Skip to main content

Research Repository

Advanced Search

Aggregate production planning under uncertainty: a comprehensive literature survey and future research directions

Jamalnia, Aboozar; Yang, Jian-Bo; Feili, Ardalan; Xu, Dong-Ling; Jamali, Gholamreza

Authors

Jian-Bo Yang

Ardalan Feili

Dong-Ling Xu

Gholamreza Jamali



Abstract

This is the first literature survey of its kind on aggregate production planning (APP) under uncertainty. Different types of uncertainty, such as stochasticity, fuzziness and possibilistic forms, have been incorporated into many management science techniques to study APP decision problem under uncertainty. In current research, a wide range of the literature which employ management science methodologies to deal with APP in presence of uncertainty is surveyed by classifying them into five main categories: stochastic mathematical programming, fuzzy mathematical programming, simulation, metaheuristics and evidential reasoning. First, the preliminary analysis of the literature is presented by classifying the literature according to the abovementioned methodologies, discussing about advantages and disadvantages of these methodologies when applied to APP under uncertainty and concisely reviewing the more recent literature. Then, APP literature under uncertainty is analysed from management science and operations management perspectives. Possible future research paths are also discussed on the basis of identified research trends and research gaps.

Journal Article Type Article
Acceptance Date Dec 3, 2018
Online Publication Date Jan 2, 2019
Publication Date 2019-05
Deposit Date Feb 9, 2024
Journal The International Journal of Advanced Manufacturing Technology
Print ISSN 0268-3768
Electronic ISSN 1433-3015
Publisher Springer
Peer Reviewed Peer Reviewed
Volume 102
Issue 1-4
Pages 159-181
DOI https://doi.org/10.1007/s00170-018-3151-y
Keywords Aggregate production planning (APP) under uncertainty, Management science methods, Literature on uncertain APP models
Public URL http://researchrepository.napier.ac.uk/Output/3436502