Melanie Zeilinger: "Learning-based Model Predictive Control - Towards Safe Learning in Control"

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Institute for Pure & Applied Mathematics (IPAM)

Institute for Pure & Applied Mathematics (IPAM)

Күн бұрын

Intersections between Control, Learning and Optimization 2020
"Learning-based Model Predictive Control - Towards Safe Learning in Control"
Melanie Zeilinger - ETH Zurich & University of Freiburg
Abstract: The question of safety when integrating learning techniques in control systems has been recognized as a central challenge for the widespread success of these promising techniques. While different notions of safety exist, I will focus on the satisfaction of critical safety constraints (in probability) in this talk, a common and intuitive form of specifying safety in many applications. Optimization-based control has been established as the main technique for systematically addressing constraint satisfaction in the control of complex systems. However, it suffers from the need of a mathematical problem representation, i.e. a model, constraints and objective. Reinforcement learning, in contrast, has demonstrated its success for complex problems where a mathematical problem representation is not available by directly interacting with the system, however, at the cost of safety guarantees.
In this talk, I will discuss techniques that aim at bridging these two paradigms. We will investigate three variants how learning can be combined with optimization-based concepts to generate high-performance controllers that are simple and time-efficient to design while offering a notion of constraint satisfaction, and thereby of safety. We will begin with techniques for inferring a model of the dynamics, objective or constraints from data for the integration in optimization-based control, and then discuss a safety filter as a modular approach for augmenting reinforcement learning with constraint satisfaction properties. I will show examples of using these techniques in robotics applications.
Institute for Pure and Applied Mathematics, UCLA
February 26, 2020
For more information: www.ipam.ucla.edu/lco2020

Пікірлер: 2
@kobieabaidoo7472
@kobieabaidoo7472 Жыл бұрын
Please can I get a new topic under model predictive torque control for PMSM
@rodrigofernandez9800
@rodrigofernandez9800 3 ай бұрын
Excelent performance, only that her accents is irritating
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