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Evolving the Morphology of a Neural Network for Controlling a Foveating Retina ― and its Test on a Real Robot

机译:演化神经网络的形态,用于控制FOVEATING视网膜 - 及其对真正机器人的测试

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The standard approach in evolutionary robotics is to evolve neural networks for control by encoding the parameters of the network in the genome. By contrast, we have evolved a neural controller based on biological principles from molecular and developmental biology. The key principles employed in our algorithms model the specific ligand-receptor interactions and gene regulation. These mechanisms were used to control the growth of the axons, the generation of synapses including the synaptic efficiencies (i.e. the synaptic weights in a neural network model). The evolved neural network was then transferred to a real robotic system with results comparable to the ones achieved the simulation. We hypothesize that the incorporation of mechanisms of gene regulation potentially leads to more adaptive neural networks, that can help bridging the "reality gap" between simulation and the real world.
机译:进化机器人中的标准方法是通过在基因组中编码网络参数来发展神经网络。相比之下,我们已经基于分子和发育生物学的生物学原理进化了神经控制器。我们算法中使用的关键原理模型模型特定的配体 - 受体相互作用和基因调控。这些机制用于控制轴突的生长,包括突触效率的突触的产生(即神经网络模型中的突触权重)。然后将进化的神经网络转移到真正的机器人系统,其结果与达到模拟的结果相当。我们假设Gene调节机制可能导致更自适应的神经网络,可以帮助弥合模拟与现实世界之间的“现实差距”。

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