In a world designed for legs, quadrupeds, bipeds, and humanoids have the opportunity to impact emerging robotics applications from logistics, to agriculture, to home assistance. The goal of this survey is to cover the recent progress toward these applications that has been driven by model-based optimization for the real-time generation and control of movement. The majority of the research community has converged on the idea of generating locomotion control laws by solving an optimal control problem (OCP) in either a model-based or data-driven manner. However, solving the most general of these problems online remains intractable due to complexities from intermittent unidirectional contacts with the environment, and from the many degrees of freedom of legged robots. This survey covers methods that have been pursued to make these OCPs computationally tractable, with specific focus on how environmental contacts are treated, how the model can be simplified, and how these choices affect the numerical solution methods employed. The survey focuses on model-based optimization, covering its recent use in a stand alone fashion, and suggesting avenues for combination with learning-based formulations to further accelerate progress in this growing field.
翻译:在一个为腿设计的世界中,四倍的双胞胎、双胞胎和类人猿有机会影响从物流、农业、家庭援助等新兴机器人应用到新兴的机器人应用。本调查的目的是为了涵盖这些应用的最新进展,这些应用是由实时生成和控制运动的模型优化驱动的。大多数研究界已经汇集了通过以模型或数据驱动的方式解决最佳控制问题(OCP)来产生移动控制法的想法。然而,由于与环境间歇性单向接触和脚踏式机器人自由的多种程度的复杂性,这些问题中最普遍的在网上解决仍然是难以解决的。本调查涵盖了为使这些OCP在计算上可以调整的方法,具体侧重于如何对待环境接触,如何简化模型,以及这些选择如何影响所采用的数字解决方案方法。调查侧重于基于模型的优化,以独立的方式涵盖其最近使用,并提出了与基于学习的配方相结合的方法,以进一步加快这个日益扩大的领域的进展。