Limitations of ozone data assimilation with adjustment of NO x emissions: mixed effects on NO 2 forecasts over Beijing and surrounding areas

Abstract. This study investigates a cross-variable ozone data assimilation (DA) method based on an ensemble Kalman filter (EnKF) that has been used in the companion study to improve ozone forecasts over Beijing and surrounding areas. The main purpose is to delve into the impacts of the cross-variable adjustment of nitrogen oxide (NOx) emissions on the nitrogen dioxide (NO2) forecasts over this region during the 2008 Beijing Olympic Games. A mixed effect on the NO2 forecasts was observed through application of the cross-variable assimilation approach in the real-data assimilation (RDA) experiments. The method improved the NO2 forecasts over almost half of the urban sites with reductions of the root mean square errors (RMSEs) by 15–36 % in contrast to big increases of the RMSEs over other urban stations by 56–239 %. Over the urban stations with negative DA impacts, improvement of the NO2 forecasts (with 7 % reduction of the RMSEs) was noticed at night and in the morning versus significant deterioration during daytime (with 190 % increase of the RMSEs), suggesting that the negative data assimilation impacts mainly occurred during daytime. Ideal-data assimilation (IDA) experiments with a box model and the same cross-variable assimilation method confirmed the mixed effects found in the RDA experiments. In the same way, NOx emission estimation was improved at night and in the morning even under large biases in the prior emission, while it deteriorated during daytime (except for the case of minor errors in the prior emission). The mixed effects observed in the cross-variable data assimilation, i.e., positive data assimilation impacts on NO2 forecasts over some urban sites, negative data assimilation impacts over the other urban sites, and weak data assimilation impacts over suburban sites, highlighted the limitations of the EnKF under strong nonlinear relationships between chemical variables. Under strong nonlinearity between daytime ozone concentrations and NOx emissions uncertainties (with large biases in the a priori emission), the EnKF may come up with inefficient or wrong adjustments to NOx emissions. The present findings reveal that bias correction is essential for the application of the EnKF in dealing with the data assimilation problem over strong nonlinear system.

[1]  M. Bocquet,et al.  Estimation of volatile organic compound emissions for Europe using data assimilation , 2012 .

[2]  Arnold Heemink,et al.  Data assimilation of ground-level ozone in Europe with a Kalman filter and chemistry transport model , 2004 .

[3]  P. V. van Leeuwen,et al.  Nonlinear data assimilation in geosciences: an extremely efficient particle filter , 2010 .

[4]  Lin Wu,et al.  A Comparison Study of Data Assimilation Algorithms for Ozone Forecasts , 2008 .

[5]  A. Stordal,et al.  Bridging the ensemble Kalman filter and particle filters: the adaptive Gaussian mixture filter , 2011 .

[6]  Yang Zhang,et al.  Real-time air quality forecasting, part II: State of the science, current research needs, and future prospects , 2012 .

[7]  Henk Eskes,et al.  Observing System Simulation Experiments for air quality , 2015 .

[8]  Ming Hu,et al.  Implementation of aerosol assimilation in Gridpoint Statistical Interpolation (v. 3.2) and WRF-Chem (v. 3.4.1) , 2014 .

[9]  H. Christopher Frey,et al.  Uncertainties in predicted ozone concentrations due to input uncertainties for the UAM-V photochemical grid model applied to the July 1995 OTAG domain , 2001 .

[10]  Jiang Zhu,et al.  Model bias correction for dust storm forecast using ensemble Kalman filter , 2008 .

[11]  Richard J. Londergan,et al.  Sampled Monte Carlo uncertainty analysis for photochemical grid models , 2001 .

[12]  M. Wesely Parameterization of surface resistances to gaseous dry deposition in regional-scale numerical models , 1989 .

[13]  P. Houtekamer,et al.  A Sequential Ensemble Kalman Filter for Atmospheric Data Assimilation , 2001 .

[14]  Emil M. Constantinescu,et al.  Ensemble‐based chemical data assimilation. II: Covariance localization , 2007, Quarterly Journal of the Royal Meteorological Society.

[15]  Yves Candau,et al.  Regional scale ozone data assimilation using an ensemble Kalman filter and the CHIMERE chemical transport model , 2013 .

