Hauser Helmut, Ijspeert Auke J, Füchslin Rudolf M, Pfeifer Rolf, Maass Wolfgang
Artificial Intelligence Laboratory, Department of Informatics, University of Zurich, Andreasstrasse 15, 8050 Zurich, Switzerland.
Biol Cybern. 2011 Dec;105(5-6):355-70. doi: 10.1007/s00422-012-0471-0. Epub 2012 Jan 31.
The control of compliant robots is, due to their often nonlinear and complex dynamics, inherently difficult.The vision of morphological computation proposes to view these aspects not only as problems, but rather also as parts of the solution. Non-rigid body parts are not seen anymore as imperfect realizations of rigid body parts, but rather as potential computational resources. The applicability of this vision has already been demonstrated for a variety of complex robot control problems. Nevertheless, a theoretical basis for understanding the capabilities and limitations of morphological computation has been missing so far. We present a model for morphological computation with compliant bodies, where a precise mathematical characterization oft he potential computational contribution of a complex physical body is feasible. The theory suggests that complexity and nonlinearity, typically unwanted properties of robots, are desired features in order to provide computational power. We demonstrate that simple generic models of physical bodies,based on mass-spring systems, can be used to implement complex nonlinear operators. By adding a simple readout(which is static and linear) to the morphology, such devices are able to emulate complex mappings of input to output streams in continuous time. Hence, by outsourcing parts of the computation to the physical body, the difficult problem of learning to control a complex body, could be reduced to a simple and perspicuous learning task, which can not get stuck in local minima of an error function.
由于柔顺机器人通常具有非线性和复杂的动力学特性,其控制本质上具有难度。形态计算的理念提出,不仅应将这些方面视为问题,还应将其视为解决方案的一部分。非刚体部件不再被视为刚体部件的不完美实现,而是潜在的计算资源。这一理念的适用性已在各种复杂的机器人控制问题中得到证明。然而,到目前为止,尚缺乏理解形态计算能力和局限性的理论基础。我们提出了一种用于柔顺体形态计算的模型,在该模型中,精确数学表征复杂物理体的潜在计算贡献是可行的。该理论表明,复杂性和非线性通常是机器人不想要的特性,但为了提供计算能力,它们却是期望的特征。我们证明,基于质量 - 弹簧系统的简单通用物理体模型可用于实现复杂的非线性算子。通过向形态添加一个简单的读出装置(它是静态且线性的),此类装置能够在连续时间内模拟输入到输出流的复杂映射。因此,通过将部分计算外包给物理体,控制复杂物体这一难题可简化为一个简单且清晰的学习任务,该任务不会陷入误差函数的局部最小值。