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HyperNEAT Controlled Robots Learn How to Drive on Roads in Simulated Environment

机译:高通控制机器人学习如何在模拟环境中驾驶道路上

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In this paper we describe simulation of autonomous robots controlled by recurrent neural networks, which are evolved through indirect encoding using HyperNEAT algorithm. The robots utilize 180 degree wide sensor array. Thanks to the scalability of the neural network generated by HyperNEAT, the sensor array can have various resolution. This would allow to use camera as an input for neural network controller used in real robot. The robots were simulated using software simulation environment. In the experiments the robots were trained to drive with imaximum average speed. Such fitness forces them to learn how to drive on roads and avoid collisions. Evolved neural networks show excellent scalability. Scaling of the sensory input breaks performance of the robots, which should be gained back with re-training of the robot with a different sensory input resolution.
机译:在本文中,我们描述了经常性神经网络控制的自主机器人的模拟,通过使用超容纳算法通过间接编码演变。机器人利用180度宽传感器阵列。由于通过超容纳产生的神经网络的可扩展性,传感器阵列可以具有各种分辨率。这将允许使用相机作为真实机器人中使用的神经网络控制器的输入。使用软件仿真环境模拟机器人。在实验中,机器人训练以推动初始平均速度。这种健身迫使他们学习如何在道路上驾驶并避免碰撞。进化的神经网络显示出优异的可扩展性。感觉输入的缩放打破了机器人的性能,这应该通过重新训练具有不同的感官输入分辨率的机器人来获得。

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