Nguyen Mai Quyen, Lê Thị Nhân, Chu Binh Minh, H. B. Minh
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Model reduction for systems with nonzero initial conditions and output error bounds
This paper proposes a new algorithm that reduces a large scale linear-time-invariant system having nonzero initial conditions into a smaller scale system. The estimation for the error between two outputs of the original and of the reduced systems is derived.