April 30, 2024
Parviz Malekzadeh

Parviz Malekzadeh

Academic Rank: Professor
Address: -
Degree: Ph.D in -
Phone: 077-31222166
Faculty: Faculty of Engineering

Research

Title Autonomous Underwater Vehicle Motion Planning in Realistic Ocean Environments Using Penalty Function-Particle Swarm Optimization Technique
Type Article
Keywords
AUVs · Motion planning · Penalty functions · Particle swarm optimization · Ocean currents
Journal Iranian Journal of Science and Technology-Transactions of Mechanical Engineering
DOI https://doi.org/10.1007/s40997-023-00697-z
Researchers Reza Babakhani (First researcher) , Mohammad Reza Golbahar (Second researcher) , Parviz Malekzadeh (Third researcher)

Abstract

In this work, the penalty functions technique together with the particle swarm optimization (PSO) algorithm are employed to develop a motion planning algorithm for autonomous underwater vehicles under real environment conditions. The objective functions include the traveling time, consumed energy and a combination of these quantities. The optimization procedure is conducted based on the optimal control using the trigonometric swarm. The constraints are implemented through the penalty functions approach by introducing the velocity approximation strategy to reduce the optimization process runtime. The method is verified by solving the problem under investigation in a simulated environment and performing comparison studies with the results of the other related methods. After that, its robustness and efficiency for real conditions are demonstrated by performing the motion planning of AUVs under disturbed conditions. The effects of real currents of an area in Persian Gulf (PG) on the proposed motion planning algorithm are investigated. Finally, it is shown that the use of the trigonometric swarm and also the velocity approximation strategy improve the motion planning results. In addition, it is shown that the velocity approximation strategy decreases the process runtime by up to almost 30%, and the trigonometric swarms instead if common swarms (spline) improves the objective function minimization by up to almost 31%.