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Multi-Channel Fusion Classification Method Based on Time-Series Data

机译:基于时序数据的多通道融合分类方法

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摘要

Time-series data generally exists in many application fields, and the classification of time-series data is one of the important research directions in time-series data mining. In this paper, univariate time-series data are taken as the research object, deep learning and broad learning systems (BLSs) are the basic methods used to explore the classification of multi-modal time-series data features. Long short-term memory (LSTM), gated recurrent unit, and bidirectional LSTM networks are used to learn and test the original time-series data, and a Gramian angular field and recurrence plot are used to encode time-series data to images, and a BLS is employed for image learning and testing. Finally, to obtain the final classification results, Dempster–Shafer evidence theory (D–S evidence theory) is considered to fuse the probability outputs of the two categories. Through the testing of public datasets, the method proposed in this paper obtains competitive results, compensating for the deficiencies of using only time-series data or images for different types of datasets.
机译:时间序列数据一般存在于许多应用领域,以及时间序列数据的分类是时间序列数据挖掘中的重要研究方向之一。在本文中,单变量的时间序列数据被作为研究对象,深学习和广泛的学习系统(BLSS)是用于探索的多模态的时间序列数据的特征的分类的基本方法。长短期记忆(LSTM),门控重复单元,和双向LSTM网络被用于学习和测试原始时间序列数据,和一个Gramian矩阵场角和递归图用于编码的时间序列数据,以图像和一个BLS被用于图像的学习和测试。最后,为了获得最终的分类结果,DS证据证据理论(d-S证据理论)被认为是融合两个类别的概率的输出。通过公共数据集的测试,在本文提出的方法获得有竞争力的结果,补偿仅使用时间序列数据或图像针对不同类型的数据集的缺陷。

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