Litcius/Paper detail

Memory-based Deep Reinforcement Learning for POMDPs

Lingheng Meng, Rob Gorbet, Dana Kulić

20212021 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)77 citationsDOI

Abstract

A promising characteristic of Deep Reinforcement Learning (DRL) is its capability to learn optimal policy in an end-to-end manner without relying on feature engineering. However, most approaches assume a fully observable state space, i.e. fully observable Markov Decision Processes (MDPs). In real-world robotics, this assumption is unpractical, because of issues such as sensor sensitivity limitations and sensor noise, and the lack of knowledge about whether the observation design is complete or not. These scenarios lead to Partially Observable MDPs (POMDPs). In this paper, we propose Long-Short-Term-Memory-based Twin Delayed Deep Deterministic Policy Gradient (LSTM-TD3) by introducing a memory component to TD3, and compare its performance with other DRL algorithms in both MDPs and POMDPs. Our results demonstrate the significant advantages of the memory component in addressing POMDPs, including the ability to handle missing and noisy observation data.

Topics & Concepts

Reinforcement learningMarkov decision processComputer scienceObservableArtificial intelligencePartially observable Markov decision processNoise (video)RoboticsComponent (thermodynamics)Sensitivity (control systems)Feature (linguistics)Deep learningMarkov processMarkov chainMachine learningRobotMarkov modelEngineeringThermodynamicsMathematicsPhilosophyElectronic engineeringImage (mathematics)LinguisticsQuantum mechanicsPhysicsStatisticsReinforcement Learning in RoboticsAdversarial Robustness in Machine LearningFault Detection and Control Systems