Abstract

Abstract. The tropical cyclone (TC) track and intensity predictions over Bay of Bengal (BOB) using the Advanced Research Weather Research and Forecasting (ARW) model are evaluated for a number of data assimilation experiments using various types of data. Eight cyclones that made landfall along the east coast of India during 2008–2013 were simulated. Numerical experiments included a control run (CTL) using the National Centers for Environmental Prediction (NCEP) 3-hourly 0.5 × 0.5° resolution Global Forecasting System (GFS) analysis as the initial condition, and a series of cycling mode variational assimilation experiments with Weather Research and Forecasting (WRF) data assimilation (WRFDA) system using NCEP global PrepBUFR observations (VARPREP), Atmospheric Motion Vectors (VARAMV), Advanced Microwave Sounding Unit (AMSU) A and B radiances (VARRAD) and a combination of PrepBUFR and RAD (VARPREP+RAD). The impact of different observations is investigated in detail in a case of the strongest TC, Phailin, for intensity, track and structure parameters, and finally also on a larger set of cyclones. The results show that the assimilation of AMSU radiances and Atmospheric Motion Vectors (AMV) improved the intensity and track predictions to a certain extent and the use of operationally available NCEP PrepBUFR data which contains both conventional and satellite observations produced larger impacts leading to improvements in track and intensity forecasts. The forecast improvements are found to be associated with changes in pressure, wind, temperature and humidity distributions in the initial conditions after data assimilation. The assimilation of mass (radiance) and wind (AMV) data showed different impacts. While the motion vectors mainly influenced the track predictions, the radiance data merely influenced forecast intensity. Of various experiments, the VARPREP produced the largest impact with mean errors (India Meteorological Department (IMD) observations less the model values) of 78, 129, 166, 210 km in the vector track position, 10.3, 5.8, 4.8, 9.0 hPa deeper than IMD data in central sea level pressure (CSLP) and 10.8, 3.9, −0.2, 2.3 m s−1 stronger than IMD data in maximum surface winds (MSW) for 24, 48, 72, 96 h forecasts respectively. An improvement of about 3–36 % in track, 6–63 % in CSLP, 26–103 % in MSW and 11–223 % in the radius of maximum winds in 24–96 h lead time forecasts are found with VARPREP over CTL, suggesting the advantages of assimilation of operationally available PrepBUFR data for cyclone predictions. The better predictions with PrepBUFR could be due to quality-controlled observations in addition to containing different types of data (conventional, satellite) covering an effectively larger area. The performance degradation of VARPREP+RAD with the assimilation of all available observations over the domain after 72 h could be due to poor area coverage and bias in the radiance data.

Highlights

  • Tropical cyclones (TC) are highly disastrous weather phenomena occurring in the tropical maritime environment

  • The results of simulations are discussed by illustrating qualitative improvements for intensity and track parameters for the case of Phailin followed by the quantitative analysis of errors for all eight cyclones

  • The improvement with data assimilation from control run (CTL) runs is described in terms of error in central sea level pressure (CSLP), maximum surface winds (MSW), radius of maximum wind (RMW), track positions, structure and rainfall prediction with respect to error reduction in the initial conditions

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Summary

Introduction

Tropical cyclones (TC) are highly disastrous weather phenomena occurring in the tropical maritime environment. About 15 % of global tropical cyclones occur in the North Indian Ocean (NIO), mainly distributed in the pre-monsoon (April–May) and post-monsoon (October–November) seasons (Asnani, 1994; Pattanaik and Rama Rao, 2009). Thermodynamic factors such as high sea surface temperature (SST), the presence of initial disturbances, the availability of mid-tropospheric humidity and weak vertical wind shear favour the development of cyclones in the NIO. Accurate numerical prediction of tropical cyclones is highly dependent on the representation of precise initial state, resolving the various scales of motion and the accurate representation of various physical processes. With the advent of high-performance computing, advanced highresolution mesoscale models are employed to simulate the above processes for better prediction of tropical cyclones (e.g. Chen et al, 1995; Liu et al, 1997; Kurihara et al, 1998; Aberson, 2001; Wang, 2001; Krishnamurti, 2005; Braun et al, 2006; Fierro et al, 2009; Smith and Thomsen, 2010; Nolan et al, 2009; Gentry and Lackmann, 2010; among others)

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