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Identification of multivariable bilinear state space systems based on subspace techniques and separable least squares optimization

机译:基于子空间技术和可分离最小二乘优化的多元双线性状态空间系统辨识

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We discuss identification of discrete-time bilinear state space systems with multiple inputs and multiple outputs. Subspace identification methods for bilinear systems suffer from the curse of dimensionality. Already for relatively low order systems, the matrices involved become so large that the method cannot be used in practice. We have modified the subspace algorithm such that it reduces the dimension of the matrices involved. Only the rows that have the largest influence on the model are selected; the remaining rows are discarded. This obviously leads to an approximation error. The initial model that we get from the subspace method is optimized using the principle of separable least squares. According to this principle, we can first solve for the matrices that enter non-linearly in the output error criterion and then obtain the others by solving a linear least squares problem.
机译:我们讨论了具有多个输入和多个输出的离散时间双线性状态空间系统的识别。用于双线性系统的子空间识别方法遭受维度的诅咒。对于相对低阶的系统,所涉及的矩阵已经变得很大,以至于该方法无法在实践中使用。我们已经修改了子空间算法,以减少涉及的矩阵的维数。仅选择对模型影响最大的行;其余行将被丢弃。这显然会导致近似误差。我们从子空间方法获得的初始模型是使用可分离的最小二乘原理进行优化的。根据这个原理,我们可以首先求解输出误差准则中非线性输入的矩阵,然后通过求解线性最小二乘问题获得其他矩阵。

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