A time-domain decomposition iterative method for the solution of distributed linear quadratic optimal control problems
نویسنده
چکیده
We study a class of time-domain decomposition-based methods for the numerical solution of large-scale linear quadratic optimal control problems. Our methods are based on a multiple shooting reformulation of the linear quadratic optimal control problem as a discrete-time optimal control (DTOC) problem. The optimality conditions for this DTOC problem lead to a linear block tridiagonal system. The diagonal blocks are invertible and are related to the original linear quadratic optimal control problem restricted to smaller time-subintervals. This motivates the application of block Gauss–Seidel (GS)-type methods for the solution of the block tridiagonal systems. Numerical experiments show that the spectral radii of the block GS iteration matrices are larger than one for typical applications, but that the eigenvalues of the iteration matrices decay to zero fast. Hence, while the GS method is not expected to convergence for typical applications, it can be e9ective as a preconditioner for Krylov-subspace methods. This is con;rmed by our numerical tests. A byproduct of this research is the insight that certain instantaneous control techniques can be viewed as the application of one step of the forward block GS method applied to the DTOC optimality system. c © 2004 Elsevier B.V. All rights reserved.
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Time–Domain Decomposition Iterative Methods for the Solution of Distributed Linear Quadratic Optimal Control Problems
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تاریخ انتشار 2004