Publication

Automated job shop scheduling with dynamic processing times and due dates using project management and industry 4.0

Kianpour, Parsa
Gupta, Deepak P.
Krishnan, Krishna K.
Gopalakrishnan, Bhaskaran
Citations
Altmetric:
Authors
Kianpour, Parsa
Gupta, Deepak P.
Krishnan, Krishna K.
Gopalakrishnan, Bhaskaran
Other Names
Location
Time Period
Advisors
Original Date
Digitization Date
Issue Date
2021-06-14
Type
Article
Genre
Keywords
Job shop scheduling,tardiness,earliness,industry 4.0,earned value analysis
Subjects (LCSH)
Research Projects
Organizational Units
Journal Issue
Citation
Kianpour, P., Gupta, D., Krishnan, K. K., & Gopalakrishnan, B. (2021). Automated job shop scheduling with dynamic processing times and due dates using project management and industry 4.0. Journal of Industrial and Production Engineering, doi:10.1080/21681015.2021.1937725
Abstract
This paper presents an automated model for improving job shop scheduling by incorporating Industry 4.0 and project management. The proposed model develops dynamic and adaptive schedules to incorporate real-time information about processing times (including random unexpected events) and due dates, reflecting the impact of industry 4.0 on rescheduling decisions. The model minimizes the earliness and tardiness costs while considering the rescheduling costs and is motivated by the real-life case study from a local company. This study applied Earned Value (EV) and Forecasted Total Cost at Completion $(EAC_f)$ concepts and integrated it with mixed integer linear programming (MILP) model to design an adaptive automated scheduling system. The paper presents a new application of project management concept in MILP job shop scheduling. Also, this research proposes new rescheduling concept to minimize unnecessary schedule changes while providing the best possible schedule to process all the jobs.
Table of Contents
Description
Click on the DOI link to access the article (may not be free).
Publisher
Taylor and Francis Ltd.
Journal
Book Title
Series
Journal of Industrial and Production Engineering;
Digital Collection
Finding Aid URL
Use and Reproduction
Archival Collection
PubMed ID
DOI
ISSN
2168-1015
2168-1023
EISSN
Embedded videos