Coupling the K -nearest neighbors and locally weighted linear regression with ensemble Kalman filter for data-driven data assimilation

Abstract: Machine learning-based data-driven methods are increasingly being used to extract structures and essences from the ever-increasing pool of geoscience-related big data, which are often used in relation to the atmosphere, oceans, and land surfaces. This study focuses on applying a data-driven forecast model to the classical ensemble Kalman filter process to reconstruct, analyze, and elucidate the model. In this study, a nonparametric sampler from a catalog of historical datasets, namely, a nearest neighbor or analog sampler, is given by numerical simulations. Based on this catalog (sampler), the dynamics physics model is reconstructed using the K-nearest neighbors algorithm. The optimal values of the surrogate model are found, and the forecast step is performed using locally weighted linear regression. Several numerical experiments carried out using the Lorenz-63 and Lorenz-96 models demonstrate that the proposed approach performs as good as the ensemble Kalman filter for larger catalog sizes. This approach is restricted to the ensemble Kalman filter form. However, the basic strategy is not restricted to any particular version of the Kalman filter. It is found that this combined approach can outperform the generally used sequential data assimilation approach when the size of the catalog is substantially large.

Standort
Deutsche Nationalbibliothek Frankfurt am Main
Umfang
Online-Ressource
Sprache
Englisch

Erschienen in
Coupling the K -nearest neighbors and locally weighted linear regression with ensemble Kalman filter for data-driven data assimilation ; volume:13 ; number:1 ; year:2021 ; pages:1395-1413 ; extent:19
Open Geosciences ; 13, Heft 1 (2021), 1395-1413 (gesamt 19)

Urheber
Fan, Manhong
Bai, Yulong
Wang, Lili
Tang, Lihong
Ding, Lin

DOI
10.1515/geo-2020-0312
URN
urn:nbn:de:101:1-2501051711439.455859423576
Rechteinformation
Open Access; Der Zugriff auf das Objekt ist unbeschränkt möglich.
Letzte Aktualisierung
15.08.2025, 07:34 MESZ

Datenpartner

Dieses Objekt wird bereitgestellt von:
Deutsche Nationalbibliothek. Bei Fragen zum Objekt wenden Sie sich bitte an den Datenpartner.

Beteiligte

  • Fan, Manhong
  • Bai, Yulong
  • Wang, Lili
  • Tang, Lihong
  • Ding, Lin

Ähnliche Objekte (12)