We present a physics-informed machine learning (PIML) scheme for the feedback linearization of nonlinear discrete-time dynamical systems. The PIML finds the nonlinear transformation law, thus ensuring stability via pole placement, in one step. In order to facilitate convergence in the presence of steep gradients in the nonlinear transformation law, we address a greedy-wise training procedure. We assess the performance of the proposed PIML approach via a benchmark nonlinear discrete map for which the feedback linearization transformation law can be derived analytically; the example is characterized by steep gradients, due to the presence of singularities, in the domain of interest. We show that the proposed PIML outperforms, in terms of numerical approximation accuracy, the traditional numerical implementation, which involves the construction--and the solution in terms of the coefficients of a power-series expansion--of a system of homological equations as well as the implementation of the PIML in the entire domain, thus highlighting the importance of continuation techniques in the training procedure of PIML.
翻译:我们为非线性离散时间动态系统的反馈线性化提出了一个物理知情机器学习(PIML)计划。PIML发现非线性变换法,从而通过杆置确保稳定。为了在非线性变换法存在陡峭梯度的情况下促进趋同,我们处理的是贪婪的培训程序。我们通过非线性离散基准地图评估了拟议的PIML方法的绩效,对非线性离散变制法可以进行分析性推导;例子的特点是,由于在感兴趣的领域存在奇特性,梯度陡峭。我们表明,拟议的PIML在数字近似精度方面优于传统的数字执行,这涉及构建和解决同源性方程式扩展系统的系数,以及在整个领域实施PIML,从而突出了PIML培训程序中持续技术的重要性。</s>