2024
DOI: 10.1049/2024/6586622
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An Improved Jaccard Coefficient‐Based Clustering Approach with Application to Diagnosis and RUL Estimation

Xiaoqing Li,
Hao Tang,
Hai Wang
et al.

Abstract: Sample clustering techniques play a crucial role in the data‐driven state evaluation of electromechanical equipment, and selecting an appropriate similarity measurement method for sample sets helps improve the clustering performance. The Jaccard coefficient is a commonly employed indicator of similarity for scalar set‐type samples. In this paper, we propose an incremental clustering algorithm for matrix‐type samples by defining an improved Jaccard coefficient. First, a new binary relation is formulated to deri… Show more

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