期刊论文详细信息
SN Applied Sciences
Teaching machines to optimizing machining parameters: using independent fuzzy logic controller and image data
Yufan Zheng1  Rafiq Ahmad1  Harshavardhan Mamledesai1 
[1] Laboratory of Intelligent Manufacturing, Design, and Automation (LIMDA), Department of Mechanical Engineering, NW University of Alberta;
关键词: Tool condition monitoring;    Parameter optimization;    Vision systems;    CNN;    Fuzzy logic;   
DOI  :  10.1007/s42452-022-04987-0
来源: DOAJ
【 摘 要 】

Abstract Optimization of machining parameters like cutting speed, feed, and depth of cut is one of the extensively studied fields in the past two decades. While researchers agree optimization of these parameters is essential, there is no conscience as to what the objective of the optimization should be. The studies consider production cost, production time, surface finish, among others, as the objective of parameter optimization, but there are very few studies that consider the manufacturer prescribed tool life as the criteria for parament optimization. Among the methods that do consider tool life as an optimization objective, very few are closed-loop systems and these systems are facing challenges to generalizing when the application changes or the machining material changes or the tool geometry changes. Considering this, a novel image feedback using a convolution neural network-based method combined with principles of fuzzy logic is used to optimize machining parameters. Since the system is based on online feedback from the images of the inserts, it can be used for different materials, and the system is invariant to the different tool geometries and grades as the decisions are based on the wear mechanisms detected. The hybrid system is validated through experimentation for the turning application, but the methodology can be easily adapted for other machining applications.

【 授权许可】

Unknown   

  文献评价指标  
  下载次数:0次 浏览次数:4次