Abstract
Repairable systems used in an industry work under differing environmental conditions such as usages, loads, stresses, temperatures, pressures and under dissimilar operating and maintenance conditions at diverse sites. These factors have an effect on their working and play a role in hastening or slowing down system deterioration leading to failure. Identifying the significant factors which effect the failure process and understanding their impact will help in improving the reliability of these systems. In this paper, accelerated failure time models, incorporating both corrective and preventive maintenance for repairable systems subject to imperfect repair, are proposed to quantify the effects of the significant factors which influence their failure process and assess how this information can be used to improve the reliability of the system.
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Syamsundar, A., Naikan, V.N.A., Couallier, V. (2020). Accelerated Failure Time Models with Corrective and Preventive Maintenance for Repairable Systems Subject to Imperfect Repair. In: Varde, P., Prakash, R., Vinod, G. (eds) Reliability, Safety and Hazard Assessment for Risk-Based Technologies. Lecture Notes in Mechanical Engineering. Springer, Singapore. https://doi.org/10.1007/978-981-13-9008-1_12
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DOI: https://doi.org/10.1007/978-981-13-9008-1_12
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