Int J Performability Eng ›› 2019, Vol. 15 ›› Issue (2): 454-463.doi: 10.23940/ijpe.19.02.p10.454463
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Yuguo Xua*(), Shixin Zhanga, Yong Lia, and Jiawang Liub
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Xu Yuguo
E-mail:mountren@126.com
Yuguo Xu, Shixin Zhang, Yong Li, and Jiawang Liu. Ontology-based Fault Diagnosis and Maintenance Process Generation of Electromechanical System [J]. Int J Performability Eng, 2019, 15(2): 454-463.
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Table 1
Common clutch faults and troubleshooting"
No. | Fault phenomenon | Main reason | Solution |
---|---|---|---|
1 | Incomplete clutch separation | Pipeline sealing | Add refueling and exhaust |
Master cylinder push rod free stroke is too large | Adjust master cylinder push rod stroke | ||
Friction plate warping | Replace friction plate | ||
Control switch is damaged | Replace control switch | ||
2 | Clutch slip | Friction plate with grease or excessive wear | Clean or replace friction plates |
Compression spring is loose or damaged | Replace failed platen or spring | ||
Severe or severe wear of friction plates | Replace damaged friction plates or clutches | ||
Clutch hydraulic cylinder push rod free stroke is not enough | Adjust clutch hydraulic cylinder push rod stroke |
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