留言板

尊敬的读者、作者、审稿人, 关于本刊的投稿、审稿、编辑和出版的任何问题, 您可以本页添加留言。我们将尽快给您答复。谢谢您的支持!

姓名
邮箱
手机号码
标题
留言内容
验证码

SOM与EWMA在滚动直线导轨故障预测中的应用

钟健康 陈元华 张瑞宾

钟健康, 陈元华, 张瑞宾. SOM与EWMA在滚动直线导轨故障预测中的应用[J]. 机械科学与技术, 2022, 41(2): 278-287. doi: 10.13433/j.cnki.1003-8728.20200343
引用本文: 钟健康, 陈元华, 张瑞宾. SOM与EWMA在滚动直线导轨故障预测中的应用[J]. 机械科学与技术, 2022, 41(2): 278-287. doi: 10.13433/j.cnki.1003-8728.20200343
ZHONG Jiankang, CHEN Yuanhua, ZHANG Ruibin. Application of SOM and EWMA in Fault Prediction of Rolling Linear Guideway[J]. Mechanical Science and Technology for Aerospace Engineering, 2022, 41(2): 278-287. doi: 10.13433/j.cnki.1003-8728.20200343
Citation: ZHONG Jiankang, CHEN Yuanhua, ZHANG Ruibin. Application of SOM and EWMA in Fault Prediction of Rolling Linear Guideway[J]. Mechanical Science and Technology for Aerospace Engineering, 2022, 41(2): 278-287. doi: 10.13433/j.cnki.1003-8728.20200343

SOM与EWMA在滚动直线导轨故障预测中的应用

doi: 10.13433/j.cnki.1003-8728.20200343
基金项目: 

2019年度广西高校中青年教师科研基础能力提升项目 2019KY0819

详细信息
    作者简介:

    钟健康(1990-), 助教, 硕士, 研究方向为机械系统智能故障诊断与预测, jiankang.zhong@foxmail.com

  • 中图分类号: TP277

Application of SOM and EWMA in Fault Prediction of Rolling Linear Guideway

  • 摘要: 提出了一种基于机器学习的滚动直线导轨故障预测集成方法。首先,通过寿命试验,对由三轴加速度传感器采集的振动信号进行小波包分解,提取分部能量作为信号特征;其次,运用提取的特征训练自组织映射(Self-organizing map,SOM)神经网络,应用训练后的SOM识别线轨健康状态;最后,使用最小量化误差与指数加权移动平均控制图(Exponentially weighted moving-average,EWMA)实现动态故障预警。该方法将SOM与小波包分解相结合,选用最小量化误差构建EWMA控制图,解决了线轨状态监测可视化与疲劳程度数值评定问题,验证了该集成方法用于直线导轨故障预测的有效性。
  • 图  1  滚动直线导轨故障预警方法流程图

    图  2  滚动直线导轨寿命试验设备与布局

    图  3  三级小波包分解二叉树

    图  4  SOM网络结构与神经元晶格阵列

    图  5  BMU识别与SOM网络训练过程

    图  6  EWMA控制图对MQE监测过程

    图  7  小波包分解系数频谱图与分量时域信息

    图  8  构建的SOM神经网络相关结构

    图  9  U矩阵与特征分量矩阵

    图  10  U矩阵状态分区和试件14退化疲劳轨迹

    图  11  试件2与试件14的MQE值时间序列

    图  12  测试组试件使用EWMA控制图监测概况

    表  1  滚动直线导轨寿命试验数据概览

    试验线轨序号 出现故障时观察组序数 出现故障时已运行距离/km 试验批次 所属组别
    1 105 2 127 1 训练组
    2 116 2 553 1 测试组
    3 78 1 563 1 验证组
    4 114 2 482 1 训练组
    5 90 1 816 1 验证组
    6 68 1 352 1 训练组
    7 85 1 728 1 测试组
    8 96 1 909 1 验证组
    9 54 1 086 2 训练组
    10 64 1 236 2 测试组
    11 74 1 473 2 验证组
    12 85 1 708 2 验证组
    13 61 1 187 2 训练组
    14 97 1 920 2 测试组
    15 79 1 602 2 验证组
    16 88 1 773 2 测试组
    17 58 1 167 3 验证组
    18 111 2 466 3 测试组
    19 93 1 864 3 训练组
    20 82 1 651 3 验证组
    21 106 2 148 3 训练组
    22 30 463 3 测试组
    23 99 1 966 3 测试组
    24 95 1 893 3 训练组
    下载: 导出CSV

