Abstract
In this brief, we propose a cumulant-based, iterative method for identifying a linear time-invariant system from its noisy input/output data. The input and output are assumed to be non-Gaussian, while the input and output noises are assumed to be mutually correlated, colored, and Gaussian. At each iteration, the proposed method minimizes an objective function that asymptotically is equal to a scalar multiple of Steiglitz and McBride's (1965) (ensemble average version) objective function for noise-free data. Unlike Steiglitz and McBride's method, the proposed one is consistent for inputs that are persistently exciting of sufficient order.
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More From: IEEE Transactions on Circuits and Systems II: Analog and Digital Signal Processing
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