Worrisome Properties of Neural Network Controllers and Their Symbolic Representations

07/28/2023
by   Jacek Cyranka, et al.
0

We raise concerns about controllers' robustness in simple reinforcement learning benchmark problems. We focus on neural network controllers and their low neuron and symbolic abstractions. A typical controller reaching high mean return values still generates an abundance of persistent low-return solutions, which is a highly undesirable property, easily exploitable by an adversary. We find that the simpler controllers admit more persistent bad solutions. We provide an algorithm for a systematic robustness study and prove existence of persistent solutions and, in some cases, periodic orbits, using a computer-assisted proof methodology.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/20/2018

Optimal Symbolic Controllers Determinization for BDD storage

Controller synthesis techniques based on symbolic abstractions appeal by...
research
05/09/2022

FC^3: Feasibility-Based Control Chain Coordination

Hierarchical coordination of controllers often uses symbolic state repre...
research
03/06/2018

Synthesizing Neural Network Controllers with Probabilistic Model based Reinforcement Learning

We present an algorithm for rapidly learning controllers for robotics sy...
research
06/26/2018

SENSE: Abstraction-Based Synthesis of Networked Control Systems

While many studies and tools target the basic stabilizability problem of...
research
07/27/2021

Reinforcement Learning with Formal Performance Metrics for Quadcopter Attitude Control under Non-nominal Contexts

We explore the reinforcement learning approach to designing controllers ...
research
03/23/2021

Neural Network Controller for Autonomous Pile Loading Revised

We have recently proposed two pile loading controllers that learn from h...

Please sign up or login with your details

Forgot password? Click here to reset