Deluca -- A Differentiable Control Library: Environments, Methods, and Benchmarking
We present an open-source library of natively differentiable physics and robotics environments, accompanied by gradient-based control methods and a benchmark-ing suite. The introduced environments allow auto-differentiation through the simulation dynamics, and thereby permit fast training of control...
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Zusammenfassung: | We present an open-source library of natively differentiable physics and
robotics environments, accompanied by gradient-based control methods and a
benchmark-ing suite. The introduced environments allow auto-differentiation
through the simulation dynamics, and thereby permit fast training of
controllers. The library features several popular environments, including
classical control settings from OpenAI Gym. We also provide a novel
differentiable environment, based on deep neural networks, that simulates
medical ventilation. We give several use-cases of new scientific results
obtained using the library. This includes a medical ventilator simulator and
controller, an adaptive control method for time-varying linear dynamical
systems, and new gradient-based methods for control of linear dynamical systems
with adversarial perturbations. |
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DOI: | 10.48550/arxiv.2102.09968 |