224 Convergence of Discrete Algebraic Riccati Equation and Uniform Estimation of Matrix Exponential Approximation
10
0
·
2026/05/11
·
5 mins read
☕
WriterShelf™ is a unique multiple pen name blogging and forum platform. Protect relationships and your privacy. Take your writing in new directions. ** Join WriterShelf**
WriterShelf™ is an open writing platform. The views, information and opinions in this article are those of the author.
Article info
This article is part of:
分類於:
⟩
⟩
合計:1152字
Like
or Dislike
About the Author
I love science as much as art, logic as deeply as emotion.
I write the softest human stories beneath the hardest sci-fi.
May words bridge us to kindred spirits across the world.
More from this author
More to explore

Convergence of Discrete Algebraic Riccati Equation and Uniform Estimation of Matrix Exponential Approximation
Author: Suhang Zhang
Luoyang
Abstract
This paper systematically studies two core problems in sampled-data optimal control and numerical approximation of linear systems. First, under the standard stabilisability and detectability assumptions, we rigorously prove that the unique positive semi-definite stabilising solution P_h of the discrete-time algebraic Riccati equation converges to the solution P_c of the continuous-time algebraic Riccati equation as the sampling period h\to 0^+, with an optimal convergence rate \|P_h-P_c\|=O(h). Second, we establish a uniform convergence estimate for discrete approximations of the matrix exponential evolution operator, proving that the iterated discrete propagators converge to the continuous-time matrix exponential uniformly over the finite-time interval [0,T] with order O(h). The entire analysis follows a rigorous mathematical framework, including asymptotic expansions, uniform boundedness, Fréchet linearisation, Lyapunov operator inversion, and telescoping error decomposition.
Keywords: Discrete algebraic Riccati equation; Matrix exponential; Sampled-data system; Convergence rate; Uniform error estimate; Optimal control
1 Introduction
In digital control and sampled-data systems, continuous-time optimal control problems are routinely approximated by discrete-time formulations via zero-order hold sampling. A fundamental question is the consistency of the solution to the discrete algebraic Riccati equation (DARE) with respect to the sampling period h: as h\to 0, does the solution of the DARE converge to that of the continuous-time algebraic Riccati equation (CARE)? This convergence guarantees that high-rate digital control designs approximate the continuous-time optimal controller.
Meanwhile, the convergence analysis relies crucially on uniform error bounds for the discretised state-transition matrix, i.e., the approximation of the matrix exponential e^{\mathcal{A}t} by iterated discrete propagators L_h^{\lfloor t/h\rfloor}. A sharp uniform O(h) estimate over a finite-time horizon is required to close the error bound for the Riccati solution.
This paper consists of two logically connected parts. Part 1 proves the convergence of the DARE solution to the CARE solution with explicit first-order rate. Part 2 establishes a general uniform convergence theorem for matrix exponential approximations, covering exact sampling, forward Euler, and consistent one-step methods, providing the foundational estimate used in Part 1.
Part 1 Convergence of the Discrete Riccati Equation Solution
2 Problem Statement and Main Result
Consider the continuous-time linear time-invariant system
\dot{x}(t) = A x(t) + B u(t), \quad x(0)=x_0,
with the infinite-horizon quadratic cost
J_c = \int_0^\infty \big( x(t)^T Q x(t) + u(t)^T R u(t) \big) dt,
where Q\succeq 0, R\succ 0. We impose the standard assumptions:
1. The pair (A,B) is stabilisable;
2. The pair (Q^{1/2},A) is detectable.
The continuous-time algebraic Riccati equation (CARE) is
A^T P + P A - P B R^{-1} B^T P + Q = 0, \tag{2.1}
which admits a unique positive semi-definite stabilising solution P_c, such that A-BR^{-1}B^TP_c is Hurwitz.
For sampling period h>0, the system is discretised as
x_{k+1} = A_d x_k + B_d u_k,\quad A_d = e^{Ah},\quad B_d = \int_0^h e^{As}B\,ds,
with cost
J_d = \sum_{k=0}^\infty \big( x_k^T Q_d x_k + u_k^T R u_k \big),\quad Q_d = \int_0^h e^{A^Ts}Q e^{As}ds.
