Document detail
ID

oai:arXiv.org:2405.18674

Topic
Computer Science - Machine Learnin... Physics - Atmospheric and Oceanic ... Physics - Data Analysis, Statistic...
Author
Tarumi, Yuta Fukuda, Keisuke Maeda, Shin-ichi
Category

Computer Science

Year

2024

listing date

10/9/2024

Keywords
physical data physics posteriors assimilation space
Metrics

Abstract

State estimation for nonlinear state space models (SSMs) is a challenging task.

Existing assimilation methodologies predominantly assume Gaussian posteriors on physical space, where true posteriors become inevitably non-Gaussian.

We propose Deep Bayesian Filtering (DBF) for data assimilation on nonlinear SSMs.

DBF constructs new latent variables $h_t$ in addition to the original physical variables $z_t$ and assimilates observations $o_t$.

By (i) constraining the state transition on the new latent space to be linear and (ii) learning a Gaussian inverse observation operator $r(h_t|o_t)$, posteriors remain Gaussian.

Notably, the structured design of test distributions enables an analytical formula for the recursive computation, eliminating the accumulation of Monte Carlo sampling errors across time steps.

DBF trains the Gaussian inverse observation operators $r(h_t|o_t)$ and other latent SSM parameters (e.g., dynamics matrix) by maximizing the evidence lower bound.

Experiments demonstrate that DBF outperforms model-based approaches and latent assimilation methods in tasks where the true posterior distribution on physical space is significantly non-Gaussian.

;Comment: Main text 10 pages

Tarumi, Yuta,Fukuda, Keisuke,Maeda, Shin-ichi, 2024, Deep Bayesian Filter for Bayes-faithful Data Assimilation

Document

Open

Share

Source

Articles recommended by ES/IODE AI

Psychosocial distress in young adults surviving hematological malignancies: a pilot study
adolescents and young adults (aya)... cancer survivor psychosocial distress quality of life sequelae anxiety survivors study reported distress cancer adult psychosocial