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Evolving Robot Behaviour at Micro (Molecular) and Macro (Molar) Action Level

机译:在微观(分子)和宏观(摩尔)作用水平上不断发展的机器人行为

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摘要

We investigate how it is possible to shape robot behaviour adopting a molecular or molar point of view. These two ways to approach the issue are inspired by Learning Psychology, whose famous representatives suggest different ways of intervening on animal behaviour. Starting from this inspiration, we apply these two solutions to Evolutionary Robotics' models. Two populations of simulated robots, controlled by Artificial Neural Networks are evolved using Genetic Algorithms to wander in a rectangular enclosure. The first population is selected by measuring the wandering behaviour at micro-actions level, the second one is evaluated by considering the macro-actions level. Some robots are evolved with a molecular fitness function, while some others with a molar fitness function. At the end of the evolutionary process, we evaluate both populations of robots on behavioral, evolutionary and latent-learning parameters.Choosing what kind of behaviour measurement must be employed in an evolutionary run depends on several factors, but we underline that a choice that is based on self-organization, emergence and autonomous behaviour principles, the basis Evolutionary Robotics lies on, is perfectly in line with a molar fitness function.
机译:我们研究如何从分子或摩尔的角度来塑造机器人的行为。这两种解决问题的方法是受学习心理学启发的,学习心理学的著名代表提出了不同的干预动物行为的方法。从这个灵感开始,我们将这两种解决方案应用于Evolutionary Robotics的模型。使用遗传算法进化了两个由人工神经网络控制的模拟机器人,使其在矩形外壳中徘徊。通过在微观行为水平上测量游荡行为来选择第一个种群,而通过考虑宏观行为水平来评估第二个种群。一些机器人具有分子适应功能,而另一些具有摩尔适应功能。在进化过程的最后,我们评估了两种机器人的行为,进化和潜学习参数。选择在进化过程中必须采用哪种行为测量取决于几个因素,但我们强调指出,选择基于自组织,出现和自主行为原则,Evolutionary Robotics所基于的基础完全符合摩尔适应性函数。

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