A Production-Inventory Model for a Deteriorating Item Incorporating Learning Effect Using Genetic Algorithm

Demand for a seasonal product persists for a fixed period of time. Normally the “finite time horizon inventory control problems” are formulated for this type of demands. In reality, it is difficult to predict the end of a season precisely. It is thus represented as an uncertain variable and known as...

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Main Authors: Debasis Das, Arindam Roy, Samarjit Kar
Format: Article
Language:English
Published: Hindawi Limited 2010-01-01
Series:Advances in Operations Research
Online Access:http://dx.doi.org/10.1155/2010/146042
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spelling doaj-0a736569ee34447e8e3af1e7ae1dbcda2020-11-24T21:36:26ZengHindawi LimitedAdvances in Operations Research1687-91471687-91552010-01-01201010.1155/2010/146042146042A Production-Inventory Model for a Deteriorating Item Incorporating Learning Effect Using Genetic AlgorithmDebasis Das0Arindam Roy1Samarjit Kar2Department of Mathematics, National Institute of Technology, Durgapur, West Bengal 713209, IndiaDepartment of Computer Science, Prabhat Kumar College, Contai, Purba- Medinipur, West Bengal 721401, IndiaDepartment of Mathematics, National Institute of Technology, Durgapur, West Bengal 713209, IndiaDemand for a seasonal product persists for a fixed period of time. Normally the “finite time horizon inventory control problems” are formulated for this type of demands. In reality, it is difficult to predict the end of a season precisely. It is thus represented as an uncertain variable and known as random planning horizon. In this paper, we present a production-inventory model for deteriorating items in an imprecise environment characterised by inflation and timed value of money and considering a constant demand. It is assumed that the time horizon of the business period is random in nature and follows exponential distribution with a known mean. Here, we considered the resultant effect of inflation and time value of money as both crisp and fuzzy. For crisp inflation effect, the total expected profit from the planning horizon is maximized using genetic algorithm (GA) to derive optimal decisions. This GA is developed using Roulette wheel selection, arithmetic crossover, and random mutation. On the other hand when the inflation effect is fuzzy, we can expect the profit to be fuzzy, too! As for the fuzzy objective, the optimistic or pessimistic return of the expected total profit is obtained using, respectively, a necessity or possibility measure of the fuzzy event. The GA we have developed uses fuzzy simulation to maximize the optimistic/pessimistic return in getting an optimal decision. We have provided some numerical examples and some sensitivity analyses to illustrate the model.http://dx.doi.org/10.1155/2010/146042
collection DOAJ
language English
format Article
sources DOAJ
author Debasis Das
Arindam Roy
Samarjit Kar
spellingShingle Debasis Das
Arindam Roy
Samarjit Kar
A Production-Inventory Model for a Deteriorating Item Incorporating Learning Effect Using Genetic Algorithm
Advances in Operations Research
author_facet Debasis Das
Arindam Roy
Samarjit Kar
author_sort Debasis Das
title A Production-Inventory Model for a Deteriorating Item Incorporating Learning Effect Using Genetic Algorithm
title_short A Production-Inventory Model for a Deteriorating Item Incorporating Learning Effect Using Genetic Algorithm
title_full A Production-Inventory Model for a Deteriorating Item Incorporating Learning Effect Using Genetic Algorithm
title_fullStr A Production-Inventory Model for a Deteriorating Item Incorporating Learning Effect Using Genetic Algorithm
title_full_unstemmed A Production-Inventory Model for a Deteriorating Item Incorporating Learning Effect Using Genetic Algorithm
title_sort production-inventory model for a deteriorating item incorporating learning effect using genetic algorithm
publisher Hindawi Limited
series Advances in Operations Research
issn 1687-9147
1687-9155
publishDate 2010-01-01
description Demand for a seasonal product persists for a fixed period of time. Normally the “finite time horizon inventory control problems” are formulated for this type of demands. In reality, it is difficult to predict the end of a season precisely. It is thus represented as an uncertain variable and known as random planning horizon. In this paper, we present a production-inventory model for deteriorating items in an imprecise environment characterised by inflation and timed value of money and considering a constant demand. It is assumed that the time horizon of the business period is random in nature and follows exponential distribution with a known mean. Here, we considered the resultant effect of inflation and time value of money as both crisp and fuzzy. For crisp inflation effect, the total expected profit from the planning horizon is maximized using genetic algorithm (GA) to derive optimal decisions. This GA is developed using Roulette wheel selection, arithmetic crossover, and random mutation. On the other hand when the inflation effect is fuzzy, we can expect the profit to be fuzzy, too! As for the fuzzy objective, the optimistic or pessimistic return of the expected total profit is obtained using, respectively, a necessity or possibility measure of the fuzzy event. The GA we have developed uses fuzzy simulation to maximize the optimistic/pessimistic return in getting an optimal decision. We have provided some numerical examples and some sensitivity analyses to illustrate the model.
url http://dx.doi.org/10.1155/2010/146042
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