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  4. Combining Coarse and Fine Physics for Manipulation Using Parallel-in-Time Integration
 
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Combining Coarse and Fine Physics for Manipulation Using Parallel-in-Time Integration

Publikationstyp
Conference Paper
Date Issued
2019-10
Sprache
English
Author(s)
Agboh, Wisdom  
Ruprecht, Daniel  orcid-logo
Dogar, Mehmet R.  
Institut
Mathematik E-10  
TORE-URI
http://hdl.handle.net/11420/12045
Journal
Springer proceedings in advanced robotics  
Volume
20 SPAR
Start Page
725
End Page
740
Citation
17th International Symposium of Robotics Research (ISRR 2019)
Contribution to Conference
17th International Symposium of Robotics Research, ISRR 2019  
Publisher DOI
10.1007/978-3-030-95459-8_44
Scopus ID
2-s2.0-85126228543
We present a method for fast and accurate physics-based predictions during non-prehensile manipulation planning and control. Given an initial state and a sequence of controls, the problem of predicting the resulting sequence of states is a key component of a variety of model-based planning and control algorithms. We propose combining a coarse (i.e. computationally cheap but not very accurate) predictive physics model, with a fine (i.e. computationally expensive but accurate) predictive physics model, to generate a hybrid model that is at the required speed and accuracy for a given manipulation task. Our approach is based on the Parareal algorithm, a parallel-in-time integration method used for computing numerical solutions for general systems of ordinary differential equations. We adapt Parareal to combine a coarse pushing model with an off-the-shelf physics engine to deliver physics-based predictions that are as accurate as the physics engine but run in substantially less wall-clock time, thanks to parallelization across time. We use these physics-based predictions in a model-predictive-control framework based on trajectory optimization, to plan pushing actions that avoid an obstacle and reach a goal location. We show that with hybrid physics models, we can achieve the same success rates as the planner that uses the off-the-shelf physics engine directly, but significantly faster. We present experiments in simulation and on a real robotic setup. Videos are available here: https://youtu.be/5e9oTeu4JOU.
Subjects
Model-predictive-control
Physics-based manipulation
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