Department of Computer Sciences, Vermont Advanced Computing Center, University of Vermont, Burlington, VT 05408, USA.
Artif Life. 2010 Summer;16(3):201-23. doi: 10.1162/artl.2010.Bongard.024.
Embodied artificial intelligence argues that the body and brain play equally important roles in the generation of adaptive behavior. An increasingly common approach therefore is to evolve an agent's morphology along with its control in the hope that evolution will find a good coupled system. In order for embodied artificial intelligence to gain credibility within the robotics and cognitive science communities, however, it is necessary to amass evidence not only for how to co-optimize morphology and control of adaptive machines, but why. This work provides two new lines of evidence for why this co-optimization is useful: Here we show that for an object manipulation task in which a simulated robot must accomplish one, two, or three objectives simultaneously, subjugating more aspects of the robot's morphology to selective pressure allows for the evolution of better robots as the number of objectives increases. In addition, for robots that successfully evolved to accomplish all of their objectives, those composed of evolved rather than fixed morphologies generalized better to previously unseen environmental conditions.
具身人工智能认为,身体和大脑在适应性行为的产生中起着同样重要的作用。因此,一种越来越常见的方法是在进化代理的形态学的同时进化其控制,希望进化能够找到一个良好的耦合系统。然而,为了使具身人工智能在机器人学和认知科学领域获得可信度,有必要不仅积累如何共同优化自适应机器的形态和控制的证据,还要积累为什么要这样做的证据。这项工作为为什么这种共同优化是有用的提供了两条新的证据:在这里,我们展示了对于一个物体操纵任务,其中一个模拟机器人必须同时完成一个、两个或三个目标,将机器人形态的更多方面置于选择压力下,可以随着目标数量的增加进化出更好的机器人。此外,对于那些成功进化以完成所有目标的机器人来说,那些由进化而不是固定形态组成的机器人在适应以前未见的环境条件方面表现得更好。