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Motion Planning of Autonomous Mobile Robot Using Recurrent Fuzzy Neural Network Trained by Extended Kalman Filter

机译:扩展卡尔曼滤波训练的递归模糊神经网络在自主移动机器人的运动规划中的应用。

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摘要

This paper proposes a novel motion planning method for an autonomous ground mobile robot to address dynamic surroundings, nonlinear program, and robust optimization problems. A planner based on the recurrent fuzzy neural network (RFNN) is designed to program trajectory and motion of mobile robots to reach target. And, obstacle avoidance is achieved. In RFNN, inference capability of fuzzy logic and learning capability of neural network are combined to improve nonlinear programming performance. A recurrent frame with self-feedback loops in RFNN enhances stability and robustness of the structure. The extended Kalman filter (EKF) is designed to train weights of RFNN considering the kinematic constraint of autonomous mobile robots as well as target and obstacle constraints. EKF's characteristics of fast convergence and little limit in training data make it suitable to train the weights in real time. Convergence of the training process is also analyzed in this paper. Optimization technique and update strategy are designed to improve the robust optimization of a system in dynamic surroundings. Simulation experiment and hardware experiment are implemented to prove the effectiveness of the proposed method. Hardware experiment is carried out on a tracked mobile robot. An omnidirectional vision is used to locate the robot in the surroundings. Forecast improvement of the proposed method is then discussed at the end.
机译:本文针对自主地面移动机器人提出了一种新颖的运动规划方法,以解决动态环境,非线性程序和鲁棒优化问题。设计了基于递归模糊神经网络(RFNN)的计划器,以对移动机器人到达目标的轨迹和运动进行编程。并且,实现了避障。在RFNN中,模糊逻辑的推理能力和神经网络的学习能力相结合,以提高非线性编程性能。 RFNN中带有自反馈循环的循环框架增强了结构的稳定性和鲁棒性。扩展卡尔曼滤波器(EKF)旨在考虑自主移动机器人的运动学约束以及目标和障碍约束来训练RFNN的权重。 EKF具有收敛速度快和训练数据几乎没有限制的特点,因此适合实时训练权重。本文还分析了训练过程的收敛性。优化技术和更新策略旨在提高动态环境中系统的鲁棒性优化。通过仿真实验和硬件实验,证明了该方法的有效性。硬件实验是在履带式移动机器人上进行的。全向视觉用于将机器人定位在周围环境中。最后讨论了该方法的预测改进。

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