Comparing Model Based and Model Free techniques for Underactuated In-hand Manipulation

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Gyawali, Pratik

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Abstract

Compared to their fully actuated counterparts underactuated hands are cheap, lighter and provide stable grasp across variety of objects without feedback. However, underactuated hands are less dexterous for in-hand manipulation task due to the limited range of motion in their configuration space. Brake Assisted Tendon Actuator (BATA) is a novel mechanism to enhance dexterity in underactuated hand. This work aims to implement a controller framework for BATA and asses it’s in hand manipulation capabilties. Control is challenging due to contacts, under-actuation and model uncertainty. We develop a simulation environment in MuJoCo and formulate the underlying discrete Markov Decision Process. Model based and model free reinforcement learning methods are implemented to learn a policy for a specific type of in-hand manipulation task: rolling. Simulation results with objects of varying mass and radius suggest Model Predictive Path Integral (MPPI) is more generalizable compared to model free, Proximal Policy Optimization (PPO).

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Thesis (Master's)--University of Washington, 2021

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