Hybrid Systems Diagnosis and Control Reconfiguration for Manufacturing Systems
A methodology for representing and analyzing manufacturing systems in a hybrid systems framework for control reconfiguration purposes in the presence of defects and failures at the product and system levels is presented. At the top level, a supervisory Petri net directs parts/jobs through the manuf...
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Georgia Institute of Technology
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ndltd-GATECH-oai-smartech.gatech.edu-1853-51502013-01-07T20:11:09ZHybrid Systems Diagnosis and Control Reconfiguration for Manufacturing SystemsPropes, Nicholas ChungPetri netsManufacturingHybrid systemsHybrid computer simulationSystem failures (Engineering)Object-oriented methods (Computer science)Process controlPetri netsA methodology for representing and analyzing manufacturing systems in a hybrid systems framework for control reconfiguration purposes in the presence of defects and failures at the product and system levels is presented. At the top level, a supervisory Petri net directs parts/jobs through the manufacturing system. An object-based hybrid systems model that incorporates both Petri nets at the event-driven level and differential equations at the time-driven level describes the subsystems. Rerouting capabilities utilizing this model at the product and operation levels were explained. Simulations were performed on a testbed model for optimal time and mode transition cost to determine the route for parts. The product level reconfiguration architecture utilizes an adaptive network-based fuzzy inference system (ANFIS) to map histogram comparison metrics to set-point adjustments when product defects were detected. Tests were performed on good and defective plastic parts from a plastic injection molding machine. In addition, a mode identification architecture was described that incorporates both time- and event-driven information to determine the operating mode of a system from measured sensor signals. Simulated data representing the measured process signals from a Navy ship chiller system were used to verify that the appropriate operating modes were detected.Georgia Institute of Technology2005-03-03T21:51:11Z2005-03-03T21:51:11Z2004-04-06Dissertation6297876 bytesapplication/pdfhttp://hdl.handle.net/1853/5150en_US |
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en_US |
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Petri nets Manufacturing Hybrid systems Hybrid computer simulation System failures (Engineering) Object-oriented methods (Computer science) Process control Petri nets |
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Petri nets Manufacturing Hybrid systems Hybrid computer simulation System failures (Engineering) Object-oriented methods (Computer science) Process control Petri nets Propes, Nicholas Chung Hybrid Systems Diagnosis and Control Reconfiguration for Manufacturing Systems |
description |
A methodology for representing and analyzing manufacturing systems in a hybrid systems framework for control reconfiguration purposes in the presence of defects and failures at the product and system levels is presented. At the top level, a supervisory Petri net directs parts/jobs through the manufacturing system. An object-based hybrid systems model that incorporates both Petri nets at the event-driven level and differential equations at the time-driven level describes the subsystems. Rerouting capabilities utilizing this model at the product and operation levels were explained. Simulations were performed on a testbed model for optimal time and mode transition cost to determine the route for parts. The product level reconfiguration architecture utilizes an adaptive network-based fuzzy inference system (ANFIS) to map histogram comparison metrics to set-point adjustments when product defects were detected. Tests were performed on good and defective plastic parts from a plastic injection molding machine. In addition, a mode identification architecture was described that incorporates both time- and event-driven information to determine the operating mode of a system from measured sensor signals. Simulated data representing the measured process signals from a Navy ship chiller system were used to verify that the appropriate operating modes were detected. |
author |
Propes, Nicholas Chung |
author_facet |
Propes, Nicholas Chung |
author_sort |
Propes, Nicholas Chung |
title |
Hybrid Systems Diagnosis and Control Reconfiguration for Manufacturing Systems |
title_short |
Hybrid Systems Diagnosis and Control Reconfiguration for Manufacturing Systems |
title_full |
Hybrid Systems Diagnosis and Control Reconfiguration for Manufacturing Systems |
title_fullStr |
Hybrid Systems Diagnosis and Control Reconfiguration for Manufacturing Systems |
title_full_unstemmed |
Hybrid Systems Diagnosis and Control Reconfiguration for Manufacturing Systems |
title_sort |
hybrid systems diagnosis and control reconfiguration for manufacturing systems |
publisher |
Georgia Institute of Technology |
publishDate |
2005 |
url |
http://hdl.handle.net/1853/5150 |
work_keys_str_mv |
AT propesnicholaschung hybridsystemsdiagnosisandcontrolreconfigurationformanufacturingsystems |
_version_ |
1716473943647322112 |