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State estimation and prediction using clustered particle filters

机译:使用聚类粒子滤波器的状态估计和预测

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摘要

Particle filtering is an essential tool to improve uncertain model predictions by incorporating noisy observational data from complex systems including non-Gaussian features. A class of particle filters, clustered particle filters, is introduced for high-dimensional nonlinear systems, which uses relatively few particles compared with the standard particle filter. The clustered particle filter captures non-Gaussian features of the true signal, which are typical in complex nonlinear dynamical systems such as geophysical systems. The method is also robust in the difficult regime of high-quality sparse and infrequent observations. The key features of the clustered particle filtering are coarse-grained localization through the clustering of the state variables and particle adjustment to stabilize the method; each observation affects only neighbor state variables through clustering and particles are adjusted to prevent particle collapse due to high-quality observations. The clustered particle filter is tested for the 40-dimensional Lorenz 96 model with several dynamical regimes including strongly non-Gaussian statistics. The clustered particle filter shows robust skill in both achieving accurate filter results and capturing non-Gaussian statistics of the true signal. It is further extended to multiscale data assimilation, which provides the large-scale estimation by combining a cheap reduced-order forecast model and mixed observations of the large- and small-scale variables. This approach enables the use of a larger number of particles due to the computational savings in the forecast model. The multiscale clustered particle filter is tested for one-dimensional dispersive wave turbulence using a forecast model with model errors.
机译:粒子滤波是通过合并来自包含非高斯特征的复杂系统的嘈杂观测数据来改善不确定模型预测的必不可少的工具。对于高维非线性系统,引入了一种粒子过滤器,即群集粒子过滤器,与标准粒子过滤器相比,该系统使用相对较少的粒子。簇状粒子滤波器捕获真实信号的非高斯特征,这在复杂的非线性动力学系统(例如地球物理系统)中很常见。该方法在高质量稀疏和不频繁观察的困难情况下也很可靠。聚类粒子滤波的关键特征是通过状态变量的聚类进行粗粒度定位,并通过粒子调整来稳定该方法。每个观测值仅通过聚类影响邻居状态变量,并且对粒子进行调整以防止由于高质量观测值而导致粒子崩溃。针对具有多种动力学方案(包括强非高斯统计量)的40维Lorenz 96模型测试了群集粒子滤波器。集群粒子滤波器在获得准确的滤波器结果和捕获真实信号的非高斯统计数据方面显示出强大的技能。它进一步扩展到多尺度数据同化,它通过组合便宜的降阶预测模型和对大,小尺度变量的混合观测来提供大规模估计。由于在预测模型中节省了计算量,因此该方法可以使用更多数量的粒子。使用具有模型误差的预测模型对多尺度簇状粒子滤波器进行一维色散波湍流测试。

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