[16]  G. Grell,et al.  A description of the fifth-generation Penn State/NCAR Mesoscale Model (MM5) , 1994 .

[17]  S. Hanna,et al.  Monte carlo estimates of uncertainties in predictions by a photochemical grid model (UAM-IV) due to uncertainties in input variables , 1998 .

[18]  Hendrik Elbern,et al.  Emission rate and chemical state estimation by 4-dimensional variational inversion , 2007 .

[19]  Emil Pelikán,et al.  An ensemble Kalman filter for short‐term forecasting of tropospheric ozone concentrations , 2005 .

[20]  Daewon W. Byun,et al.  Design artifacts in eulerian air quality models: evaluation of the effects of layer thickness and vertical profile correction on surface ozone concentrations , 1995 .

[21]  Xiao Tang,et al.  Improvement of ozone forecast over Beijing based on ensemble Kalman filter with simultaneous adjustment of initial conditions and emissions , 2011 .

[22]  Arjo Segers,et al.  Data assimilation of ozone in the atmospheric transport chemistry model LOTOS , 2000, Environ. Model. Softw..

[23]  Peter Jan,et al.  Particle Filtering in Geophysical Systems , 2009 .

[24]  P. Moral Nonlinear filtering : Interacting particle resolution , 1997 .

[25]  P. Houtekamer,et al.  Data Assimilation Using an Ensemble Kalman Filter Technique , 1998 .

[26]  Emil M. Constantinescu,et al.  Predicting air quality: Improvements through advanced methods to integrate models and measurements , 2008, J. Comput. Phys..

[27]  J. Whitaker,et al.  Ensemble Data Assimilation without Perturbed Observations , 2002 .

[28]  A. Holtslag,et al.  Evaluation of the Weather Research and Forecasting Mesoscale Model for GABLS3: Impact of Boundary-Layer Schemes, Boundary Conditions and Spin-Up , 2014, Boundary-Layer Meteorology.

[29]  Zifa Wang,et al.  A Nested Air Quality Prediction Modeling System for Urban and Regional Scales: Application for High-Ozone Episode in Taiwan , 2001 .

[30]  Pedro Jiménez,et al.  Influence of initial and boundary conditions for ozone modeling in very complex terrains: A case study in the northeastern Iberian Peninsula , 2007, Environ. Model. Softw..

[31]  Yuesi Wang,et al.  Variability and reduction of atmospheric pollutants in Beijing and its surrounding area during the Beijing 2008 Olympic Games , 2010 .

[32]  Wang Xi,et al.  Development and Application of Nested Air Quality Prediction Modeling System , 2006 .

[33]  Jiming Hao,et al.  Quantifying the air pollutants emission reduction during the 2008 Olympic games in Beijing. , 2010, Environmental science & technology.

[34]  Matthias Beekmann,et al.  Monte Carlo uncertainty analysis of a regional‐scale transport chemistry model constrained by measurements from the Atmospheric Pollution Over the Paris Area (ESQUIF) campaign , 2003 .

[35]  G. Evensen Sequential data assimilation with a nonlinear quasi‐geostrophic model using Monte Carlo methods to forecast error statistics , 1994 .

[36]  Zifeng Wang,et al.  Inversion of CO emissions over Beijing and its surrounding areas with ensemble Kalman filter , 2013 .

[37]  T. Başar,et al.  A New Approach to Linear Filtering and Prediction Problems , 2001 .

[38]  Leonard K. Peters,et al.  A new lumped structure photochemical mechanism for large‐scale applications , 1999 .

[39]  Adrian Sandu,et al.  Chemical Data Assimilation—An Overview , 2011 .

[40]  G. Carmichael,et al.  Asian emissions in 2006 for the NASA INTEX-B mission , 2009 .

[41]  Wu Qi-zhong Application of CBM-Z Chemical Mechanism during Beijing Olympics , 2010 .

[42]  J. W. Munger,et al.  Ozone Air Quality During the 2008 Beijing Olympics: Effectiveness of Emission Restrictions , 2009 .

[43]  P. Leeuwen,et al.  Nonlinear data assimilation in geosciences: an extremely efficient particle filter , 2010 .

[44]  Tong Zhu,et al.  Sensitivity of ozone to precursor emissions in urban Beijing with a Monte Carlo scheme , 2010 .