Tribology Research Institute, State Key Laboratory of Traction Power, Southwest Jiaotong University, Chengdu 610031, China.
China Railway Engineering Equipment Group Technical Service Co., Ltd., Zhengzhou 450000, China.
Sensors (Basel). 2022 Sep 4;22(17):6686. doi: 10.3390/s22176686.
Carrying out status monitoring and fault-diagnosis research on cutter-wear status is of great significance for real-time understanding of the health status of Tunnel Boring Machine (TBM) equipment and reducing downtime losses. In this work, we proposed a new method to diagnose the abnormal wear state of the disc cutter by using brain-like artificial intelligence to process and analyze the vibration signal in the dynamic contact between the disc cutter and the rock. This method is mainly aimed at realizing the diagnosis and identification of the abnormal wear state of the cutter, and is not aimed at the accurate measurement of the wear amount. The author believes that when the TBM is operating at full power, the cutting forces are very high and the rock is successively broken, resulting in a complex circumstance, which is inconvenient to vibration signal acquisition and transmission. If only a small thrust is applied, to make the cutters just contact with the rock (less penetration), then the cutters will run more smoothly and suffer less environmental interference, which would be beneficial to apply the method proposed in this paper to detect the state of the cutters. A specific example was to use the frequency-domain characteristics of the periodic vibration waveform during the contact between the cutter and the granite to identify the wear status (including normal wear state, wear failure state, angled wear failure state) of the disc cutter through the artificial neural network, and the diagnosis accuracy rate is 90%.
对刀具磨损状态进行状态监测和故障诊断研究,对于实时了解盾构机设备的健康状况,减少停机损失具有重要意义。在这项工作中,我们提出了一种新的方法,通过使用类脑人工智能处理和分析盘形刀具与岩石动态接触过程中的振动信号,来诊断盘形刀具的异常磨损状态。该方法主要针对刀具异常磨损状态的诊断和识别,而不是针对刀具磨损量的精确测量。作者认为,当盾构机满功率运行时,切削力非常高,岩石被连续破碎,导致环境复杂,不便于采集和传输振动信号。如果只施加较小的推力,使刀具刚好与岩石接触(切入深度较小),则刀具运行会更加平稳,受到的环境干扰较小,这将有利于应用本文提出的方法来检测刀具的状态。一个具体的例子是,利用刀具与花岗岩接触过程中的周期性振动波形的频域特征,通过人工神经网络识别盘形刀具的磨损状态(包括正常磨损状态、磨损失效状态、偏磨失效状态),诊断准确率达到 90%。