Fanghong Jian, Jiangfeng Li, Xiaomei Liu, Qiong Wu, Dan Zhong
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引用次数: 0
Abstract
Deng’s grey relational analysis (GRA) model is widely used in clustering because of its simple mathematical mechanisms. For sample data of different dimensions, people have put forward different Deng’s GRA models, including time series data, panel data, and panel time series data. The purpose of this paper is to improve the clustering accuracy of the existing Deng’s GRA model for panel data in order to overcome some of its shortcomings. Firstly, the existing Deng’s GRA model for panel data was tested based on the dataset LP1 of Robot Execution Failures. Then, according to the test results, the existing Deng’s GRA model for panel data is modified by means of Taylor’s formula, and the modified model is successfully validated by the dataset LP1 of Robot Execution Failures. Finally, as a practical application, the modified Deng’s GRA model for panel data is applied to assess the water environment of Poyang Lake over the past five years. Compared with other cluster methods, the results of the case study show that the modified Deng’s GRA model for panel data is applicable and also confirm the remarkable effectiveness of the Chinese government’s water quality regulation in Poyang Lake. Therefore, the modified Deng’s GRA model presented in this paper improves the clustering accuracy compared to the original model and can be applied well to the classification of data with a large dimension.
邓氏灰色关系分析(GRA)模型因其简单的数学机制而被广泛应用于聚类分析。针对不同维度的样本数据,人们提出了不同的邓氏 GRA 模型,包括时间序列数据、面板数据和面板时间序列数据。本文旨在改进现有 Deng's GRA 模型对面板数据的聚类精度,以克服其存在的一些不足。首先,以机器人执行故障数据集 LP1 为基础,对现有的面板数据 Deng's GRA 模型进行了测试。然后,根据测试结果,利用泰勒公式对现有的 Deng 面板数据 GRA 模型进行修正,并通过机器人执行故障数据集 LP1 成功验证了修正后的模型。最后,在实际应用中,将改进后的面板数据邓氏 GRA 模型用于评估鄱阳湖近五年的水环境状况。与其他聚类方法相比,案例研究结果表明,修正的邓氏面板数据 GRA 模型是适用的,同时也证实了中国政府对鄱阳湖水质监管的显著成效。因此,本文提出的改进型邓氏 GRA 模型与原始模型相比提高了聚类精度,可以很好地应用于大维度数据的分类。
期刊介绍:
Processes (ISSN 2227-9717) provides an advanced forum for process related research in chemistry, biology and allied engineering fields. The journal publishes regular research papers, communications, letters, short notes and reviews. Our aim is to encourage researchers to publish their experimental, theoretical and computational results in as much detail as necessary. There is no restriction on paper length or number of figures and tables.