Jurnal / Konferensi2024

A new system for underwater vehicle balancing control based on weightless neural network and fuzzy logic methods

Penulis

Ahmad Zarkasi, Hadipurnawan Satria, Anggina Primanita, Abdurahman, Nurul Afifah, Sutarno

Dipublikasikan di

IAES International Journal of Artificial Intelligence (IJ-AI)

Abstrak

The utilization of humans to be in the water for short time, resulting in limited area underwater that can be explored, so the information obtained is very limited, plus the influence of irregular water movements, changes in waves, and changes in water pressure, indirectly also constitutes obstacle to this problem. One of the best solutions is to develop underwater vessel that can travel either autonomously or by giving control of movement and navigation systems. New system for underwater vehicle balance control through weightless neural network (WNN) and fuzzy logic methods was proposed in this study. The aim was to simplify complicated data source on stability system using WNN algorithm and determine depth level of autonomous underwater vehicle (AUV) through fuzzy logic method. Moreover, speed control of underwater vehicle was determined using fuzzy rule-based design and inference. The tests were conducted by showing convergence performance of system in the form of AUV simulator. The results showed that proposed system could produce real-time motion balance performance, faster execution time, and good level of accuracy. This study was expected to produce real-time motion balance system with better performance, faster execution time, and good level of accuracy which could be subsequently used to design simple, cheap, and efficient hardware prototype.

Tim Penulis

1

Ahmad Zarkasi

2

Hadipurnawan Satria

3

Anggina Primanita

4

Abdurahman

5

Nurul Afifah

Universitas Sriwijaya

6

Sutarno

Kutip

Ahmad Zarkasi, Hadipurnawan Satria, Anggina Primanita, Abdurahman, Nurul Afifah, Sutarno (2024). A new system for underwater vehicle balancing control based on weightless neural network and fuzzy logic methods. IAES International Journal of Artificial Intelligence (IJ-AI).
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Grup Riset Jaringan Komputer, Keamanan, dan Sistem Terdistribusi. Fakultas Ilmu Komputer, Universitas Sriwijaya.

Kontak

Alamat

Gedung Diploma Komputer, Fakultas Ilmu Komputer, Universitas Sriwijaya, Jl. Srijaya Negara, Bukit Besar, Ilir Barat I, Palembang, Sumatera Selatan, 30128

Afiliasi

Diktisaintek Berdampak
Kemdikbud
Unsri
IEEE
ACM

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