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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Evolutionary robots with on-line self-organization and behavioral fitness.
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Evolutionary robots with on-line self-organization and behavioral fitness.

机译:具有在线自组织和行为适应性的进化机器人。

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摘要

We address two issues in Evolutionary Robotics, namely the genetic encoding and the performance criterion, also known as the fitness function. For the first aspect, we suggest to encode mechanisms for parameter self-organization, instead of the parameters themselves as in conventional approaches. We argue that the suggested encoding generates systems that can solve more complex tasks and are more robust to unpredictable sources of change. We support our arguments with a set of experiments on evolutionary neural controllers for physical robots and compare them to conventional encoding. In addition, we show that when also the genetic encoding is left free to evolve, artificial evolution will select to exploit mechanisms of self-organization. For the second aspect, we shall discuss the role of the performance criterion, als known as fitness function, and suggest Fitness Space as a framework to conceive fitness functions in Evolutionary Robotics. Fitness Space can be used as a guide to design fitness functions as well as to compare different experiments in Evolutionary Robotics.
机译:我们解决了进化机器人技术中的两个问题,即遗传编码和性能标准,也称为适应度函数。对于第一个方面,我们建议对参数自组织的机制进行编码,而不是像常规方法那样对参数本身进行编码。我们认为,建议的编码生成的系统可以解决更复杂的任务,并且对于不可预测的变化源更强大。我们通过一组针对物理机器人的进化神经控制器的实验来支持我们的论据,并将其与常规编码进行比较。此外,我们表明,当遗传编码也可以自由进化时,将选择人工进化来利用自组织机制。对于第二方面,我们将讨论性能标准(也称为适应度函数)的作用,并提出适应度空间作为构想进化机器人中适应度函数的框架。 Fitness Space可作为设计健身功能以及在Evolutionary Robotics中比较不同实验的指南。

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