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arxiv: 1510.03013 · v1 · pith:DE23C7P5new · submitted 2015-10-11 · 💻 cs.SY · cs.SY

Gaussian information matrix for Wiener model identification

classification 💻 cs.SY cs.SY
keywords expressionidentificationinformationmatrixmodelwienerarbitrarygaussian
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We present a closed form expression for the information matrix associated with the Wiener model identification problem under the assumption that the input signal is a stationary Gaussian process. This expression holds under quite generic assumptions. We allow the linear sub-system to have a rational transfer function of arbitrary order, and the static nonlinearity to be a polynomial of arbitrary degree. We also present a simple expression for the determinant of the information matrix. The expressions presented herein has been used for optimal experiment design for Wiener model identification.

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