Rolling bearing fault diagnosis based on quantum LS-SVM

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Abstract

Rolling bearing is an indispensable part of the contemporary industrial system, and its working conditions affect the state of the entire industrial system. Therefore, there is great engineering value to researching and improving the fault diagnosis technology of rolling bearings. However, with the involvement of the whole mechanical equipment, we need to have a large quantity of data to support the accuracy of fault diagnosis, while the efficiency of classical machine learning algorithms is poor in processing big data, and huge amount of computing resources is required. To solve this problem, this paper combines the HHL algorithm in quantum computing with the LS-SVM algorithm in machine learning and proposes a fault diagnosis model based on a quantum least square support vector machine (QSVM). Based on experiments simulated on analog quantum computers, we demonstrate that our fault diagnosis based on QSVM is feasible, and it can play a far superior advantage over the classical algorithm in the context of big data.

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Li, Y., Song, L., Sun, Q., Xu, H., Li, X., Fang, Z., & Yao, W. (2022). Rolling bearing fault diagnosis based on quantum LS-SVM. EPJ Quantum Technology, 9(1). https://doi.org/10.1140/epjqt/s40507-022-00137-y

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