Path Planning Optimization of Smart Vehicle With Fast Converging Distance-Dependent PSO Algorithm

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Muhammad Haris;Haewoon Nam
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Abstract

Path planning is a crucial technology and challenge in various fields, including robotics, autonomous systems, and intelligent transportation systems. The Particle Swarm Optimization (PSO) algorithm is widely used for optimization problems due to its simplicity and efficiency. However, despite its potential, PSO has notable limitations, such as slow convergence, susceptibility to local minima, and suboptimal efficiency, which restrict its application. This paper proposed a novel strategy called the Distance-Dependent Sigmoidal Inertia Weight PSO (DSI-PSO) algorithm to address slow convergence in path planning optimization. This innovative algorithm is inspired by neural network activation functions to achieve faster convergence. In DSI-PSO, each particle computes a distance metric and leverages a sigmoid function to adaptively update its inertia weight. Beyond improving convergence speed, this approach also addresses path-planning challenges in autonomous vehicles. In intelligent transportation systems, effective path planning enables smart vehicles to navigate, select optimal routes, and make informed decisions. The goal is to identify a collision-free path that satisfies key criteria such as shortest distance and smoothness. This methodology not only accelerates convergence but also maintains a balance between exploration and exploitation. The effectiveness of the DSI-PSO algorithm is tested using thirteen distinct unimodal and multimodal benchmark functions, serving as rigorous test cases. Additionally, the algorithm’s realworld applicability is evaluated through a smart vehicle simulation, assessing its ability to identify safe and efficient paths while minimizing overall path length. The results demonstrate the superiority of the DSI-PSO algorithm over conventional PSO approaches, with significantly enhanced convergence rates and robust optimization performance.
利用快速收敛的距离相关 PSO 算法优化智能车辆的路径规划
路径规划是机器人、自主系统和智能交通系统等多个领域的关键技术和挑战。粒子群优化(PSO)算法因其简单高效而被广泛用于优化问题。然而,尽管 PSO 潜力巨大,但它也有明显的局限性,如收敛速度慢、易受局部极小值影响、效率不理想等,这些都限制了它的应用。本文提出了一种名为 "依赖距离的西格玛惯性权重 PSO(DSI-PSO)"的新策略,以解决路径规划优化中收敛速度慢的问题。这种创新算法受到神经网络激活函数的启发,可实现更快的收敛。在 DSI-PSO 中,每个粒子都会计算一个距离度量,并利用西格玛函数自适应地更新其惯性权重。除了提高收敛速度,这种方法还能解决自动驾驶汽车在路径规划方面的难题。在智能交通系统中,有效的路径规划使智能车辆能够导航、选择最佳路线并做出明智的决策。其目标是确定一条满足最短距离和平滑性等关键标准的无碰撞路径。这种方法不仅能加快收敛速度,还能在探索和利用之间保持平衡。DSI-PSO 算法使用 13 个不同的单模态和多模态基准函数作为严格的测试案例,对其有效性进行了测试。此外,还通过智能车辆模拟评估了该算法在现实世界中的适用性,评估其识别安全高效路径的能力,同时最大限度地减少总路径长度。结果表明,DSI-PSO 算法优于传统的 PSO 方法,其收敛速度和稳健的优化性能都有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
5.40
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