2024 : 5 : 2
Seyed Hadi Nasseri

Seyed Hadi Nasseri

Academic rank: Associate Professor
ORCID:
Education: PhD.
ScopusId:
Faculty: Faculty of Mathematical Sciences
Address:
Phone: 01135302472

Research

Title
A New Fuzzy Hybrid Dynamic Programming for Scheduling Weighted Jobs on Single Machine
Type
JournalPaper
Keywords
Comparing Fuzzy Numbers. Dynamic Programming. Genetic Algorithm. Scheduling
Year
2017
Journal Journal of Applied Research on Industrial Engineering
DOI
Researchers Seyed Hadi Nasseri ، Seyedeh Maedeh Mirmohseni ، mohammad hosein khaviari

Abstract

In this paper, dynamic programming for sequencing weighted jobs on a single machine to minimizing total tardiness is focused, to significance of fuzzy numbers field, and importance of that for decision makers who are facing on uncertain data, combination of dynamic programming and fuzzy numbers is applied. A random scheduling problem with fuzzy processing times is given and solved. In addition, algorithm consuming time during solving same category problem and different sizes are analyzed that for large problem CPU time usage is extremely unaffordable. Therefore demonstration of near-exact heuristic method such as Genetic Algorithm (GA) appears. In this paper sufficient discussion around solving this kind of problems and their algorithms analysis and a combination between Dynamic Programming (DP) and genetic algorithm as a newly born method is proposed that stand on DP performance and genetic algorithm search power, and finally comparison on the recent developed method has been held. Then this method can deal with real-world problem easily. Thus, decision makers actually can use this modification of dynamic programming for coping with un-crisp problem