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基于鲁棒极端学习机的混沌时间序列建模预测
引用本文:沈力华,陈吉红,曾志刚,金健. 基于鲁棒极端学习机的混沌时间序列建模预测[J]. 物理学报, 2018, 67(3): 30501-030501. DOI: 10.7498/aps.67.20171887
作者姓名:沈力华  陈吉红  曾志刚  金健
作者单位:1. 华中科技大学机械科学与工程学院, 武汉 430074;2. 华中科技大学自动化学院, 武汉 430074
基金项目:国家自然科学基金(批准号:51575210)和国家科技重大专项(批准号:2014ZX04001051)资助的课题.
摘    要:针对混沌时间序列预测模型易受异常点影响,导致模型预测精度低的问题,在贝叶斯框架下提出一种鲁棒极端学习机.所提模型将具有重尾分布特性的高斯混合分布作为模型输出似然函数,得到一种对异常点和噪声更具鲁棒性的预测模型.但由于将高斯混合分布作为模型输出似然函数后,模型输出的边缘似然函数变成难以解析处理的形式,因此引入变分方法进行近似推理,实现模型参数的估计.在加入异常点和噪声的情况下,将所提模型应用于大气环流模拟模型方程Lorenz序列以及Rossler混沌时间序列和太阳黑子混沌时间序列的预测中,预测结果验证了所提模型的有效性.

关 键 词:极端学习机  鲁棒  混沌时间序列  预测
收稿时间:2017-08-22

Chaotic time series prediction based on robust extreme learning machine
Shen Li-Hua,Chen Ji-Hong,Zeng Zhi-Gang,Jin Jian. Chaotic time series prediction based on robust extreme learning machine[J]. Acta Physica Sinica, 2018, 67(3): 30501-030501. DOI: 10.7498/aps.67.20171887
Authors:Shen Li-Hua  Chen Ji-Hong  Zeng Zhi-Gang  Jin Jian
Affiliation:1. School of Mechanical Science and Engineering, Huazhong University of Science and Technology, Wuhan 430074, China;2. School of Automation, Huazhong University of Science and Technology, Wuhan 430074, China
Abstract:Chaos is seemingly irregular and analogous to random movement happening in a determinative system in nature,and more and more types and numbers of time series with chaotic characteristics are obtained from the actual systems,such as atmospheric circulation,temperature,rainfall,sunspots,and the Yellow River flow.The chaotic time series prediction has become a research hotspot in recent years.Because neural network can be strongly approximated nonlinearly,it has better prediction performance in the chaotic time series modeling.Extreme learning machine is a kind of neural network, and it is widely used due to its simple structure,high learning efficiency and having global optimal solution.Extreme learning machine initializes the input weight randomly and just adjusts the output weight in the training process,in order to be able to obtain the global optimal solution,so it has faster convergence speed and can overcome the disadvantage of gradient vanishing.Due to the above advantages,in recent years,the improved algorithms of the extreme learning machine have been developed rapidly.However,the traditional training methods of extreme learning machine have very poor robustness and can be affected easily by noise and outliers.And in practical applications,the time series are often contaminated by noise and outliers,so it is important to improve the forecasting model robustness and reduce the influence of noise and abnormal points to obtain better prediction accuracy.In this paper,a robust extreme learning machine is proposed in a Bayesian framework to solve the problem that outliers exist in the training data set.Firstly,the input samples are mapped onto the high-dimensional space,and the output weight of the extreme learning machine is used as the parameter to be estimated,then the proposed model utilizes the more robust Gaussian mixture distribution as the likelihood function of the model output.The marginal likelihood of the model output is analytically intractable for the Gaussian mixture distribution,so a variational procedure is introduced to realize the parameter estimation.In the cases of different noise levels and the different numbers of outliers,the proposed model is compared with the other prediction models.The experimental results of Lorenz,Rossler and Sunspot-Runoff in the Yellow River time series with outliers and noise demonstrate that the proposed robust extreme learning machine model could obtain a better prediction accuracy.The proposed robust extreme learning machine not only has the strong capability of the nonlinear approximation but also can learn the model parameters automatically and has strong robustness.At the same time,the time complexities of different models are compared and the convergence of the proposed model is analyzed at the end of the paper.
Keywords:extreme learning machine  robust  chaotic time series  prediction
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