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复杂系统与复杂性科学  2015, Vol. 12 Issue (4): 97-103    DOI: 10.13306/j.1672-3813.2015.04.014
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基于PSO-BP神经网络的城轨列车转向架轮对轴箱故障预测
尹怀仙1,2, 王凯2, 张铁柱2, 华青松2, 秦勇1, 郭建媛1
1.北京交通大学交通运输学院,北京 100044;
2.青岛大学动力集成与储能系统工程技术研究中心,山东 青岛 266071
Fault Prediction Based on PSO-BP Neural Network About Wheel and Axle Box of Bogie in Urban Rail Train
YIN Huaixian1,2, WANG Kai2, ZHANG Tiezhu2, HUA Qingsong2, QIN Yong1, GUO Jianyuan1
1. School of Traffic and Transportation Beijing Jiaotong University,Beijing 100044, China;
2. Dynamic Integration and Energy Storage Systems Engineering Technology Research Center, Qingdao University, Qingdao 266071, China
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摘要 为更好地预测城轨列车故障率,提出基于粒子群算法优化的BP神经网络(PSO-BP)的故障率预测模型,对城轨列车转向架轮对轴箱进行故障率预测。采用Matlab中的Newff函数,运用误差反向传播神经网络(BP)和粒子群算法优化的BP神经网络(PSO-BP)分别对城轨列车故障率预测、建模和仿真。结果表明PSO改进的BP神经网络故障率预测模型的效果明显优于传统BP神经网络预测模型。
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尹怀仙
王凯
张铁柱
华青松
秦勇
郭建媛
关键词 城轨列车轮对轴箱故障率预测BP神经网络PSO    
Abstract:In order to better predict failure rate of urban rail trains, the paper proposes a fault predict model based on PSO-BP neural network. Using Matlab with Newff function, failure rate prediction of urban rail train is modeled and simulated using the error back propagation (BP) neural network and BP neural network based on particle swarm algorithm optimization (PSO-BP).The simulation results show that the effect of failure rate predictive model with PSO-BP neural network is better than BP neural network. As a result, PSO-BP neural network is chosen as the failure rate predictive model and the theoretical basis for the decision of preventive maintenance.
Key wordsurban rail train    wheel on the axle box system    failure rate prediction    BP neural network    PSO
收稿日期: 2015-05-28      出版日期: 2026-06-22
ZTFLH:  U270.1  
基金资助:国家科技支撑计划(2011BAG01B05)
通讯作者: 秦勇(1971-),男,江苏徐州人,博士,教授,主要研究方向为交通运输信息工程与安全保障。   
作者简介: 尹怀仙(1981-),女,山东胶州人,博士研究生,工程师,主要研究方向为成规车辆可靠性。
引用本文:   
尹怀仙, 王凯, 张铁柱, 华青松, 秦勇, 郭建媛. 基于PSO-BP神经网络的城轨列车转向架轮对轴箱故障预测[J]. 复杂系统与复杂性科学, 2015, 12(4): 97-103.
YIN Huaixian, WANG Kai, ZHANG Tiezhu, HUA Qingsong, QIN Yong, GUO Jianyuan. Fault Prediction Based on PSO-BP Neural Network About Wheel and Axle Box of Bogie in Urban Rail Train[J]. Complex Systems and Complexity Science, 2015, 12(4): 97-103.
链接本文:  
https://fzkx.qdu.edu.cn/CN/10.13306/j.1672-3813.2015.04.014      或      https://fzkx.qdu.edu.cn/CN/Y2015/V12/I4/97
[1] 谌爱文.基于BP和RBF神经网络的数据预测方法研究[D].长沙:中南大学,2007.
Zhan Aiwen.Data forecasting methods research based on BP ANN and RBF ANN[D].Changsha: Journal of Central South University,2007.
[2] Pham H T,Yang B S.Estimation and forecasting of machine health condition using.ARMA/GARCH model[J].Mechanical Systems and Signal Processing,2010,24(2):546-558.
[3] Chen Z S,Yang Y M,Hu Z,et al.Detecting and predicting early faults of complex rotating machinery based on cyclostationary time series model[J].Journal of Vibration and Acoustics,2006,128(5):666-671.
[4] Pieter-Jan Vlok,Maciej wnek,Maciej Zygmunt.Utilising statistical residual life estimates of bearings to quantify the influence of preventive maintenance actions[J].Mechanical Systems and Signal Processing,2004,18: 833-847.
[5] 李建伟,程晓卿,秦勇,等.基于BP神经网络的城市轨道交通车辆可靠性预测[J].中南大学学报(自然科学版),2013,(S1):42-46.
Li Jianwei,Cheng Xiaoqing,Qin Yong,et al.Reliability prediction based on the BP neural network of urban rail transit vehicle[J].Journal of Central South University:Science and Technology,2013,(S1):42-46.
[6] 李瑞莹,康锐.基于ARMA模型的故障率预测方法研究[J].系统工程与电子技术,2009,30(8):1588-1591.
Li Ruiying,Kang Rui.Research on failure rate forecasting method based Oil ARMA model[J].Systems Engineering and Electronics,2009,30(8):1588-1591.
[7] Huang R,Xi L,Li X,et al.Residual life predictions for ball bearings based on self-organizing map and back propagation neural network methods[J].Mechanical Systems and Signal Processing,2007,21(1):193-207.
[8] Kutylowska,Malgorzata.Neural network approach for failure rate prediction[J].Engineering Failure Analysis, 2015,47(1):41-48.
[9] 余江.地铁车辆关键系统可靠性分析及应用研究[D].北京:北京交通大学,2012.
Yu Jiang. Reliability analysis and application research of Metro key system[D].Beijing:Beijing Jiaotong University,2012.
[10] 郭阳明,冉从宝,姬昕禹,等.基于组合优化BP神经网络的模拟电路故障诊断[J].西北工业大学学报,2013,31(1):44-48.
Guo Yangming,Ran Congbao,Ji Xinyu,et al.Fault diagnosis in analog circuits based on combined·optimization BP neural networks[J].Journal of Northwestern Polytechnical University,2013,31(1):44-48.
[11] 龙泉,刘永前,杨勇平.基于粒子群优化BP神经网络的风电机组齿轮箱故障诊断方法[J].太阳能学报,2012,33(1):120-123.
Long Quan,Liu Yongqian,Yang Yongping.Fault diagnosis method of wind turbine gearbox based on BP neural network trained by particle swarm optimization algorithm[J].Acta Energiae Solaris Sinica,2012,33(1):120-123.
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