自主机器人控制中神经元网络的模块化创建

Germán L. Osella Massa, Hernán Vinuesa, L. Lanzarini
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引用次数: 5

摘要

一般来说,复杂的控制任务可以通过把它们分成更容易处理的更简单的任务来解决。几位作者已经开发了不同的解决方案,将层进化技术与不断进化的神经网络结合起来,产生了由多个网络组成的控制器。在这种类型的解决方案中,在每种情况下选择要使用的模块并不是一个容易解决的问题。本文重点介绍了一种新的进化机制,该机制允许将解决问题的不同部分的模块组合在一起,让位于单一的循环神经网络。这样,就使用了独立于要解决的问题而训练的简单模块。它们之间的通信是通过进化建立的,这就产生了一个代表期望解决方案的单一神经网络。本文提出的方法已用于解决Khepera II型机器人的避障和目标到达问题。在模拟环境和真实机器人上进行的测试都取得了非常成功的结果
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modular Creation of Neuronal Networks for Autonomous Robot Control
In general, complex control tasks can be solved by dividing them into simpler ones which are easier to handle. Several authors have developed different solutions that combine layer evolution techniques with evolving neural networks, giving rise to controllers made up by several networks. In this type of solution, the selection of the module to be used in each case is not an easy problem to solve. This paper is focused on the presentation of a new evolving mechanism that allows combining the modules which solve the different parts of a problem, giving place to a single recurrent neural network. In this way, simple modules which are trained independently of the problem to solve are used. The communication among them is established by evolution, which gives rise to a single neural network representing the expected solution. The proposed method in this paper has been used to solve the problem of obstacle evasion and target reaching using a Khepera II robot. The tests carried out, both in the simulated environment and over the real robot, have yielded really successful results
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