Abstract:The maintenance of massive transport vehicles is very important to guarantee the quality of this social service. This paper presents a software tool named ISPMAT able to perform an automatic detection and diagnosis of possible faults in two main components of a train: the compressor and the traction bogie. ISPMAT is based on artificial intelligent techniques: description of the ISPMAT architecture and neural networks and expert systems. This paper includes the some experimental results.
李敏. ISPMAT-适用于城铁列车的预知维修智能系统[J]. 铁道工程学报, 2003, 20(3): 26-30.
LI Min. ISPMAT: INTELLIGENT SYSTEM FOR PREDICTIVE MAINTENANCE APPLIED TO TRAINS. 铁道工程学报, 2003, 20(3): 26-30.
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