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A Subspace Approach for Identifying Bilinear Systems with Deterministic Inputs

机译:确定输入的双线性系统的子空间方法

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In this paper we introduce an identification algorithm for MIMO bilinear systems subject to deterministic inputs. The new algorithm is based on an expanding dimensions concept, leading to a rectangular, dimension varying, linear system. In this framework the observability, controllability, and Markov parameters are similar to those of a time-varying system. The fact that the system is time invariant, leads to an equaivaleet linear deterministic subspace algorithm. Provided a rank condition is satisfied, the algorithm will produce unbiased parameter estimates. This rank condition can be guaranteed to hold if the ratio of the number of outputs to the number of inputs is larger than the system order. This is due to the typical exponential blow-out in the dimensions of the Hankel data matrices of bilinear systems, in particular for deterministic inputs since part of the input subspace cannot be projected out. Other algorithms in the literature, based on Walsh functions, require that the number of outputs is at least equal to the system order. For ease of notation and clarification, the algorithm is presented as an intersection based subspace algorithm. Numerical results show that the algorithm reproduces the system parameters very well, provided the rank condition is satisfied. When the rank condition is not satisfied, the algorithm will return biased parameter estimates, which is a typical bottleneck of bilinear system identification algorithms for deterministic inputs.
机译:在本文中,我们介绍了一种基于确定性输入的MIMO双线性系统识别算法。新算法基于扩展的尺寸概念,从而导致了矩形,尺寸变化的线性系统。在此框架中,可观察性,可控制性和马尔可夫参数与时变系统的相似。该系统是时间不变的事实,导致了一个相等的线性确定性子空间算法。如果满足等级条件,该算法将产生无偏参数估计。如果输出数量与输入数量之比大于系统阶数,则可以保证保持该等级条件。这是由于双线性系统的Hankel数据矩阵的尺寸中典型的指数爆炸,特别是对于确定性输入,因为无法投影部分输入子空间。文献中基于Walsh函数的其他算法要求输出数量至少等于系统阶数。为了便于说明和澄清,该算法被表示为基于交集的子空间算法。数值结果表明,只要满足排序条件,该算法就能很好地再现系统参数。当不满足等级条件时,该算法将返回偏差参数估计值,这是确定性输入的双线性系统识别算法的典型瓶颈。

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