Development a forward-reverse network optimization model with delay reduction and multistage fuzzy demand satisfaction policy

Supply chain management is a process in which a number of organizations work together as a supply chain until the raw materials reach the manufacturer and finally, a valuable product is provided to the end consumer. With the increase in population and the increase in environmental sensitivities, the...

Full description

Saved in:
Bibliographic Details
Main Authors: Vajiheh Torkian, Amir Shojaie, Omid Boyer Hassani
Format: Article
Language:English
Published: Ayandegan Institute of Higher Education, 2023-12-01
Series:International Journal of Research in Industrial Engineering
Subjects:
Online Access:https://www.riejournal.com/article_184192_745c7ee562e948c39867bb5e00e7c253.pdf
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832577769034219520
author Vajiheh Torkian
Amir Shojaie
Omid Boyer Hassani
author_facet Vajiheh Torkian
Amir Shojaie
Omid Boyer Hassani
author_sort Vajiheh Torkian
collection DOAJ
description Supply chain management is a process in which a number of organizations work together as a supply chain until the raw materials reach the manufacturer and finally, a valuable product is provided to the end consumer. With the increase in population and the increase in environmental sensitivities, the forward-reverse supply chain has attracted a lot of attention, which pursues goals such as optimization, customer satisfaction, responding to their needs in the shortest time with the lowest cost and high quality. In this paper, a forward- reverse multi-product and multi-period network is designed under the condition of uncertainty in the demand parameter. The purpose of the proposed model is to maximize profit by considering customer satisfaction simultaneously and reducing delay and the fuzzy approach has been used to solve the model under conditions of uncertainty. The proposed model is mixed-integer linear programming and for its validation and applicability, it has been solved by GAMS software, a numerical example using simulated data in deterministic and uncertain state. The results of the analysis of the numerical example show that the show that with increasing uncertainty in the demand parameter, the optimal value of the objective function decreases.
format Article
id doaj-art-c42fd296a5de497e9cb721092ac28d24
institution Kabale University
issn 2783-1337
2717-2937
language English
publishDate 2023-12-01
publisher Ayandegan Institute of Higher Education,
record_format Article
series International Journal of Research in Industrial Engineering
spelling doaj-art-c42fd296a5de497e9cb721092ac28d242025-01-30T15:10:04ZengAyandegan Institute of Higher Education,International Journal of Research in Industrial Engineering2783-13372717-29372023-12-0112437538710.22105/riej.2023.388330.1371184192Development a forward-reverse network optimization model with delay reduction and multistage fuzzy demand satisfaction policyVajiheh Torkian0Amir Shojaie1Omid Boyer Hassani2School of Industrial Engineering, South Tehran Branch, Islamic Azad University, Tehran, Iran.School of Industrial Engineering, South Tehran Branch, Islamic Azad University, Tehran, Iran.Department of Industrial Engineering, Najafabad Branch, Islamic Azad University, Najafabad, Iran.Supply chain management is a process in which a number of organizations work together as a supply chain until the raw materials reach the manufacturer and finally, a valuable product is provided to the end consumer. With the increase in population and the increase in environmental sensitivities, the forward-reverse supply chain has attracted a lot of attention, which pursues goals such as optimization, customer satisfaction, responding to their needs in the shortest time with the lowest cost and high quality. In this paper, a forward- reverse multi-product and multi-period network is designed under the condition of uncertainty in the demand parameter. The purpose of the proposed model is to maximize profit by considering customer satisfaction simultaneously and reducing delay and the fuzzy approach has been used to solve the model under conditions of uncertainty. The proposed model is mixed-integer linear programming and for its validation and applicability, it has been solved by GAMS software, a numerical example using simulated data in deterministic and uncertain state. The results of the analysis of the numerical example show that the show that with increasing uncertainty in the demand parameter, the optimal value of the objective function decreases.https://www.riejournal.com/article_184192_745c7ee562e948c39867bb5e00e7c253.pdfforward-reverse supply chaindemand satisfactiondelay reductionfuzzy
spellingShingle Vajiheh Torkian
Amir Shojaie
Omid Boyer Hassani
Development a forward-reverse network optimization model with delay reduction and multistage fuzzy demand satisfaction policy
International Journal of Research in Industrial Engineering
forward-reverse supply chain
demand satisfaction
delay reduction
fuzzy
title Development a forward-reverse network optimization model with delay reduction and multistage fuzzy demand satisfaction policy
title_full Development a forward-reverse network optimization model with delay reduction and multistage fuzzy demand satisfaction policy
title_fullStr Development a forward-reverse network optimization model with delay reduction and multistage fuzzy demand satisfaction policy
title_full_unstemmed Development a forward-reverse network optimization model with delay reduction and multistage fuzzy demand satisfaction policy
title_short Development a forward-reverse network optimization model with delay reduction and multistage fuzzy demand satisfaction policy
title_sort development a forward reverse network optimization model with delay reduction and multistage fuzzy demand satisfaction policy
topic forward-reverse supply chain
demand satisfaction
delay reduction
fuzzy
url https://www.riejournal.com/article_184192_745c7ee562e948c39867bb5e00e7c253.pdf
work_keys_str_mv AT vajihehtorkian developmentaforwardreversenetworkoptimizationmodelwithdelayreductionandmultistagefuzzydemandsatisfactionpolicy
AT amirshojaie developmentaforwardreversenetworkoptimizationmodelwithdelayreductionandmultistagefuzzydemandsatisfactionpolicy
AT omidboyerhassani developmentaforwardreversenetworkoptimizationmodelwithdelayreductionandmultistagefuzzydemandsatisfactionpolicy