Fault Diagnosis of Brake Train Based on Multi-Sensor Data Fusion
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Anqi Shangguan | Yongze Jin | Guo Xie | Yankai Li | Xiaohui Zhang | Ning Han | Wenbin Chen | Yongze Jin | Guo Xie | Ning Han | Yankai Li | Anqi Shangguan | Wenbin Chen | Xiaohui Zhang
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