This work investigates the problem of estimating the weight matrices of a stable time-invariant linear dynamical system from a single sequence of noisy measurements. We show that if the unknown weight matrices describing the system are in Brunovsky canonical form, we can efficiently estimate the ground truth unknown matrices of the system from a linear system of equations formulated based on the transfer function of the system, using both online and offline stochastic gradient descent (SGD) methods. Specifically, by deriving concrete complexity bounds, we show that SGD converges linearly in expectation to any arbitrary small Frobenius norm distance from the ground truth weights. To the best of our knowledge, ours is the first work to establish linear convergence characteristics for online and offline gradient-based iterative methods for weight matrix estimation in linear dynamical systems from a single trajectory. Extensive numerical tests verify that the performance of the proposed methods is consistent with our theory, and show their superior performance relative to existing state of the art methods.
翻译:这项工作调查了从一连串噪音测量来估计一个稳定的时间变化线性动态系统的重量矩阵的问题。我们表明,如果描述该系统的未知重量矩阵以布鲁诺夫斯基光柱形式出现,我们可以利用在线和离线梯度梯度梯度下降法(SGD)方法,从一个基于系统转移功能的线性方程系统中有效地估计该系统的地面不为人知的矩阵。具体地说,我们通过得出具体的复杂性界限,表明SGD以线性趋近为线性交汇点,期望任何任意的小型Frobenius标准距离地面真理加权数。据我们所知,我们的工作是用单一轨迹为线性动态系统中的线性动态系统确定在线和非线性梯度迭性矩阵估算的线性趋同特征。大量数字测试证实,拟议方法的性能符合我们的理论,并显示其优于现有艺术方法的状态。