On the Impact of Gravity Compensation on Reinforcement Learning in Goal-Reaching Tasks For Robotic Manipulators

Advances in machine learning technologies in recent years have facilitated developments in autonomous robotic systems. Designing these autonomous systems typically requires manually specified models of the robotic system and world when using classical control-based strategies, or time consuming and...

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Main Authors: Jonathan Fugal, Jihye Bae, Hasan A. Poonawala
Format: Article
Language:English
Published: MDPI AG 2021-03-01
Series:Robotics
Subjects:
Online Access:https://www.mdpi.com/2218-6581/10/1/46
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spelling doaj-b18c0000e6d043468f94ba7420c806192021-03-10T00:02:42ZengMDPI AGRobotics2218-65812021-03-0110464610.3390/robotics10010046On the Impact of Gravity Compensation on Reinforcement Learning in Goal-Reaching Tasks For Robotic ManipulatorsJonathan Fugal0Jihye Bae1Hasan A. Poonawala2Department of Electrical and Computer Engineering, University of Kentucky, Lexington, KY 40506, USADepartment of Electrical and Computer Engineering, University of Kentucky, Lexington, KY 40506, USADepartment of Mechanical Engineering, University of Kentucky, Lexington, KY 40506, USAAdvances in machine learning technologies in recent years have facilitated developments in autonomous robotic systems. Designing these autonomous systems typically requires manually specified models of the robotic system and world when using classical control-based strategies, or time consuming and computationally expensive data-driven training when using learning-based strategies. Combination of classical control and learning-based strategies may mitigate both requirements. However, the performance of the combined control system is not obvious given that there are two separate controllers. This paper focuses on one such combination, which uses gravity-compensation together with reinforcement learning (RL). We present a study of the effects of gravity compensation on the performance of two reinforcement learning algorithms when solving reaching tasks using a simulated seven-degree-of-freedom robotic arm. The results of our study demonstrate that gravity compensation coupled with RL can reduce the training required in reaching tasks involving elevated target locations, but not all target locations.https://www.mdpi.com/2218-6581/10/1/46roboticscontrolreinforcement learningphysics-based machine learning
collection DOAJ
language English
format Article
sources DOAJ
author Jonathan Fugal
Jihye Bae
Hasan A. Poonawala
spellingShingle Jonathan Fugal
Jihye Bae
Hasan A. Poonawala
On the Impact of Gravity Compensation on Reinforcement Learning in Goal-Reaching Tasks For Robotic Manipulators
Robotics
robotics
control
reinforcement learning
physics-based machine learning
author_facet Jonathan Fugal
Jihye Bae
Hasan A. Poonawala
author_sort Jonathan Fugal
title On the Impact of Gravity Compensation on Reinforcement Learning in Goal-Reaching Tasks For Robotic Manipulators
title_short On the Impact of Gravity Compensation on Reinforcement Learning in Goal-Reaching Tasks For Robotic Manipulators
title_full On the Impact of Gravity Compensation on Reinforcement Learning in Goal-Reaching Tasks For Robotic Manipulators
title_fullStr On the Impact of Gravity Compensation on Reinforcement Learning in Goal-Reaching Tasks For Robotic Manipulators
title_full_unstemmed On the Impact of Gravity Compensation on Reinforcement Learning in Goal-Reaching Tasks For Robotic Manipulators
title_sort on the impact of gravity compensation on reinforcement learning in goal-reaching tasks for robotic manipulators
publisher MDPI AG
series Robotics
issn 2218-6581
publishDate 2021-03-01
description Advances in machine learning technologies in recent years have facilitated developments in autonomous robotic systems. Designing these autonomous systems typically requires manually specified models of the robotic system and world when using classical control-based strategies, or time consuming and computationally expensive data-driven training when using learning-based strategies. Combination of classical control and learning-based strategies may mitigate both requirements. However, the performance of the combined control system is not obvious given that there are two separate controllers. This paper focuses on one such combination, which uses gravity-compensation together with reinforcement learning (RL). We present a study of the effects of gravity compensation on the performance of two reinforcement learning algorithms when solving reaching tasks using a simulated seven-degree-of-freedom robotic arm. The results of our study demonstrate that gravity compensation coupled with RL can reduce the training required in reaching tasks involving elevated target locations, but not all target locations.
topic robotics
control
reinforcement learning
physics-based machine learning
url https://www.mdpi.com/2218-6581/10/1/46
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AT jihyebae ontheimpactofgravitycompensationonreinforcementlearningingoalreachingtasksforroboticmanipulators
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