    表  2  测试组与验证组试件故障预警概况

    试验线轨序号 触发故障预警时观察组序数 触发故障预警时已运行距离/km 实际出现故障时观察组序数 实际出现故障时已运行距离/km 触发故障预警时剩余寿命/km 组别
    2 112 2 340 116 2553 213 测试组
    7 84 1 680 85 1728 48 测试组
    10 55 1 106 64 1236 130 测试组
    14 82 1 642 97 1920 278 测试组
    16 85 1 726 88 1773 47 测试组
    18 75 1 492 111 2466 974 测试组
    22 28 432 30 463 31 测试组
    23 93 1 864 99 1966 102 测试组
    3 75 1 502 78 1563 61 验证组
    5 89 1 796 90 1816 20 验证组
    8 82 1 631 96 1909 278 验证组
    11 69 1 370 74 1473 103 验证组
    12 61 1 222 85 1708 486 验证组
    15 76 1 540 79 1602 62 验证组
    17 56 1 125 58 1167 42 验证组
    20 78 1 570 82 1651 81 验证组
    下载: 导出CSV
  • [1] ZOU H T, WANG B L. Investigation of the contact stiffness variation of linear rolling guides due to the effects of friction and wear during operation[J]. Tribology International, 2015, 92: 472-484 doi: 10.1016/j.triboint.2015.07.005
    [2] ZHENG J D, PAN H Y, CHENG J S. Rolling bearing fault detection and diagnosis based on composite multiscale fuzzy entropy and ensemble support vector machines[J]. Mechanical Systems and Signal Processing, 2017, 85: 746-759 doi: 10.1016/j.ymssp.2016.09.010
    [3] SAUCEDO-DORANTES J J, DELGADO-PRIETO M, ORTEGA-REDONDO J A, et al. Multiple-fault detection methodology based on vibration and current analysis applied to bearings in induction motors and gearboxes on the kinematic chain[J]. Shock and Vibration, 2016, 2016: 5467643
    [4] FENG H T, CHEN R, WANG Y W. Feature extraction for fault diagnosis based on wavelet packet decomposition: an application on linear rolling guide[J]. Advances in Mechanical Engineering, 2018, 10(8): 1-12
    [5] 李娟娟, 孟国营, 谢广明, 等. 基于小波包与SOM神经网络的传感器故障诊断[J]. 传感技术学报, 2017, 30(7): 1035-1039 doi: 10.3969/j.issn.1004-1699.2017.07.011

    LI J J, MENG G Y, Xie G M, et al. Sensor fault diagnosis based on wavelet packet and SOM neural network[J]. Chinese Journal of Sensors and Actuators, 2017, 30(7): 1035-1039 (in Chinese) doi: 10.3969/j.issn.1004-1699.2017.07.011
    [6] 夏筱筠, 林浒. 基于自学习SOM和ARMA算法的数控机床滚动轴承健康预警研究[J]. 小型微型计算机系统, 2019, 40(1): 215-220 https://www.cnki.com.cn/Article/CJFDTOTAL-XXWX201901042.htm

    XIA X J, LIN H. Research on health warning for rolling bearing of CNC machine tool based on self-learning SOM and ARMA algorithm[J]. Journal of Chinese Computer Systems, 2019, 40(1): 215-220 (in Chinese) https://www.cnki.com.cn/Article/CJFDTOTAL-XXWX201901042.htm
    [7] BIANCHINI C, IMMOVILLI F, COCCONCELLI M, et al. Fault detection of linear bearings in brushless AC linear motors by vibration analysis[J]. IEEE Transactions on Industrial Electronics, 2011, 58(5): 1684-1694 doi: 10.1109/TIE.2010.2098354
    [8] JÄMSÄ-JOUNELA S L, VERMASVUORI M, ENDÉN P, et al. A process monitoring system based on the Kohonen self-organizing maps[J]. Control Engineering Practice, 2003, 11(1): 83-92 doi: 10.1016/S0967-0661(02)00141-7
    [9] QIU H, LEE J, LIN J, et al. Robust performance degradation assessment methods for enhanced rolling element bearing prognostics[J]. Advanced Engineering Informatics, 2003, 17(3-4): 127-140 doi: 10.1016/j.aei.2004.08.001
    [10] HUANG R Q, XI L F, LI X L, 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 doi: 10.1016/j.ymssp.2005.11.008
    [11] ROBERTS S W. Control chart tests based on geometric moving averages[J]. Technometrics, 1959, 1(3): 239-250 doi: 10.1080/00401706.1959.10489860
    [12] WU H, DAI Y, WANG C, et al. Identification and forewarning of GNSS deformation information based on a modified EWMA control chart[J]. Measurement, 2020, 160: 107854 doi: 10.1016/j.measurement.2020.107854
    [13] QIU P H. Introduction to statistical process control[M]. Boca Raton: Chapman and Hall/CRC, 2013
    [14] MONTGOMERY D C. Introduction to statistical quality control[M]. 6th ed. John Wiley & Sons, Inc., 2009
    [15] 丁宸宇, 岳瑞华, 李远冬. 修正EWMA控制图在MAP中的应用[J]. 火力与指挥控制, 2019, 44(9): 78-82, 87 https://www.cnki.com.cn/Article/CJFDTOTAL-HLYZ201909015.htm

    DING C Y, YUE R H, LI Y D. Application of modified EWMA control chart in MAP[J]. Fire Control & Command Control, 2019, 44(9): 78-82, 87 (in Chinese) https://www.cnki.com.cn/Article/CJFDTOTAL-HLYZ201909015.htm
    [16] VATANEN T, OSMALA M, RAIKO T, et al. Self- organization and missing values in SOM and GTM[J]. Neurocomputing, Vol. 147, 60-70, 2015 doi: 10.1016/j.neucom.2014.02.061
    [17] VESANTO J. Neural network tool for data mining: SOM toolbox[C]//TOOLMET 2000 Symposium-Tool Environments and Development Methods for Intelligent Systems. Oulu, Finland, 2000
  • 加载中
图(12) / 表(2)
计量
  • 文章访问数:  132
  • HTML全文浏览量:  31
  • PDF下载量:  16
  • 被引次数: 0
出版历程
  • 收稿日期:  2020-07-29
  • 刊出日期:  2022-02-25

目录

    /

    返回文章
    返回