{"title":"Machine-Learning-Based Model Parameter Identification for Cutting Force Estimation","authors":"Junichi Kouguchi, Shingo Tajima, Hayato Yoshioka","doi":"10.20965/ijat.2024.p0026","DOIUrl":null,"url":null,"abstract":"Recently, there has been an increased demand for precise monitoring of the milling process using machine tools through a simple and cost-effective method. Accurate estimation of cutting forces is highly effective for this monitoring, and one approach is the modeling of tool spindles and tables of a machine tool. To model machine structures, well-known methods involving the use of impulse hammer response or structural analysis exist. However, the complex modeling is hard to achieve when using the impulse response. Moreover, it is often considerably difficult to achieve the modeling with structural analysis because the preparation of the accurate model and highly complicated calculations are required. Therefore, in this study, we propose a new monitoring method to identify model parameters of the machine structure and estimate cutting forces. First, a simplified assumed structure is prepared based on locations where sensors can be mounted. Next, measurement data during actual milling process are collected through the acceleration sensors mounted on the tool spindle and the dynamometer for the cutting force attached to the table. Subsequently, model parameters are identified from these data using machine learning. A 3-axis NC milling machine was used to evaluate the application range of the model parameters by changing cutting conditions, milling direction, cutting tools, and materials. The model parameters identified using the proposed method were equivalent to those using the impulse response. Furthermore, even in cases where the impulse response was difficult to identify, suitable model parameters were identified using machine learning. Finally, we confirmed that the proposed method can accurately achieve in-process monitoring of cutting forces in the X, Y, and Z directions.","PeriodicalId":43716,"journal":{"name":"International Journal of Automation Technology","volume":null,"pages":null},"PeriodicalIF":0.9000,"publicationDate":"2024-01-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"International Journal of Automation Technology","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.20965/ijat.2024.p0026","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"AUTOMATION & CONTROL SYSTEMS","Score":null,"Total":0}
引用次数: 0
Abstract
Recently, there has been an increased demand for precise monitoring of the milling process using machine tools through a simple and cost-effective method. Accurate estimation of cutting forces is highly effective for this monitoring, and one approach is the modeling of tool spindles and tables of a machine tool. To model machine structures, well-known methods involving the use of impulse hammer response or structural analysis exist. However, the complex modeling is hard to achieve when using the impulse response. Moreover, it is often considerably difficult to achieve the modeling with structural analysis because the preparation of the accurate model and highly complicated calculations are required. Therefore, in this study, we propose a new monitoring method to identify model parameters of the machine structure and estimate cutting forces. First, a simplified assumed structure is prepared based on locations where sensors can be mounted. Next, measurement data during actual milling process are collected through the acceleration sensors mounted on the tool spindle and the dynamometer for the cutting force attached to the table. Subsequently, model parameters are identified from these data using machine learning. A 3-axis NC milling machine was used to evaluate the application range of the model parameters by changing cutting conditions, milling direction, cutting tools, and materials. The model parameters identified using the proposed method were equivalent to those using the impulse response. Furthermore, even in cases where the impulse response was difficult to identify, suitable model parameters were identified using machine learning. Finally, we confirmed that the proposed method can accurately achieve in-process monitoring of cutting forces in the X, Y, and Z directions.
最近,人们越来越需要通过一种简单、经济的方法来精确监控机床的铣削过程。对切削力的精确估算对这种监控非常有效,其中一种方法是对机床的刀具主轴和工作台进行建模。在机床结构建模方面,众所周知的方法包括使用脉冲锤响应或结构分析。然而,使用脉冲响应很难实现复杂的建模。此外,由于需要准备精确的模型和进行非常复杂的计算,使用结构分析建模往往相当困难。因此,在本研究中,我们提出了一种新的监测方法来确定机床结构的模型参数并估算切削力。首先,根据可安装传感器的位置准备一个简化的假定结构。然后,通过安装在刀具主轴上的加速度传感器和安装在工作台上的切削力测力计,收集实际铣削过程中的测量数据。随后,利用机器学习从这些数据中确定模型参数。使用一台三轴数控铣床,通过改变切削条件、铣削方向、切削刀具和材料来评估模型参数的应用范围。使用建议方法确定的模型参数与使用脉冲响应确定的参数相当。此外,即使在脉冲响应难以确定的情况下,也能通过机器学习确定合适的模型参数。最后,我们证实所提出的方法可以准确地实现对 X、Y 和 Z 方向切削力的过程监控。