An enhanced statistical feature fusion approach using an improved distance evaluation algorithm and weighted K-nearest neighbor for bearing fault diagnosis

Amir Eshaghi Chaleshtori, Abdollah Aghaie

公開日: 2025/9/25

Abstract

Bearings are among the most failure-prone components in rotating machinery, and their condition directly impacts overall performance. Therefore, accurately diagnosing bearing faults is essential for ensuring system stability. However, detecting such malfunctions in noisy environments, where data is collected from multiple sensors, necessitates the extraction and selection of informative features. This paper proposes an improved distance evaluation algorithm combined with a weighted K-nearest neighbor (KNN) classifier for bearing fault diagnosis. The process begins with extracting and integrating statistical features of vibration across the time, frequency, and time-frequency domains. Next, the improved distance evaluation algorithm assigns weights to the extracted features, retaining only the most informative ones by eliminating insensitive features. Finally, the selected features are used to train the weighted KNN classifier. To validate the proposed method, we employ bearing data from the University of Ottawa. The results demonstrate the effectiveness of our approach in accurately identifying bearing faults.

An enhanced statistical feature fusion approach using an improved distance evaluation algorithm and weighted K-nearest neighbor for bearing fault diagnosis | SummarXiv | SummarXiv