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Neural Networks Based on Information Fusion using for Avoiding Obstacle Robot

机译:基于信息融合的神经网络避障机器人

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The paper describes an indoor autonomous wheel robot which could move safely in an obstacle environment. The environment may involve any number of arbitrary shape and size obstacles, and the path may be very complex. We describe an approach to solving the motion-planning for mobile robot control by using neural networks based on information fusion technique. In the article, the physics model of the mobile robot was set up, and the sensors used in the avoiding obstacle of the mobile robot were selected. As the indoor environment information couldn't be exact by single sensor, we proposed that using a multi-sensor system for the mobile robot avoiding obstacle. At last, we selected multiple ultrasonic sensors and infrared sensors. In order to predigest the calculation, the measurement data are to be classified and selected. The fuzzy neuron network information fusion based on the T-S model is used to avoid obstacle for the mobile robot, which fully utilized the information coming from the sensors. Finally, the experiment with the autonomous robot proved that the method is really feasible and efficient.
机译:本文介绍了一种室内自主轮式机器人,该机器人可以在障碍物环境中安全移动。环境可能涉及任意数量的任意形状和大小的障碍,并且路径可能非常复杂。我们描述了一种通过使用基于信息融合技术的神经网络来解决移动机器人控制运动计划的方法。本文建立了移动机器人的物理模型,并选择了用于避开移动机器人障碍物的传感器。由于单传感器无法准确获取室内环境信息,因此我们提出了对移动机器人使用多传感器系统来避开障碍物的建议。最后,我们选择了多个超声波传感器和红外传感器。为了简化计算,要对测量数据进行分类和选择。基于T-S模型的模糊神经元网络信息融合被用来避免移动机器人的障碍,该机器人充分利用了来自传感器的信息。最后,通过自主机器人的实验证明了该方法的可行性和有效性。

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