The discrete-time algebraic Riccati equation (DARE) reads
A_d^T P_h A_d - P_h - A_d^T P_h B_d (R+B_d^T P_h B_d)^{-1} B_d^T P_h A_d + Q_d = 0. \tag{2.2}
For all sufficiently small h>0, (2.2) has a unique positive semi-definite stabilising solution P_h.
Theorem 2.1
Under the stabilisability and detectability assumptions, as h\to 0^+,
\lim_{h\to 0^+} P_h = P_c, \qquad \|P_h-P_c\|=O(h).
3 Preliminary Asymptotic Expansions
For small h>0, the following uniform expansions hold in the operator norm:
\begin{aligned}
A_d &= I + Ah + \tfrac12 A^2 h^2 + O(h^3),\\
B_d &= Bh + \tfrac12 AB h^2 + O(h^3),\\
Q_d &= Qh + \tfrac12 (A^TQ+QA)h^2 + O(h^3).
\end{aligned}
These follow from term-by-term integration of the matrix exponential power series, with uniform remainders.
4 Uniform Boundedness of P_h
By stabilisability, there exists a constant matrix K such that A-BK is Hurwitz. The discretised closed-loop matrix satisfies
A_d-B_dK = I+(A-BK)h+O(h^2).
For small enough h, \rho(A_d-B<1, so the discrete system is exponentially stable. Consider the Lyapunov equation
(A_d-B_dK)^T\hat{P}_h(A_d-B_dK)-\hat{P}_h+Q_d+K^TRK=0.
Its unique solution \hat{P}_h is uniformly bounded for h\in(0,h_0]. Since P_h is the optimal cost matrix, P_h\preceq\hat{P}_h, so \|P_h\| is uniformly bounded.
5 Riccati Residual Operator and Linearisation
Define the Riccati residual operator
\mathcal{R}_h(P) = A_d^TPA_d - P + Q_d - A_d^TPB_d(R+B_d^TPB_d)^{-1}B_d^TPA_d.
Then DARE is equivalent to \mathcal{R}_h(P_h)=0. Substituting P_c and using the CARE to cancel the first-order terms yields
\mathcal{R}_h(P_c)=O(h^2).
Let E_h=P_h-P_c. The Fréchet linearisation gives
0=\mathcal{R}_h(P_c)+\mathcal{L}_h(E_h)+O(\|E_h\|^2),
where the linearised operator \mathcal{L}_h takes the form
\mathcal{L}_h(\Delta)=A_{c,d}^T\Delta A_{c,d}-\Delta+h\Phi_h(\Delta),
with A_{c,d}=A_d-B_dK_c, K_c=R^{-1}B^TP_c, and \Phi_h uniformly bounded.
Lemma 5.1
The operator \mathcal{L}_0(\Delta)=A_{c,d}^T\Delta A_{c,d}-\Delta satisfies
\|\mathcal{L}_0^{-1}\|=O(1/h).
Since \mathcal{L}_h=\mathcal{L}_0(I+h\Phi_h\mathcal{L}_0^{-1}), for small h, \mathcal{L}_h is invertible and \|\mathcal{L}_h^{-1}\|=O(1/h).
6 Convergence Rate Estimate
From the error equation
\|E_h\|\le\|\mathcal{L}_h^{-1}\|\big(\|\mathcal{R}_h(P_c)\|+O(\|E_h\|^2)\big),
substituting \|\mathcal{R}_h(P_c)\|=O(h^2) and \|\mathcal{L}_h^{-1}\|=O(1/h) gives
\|E_h\| \le C h + \frac{C'}{h}\|E_h\|^2.
By uniform boundedness and a bootstrap argument, \|E_h\|=O(h). Thus Theorem 2.1 is proved.
Part 2 Uniform Estimation of Matrix Exponential Convergence
7 Problem Setup
Consider the linear system
\dot{x}(t)=\mathcal{A}x(t),\quad x(0)=x_0,
with exact solution x(t)=e^{\mathcal{A}t}x_0. For h>0, define the discrete approximation
x_h(t)=L_h^{\lfloor t/h\rfloor}x_0,
where L_h satisfies the local consistency condition
\|L_h-(I+h\mathcal{A})\|\le C_0 h^2<h\le h_0.
We aim to prove uniform convergence over t\in[0,T] with explicit O(h) error bound.
