TY - JOUR
T1 - Numerical solution to generalized Lyapunov/Stein and rational Riccati equations in stochastic control
AU - Fan, Hung Yuan
AU - Weng, Peter Chang Yi
AU - Chu, Eric King Wah
N1 - Publisher Copyright:
© 2015, Springer Science+Business Media New York.
PY - 2016/2/1
Y1 - 2016/2/1
N2 - We consider the numerical solution of the generalized Lyapunov and Stein equations in ℝn$\mathbb {R}^{n}$, arising respectively from stochastic optimal control in continuous- and discrete-time. Generalizing the Smith method, our algorithms converge quadratically and have an O(n3) computational complexity per iteration and an O(n2) memory requirement. For large-scale problems, when the relevant matrix operators are “sparse”, our algorithm for generalized Stein (or Lyapunov) equations may achieve the complexity and memory requirement of O(n) (or similar to that of the solution of the linear systems associated with the sparse matrix operators). These efficient algorithms can be applied to Newton’s method for the solution of the rational Riccati equations. This contrasts favourably with the naive Newton algorithms of O(n6) complexity or the slower modified Newton’s methods of O(n3) complexity. The convergence and error analysis will be considered and numerical examples provided.
AB - We consider the numerical solution of the generalized Lyapunov and Stein equations in ℝn$\mathbb {R}^{n}$, arising respectively from stochastic optimal control in continuous- and discrete-time. Generalizing the Smith method, our algorithms converge quadratically and have an O(n3) computational complexity per iteration and an O(n2) memory requirement. For large-scale problems, when the relevant matrix operators are “sparse”, our algorithm for generalized Stein (or Lyapunov) equations may achieve the complexity and memory requirement of O(n) (or similar to that of the solution of the linear systems associated with the sparse matrix operators). These efficient algorithms can be applied to Newton’s method for the solution of the rational Riccati equations. This contrasts favourably with the naive Newton algorithms of O(n6) complexity or the slower modified Newton’s methods of O(n3) complexity. The convergence and error analysis will be considered and numerical examples provided.
KW - Algebraic Riccati equation
KW - Bilinear model order reduction
KW - Generalized Lyapunov equation
KW - Generalized Stein equation
KW - Large-scale problem
KW - Newton’s method
KW - Rational Riccati equation
KW - Smith method
KW - Stochastic Algebraic Riccati equation
KW - Stochastic optimal control
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U2 - 10.1007/s11075-015-9991-8
DO - 10.1007/s11075-015-9991-8
M3 - Article
AN - SCOPUS:84955729541
SN - 1017-1398
VL - 71
SP - 245
EP - 272
JO - Numerical Algorithms
JF - Numerical Algorithms
IS - 2
ER -