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Study on Obstacle Avoidance of AGV based on Fuzzy Neural Network

机译:基于模糊神经网络的AGV避障研究

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As a kind of intelligent car, automated guided vehicle (AGV) belongs to the application direction of wheeled robots and has been widely used in various industrial fields. Because of complex and unpredictable working environment, the obstacle avoidance of AGV has attracted much attention. In this paper, multi-sensor information fusion technology based on back propagation (BP) fuzzy neural network is applied to AGV vehicle obstacle avoidance. Five combinations of infrared sensor and ultrasonic sensor are used to detect the distance of obstacles and one laser sensor is used to scan the direction of targets. The collected data of multiple sensors are fused twice. The simulation results of MATLAB demonstrate the effectiveness of the proposed method.
机译:自动导引车(AGV)作为一种智能汽车,属于轮式机器人的应用方向,已广泛应用于各个工业领域。由于复杂且不可预测的工作环境,AGV的避障倍受关注。本文将基于BP神经网络的多传感器信息融合技术应用于AGV车辆避障。红外传感器和超声传感器的五种组合用于检测障碍物的距离,激光传感器用于扫描目标的方向。将多个传感器收集的数据融合两次。 MATLAB的仿真结果证明了该方法的有效性。

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