A knowlege-based system approach for dynamic scheduling
<p>Scheduling is one of the most important functions in a factory and it is determining when and with what resources jobs should be accomplished. An important factor that affects the scheduling of jobs is the dynamic variation of factory status. Existing computer based scheduling systems do...
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ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-459072021-05-05T05:40:31Z A knowlege-based system approach for dynamic scheduling Salgame, Rangnath R. Industrial Engineering and Operations Research Sarin, Subhash C. Sherali, Hanif D. Byler, Richard K. LD5655.V855 1987.S25 Artificial intelligence Expert systems (Computer science) Operations research Production scheduling <p>Scheduling is one of the most important functions in a factory and it is determining when and with what resources jobs should be accomplished. An important factor that affects the scheduling of jobs is the dynamic variation of factory status. Existing computer based scheduling systems do not address the need of making effective decisions dynamically with the variations in factory status. Traditionally, Operations Research techniques have provided an effective tool in solving manufacturing planning problems. But these methods have not been able to effectively address real time control problems in the manufacturing environment.</p><p> To address some of these problems, this research investigates applying an expert system approach to develop an interactive real time dynamic scheduling system. Specifically, a knowledge base structure is developed and applied to a case study representing a two stage production system.</p><p> A Blackboard concept has been utilized to organize and maintain the dynamic data base. The major knowledge representation schemes used in the system include, frame structures, relational tables, and production rules. The system was tested on a case study, by conducting a sample interactive session on a set of simulated dynamic situations. The test demonstrated the viability of implementing knowledge based systems for dynamic scheduling at the operational level of a plant.</p> Master of Science 2014-03-14T21:50:19Z 2014-03-14T21:50:19Z 1987-03-05 2012-11-20 2012-11-20 2012-11-20 Thesis Text etd-11202012-040159 http://hdl.handle.net/10919/45907 http://scholar.lib.vt.edu/theses/available/etd-11202012-040159/ OCLC# 16679472 LD5655.V855_1987.S25.pdf viii, 121 leaves BTD application/pdf application/pdf Virginia Tech |
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LD5655.V855 1987.S25 Artificial intelligence Expert systems (Computer science) Operations research Production scheduling |
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LD5655.V855 1987.S25 Artificial intelligence Expert systems (Computer science) Operations research Production scheduling Salgame, Rangnath R. A knowlege-based system approach for dynamic scheduling |
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<p>Scheduling is one of the most important functions in a factory and it is determining when and
with what resources jobs should be accomplished. An important factor that affects the
scheduling of jobs is the dynamic variation of factory status. Existing computer based scheduling
systems do not address the need of making effective decisions dynamically with the
variations in factory status. Traditionally, Operations Research techniques have provided an
effective tool in solving manufacturing planning problems. But these methods have not been
able to effectively address real time control problems in the manufacturing environment.</p><p>
To address some of these problems, this research investigates applying an expert system
approach to develop an interactive real time dynamic scheduling system. Specifically, a
knowledge base structure is developed and applied to a case study representing a two stage
production system.</p><p>
A Blackboard concept has been utilized to organize and maintain the dynamic data
base. The major knowledge representation schemes used in the system include, frame
structures, relational tables, and production rules. The system was tested on a case study,
by conducting a sample interactive session on a set of simulated dynamic situations. The test
demonstrated the viability of implementing knowledge based systems for dynamic scheduling
at the operational level of a plant.</p> === Master of Science |
author2 |
Industrial Engineering and Operations Research |
author_facet |
Industrial Engineering and Operations Research Salgame, Rangnath R. |
author |
Salgame, Rangnath R. |
author_sort |
Salgame, Rangnath R. |
title |
A knowlege-based system approach for dynamic scheduling |
title_short |
A knowlege-based system approach for dynamic scheduling |
title_full |
A knowlege-based system approach for dynamic scheduling |
title_fullStr |
A knowlege-based system approach for dynamic scheduling |
title_full_unstemmed |
A knowlege-based system approach for dynamic scheduling |
title_sort |
knowlege-based system approach for dynamic scheduling |
publisher |
Virginia Tech |
publishDate |
2014 |
url |
http://hdl.handle.net/10919/45907 http://scholar.lib.vt.edu/theses/available/etd-11202012-040159/ |
work_keys_str_mv |
AT salgamerangnathr aknowlegebasedsystemapproachfordynamicscheduling AT salgamerangnathr knowlegebasedsystemapproachfordynamicscheduling |
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1719402786793193472 |