Fuzzy Based Adaptive Dimension Parking Algorithm Including Obstacle Avoidance for Autonomous Vehicle Parking

Naitik M. Nakrani, M. Joshi
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引用次数: 3

Abstract

Autonomous vehicle parking and obstacle avoidance navigation have drawn increased attention in recent times for autonomous vehicle-related solutions. Existing autonomous vehicle parking algorithms generally fail to mimic the human-like tendency to adapt naturally, and most of these designs are practically fixed. They do not preserve adaptive nature with machine dynamics, especially vehicles related. In this paper, a novel fuzzy-based adaptive dimension parking algorithm (FADPA) is proposed that integrates obstacle avoidance capabilities to a standalone parking controller that is made adaptive to vehicle dimensions in order to provide human-like intelligence for parking problems. This algorithm adopts fuzzy membership thresholds with respect to vehicle dimensions to enhance the vehicle's path during parking with taking care of obstacles. It is generalized for all segments of cars, and different simulation results are presented to show the effectiveness of the proposed algorithm.
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基于模糊的自动泊车避障自适应维数算法
近年来,自动驾驶汽车相关的解决方案越来越受到人们的关注。现有的自动停车算法通常无法模仿人类自然适应的倾向,而且这些设计中的大多数实际上是固定的。它们不能保持机器动力学的自适应性质,特别是与车辆有关的。本文提出了一种新的基于模糊的自适应维数泊车算法(FADPA),该算法将避障能力集成到一个自适应车辆尺寸的独立泊车控制器中,从而为泊车问题提供类似人类的智能。该算法采用基于车辆尺寸的模糊隶属度阈值,在考虑障碍物的情况下增强车辆在停车过程中的路径。将该算法推广到所有车段,并给出了不同的仿真结果来验证该算法的有效性。
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