Performance Evaluation of Bidding-Based Multi-Agent Scheduling Algorithms for Manufacturing Systems

Artificial Intelligence techniques have being applied to many problems in manufacturing systems in recent years. In the specific field of manufacturing scheduling many studies have been published trying to cope with the complexity of the manufacturing environment. One of the most utilized approaches...

Full description

Bibliographic Details
Main Authors: Antonio Gordillo, Adriana Giret
Format: Article
Language:English
Published: MDPI AG 2014-10-01
Series:Machines
Subjects:
Online Access:http://www.mdpi.com/2075-1702/2/4/233
id doaj-0c28f49a98b144049e77beae88bb86fc
record_format Article
spelling doaj-0c28f49a98b144049e77beae88bb86fc2020-11-24T22:21:06ZengMDPI AGMachines2075-17022014-10-012423325410.3390/machines2040233machines2040233Performance Evaluation of Bidding-Based Multi-Agent Scheduling Algorithms for Manufacturing SystemsAntonio Gordillo0Adriana Giret1Tecnologías de la Información y Comunicación, Universidad Tecnológica del Suroeste de Guanajuato. Carr. Valle-Huanímaro km1.2, 38400 Valle de Santiago, Gto., MexicoDepartamento de Sistemas Informáticos y Computación, Universidad Politécnica de Valencia. Camino de Vera s/n 46022 Valencia, SpainArtificial Intelligence techniques have being applied to many problems in manufacturing systems in recent years. In the specific field of manufacturing scheduling many studies have been published trying to cope with the complexity of the manufacturing environment. One of the most utilized approaches is (multi) agent-based scheduling. Nevertheless, despite the large list of studies reported in this field, there is no resource or scientific study on the performance measure of this type of approach under very common and critical execution situations. This paper focuses on multi-agent systems (MAS) based algorithms for task allocation, particularly in manufacturing applications. The goal is to provide a mechanism to measure the performance of agent-based scheduling approaches for manufacturing systems under key critical situations such as: dynamic environment, rescheduling, and priority change. With this mechanism it will be possible to simulate critical situations and to stress the system in order to measure the performance of a given agent-based scheduling method. The proposed mechanism is a pioneering approach for performance evaluation of bidding-based MAS approaches for manufacturing scheduling. The proposed method and evaluation methodology can be used to run tests in different manufacturing floors since it is independent of the workshop configuration. Moreover, the evaluation results presented in this paper show the key factors and scenarios that most affect the market-like MAS approaches for manufacturing scheduling.http://www.mdpi.com/2075-1702/2/4/233multi-agent systemsintelligent manufacturing systemsmanufacturing schedulingtask allocation
collection DOAJ
language English
format Article
sources DOAJ
author Antonio Gordillo
Adriana Giret
spellingShingle Antonio Gordillo
Adriana Giret
Performance Evaluation of Bidding-Based Multi-Agent Scheduling Algorithms for Manufacturing Systems
Machines
multi-agent systems
intelligent manufacturing systems
manufacturing scheduling
task allocation
author_facet Antonio Gordillo
Adriana Giret
author_sort Antonio Gordillo
title Performance Evaluation of Bidding-Based Multi-Agent Scheduling Algorithms for Manufacturing Systems
title_short Performance Evaluation of Bidding-Based Multi-Agent Scheduling Algorithms for Manufacturing Systems
title_full Performance Evaluation of Bidding-Based Multi-Agent Scheduling Algorithms for Manufacturing Systems
title_fullStr Performance Evaluation of Bidding-Based Multi-Agent Scheduling Algorithms for Manufacturing Systems
title_full_unstemmed Performance Evaluation of Bidding-Based Multi-Agent Scheduling Algorithms for Manufacturing Systems
title_sort performance evaluation of bidding-based multi-agent scheduling algorithms for manufacturing systems
publisher MDPI AG
series Machines
issn 2075-1702
publishDate 2014-10-01
description Artificial Intelligence techniques have being applied to many problems in manufacturing systems in recent years. In the specific field of manufacturing scheduling many studies have been published trying to cope with the complexity of the manufacturing environment. One of the most utilized approaches is (multi) agent-based scheduling. Nevertheless, despite the large list of studies reported in this field, there is no resource or scientific study on the performance measure of this type of approach under very common and critical execution situations. This paper focuses on multi-agent systems (MAS) based algorithms for task allocation, particularly in manufacturing applications. The goal is to provide a mechanism to measure the performance of agent-based scheduling approaches for manufacturing systems under key critical situations such as: dynamic environment, rescheduling, and priority change. With this mechanism it will be possible to simulate critical situations and to stress the system in order to measure the performance of a given agent-based scheduling method. The proposed mechanism is a pioneering approach for performance evaluation of bidding-based MAS approaches for manufacturing scheduling. The proposed method and evaluation methodology can be used to run tests in different manufacturing floors since it is independent of the workshop configuration. Moreover, the evaluation results presented in this paper show the key factors and scenarios that most affect the market-like MAS approaches for manufacturing scheduling.
topic multi-agent systems
intelligent manufacturing systems
manufacturing scheduling
task allocation
url http://www.mdpi.com/2075-1702/2/4/233
work_keys_str_mv AT antoniogordillo performanceevaluationofbiddingbasedmultiagentschedulingalgorithmsformanufacturingsystems
AT adrianagiret performanceevaluationofbiddingbasedmultiagentschedulingalgorithmsformanufacturingsystems
_version_ 1725772265731129344