基于模糊推理系统的智能传感器融合加工过程中表面粗糙度估计

R. K. Barai, T. Tjahjowidodo, Bobby K. Pappachan
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引用次数: 4

摘要

为了最大限度地降低制造成本,任何加工过程的表面粗糙度测量对于首先获得正确尺寸和表面光洁度的组件或部件至关重要。基于使用切削参数估计表面粗糙度的加工过程监控是不准确的。本文研究了一种基于智能传感器融合模型的模糊推理系统,用于加工过程中表面粗糙度的间接测量。在所提出的技术中,测量了车削过程中的速度力分量、径向力分量、进给力分量、振动和声发射传感器输入。将结果与使用切削参数作为输入的二阶回归模型估计的表面粗糙度进行了比较。在仿真环境下,该方法对表面粗糙度的估计有很大的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy inference system based intelligent sensor fusion for estimation of surface roughness in machining process
Measurement of surface roughness of any machining process is crucial for obtaining a component or part of the correct size and surface finish in the first instance, in order to minimize the manufacturing cost. In-process monitoring of machining processes based on an estimation of the surface roughness using the cutting parameters is inaccurate. In this investigation, a fuzzy inference system based on an intelligent sensor fusion model has been developed for the purpose of in-process indirect measurement of surface roughness for a machining process. In the proposed technique, measurement of the Speed Force component, Radial Force component, Feed Force component, Vibration, and Acoustic Emission sensor inputs from a turning process have been considered as the inputs. The results have been compared with the surface roughness estimated with a second order regression model using cutting parameters as inputs. The proposed method has shown considerable improvement in the surface roughness estimation in a simulation environment.
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