Neural System Level Synthesis: Learning over All Stabilizing Policies for Nonlinear Systems
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This paper introduces a novel method for data-driven robust control of nonlinear systems based on the Koopman operator, utilizing Integral Quadratic Constraints (IQCs). The Koopman operator theory facilitates the linear representation of nonlinear system d ...
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