Separation Principle

Separation principle

The separation principle is a concept in control theory which states that the design of an optimal feedback controller for a stochastic system can be broken into two parts: designing an optimal observer and a deterministic controller. It has been applied to linear and nonlinear systems, as well as quantum systems, and when the noise is Gaussian it separates into a Kalman filter and a linear-quadratic regulator.

1 courses cover this concept

CS 294-40: Learning for robotics and control

UC Berkeley

Fall 2008

This advanced course focuses on the applications of machine learning in the robotics and control field. It covers a wide range of topics including Markov Decision Processes, control theories, estimation methodologies, and robotics principles. Recommended for graduate students.

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