Material Cutting Plan Generation Using Multi-Expert and Evolutionary Approaches

Firms specializing in the construction of large commercial buildings and factories must often design and build steel structural components as a part of each project. Such firms must purchase large steel plates, cut them into pieces and then weld the pieces into H-beams and other construction compone...

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Main Author: Hung, Chang-Yu
Other Authors: Industrial and Systems Engineering
Format: Others
Published: Virginia Tech 2014
Subjects:
Online Access:http://hdl.handle.net/10919/28256
http://scholar.lib.vt.edu/theses/available/etd-07112000-13190034/
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spelling ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-282562020-11-11T05:36:54Z Material Cutting Plan Generation Using Multi-Expert and Evolutionary Approaches Hung, Chang-Yu Industrial and Systems Engineering Ellis, Kimberly P. Fabrycky, Wolter J. Verma, Dinesh Koelling, C. Patrick Sumichrast, Robert T. Multi-expert System Evolutionary Algorithms Cutting Plan Generation Grouping Genetic Algorithm Firms specializing in the construction of large commercial buildings and factories must often design and build steel structural components as a part of each project. Such firms must purchase large steel plates, cut them into pieces and then weld the pieces into H-beams and other construction components. The details of the order and the production operation are specified in the "cutting plan." This dissertation focuses on solving this "cutting plan generation" problem with the goal of minimizing cost. Two solution approaches are proposed in this dissertation: a multi-expert system and an evolutionary algorithm. The expert system extends the field by relying on the knowledge of multiple experts. Furthermore, unlike traditional rule-base expert systems, this expert system (XS) uses procedural rules to capture and represent experts' knowledge. The second solution method, called CPGEA, involves development of an evolutionary algorithm based on Falkenauer's grouping genetic algorithm. A series of experiments is designed and performed to investigate the efficiency and effectiveness of the proposed approaches. Two types of data are used in the experiments. Historical data are real data provided by a construction company. Solutions developed manually and implemented are available. In addition, simulated data has been generated to more fully test the solution methods. Experiments are performed to optimize CPGEA parameters as well as to compare the approaches to each other, to known solutions and to theoretical bounds developed in this dissertation. Both approaches show excellent results in solving historical cases with an average cost 1% above the lower bound of the optimal solution. However, as revealed by experiments with simulated problems, the performance decreases in cases where the optimal solution includes multiple identical plates. The performance of the XS is affected by this problem characteristic more than that of CPGEA. While CPGEA is more robust in effectively solving a range of problems, the XS requires substantially less processing time. Both approaches can be useful in different practical situations. Ph. D. 2014-03-14T20:13:52Z 2014-03-14T20:13:52Z 2000-07-05 2000-07-11 2001-07-12 2000-07-12 Dissertation etd-07112000-13190034 http://hdl.handle.net/10919/28256 http://scholar.lib.vt.edu/theses/available/etd-07112000-13190034/ CPG_ETD.pdf In Copyright http://rightsstatements.org/vocab/InC/1.0/ application/pdf Virginia Tech
collection NDLTD
format Others
sources NDLTD
topic Multi-expert System
Evolutionary Algorithms
Cutting Plan Generation
Grouping Genetic Algorithm
spellingShingle Multi-expert System
Evolutionary Algorithms
Cutting Plan Generation
Grouping Genetic Algorithm
Hung, Chang-Yu
Material Cutting Plan Generation Using Multi-Expert and Evolutionary Approaches
description Firms specializing in the construction of large commercial buildings and factories must often design and build steel structural components as a part of each project. Such firms must purchase large steel plates, cut them into pieces and then weld the pieces into H-beams and other construction components. The details of the order and the production operation are specified in the "cutting plan." This dissertation focuses on solving this "cutting plan generation" problem with the goal of minimizing cost. Two solution approaches are proposed in this dissertation: a multi-expert system and an evolutionary algorithm. The expert system extends the field by relying on the knowledge of multiple experts. Furthermore, unlike traditional rule-base expert systems, this expert system (XS) uses procedural rules to capture and represent experts' knowledge. The second solution method, called CPGEA, involves development of an evolutionary algorithm based on Falkenauer's grouping genetic algorithm. A series of experiments is designed and performed to investigate the efficiency and effectiveness of the proposed approaches. Two types of data are used in the experiments. Historical data are real data provided by a construction company. Solutions developed manually and implemented are available. In addition, simulated data has been generated to more fully test the solution methods. Experiments are performed to optimize CPGEA parameters as well as to compare the approaches to each other, to known solutions and to theoretical bounds developed in this dissertation. Both approaches show excellent results in solving historical cases with an average cost 1% above the lower bound of the optimal solution. However, as revealed by experiments with simulated problems, the performance decreases in cases where the optimal solution includes multiple identical plates. The performance of the XS is affected by this problem characteristic more than that of CPGEA. While CPGEA is more robust in effectively solving a range of problems, the XS requires substantially less processing time. Both approaches can be useful in different practical situations. === Ph. D.
author2 Industrial and Systems Engineering
author_facet Industrial and Systems Engineering
Hung, Chang-Yu
author Hung, Chang-Yu
author_sort Hung, Chang-Yu
title Material Cutting Plan Generation Using Multi-Expert and Evolutionary Approaches
title_short Material Cutting Plan Generation Using Multi-Expert and Evolutionary Approaches
title_full Material Cutting Plan Generation Using Multi-Expert and Evolutionary Approaches
title_fullStr Material Cutting Plan Generation Using Multi-Expert and Evolutionary Approaches
title_full_unstemmed Material Cutting Plan Generation Using Multi-Expert and Evolutionary Approaches
title_sort material cutting plan generation using multi-expert and evolutionary approaches
publisher Virginia Tech
publishDate 2014
url http://hdl.handle.net/10919/28256
http://scholar.lib.vt.edu/theses/available/etd-07112000-13190034/
work_keys_str_mv AT hungchangyu materialcuttingplangenerationusingmultiexpertandevolutionaryapproaches
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