Online state and time‐varying parameter estimation using the implicit equal‐weights particle filter

Author:

Satoh Mineto12ORCID,van Leeuwen Peter Jan34ORCID,Nakano Shin'ya15ORCID

Affiliation:

1. Graduate Institute for Advanced Studies SOKENDAI Tachikawa Japan

2. Data Science Laboratories NEC Corporation Kawasaki Japan

3. Department of Meteorology and National Centre for Earth Observation University of Reading Reading UK

4. Department of Atmospheric Sciences Colorado State University Fort Collins Colorado USA

5. The Institute of Statistical Mathematics Research Organization of Information and Systems Tachikawa Japan

Abstract

AbstractA method is proposed for resilient and efficient estimation of the states and time‐varying parameters in nonlinear high‐dimensional systems through a sequential data assimilation process. The importance of estimating time‐varying parameters lies not only in improving prediction accuracy but also in determining when model characteristics change. We propose a particle‐filter‐based method that incorporates nudging techniques inspired by optimization algorithms in machine learning by taking advantage of the flexibility of the proposal density in particle filtering. However, as the model resolution and number of observations increase, filter degeneracy tends to be the obstacle to implementing the particle filter. Therefore, this proposed method is combined with the implicit equal‐weights particle filter (IEWPF), in which all particle weights are equal. The method is validated using the 1000‐dimensional linear model with an additive parameter and the 1000‐dimensional Lorenz‐96 model, where the forcing term is parameterized. The method is shown to be capable of resilient and efficient parameter estimation for parameter changes over time in our application with a linear observation operator. This leads to the conjecture that it applies to realistic geophysical, climate, and other problems.

Funder

Japan Society for the Promotion of Science

Publisher

Wiley

Reference27 articles.

1. The equivalent‐weights particle filter in a high‐dimensional system

2. Alom M.Z. Taha T.M. Yakopcic C. Westberg S. Sidike P. Nasrin M.S.et al. (2018)The history began from alexnet: A comprehensive survey on deep learning approaches. arXiv preprint arXiv:1803.01164.

3. Bottou L.(2010)Large‐scale machine learning with stochastic gradient descent. Proceedings of COMPSTAT'2010: 19th international conference on computational statistics Paris France august 22‐27 2010 keynote invited and contributed papers 177–186. Springer.

4. Chen X. Liu S. Sun R.&Hong M.(2019)On the convergence of a class of adam‐type algorithms for non‐convex optimization. Paper presented at: 7th international conference on learning representations ICLR 2019.

5. Implicit sampling for particle filters

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