As control engineering methods are applied to increasingly complex systems, data-driven approaches for system identification appear as a promising alternative to physics-based modeling. While many of these approaches rely on the availability of state measurements, the states of a complex system are often not directly measurable. It may then be necessary to jointly estimate the dynamics and a latent state, making it considerably more challenging to design controllers with performance guarantees. This paper proposes a novel method for the computation of an optimal input trajectory for unknown nonlinear systems with latent states. Probabilistic performance guarantees are derived for the resulting input trajectory, and an approach to validate the performance of arbitrary control laws is presented. The effectiveness of the proposed method is demonstrated in a numerical simulation.
翻译:随着控制工程方法应用于越来越复杂的系统,数据驱动的系统识别方法似乎是基于物理建模的有望替代方案。虽然许多方法依赖于状态测量值的可用性,但复杂系统的状态通常不是直接可测量的。因此可能需要联合估计系统的动态和潜在状态,从而更具挑战性地设计具有性能保证的控制器。本文提出了一种针对具有潜在状态的未知非线性系统计算最优输入轨迹的新方法。对于得到的输入轨迹,导出了概率性能保证,并提出了验证任意控制律性能的方法。在数值模拟中,展示了所提出方法的有效性。