Multivariate time series modeling and prediction based on reservoir independent components

Meiling Xu, Shuhui Zhang, Min Han
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Abstract

This paper presents a multivariate time series modeling and prediction method based on reservoir independent components. As a new type of recurrent neural networks (RNNs), reservoir computing methods have become a new hot topic and attracted wide attention from researchers in the field of time series prediction. It has overcome the problems that traditional gradient descent training algorithms present, for example, the process is computationally expensive, and easy to end in a local minimum. However, there are ill-posed solutions when least square estimation methods are used to calculate the output weights because of the collinear columns or rows in the state matrix. Therefore, we use independent component analysis (ICA) to extract the independent components of the state matrix. In addition, this paper proposes an iterative prediction model based on local error compensation to solve the problem of accumulated errors in multiple-step prediction, in order to realize medium-term prediction. The models have been simulated on benchmark dataset of Lorenz time series and a real-world application of Dalian monthly average temperature-rainfall time series. Simulation results substantiate the proposed methods' effectiveness and characteristics.
基于油藏独立分量的多元时间序列建模与预测
提出了一种基于油藏独立分量的多元时间序列建模与预测方法。储层计算方法作为一种新型的递归神经网络(RNNs),已成为时间序列预测领域的一个新的研究热点,引起了研究者的广泛关注。它克服了传统梯度下降训练算法存在的问题,例如计算量大,容易在局部最小值中结束。然而,由于状态矩阵的列或行共线,使用最小二乘估计方法计算输出权值时存在不适定解。因此,我们使用独立分量分析(ICA)来提取状态矩阵的独立分量。此外,本文提出了一种基于局部误差补偿的迭代预测模型,解决了多步预测中误差累积的问题,实现了中期预测。在Lorenz时间序列的基准数据集和大连市月平均气温-降雨量时间序列的实际应用上对模型进行了模拟。仿真结果验证了所提方法的有效性和特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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