Effective Scheduling of Multi-Load Automated Guided Vehicle in Spinning Mill: A Case Study

Krishnamoorthy, Parkavi and Satheesh, N. and Sudha, D. and Sengan, Sudhakar and Alharbi, Meshal and Pustokhin, Denis A. and Pustokhina, Irina V. and Setiawan, Roy (2023) Effective Scheduling of Multi-Load Automated Guided Vehicle in Spinning Mill: A Case Study. [UNSPECIFIED]

[thumbnail of Publikasi1_04045_8943.pdf] PDF
Publikasi1_04045_8943.pdf

Download (2MB)
[thumbnail of Publikasi4_04045_8943.pdf] PDF
Publikasi4_04045_8943.pdf

Download (4MB)

Abstract

In the Flexible Manufacturing System (FMS), where material processing is carried out in the form of tasks from one department to another, the use of Automated Guided Vehicles (AGVs) is significant. The application of multiple-load AGVs can be understood to boost FMS throughput by multiple orders of magnitude. For the transportation of materials and items inside a warehouse or manufacturing plant, an AGV, a mobile robot, offers extraordinary industrial capabilities. The technique of allocating AGVs to tasks while taking into account the cost and time of operations is known as AGV scheduling. Most research has exclusively addressed single-objective optimization, whereas multi-objective scheduling of AGVs is a complex combinatorial process without a single solution, in contrast to single-objective scheduling. This paper presents the integrated Local Search Probability-based Memetic Water Cycle (LSPM-WC) algorithm using a spinning mill as a case study. The scheduling model’s goal is to maximize machine efficiency. The scheduling of the statistical tests demonstrated the applicability of the proposed model in lowering the makespan and fitness values. The mean AGV operating efficiency was higher than the other estimated models, and the LSPM-WC surpassed the different algorithms to produce the best result.

Item Type: UNSPECIFIED
Uncontrolled Keywords: Manufacturing system, automated guided vehicles, computer integrated manufacturing, water cycle algorithm, makespan, spinning mill
Subjects: H Social Sciences > HD Industries. Land use. Labor > HD28 Management. Industrial Management
Divisions: Faculty of Economic > Business Management Program
Depositing User: Admin
Date Deposited: 04 Feb 2023 06:07
Last Modified: 06 Feb 2023 16:06
URI: https://repository.petra.ac.id/id/eprint/19911

Actions (login required)

View Item
View Item