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A signal-based fault detection and classification method for heavy haul wagons
Authors:Chunsheng Li  Shihui Luo  Colin Cole  Maksym Spiryagin  Yanquan Sun
Institution:1. State Key Laboratory of Traction Power, Southwest Jiaotong University, Chengdu, People's Republic of China;2. Centre for Railway Engineering, CQUniversity, Rockhampton, Australia;3. Centre for Railway Engineering, CQUniversity, Rockhampton, Australia
Abstract:This paper proposes a signal-based fault detection and isolation (FDI) system for heavy haul wagons considering the special requirements of low cost and robustness. The sensor network of the proposed system consists of just two accelerometers mounted on the front left and rear right of the carbody. Seven fault indicators (FIs) are proposed based on the cross-correlation analyses of the sensor-collected acceleration signals. Bolster spring fault conditions are focused on in this paper, including two different levels (small faults and moderate faults) and two locations (faults in the left and right bolster springs of the first bogie). A fully detailed dynamic model of a typical 40t axle load heavy haul wagon is developed to evaluate the deterioration of dynamic behaviour under proposed fault conditions and demonstrate the detectability of the proposed FDI method. Even though the fault conditions considered in this paper did not deteriorate the wagon dynamic behaviour dramatically, the proposed FIs show great sensitivity to the bolster spring faults. The most effective and efficient FIs are chosen for fault detection and classification. Analysis results indicate that it is possible to detect changes in bolster stiffness of ±25% and identify the fault location.
Keywords:Fault detection and isolation  signal based  bolster spring  cross-correlation  three-piece bogie  heavy haul wagon
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