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Non-asymptotic Identification of Linear Dynamical Systems Using Multiple Trajectories

机译:使用多个轨迹的线性动力系统的非渐近识别

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This paper considers the problem of linear time-invariant (LTI) system identification using input/output data. Recent work has provided non-asymptotic results on partially observed LTI system identification using a single trajectory but is only suitable for stable systems. We provide finite-time analysis for learning Markov parameters based on the ordinary least-squares (OLS) estimator using multiple trajectories, which covers both stable and unstable systems. For unstable systems, our results suggest that the Markov parameters are harder to estimate in the presence of process noise. Without process noise, our upper bound on the estimation error is independent of the spectral radius of system dynamics with high probability. These two features are different from fully observed LTI systems for which recent work has shown that unstable systems with a bigger spectral radius are easier to estimate. Extensive numerical experiments demonstrate the performance of our OLS estimator.
机译:本文考虑了使用输入/输出数据的线性时间不变(LTI)系统识别的问题。 最近的工作提供了非渐近结果,在部分观察到的LTI系统识别使用单个轨迹,但仅适用于稳定的系统。 我们为基于使用多个轨迹的普通最小二乘(OLS)估计器来提供用于学习Markov参数的有限时间分析,该轨迹覆盖稳定和不稳定的系统。 对于不稳定的系统,我们的结果表明Markov参数在过程噪声的存在下难以估计。 如果没有过程噪声,我们的上限估计误差与具有高概率的系统动态的频谱半径无关。 这两个特征与全面观察到的LTI系统不同,其中最近的工作表明,具有较大光谱半径的不稳定系统更容易估计。 广泛的数值实验证明了我们OLS估计的性能。

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