Learning Stabilizing Policies in Stochastic Control Systems

05/24/2022
by   Đorđe Žikelić, et al.
0

In this work, we address the problem of learning provably stable neural network policies for stochastic control systems. While recent work has demonstrated the feasibility of certifying given policies using martingale theory, the problem of how to learn such policies is little explored. Here, we study the effectiveness of jointly learning a policy together with a martingale certificate that proves its stability using a single learning algorithm. We observe that the joint optimization problem becomes easily stuck in local minima when starting from a randomly initialized policy. Our results suggest that some form of pre-training of the policy is required for the joint optimization to repair and verify the policy successfully.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/11/2022

Learning Control Policies for Region Stabilization in Stochastic Systems

We consider the problem of learning control policies in stochastic syste...
research
08/11/2020

Learning Event-triggered Control from Data through Joint Optimization

We present a framework for model-free learning of event-triggered contro...
research
06/27/2020

Overfitting and Optimization in Offline Policy Learning

We consider the task of policy learning from an offline dataset generate...
research
06/12/2020

Similarity-based transfer learning of decision policies

A problem of learning decision policy from past experience is considered...
research
09/14/2020

Disease control as an optimization problem

Traditionally, expert epidemiologists devise policies for disease contro...
research
11/16/2022

Generating Stable and Collision-Free Policies through Lyapunov Function Learning

The need for rapid and reliable robot deployment is on the rise. Imitati...
research
10/25/2018

Stochastic Control with Stale Information--Part I: Fully Observable Systems

In this study, we adopt age of information as a measure of the staleness...

Please sign up or login with your details

Forgot password? Click here to reset