8 Main Theorem
Theorem 8.1
Let \mathcal{A}\in\mathbb{R}^{n\times n} with logarithmic norm \mu(\mathcal{A})\le\omega, so that \|e^{\mathcal{A}t}\|\le e^{\omega t}. Suppose:
1. \|L_h-(I+h\mathcal{A})\|\le C_0 h^2\<h\le h_0;
2. \|L_h\|\le 1+\omega h+M h^2 uniformly in h.
Then there exists a constant C=C(\omega,T,\|\mathcal{A}\|,C_0,M) such that for all 0<h\le h_0 and t\in[0,T],
\big\|L_h^{\lfloor t/h\rfloor}-e^{\mathcal{A}t}\big\|\le C h.
9 Proof of the Uniform Estimate
9.1 Matrix Logarithm Expansion
Define the effective generator
\mathcal{A}_h=\frac{1}{h}\log L_h.
By consistency, L_h=I+h\mathcal{A}+O(h^2), so
\mathcal{A}_h=\mathcal{A}+O(h).
9.2 Telescoping Error Decomposition
For k=\lfloor t/h\rfloor and t_k=kh,
L_h^k-e^{\mathcal{A}t_k}=\sum_{j=0}^{k-1}L_h^{k-1-j}\big(L_h-e^{\mathcal{A}h}\big)e^{\mathcal{A}jh}.
Let E_h=L_h-e^{\mathcal{A}h}. From the expansion
e^{\mathcal{A}h}=I+h\mathcal{A}+\frac{h^2}{2}\mathcal{A}^2+O(h^3),
we obtain
\|E_h\|\le C_E h^2.
9.3 Growth Bound and Summation
Lemma 9.1
There exists c_1>0 such that
\|L_h^k\|\le e^{\omega t_k+c_1 k h^2}.
The error sum satisfies
\|L_h^k-e^{\mathcal{A}t_k}\|\le\|E_h\|\sum_{j=0}^{k-1}\|L_h\|^{k-1-j}\|e^{\mathcal{A}h}\|^j
\le C_E h^2 \cdot \frac{T}{h}\cdot e^{\omega T+O(h)}=O(h).
9.4 Interpolation Error Between Sampling Instants
For t\in[kh,(k+1)h), write \tau=t-kh\in[0,h). Then
L_h^{\lfloor t/h\rfloor}-e^{\mathcal{A}t}=\big(L_h^k-e^{\mathcal{A}t_k}\big)e^{\mathcal{A}\tau}+L_h^k\big(I-e^{\mathcal{A}\tau}\big).
Since \|I-e^{\mathcal{A}\tau}\|\le\|\mathcal{A}\|h e^{\omega h}, both terms are O(h). The uniform bound over [0,T] follows.
10 Corollaries
Corollary 10.1 (Forward Euler Method)
For L_h=I+h\mathcal{A}, the local error is O(h^2), so
\big\|(I+h\mathcal{A})^{\lfloor t/h\rfloor}-e^{\mathcal{A}t}\big\|=O(h).
Corollary 10.2 (Exact Sampling)
For L_h=e^{\mathcal{A}h}, the sampling-point error vanishes, and the uniform error is dominated by the interpolation term, still O(h).
11 Conclusion
This paper establishes two foundational results for sampled-data systems and numerical linear approximations. The solution of the discrete-time algebraic Riccati equation converges to the continuous-time solution with first-order rate as the sampling period tends to zero. A general uniform O(h) convergence theorem for discrete approximations of the matrix exponential is proved, covering common one-step methods. The results provide a rigorous consistency guarantee for digital optimal control design and numerical analysis of linear evolution equations.
References
[1] Higueras, I. Strong stability for additive Runge–Kutta methods. SIAM Journal on Numerical Analysis, 43(5): 1735–1758, 2005.
[2] Söderlind, G. Logarithmic norms and matrix measures. Journal of Computational and Applied Mathematics, 197(2): 306–312, 2006.
[3] Kloeden, P. E., Platen, E. Numerical Solution of Stochastic Differential Equations. Springer, 1992.
[4] Lancaster, P., Rodman, L. Algebraic Riccati Equations. Oxford University Press, 1995.
[5] Chen, C. T. Linear System Theory and Design. Oxford University Press, 1999.