self-adaptive weight strategy is developed, the model structure is 7-13-1, and used to predict the petroleum price. By comparing with the other models, it shows that the model proposed in this paper has good prediction performance, the prediction accuracy and correlations are better.
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基于混沌自适应粒子群算法的反向传播人工神经网络石油价格预测
石油价格受到一些不确定性和非线性因素的影响,如何有效地预测石油价格是当前研究的重点。本文结合混沌理论和自适应权值策略,建立了基于粒子群优化算法的3层反向传播人工神经网络模型,模型结构为7-13-1,并用于石油价格预测。通过与其他模型的比较,表明本文模型具有较好的预测性能,预测精度和相关性都较好。
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期刊介绍: The “Italian Journal of Pure and Applied Mathematics” publishes original research works containing significant results in the field of pure and applied mathematics.
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