Affiliation:
1. Shanghai Jiao Tong University
Abstract
Abstract
In the actual mechanical processing of difficult-to-process materials, normal or abnormal tool wear can lead to processing pauses or terminations, which seriously affects the processing accuracy and efficiency of workpieces, leading to workpiece scrapping. Therefore, predicting and monitoring tool wear during the actual machining process plays a crucial role in controlling tool costs and avoiding workpiece losses caused by tool wear. This paper proposed a tool wear prediction model based on power signals, which predicts tool wear by establishing a mapping between power signals and tool wear. Through drilling experiments for model calibration and validation, verifying that the proposed model can effectively predict tool wear under different parameters. In addition, a tool wear monitoring method using power signals is proposed and implemented for real-time monitoring of tool wear during machining.
Publisher
Research Square Platform LLC