Reinforcement Learning for Learning of Dynamical Systems in Uncertain Environment: a Tutorial

05/19/2019
by   Mehran Attar, et al.
11

In this paper, a review of model-free reinforcement learning for learning of dynamical systems in uncertain environments has discussed. For this purpose, the Markov Decision Process (MDP) will be reviewed. Furthermore, some learning algorithms such as Temporal Difference (TD) learning, Q-Learning, and Approximate Q-learning as model-free algorithms which constitute the main part of this article have been investigated, and benefits and drawbacks of each algorithm will be discussed. The discussed concepts in each section are explaining with details and examples.

READ FULL TEXT

page 4

page 16

page 19

page 20

page 22

research
05/20/2020

A reinforcement learning based decision support system in textile manufacturing process

This paper introduced a reinforcement learning based decision support sy...
research
09/27/2021

Model-Free Reinforcement Learning for Optimal Control of MarkovDecision Processes Under Signal Temporal Logic Specifications

We present a model-free reinforcement learning algorithm to find an opti...
research
09/26/2018

Omega-Regular Objectives in Model-Free Reinforcement Learning

We provide the first solution for model-free reinforcement learning of ω...
research
05/26/2019

Interactive Differentiable Simulation

Intelligent agents need a physical understanding of the world to predict...
research
05/27/2023

Online Nonstochastic Model-Free Reinforcement Learning

In this work, we explore robust model-free reinforcement learning algori...
research
06/22/2021

Reinforcement Learning for Physical Layer Communications

In this chapter, we will give comprehensive examples of applying RL in o...
research
11/04/2021

Model-Free Risk-Sensitive Reinforcement Learning

We extend temporal-difference (TD) learning in order to obtain risk-sens...

Please sign up or login with your details

Forgot password? Click here to reset