Fertilizer Production Planning Optimization Using Particle Swarm Optimization-Genetic Algorithm

Rahmalia, Dinita and Herlambang, Teguh and Saputro, Thomy Eko (2019) Fertilizer Production Planning Optimization Using Particle Swarm Optimization-Genetic Algorithm. Journal of Information Systems Engineering and Business Intelligence, 5 (2). pp. 120-130. ISSN 2598-6333

[img]
Preview
PDF
Fertilizer Production Planning Optimization Using Particle Swarm Optimization-Genetic Algorithm.pdf

Download (297kB) | Preview
[img]
Preview
PDF
peer review teguh herlambang.pdf

Download (892kB) | Preview
[img]
Preview
PDF
turnitin teguh herlambang.pdf

Download (2MB) | Preview
Official URL: https://e-journal.unair.ac.id/JISEBI/article/view/...

Abstract

Background: The applications of constrained optimization have been developed in many problems. One of them is production planning. Production planning is the important part for controlling the cost spent by the company. Objective: This research identifies about production planning optimization and algorithm to solve it in approaching. Production planning model is linear programming model with constraints : production, worker, and inventory. Methods: In this paper, we use heurisitic Particle Swarm Optimization-Genetic Algorithm (PSOGA) for solving production planning optimization. PSOGA is the algorithm combining Particle Swarm Optimization (PSO) and mutation operator of Genetic Algorithm (GA) to improve optimal solution resulted by PSO. Three simulations using three different mutation probabilies : 0, 0.01 and 0.7 are applied to PSOGA. Futhermore, some mutation probabilities in PSOGA will be simulated and percent of improvement will be computed. Results: From the simulations, PSOGA can improve optimal solution of PSO and the position of improvement is also determined by mutation probability. The small mutation probability gives smaller chance to the particle to explore and form new solution so that the position of improvement of small mutation probability is in middle of iteration. The large mutation probability gives larger chance to the particle to explore and form new solution so that the position of improvement of large mutation probability is in early of iteration. Conclusion: Overall, the simulations show that PSOGA can improve optimal solution resulted by PSO and therefore it can give optimal cost spent by the company for the planning.

Item Type: Article
Uncontrolled Keywords: Constrained Optimization, Genetic Algorithm, Linear Programming, Particle Swarm Optimization, Production Planning
Subjects: T Technology > TJ Mechanical engineering and machinery
Divisions: Faculty of Technique > Program Study of Information Systems
Depositing User: Mr. . Aji
Date Deposited: 30 Jun 2022 08:41
Last Modified: 30 Jun 2022 08:41
URI: http://repository.unusa.ac.id/id/eprint/8647

Actions (login required)

View Item View Item