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Marine Multiple Time Series Relevance Discovery Based on Complex Network

机译:基于复杂网络的海洋多时间序列相关性发现

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Ocean measuring point is an important way to obtain many kinds of marine data. Reasonable layout of ocean measuring points can efficiently obtain marine data. At present, a marine measuring point can acquire multiple types of marine data, only by comprehensively using multiple types of ocean data we can more effectively discover the relationship between various ocean measuring points. This paper proposes a mapping method for fusion marine multiple time series into an image, and uses the similarity between different images to construct a complex network. Also, We build a complex network of marine multiple time series by selecting appropriate thresholds. Compared with the traditional method, the network constructed by our approach can find more accurate rules.
机译:海洋测量点是获取多种海洋数据的重要途径。海洋测量点的合理布局可以有效地获取海洋数据。目前,海洋测量点可以获取多种海洋数据,只有综合利用多种海洋数据,我们才能更有效地发现各个海洋测量点之间的关系。提出了一种将海洋多个时间序列融合为图像的映射方法,并利用不同图像之间的相似性构造一个复杂的网络。此外,我们通过选择适当的阈值来构建一个由海洋多个时间序列组成的复杂网络。与传统方法相比,我们的方法构建的网络可以找到更准确的规则。

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