论文标题
LTI随机系统的噪声协方差的可识别性分析,其输入未知
Identifiability Analysis of Noise Covariances for LTI Stochastic Systems with Unknown Inputs
论文作者
论文摘要
大多数现有的作品用于最佳滤波线性时间不变(LTI)随机系统具有任意未知输入的随机系统,假设滤波器设计中噪声的协方差完美知识。这是不切实际的,并提出了一个问题,即在什么条件下以及在什么条件下可以确定输入未知的系统的过程和测量噪声协方差(分别为$ q $和$ r $)。本文使用基于相关的测量差异方法考虑了$ q $/$ r $的可识别性。更具体地说,我们建立了(i)$ q $和$ r $可以唯一共同确定的必要条件; (ii)当已知$ r $时,可以独特地识别$ q $的必要条件; (iii)当已知$ q $时,可以唯一确定$ r $的必要条件。还将表明,为了达到上述结果,测量差异方法需要一些向构造固定时间序列的脱钩条件,事实证明这足以满足豪杜斯(Hautus)确定的众所周知的强可检测性要求。
Most existing works on optimal filtering of linear time-invariant (LTI) stochastic systems with arbitrary unknown inputs assume perfect knowledge of the covariances of the noises in the filter design. This is impractical and raises the question of whether and under what conditions one can identify the process and measurement noise covariances (denoted as $Q$ and $R$, respectively) of systems with unknown inputs. This paper considers the identifiability of $Q$/$R$ using the correlation-based measurement difference approach. More specifically, we establish (i) necessary conditions under which $Q$ and $R$ can be uniquely jointly identified; (ii) necessary and sufficient conditions under which $Q$ can be uniquely identified, when $R$ is known; (iii) necessary conditions under which $R$ can be uniquely identified, when $Q$ is known. It will also be shown that for achieving the results mentioned above, the measurement difference approach requires some decoupling conditions for constructing a stationary time series, which are proved to be sufficient for the well-known strong detectability requirements established by Hautus.