Application of Fuzzy C-Mean Clustering Based on Multi-Polar Fuzzy Entropy Improvement in Dynamic Truck Scale Cheating Recognition

In the big data background, the uncertainty of data is increasingly apparent. Multi-polar fuzzy feature of data has been more popularly used by the research community for the purpose of the classification of weighing cheating in dynamic truck scale characteristic and the clustering problem of multi-...

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Main Authors: Zhenyu Lu, Xianyun Huang
Format: Article
Language:English
Published: Atlantis Press 2020-10-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/125944791/view
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spelling doaj-0689f81700664f39bcdb4c2189c0499d2020-11-25T03:10:18ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832020-10-0113110.2991/ijcis.d.200923.001Application of Fuzzy C-Mean Clustering Based on Multi-Polar Fuzzy Entropy Improvement in Dynamic Truck Scale Cheating RecognitionZhenyu LuXianyun HuangIn the big data background, the uncertainty of data is increasingly apparent. Multi-polar fuzzy feature of data has been more popularly used by the research community for the purpose of the classification of weighing cheating in dynamic truck scale characteristic and the clustering problem of multi-polar fuzzy feature information. Additionally, the traditional classification method leads to slow speed and inaccuracy because of its difficulties. Therefore, by considering a multi-polar fuzzy feature classification of defects, a fuzzy c-means ( FCM) clustering algorithm based on multi-polar fuzzy entropy is proposed. Firstly, according to the evaluation of available characteristics, the characteristic value of clustering samples is established. Secondly, we calculated the multi-polar fuzzy entropy of clustering samples. Finally, an improved FCM clustering algorithm based on multi-polar fuzzy entropy is presented. The experimental results of the data set collected from 5 different types of weighing cheating cars demonstrate that the algorithm improves the classification accuracy of FCM with multi-polar fuzzy feature information clustering and reduces significantly both the number of iterations and the classification time.https://www.atlantis-press.com/article/125944791/viewMulti-polar fuzzy entropyFuzzy C-means clusteringMulti-polar fuzzy featureDynamic truck scale
collection DOAJ
language English
format Article
sources DOAJ
author Zhenyu Lu
Xianyun Huang
spellingShingle Zhenyu Lu
Xianyun Huang
Application of Fuzzy C-Mean Clustering Based on Multi-Polar Fuzzy Entropy Improvement in Dynamic Truck Scale Cheating Recognition
International Journal of Computational Intelligence Systems
Multi-polar fuzzy entropy
Fuzzy C-means clustering
Multi-polar fuzzy feature
Dynamic truck scale
author_facet Zhenyu Lu
Xianyun Huang
author_sort Zhenyu Lu
title Application of Fuzzy C-Mean Clustering Based on Multi-Polar Fuzzy Entropy Improvement in Dynamic Truck Scale Cheating Recognition
title_short Application of Fuzzy C-Mean Clustering Based on Multi-Polar Fuzzy Entropy Improvement in Dynamic Truck Scale Cheating Recognition
title_full Application of Fuzzy C-Mean Clustering Based on Multi-Polar Fuzzy Entropy Improvement in Dynamic Truck Scale Cheating Recognition
title_fullStr Application of Fuzzy C-Mean Clustering Based on Multi-Polar Fuzzy Entropy Improvement in Dynamic Truck Scale Cheating Recognition
title_full_unstemmed Application of Fuzzy C-Mean Clustering Based on Multi-Polar Fuzzy Entropy Improvement in Dynamic Truck Scale Cheating Recognition
title_sort application of fuzzy c-mean clustering based on multi-polar fuzzy entropy improvement in dynamic truck scale cheating recognition
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2020-10-01
description In the big data background, the uncertainty of data is increasingly apparent. Multi-polar fuzzy feature of data has been more popularly used by the research community for the purpose of the classification of weighing cheating in dynamic truck scale characteristic and the clustering problem of multi-polar fuzzy feature information. Additionally, the traditional classification method leads to slow speed and inaccuracy because of its difficulties. Therefore, by considering a multi-polar fuzzy feature classification of defects, a fuzzy c-means ( FCM) clustering algorithm based on multi-polar fuzzy entropy is proposed. Firstly, according to the evaluation of available characteristics, the characteristic value of clustering samples is established. Secondly, we calculated the multi-polar fuzzy entropy of clustering samples. Finally, an improved FCM clustering algorithm based on multi-polar fuzzy entropy is presented. The experimental results of the data set collected from 5 different types of weighing cheating cars demonstrate that the algorithm improves the classification accuracy of FCM with multi-polar fuzzy feature information clustering and reduces significantly both the number of iterations and the classification time.
topic Multi-polar fuzzy entropy
Fuzzy C-means clustering
Multi-polar fuzzy feature
Dynamic truck scale
url https://www.atlantis-press.com/article/125944791/view
work_keys_str_mv AT zhenyulu applicationoffuzzycmeanclusteringbasedonmultipolarfuzzyentropyimprovementindynamictruckscalecheatingrecognition
AT xianyunhuang applicationoffuzzycmeanclusteringbasedonmultipolarfuzzyentropyimprovementindynamictruckscalecheatingrecognition
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