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Optimal Selection of Parameters for Nonuniform Embedding of Chaotic Time Series Using Ant Colony Optimization

机译:基于蚁群算法的混沌时间序列非均匀嵌入参数的最优选择

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摘要

The optimal selection of parameters for time-delay embedding is crucial to the analysis and the forecasting of chaotic time series. Although various parameter selection techniques have been developed for conventional uniform embedding methods, the study of parameter selection for nonuniform embedding is progressed at a slow pace. In nonuniform embedding, which enables different dimensions to have different time delays, the selection of time delays for different dimensions presents a difficult optimization problem with combinatorial explosion. To solve this problem efficiently, this paper proposes an ant colony optimization (ACO) approach. Taking advantage of the characteristic of incremental solution construction of the ACO, the proposed ACO for nonuniform embedding (ACO-NE) divides the solution construction procedure into two phases, i.e., selection of embedding dimension and selection of time delays. In this way, both the embedding dimension and the time delays can be optimized, along with the search process of the algorithm. To accelerate search speed, we extract useful information from the original time series to define heuristics to guide the search direction of ants. Three geometry- or model-based criteria are used to test the performance of the algorithm. The optimal embeddings found by the algorithm are also applied in time-series forecasting. Experimental results show that the ACO-NE is able to yield good embedding solutions from both the viewpoints of optimization performance and prediction accuracy.
机译:最佳的时延嵌入参数选择对混沌时间序列的分析和预测至关重要。尽管已经为常规的均匀嵌入方法开发了各种参数选择技术,但是非均匀嵌入的参数选择的研究进展缓慢。在非均匀嵌入中,这使不同的维度具有不同的时间延迟,对于不同维度的时间延迟的选择提出了组合爆炸的优化难题。为了有效地解决这个问题,本文提出了一种蚁群优化(ACO)方法。利用ACO增量解构造的特性,提出的非均匀嵌入ACO(ACO-NE)将解构造过程分为两个阶段,即,选择嵌入维数和选择时延。这样,可以同时优化嵌入维数和时间延迟,以及算法的搜索过程。为了加快搜索速度,我们从原始时间序列中提取了有用的信息,以定义启发式方法来指导蚂蚁的搜索方向。使用了三个基于几何或模型的标准来测试算法的性能。该算法找到的最优嵌入也可用于时间序列预测。实验结果表明,从优化性能和预测精度两方面来看,ACO-NE都能产生良好的嵌入解。

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