It is well known that conservative mechanical systems exhibit local oscillatory behaviours due to their elastic and gravitational potentials, which completely characterise these periodic motions together with the inertial properties of the system. The classification of these periodic behaviours and their geometric characterisation are in an on-going secular debate, which recently led to the so-called eigenmanifold theory. The eigenmanifold characterises nonlinear oscillations as a generalisation of linear eigenspaces. With the motivation of performing periodic tasks efficiently, we use tools coming from this theory to construct an optimization problem aimed at inducing desired closed-loop oscillations through a state feedback law. We solve the constructed optimization problem via gradient-descent methods involving neural networks. Extensive simulations show the validity of the approach.
翻译:众所周知,保守的机械系统由于其弹性和引力潜力而表现出地方的血管行为,这完全体现了这些周期性运动以及系统的惯性特性。这些周期性行为的分类及其几何特征正在一场非经常性的辩论中进行,最近产生了所谓的天文图学理论。隐形图解将非线性振荡作为线性脑空间的概括性特征。由于高效地执行定期任务的动机,我们利用这一理论产生的工具来构建一个优化问题,目的是通过州反馈法引导人们期望的闭路振荡。我们通过涉及神经网络的梯度-白线方法解决构建的优化问题。广泛的模拟显示了这一方法的有效性。