This manuscript presents an algorithm for obtaining an approximation of nonlinear high order control affine dynamical systems, that leverages the controlled trajectories as the central unit of information. As the fundamental basis elements leveraged in approximation, higher order control occupation kernels represent iterated integration after multiplication by a given controller in a vector valued reproducing kernel Hilbert space. In a regularized regression setting, the unique optimizer for a particular optimization problem is expressed as a linear combination of these occupation kernels, which converts an infinite dimensional optimization problem to a finite dimensional optimization problem through the representer theorem. Interestingly, the vector valued structure of the Hilbert space allows for simultaneous approximation of the drift and control effectiveness components of the control affine system. Several experiments are performed to demonstrate the effectiveness of the approach.
翻译:本手稿提供了一种算法,以获得非线性高命令控制线性电动系统近似值,利用受控轨迹作为中央信息单位。作为在近似中利用的基本基础要素,较高的命令控制占用内核代表特定控制器在具有价值的再生产内核Hilbert空间的矢量中进行倍增后的循环整合。在常规回归环境中,特定优化问题的独特优化器表现为这些占用内核的线性组合,通过代表器定理将无限的维度优化问题转换成有限的维优化问题。有趣的是,Hilbert空间的矢量值结构允许同时近近近控制线性系统的漂移和控制有效性组成部分。进行了一些实验,以证明这一方法的有效性。