ROAILGDec 10, 2024

Optimizing Sensor Redundancy in Sequential Decision-Making Problems

arXiv:2412.07686v1h-index: 27ICAART
Originality Synthesis-oriented
AI Analysis

This work addresses sensor reliability issues in deploying RL policies, which is an incremental improvement for robotics and autonomous systems.

The paper tackles the problem of optimizing backup sensor configurations to handle sensor dropouts in reinforcement learning for real-world applications, achieving effective approximation of expected returns across nine environments including OpenAI Gym and a custom robotic setup.

Reinforcement Learning (RL) policies are designed to predict actions based on current observations to maximize cumulative future rewards. In real-world applications (i.e., non-simulated environments), sensors are essential for measuring the current state and providing the observations on which RL policies rely to make decisions. A significant challenge in deploying RL policies in real-world scenarios is handling sensor dropouts, which can result from hardware malfunctions, physical damage, or environmental factors like dust on a camera lens. A common strategy to mitigate this issue is the use of backup sensors, though this comes with added costs. This paper explores the optimization of backup sensor configurations to maximize expected returns while keeping costs below a specified threshold, C. Our approach uses a second-order approximation of expected returns and includes penalties for exceeding cost constraints. We then optimize this quadratic program using Tabu Search, a meta-heuristic algorithm. The approach is evaluated across eight OpenAI Gym environments and a custom Unity-based robotic environment (RobotArmGrasping). Empirical results demonstrate that our quadratic program effectively approximates real expected returns, facilitating the identification of optimal sensor configurations.

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