Abstract
The identification problem of multivariable controlled autoregressive systems with measurement noise in the form of the moving average process is considered in this paper. The key is to filter the input-output data using the data filtering technique and to decompose the identification model into two subidentification models. By using the negative gradient search, an adaptive data filtering-based gradient iterative (F-GI) algorithm and an F-GI with finite measurement data are proposed for identifying the parameters of multivariable controlled autoregressive moving average systems. In the numerical example, we illustrate the effectiveness of the proposed identification methods.
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CITATION STYLE
Pan, J., Ma, H., Jiang, X., Ding, W., & Ding, F. (2018). Adaptive gradient-based iterative algorithm for multivariable controlled autoregressive moving average systems using the data filtering technique. Complexity, 2018. https://doi.org/10.1155/2018/9598307
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