Intelligent Systems
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Leveraging Forward Model Prediction Error for Learning Control

2021

Conference Paper

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Learning for model based control can be sample-efficient and generalize well, however successfully learning models and controllers that represent the problem at hand can be challenging for complex tasks. Using inaccurate models for learning can lead to sub-optimal solutions, that are unlikely to perform well in practice. In this work, we present a learning approach which iterates between model learning and data collection and leverages forward model prediction error for learning control. We show how using the controller's prediction as input to a forward model can create a differentiable connection between the controller and the model, allowing us to formulate a loss in the state space. This lets us include forward model prediction error during controller learning and we show that this creates a loss objective that significantly improves learning on different motor control tasks. We provide empirical and theoretical results that show the benefits of our method and present evaluations in simulation for learning control on a 7 DoF manipulator and an underactuated 12 DoF quadruped. We show that our approach successfully learns controllers for challenging motor control tasks involving contact switching.

Author(s): Sarah Bechtle and Bilal Hammoud and Akshara Rai and Franziska Meier and Ludovic Righetti
Year: 2021
Month: June

Department(s): Movement Generation and Control
Bibtex Type: Conference Paper (conference)
Paper Type: Conference

Event Name: The 2021 International Conference on Robotics and Automation (ICRA 2021)

Digital: True
State: Published

BibTex

@conference{bechtle2021leveraging,
  title = {Leveraging Forward Model Prediction Error for Learning Control},
  author = {Bechtle, Sarah and Hammoud, Bilal and Rai, Akshara and Meier, Franziska and Righetti, Ludovic},
  month = jun,
  year = {2021},
  doi = {},
  month_numeric = {6}
}