info:eu-repo/semantics/article
A dynamic data-driven method for dealing with model structural error in soil moisture data assimilation
Fecha
2019-10Registro en:
Zhang, Qiuru; Shi, Liangsheng; Holzman, Mauro Ezequiel; Ye, Ming; Wang, Yakun; et al.; A dynamic data-driven method for dealing with model structural error in soil moisture data assimilation; Elsevier; Advances in Water Resources; 132; 103407; 10-2019; 1-17
0309-1708
CONICET Digital
CONICET
Autor
Zhang, Qiuru
Shi, Liangsheng
Holzman, Mauro Ezequiel
Ye, Ming
Wang, Yakun
Carmona, Facundo
Zha, Yuanyuan
Resumen
Attributing to the flexibility in considering various types of observation error and model error, data assimilation has been increasingly applied to dynamically improve soil moisture modeling in many hydrological practices. However, accurate characterization of model error, especially the part caused by defective model structure, presents a significant challenge to the successful implementation of data assimilation. Model structural error has received limited attention relative to parameter and input errors, mainly due to our poor understanding of structural inadequacy and the difficulties in parameterizing structural error. In this paper, we present a dynamic data-driven approach to estimate the model structural error in soil moisture data assimilation without the need for identifying error generation mechanism or specifying particular form for the error model. The error model is based on the Gaussian process regression and then integrated into the ensemble Kalman filter (EnKF) to form a hybrid method for dealing with multi-source model errors. Two variants of the hybrid method in terms of two different error correction manners are proposed. The effectiveness of the proposed method is tested through a suit of synthetic cases and a real-world case. Results demonstrate the potential of the proposed hybrid method for estimating model structural error and providing improved model predictions. Compared to the traditional EnKF without explicitly considering the model structural error, parameter compensation issue is obviously reduced and soil moisture retrieval is substantially improved.