Abstract
In manufacturing processes using computerized numerical control (CNC) machines, machine tools are operated repeatedly for a long period for machining hard and difficult-to-machine materials, such as stainless steel. These operating conditions frequently result in tool breakage. The failure of machine tools significantly degrades the product quality and efficiency of the target process. To solve these problems, various studies have been conducted for detecting faults in machine tools. However, the most related studies used only the univariate signal obtained from CNC machines. The fault-detection methods using univariate signals have a limitation in that multivariate models cannot be applied. This can restrict in performance improvement of the fault detection. To address this problem, we employed empirical mode decomposition to construct a multivariate dataset from the univariate signal. Subsequently, auto-associative kernel regression was used to detect faults in the machine tool. To verify the proposed method, we obtained a univariate current signal measured from the machining center in an actual industrial plant. The experimental results demonstrate that the proposed method successfully detects faults in the actual machine tools.
Funder
Korea Electrotechnology Research Institute
Subject
Process Chemistry and Technology,Chemical Engineering (miscellaneous),Bioengineering
Reference50 articles.
1. Early fault detection of machine tools based on deep learning and dynamic identification;Luo;IEEE Trans. Ind. Electron.,2018
2. Model-based fault-detection and diagnosis—Status and applications;Isermann;Annu. Rev. Control,2005
3. Chiang, L.H., Russell, E.L., and Braatz, R.D. (2000). Fault Detection and Diagnosis in Industrial Systems, Springer Science & Business Media.
4. Advanced monitoring of machining operations;Teti;CIRP Ann.,2010
5. Vibration singularity analysis for milling tool condition monitoring;Zhou;Int. J. Mech. Sci.,2020
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献