In the previous work (Zheng et al., 2007, 2009), a data assimilation method, based on ensemble Kalman filter, has been applied to a Monte Carlo Dispersion Model (MCDM). The results were encouraging when the method was tested by the twin experiment and a short-range field experiment. In this technical note, the measured data collected in a wind tunnel experiment have been assimilated into the Monte Carlo dispersion model. The uncertain parameters in the dispersion model, including source term, release height, turbulence intensity and wind direction have been considered. The 3D parameters, i.e. the turbulence intensity and wind direction, have been perturbed by 3D random fields. In order to find the factors which may influence the assimilatio...
Abstract. We present a global aerosol assimilation system based on an Ensemble Kalman filter, which ...
International audienceAccurate wind fields simulated by CFD models are necessary for many environmen...
Weather forecasting consists of two processes, model integration and analysis (data assimilation). D...
Uncertainty factors in atmospheric dispersion models may influence the reliability of model predicti...
International audienceIn this paper, two data assimilation methods based on sequential Monte Carlo s...
Data Assimilation comprehensively covers data assimilation and inverse methods, including both tradi...
We present sensitivity tests for a global aerosol assimilation system utilizing AERONET observations...
Wind resource assessment requires the accurate estimation of wind fields over the prospected sites, ...
Data assimilation considers the problem of using a variety of data to calibrate model-based estimate...
We present a global aerosol assimilation system based on an Ensemble Kalman filter, which we believe...
This paper compares two Monte Carlo sequential data assimilation methods based on the Kalman filter,...
This dissertation deals with aspects of sequential data assimilation (in particular ensemble Kalman ...
The goal of this study is to compare the performances of the ensemble Kalman filter and a reduced-r...
In previous works in this series study, an ensemble Kalman filter (EnKF) was demonstrated to be prom...
A study of Kalman filtering in atmospheric data assimilation is presented. Our research aims at an u...
Abstract. We present a global aerosol assimilation system based on an Ensemble Kalman filter, which ...
International audienceAccurate wind fields simulated by CFD models are necessary for many environmen...
Weather forecasting consists of two processes, model integration and analysis (data assimilation). D...
Uncertainty factors in atmospheric dispersion models may influence the reliability of model predicti...
International audienceIn this paper, two data assimilation methods based on sequential Monte Carlo s...
Data Assimilation comprehensively covers data assimilation and inverse methods, including both tradi...
We present sensitivity tests for a global aerosol assimilation system utilizing AERONET observations...
Wind resource assessment requires the accurate estimation of wind fields over the prospected sites, ...
Data assimilation considers the problem of using a variety of data to calibrate model-based estimate...
We present a global aerosol assimilation system based on an Ensemble Kalman filter, which we believe...
This paper compares two Monte Carlo sequential data assimilation methods based on the Kalman filter,...
This dissertation deals with aspects of sequential data assimilation (in particular ensemble Kalman ...
The goal of this study is to compare the performances of the ensemble Kalman filter and a reduced-r...
In previous works in this series study, an ensemble Kalman filter (EnKF) was demonstrated to be prom...
A study of Kalman filtering in atmospheric data assimilation is presented. Our research aims at an u...
Abstract. We present a global aerosol assimilation system based on an Ensemble Kalman filter, which ...
International audienceAccurate wind fields simulated by CFD models are necessary for many environmen...
Weather forecasting consists of two processes, model integration and analysis (data assimilation). D...