A generalized iterative LQG method for locally-optimal feedback control of constrained nonlinear stochastic systems
University of California, San Diego
Abstract
We present an iterative linear-quadratic-Gaussian method for locally-optimal feedback control of nonlinear stochastic systems subject to control constraints. Previously, similar methods have been restricted to deterministic unconstrained problems with quadratic costs. The new method constructs an affine feedback control law, obtained by minimizing a novel quadratic approximation to the optimal cost-to-go function. Global convergence is guaranteed through a Levenberg-Marquardt method; convergence in the vicinity of a local minimum is quadratic. Performance is illustrated on a limited-torque inverted pendulum problem, as well as a complex biomechanical control problem involving a stochastic model of the human…
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Authors
2Topics & keywords
- Linear-quadratic-Gaussian control
- Control theory (sociology)
- Optimal control
- Linear-quadratic regulator
- Affine transformation
- Mathematical optimization
- Convergence (economics)
- Stochastic control
- Peace, Justice and strong institutions