In this paper, we investigate the problem of system identification for autonomous Markov jump linear systems (MJS) with complete state observations. We propose switched least squares method for identification of MJS, show that this method is strongly consistent, and derive data-dependent and data-independent rates of convergence. In particular, our data-independent rate of convergence shows that, almost surely, the system identification error is $\mathcal{O}\big(\sqrt{\log(T)/T} \big)$ where $T$ is the time horizon. These results show that switched least squares method for MJS has the same rate of convergence as least squares method for autonomous linear systems. We derive our results by imposing a general stability assumption on the model called stability in the average sense. We show that stability in the average sense is a weaker form of stability compared to the stability assumptions commonly imposed in the literature. We present numerical examples to illustrate the performance of the proposed method.
翻译:在本文中,我们用完整的状态观测来调查自动Markov跳线系统(MJS)的系统识别问题。我们提出用于识别MJS的交换最小方格方法,表明这种方法非常一致,并得出数据依赖和数据依赖的趋同率。特别是,我们的数据依赖趋同率表明,几乎肯定,系统识别错误是美元=mathcal{O ⁇ big(sqrt lilog(T)/T}\ big)$(T$为时平方位)。这些结果显示,对MJS的转换最小方位方法的趋同率与自主线性系统最小方位方法的趋同率相同。我们通过对所谓的平均稳定性模型进行总体稳定假设来得出我们的结果。我们表明,与文献中通常设定的稳定假设相比,平均意义上的稳定是一种较弱的稳定形式。我们用数字示例来说明拟议方法的性能。