Dynamic Bayesian Network-Based Approach by Integrating Sensor Deployment for Machining Process Monitoring
Many condition monitoring systems based on artificial intelligence process models for machining process monitoring have been developed intensively. However, given that machining processes are very complex (i.e., nonlinear and nonstationary), there is still no clear methodology to acquire machining m...
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doaj-b8abaaad94ad49c1b3cb08c16bf4a74e2021-03-29T21:07:30ZengIEEEIEEE Access2169-35362018-01-016333623337510.1109/ACCESS.2018.28462518379429Dynamic Bayesian Network-Based Approach by Integrating Sensor Deployment for Machining Process MonitoringKang He0https://orcid.org/0000-0003-0148-699XZhuanzhe Zhao1Minping Jia2Conghu Liu3https://orcid.org/0000-0001-6298-7988Mine Machinery and Electronic Engineering Research Center, Suzhou University, Suzhou, ChinaSchool of Mechanical Engineering, Southeast University, Nanjing, ChinaSchool of Mechanical Engineering, Southeast University, Nanjing, ChinaSino-US Global Logistics Institute, Shanghai Jiao Tong University, Shanghai, ChinaMany condition monitoring systems based on artificial intelligence process models for machining process monitoring have been developed intensively. However, given that machining processes are very complex (i.e., nonlinear and nonstationary), there is still no clear methodology to acquire machining monitoring systems allowing machining processes to be optimized, predicted, or controlled. In this paper, the coupled hidden Markov model, based on dynamic Bayesian networks, is proposed to monitor a machining process by using multi-directional data fusion and to analyze the effect of the sensor layout on the monitoring accuracy. The features extracted by a singular spectrum and wavelet analysis constitute the input information to the system. The technique is tested and validated successfully by using two scenarios: tool wear condition monitoring (initial wear, gradual wear, or accelerated wear) for the milling process and surface roughness accuracy grade prediction (accuracy grade 9, accuracy grade 8, or accuracy grade 7) for the turning process. In the first case, the maximum recognition rate obtained by the single-sensor placement for tool wear is 83%, whereas in the case of the three-sensor placement, the model recognition rate is 89%. In the second application for turning, the maximum recognition rate obtained by the single-sensor and the double-sensor placements for surface roughness accuracy prediction is 77% and 85%, respectively. In the case of the three-sensor placement, the model recognition rate is 89%. The proposed approach can also be integrated into the diagnosis architecture for condition monitoring in other complex machining systems.https://ieeexplore.ieee.org/document/8379429/Condition monitoringdynamic Bayesian networkcoupled hidden Markov modelsensor deploymentmachining process |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Kang He Zhuanzhe Zhao Minping Jia Conghu Liu |
spellingShingle |
Kang He Zhuanzhe Zhao Minping Jia Conghu Liu Dynamic Bayesian Network-Based Approach by Integrating Sensor Deployment for Machining Process Monitoring IEEE Access Condition monitoring dynamic Bayesian network coupled hidden Markov model sensor deployment machining process |
author_facet |
Kang He Zhuanzhe Zhao Minping Jia Conghu Liu |
author_sort |
Kang He |
title |
Dynamic Bayesian Network-Based Approach by Integrating Sensor Deployment for Machining Process Monitoring |
title_short |
Dynamic Bayesian Network-Based Approach by Integrating Sensor Deployment for Machining Process Monitoring |
title_full |
Dynamic Bayesian Network-Based Approach by Integrating Sensor Deployment for Machining Process Monitoring |
title_fullStr |
Dynamic Bayesian Network-Based Approach by Integrating Sensor Deployment for Machining Process Monitoring |
title_full_unstemmed |
Dynamic Bayesian Network-Based Approach by Integrating Sensor Deployment for Machining Process Monitoring |
title_sort |
dynamic bayesian network-based approach by integrating sensor deployment for machining process monitoring |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2018-01-01 |
description |
Many condition monitoring systems based on artificial intelligence process models for machining process monitoring have been developed intensively. However, given that machining processes are very complex (i.e., nonlinear and nonstationary), there is still no clear methodology to acquire machining monitoring systems allowing machining processes to be optimized, predicted, or controlled. In this paper, the coupled hidden Markov model, based on dynamic Bayesian networks, is proposed to monitor a machining process by using multi-directional data fusion and to analyze the effect of the sensor layout on the monitoring accuracy. The features extracted by a singular spectrum and wavelet analysis constitute the input information to the system. The technique is tested and validated successfully by using two scenarios: tool wear condition monitoring (initial wear, gradual wear, or accelerated wear) for the milling process and surface roughness accuracy grade prediction (accuracy grade 9, accuracy grade 8, or accuracy grade 7) for the turning process. In the first case, the maximum recognition rate obtained by the single-sensor placement for tool wear is 83%, whereas in the case of the three-sensor placement, the model recognition rate is 89%. In the second application for turning, the maximum recognition rate obtained by the single-sensor and the double-sensor placements for surface roughness accuracy prediction is 77% and 85%, respectively. In the case of the three-sensor placement, the model recognition rate is 89%. The proposed approach can also be integrated into the diagnosis architecture for condition monitoring in other complex machining systems. |
topic |
Condition monitoring dynamic Bayesian network coupled hidden Markov model sensor deployment machining process |
url |
https://ieeexplore.ieee.org/document/8379429/ |
work_keys_str_mv |
AT kanghe dynamicbayesiannetworkbasedapproachbyintegratingsensordeploymentformachiningprocessmonitoring AT zhuanzhezhao dynamicbayesiannetworkbasedapproachbyintegratingsensordeploymentformachiningprocessmonitoring AT minpingjia dynamicbayesiannetworkbasedapproachbyintegratingsensordeploymentformachiningprocessmonitoring AT conghuliu dynamicbayesiannetworkbasedapproachbyintegratingsensordeploymentformachiningprocessmonitoring |
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1724193506785755136 |