This paper deals with state estimation of stochastic models with linear state dynamics, continuous or discrete in time. The emphasis is laid on a numerical solution to the state prediction by the time-update step of the grid-point-based point-mass filter (PMF), which is the most computationally demanding part of the PMF algorithm. A novel way of manipulating the grid, leading to the time-update in form of a convolution, is proposed. This reduces the PMF time complexity from quadratic to log-linear with respect to the number of grid points. Furthermore, the number of unique transition probability values is greatly reduced causing a significant reduction of the data storage needed. The proposed PMF prediction step is verified in a numerical study.
翻译:本文件涉及对具有直线状态动态、连续或离散时间的随机模型的状态估计,重点是通过基于网点的点质量过滤器(PMF)的更新步骤(PMF)对国家预测的数值解决方案,这是PMF算法中计算要求最大的部分。提出了操纵网格的新方式,导致以变迁的形式实现时间更新。这将降低PMF在网点数量方面的时间复杂性,从四端到对线性。此外,独特的过渡概率值数量大大降低,导致所需数据储存量的大幅减少。提议的PMF预测步骤在一项数字研究中得到核实。</s>