4.2 Article

Improving Numerical Weather Prediction-Based Near-Cloud Aviation Turbulence Forecasts by Diagnosing Convective Gravity Wave Breaking

期刊

WEATHER AND FORECASTING
卷 36, 期 5, 页码 1735-1757

出版社

AMER METEOROLOGICAL SOC
DOI: 10.1175/WAF-D-20-0213.1

关键词

Turbulence; Forecasting techniques; Numerical weather prediction/forecasting

资金

  1. Korea Meteorological Administration (KMA) Research and Development Program [KMI2020-01910, KMI2018-07810]
  2. 4th Brain Korea 21 Project (through the School of Earth and Environmental Sciences, Seoul National University)
  3. Korea Meteorological Institute (KMI) [KMI2020-01910, KMI2018-07810] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

向作者/读者索取更多资源

The near-cloud turbulence (NCT) diagnostics show better accuracy in detecting turbulence near convection, especially in predicting localized turbulence events. Adding NCT diagnostics to the conventional clear air turbulence (CAT) diagnostics can improve aviation turbulence forecasting performance, with the best performance observed in summertime.
Based on a convective gravity wave drag parameterization scheme in a numerical weather prediction (NWP) model, previously proposed near-cloud turbulence (NCT) diagnostics for better detecting turbulence near convection are tested and evaluated by using global in situ flight data and outputs from the operational global NWP model of the Korea Meteorological Administration for one year (from December 2016 to November 2017). For comparison, 11 widely used clear air turbulence (CAT) diagnostics currently used in operational NWP-based aviation turbulence forecasting systems are separately computed. For selected cases, NCT diagnostics predict more accurately localized turbulence events over convective regions with better intensity, which is clearly distinguished from the turbulence areas diagnosed by conventional CAT diagnostics that they mostly failed to forecast with broad areas and low magnitudes. Although overall performance of NCT diagnostics for one whole year is lower than conventional CAT diagnostics due to the fact that NCT diagnostics exclusively focus on the isolated NCT events, adding the NCT diagnostics to CAT diagnostics improves the performance of aviation turbulence forecasting. Especially in the summertime, performance in terms of an area under the curve (AUC) based on probability of detection statistics is the best (AUC = 0.837 with a 4% increase, compared to conventional CAT forecasts) when the mean of all CAT and NCT diagnostics is used, while performance in terms of root-mean-square error is the best when the maximum among combined CAT and single NCT diagnostic is used. This implies that including NCT diagnostics to currently used NWP-based aviation turbulence forecasting systems should be beneficial for safety of air travel.

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