会议专题

Condition Monitoring and Life Prediction of Rolling Guide Based on Hybrid Intelligence

  To evaluate accurately working condition of guide,make maintenance strategy,and predict its residual life in the process of machining operation,a rolling guide rail condition monitoring system based on neural networks was constructed after key factors to guide life were investigated carefully.Eight B&K 4321 three-way vibration sensor were installed on slider surface to monitor the on-line condition of four guides and eight sliders.Vibration signals were processed by wavelet packet decomposition and the most sensitive features to guide life were selected by fuzzy clustering method.The relation between guide life and input vectors including vibration features and machining condition was built by radial basis probabilistic neural networks (RBPNN),which parameters were optimized by genetic algorithm.The experimental results show maximum forecast error is 360 hours and minimum forecast error is 63 hours.

Guide Life prediction Probabilistic neural network

Hongli Gao Xiaohui Shi Lingcong Feng Liping Xu

School of Mechanical Engineering, Southwest Jiaotong University, Chengdu, Sichuan, 610031,China

国际会议

the 2010 International Conference on Frontiers of Manufacturing and Design Science(第一届制造与设计科学国际会议(ICFMD 2010))

重庆

英文

2045-2049

2010-12-11(万方平台首次上网日期,不代表论文的发表时间)