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Intelligent Parallel Parking Using Adaptive Neuro-Fuzzy Inference System Based on Fuzzy C-Means Clustering Algorithm

机译:基于模糊C均值聚类算法的自适应神经模糊推理系统智能并行停车

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Today’s intelligent self-driving vehicles alongside technology development are more believable. One of the intelligent features of self-driving cars is autonomous parking which has been specifically considered in industry and academic research areas. This paper focuses on the autonomous parallel parking. First, the vehicle kinematics modeling by considering Ackermann angle calculation has been thoroughly explained and then the desired path by satisfying spatial conditions and its proportional steering angle is extracted. Autonomous parking scenario has been defined based on two phases of forward and backward motions. Accordingly, the desired training data includes steering angle and vehicle motion feedbacks (x, y, Φ) that are utilized for designing intelligent controller. The proposed control system has two levels: upper and lower level. The former is a supervisory controller which switches between phases while the latter controls the vehicle based on received feedbacks from sensors in each phase. In this research adaptive-network-based fuzzy inference system (ANFIS) based on fuzzy c-means clustering (FCM) is employed to model the expert driver as an intelligent controller in parking maneuver. In this structure, FCM is used to systematically create the fuzzy membership functions and rule base for ANFIS. The performance of the proposed control algorithm is verified by defining an accuracy index. The simulation results in three different constant speeds indicate the value of accuracy index and jerk of controller output signals remains in an acceptable band.
机译:今天的智能自动驾驶车辆与技术发展相同,更可信。自动驾驶汽车的智能特点之一是自动停车,在工业和学术研究领域专门考虑。本文重点介绍了自动并行停车。首先,通过考虑Ackermann角度计算的车辆运动学建模已经彻底解释,然后提取通过满足空间条件的期望路径及其比例转向角。自动停车场景已根据前向和向后运动的两个阶段进行定义。因此,所需的训练数据包括用于设计智能控制器的转向角和车辆运动反馈(x,y,φ)。所提出的控制系统有两个级别:上层和较低水平。前者是一个监控控制器,其在阶段之间切换,而后者基于从每个阶段的传感器的接收的反馈控制车辆。在本研究中,基于模糊C-Means聚类(FCM)的基于自适应网络的模糊推理系统(ANFIS)用于将专家驱动程序作为停车操纵中的智能控制器进行模拟。在这种结构中,FCM用于系统地为ANFIS创建模糊成员资格函数和规则基础。通过定义精度索引来验证所提出的控制算法的性能。仿真导致三种不同的恒定速度指示控制器输出信号的精度指数和混蛋的值保持在可接受的频带中。

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