4.7 Article

Building Thunderstorm Resilience in the Hindu Kush Himalaya Region through Probabilistic Forecasts and Satellite Observations

Journal

BULLETIN OF THE AMERICAN METEOROLOGICAL SOCIETY
Volume 104, Issue 5, Pages E1105-E1131

Publisher

AMER METEOROLOGICAL SOC
DOI: 10.1175/BAMS-D-21-0260.1

Keywords

Asia; Convective storms; systems; Severe storms; Ensembles; Short-range prediction; Decision support

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Some of the most intense thunderstorms occur in the Hindu Kush Himalaya (HKH) region, but many organizations in this region lack the capacity to predict and respond to these weather threats. To solve this problem, a High-Impact Weather Assessment Toolkit (HIWAT) was developed, combining ensemble numerical weather prediction, satellite-based precipitation products, and land-imagery techniques. The toolkit efficiently packages ensemble output into products that can be easily understood by forecasters, helping in extreme weather forecasting services in underserved regions like HKH. In 2022, a custom version of HIWAT was installed at the Bangladesh Meteorological Department, providing real-time regional ensemble forecast guidance.
Some of the most intense thunderstorms on Earth occur in the Hindu Kush Himalaya (HKH) region of southern Asia-where many organizations lack the capacity needed to predict, observe, and/or effectively respond to the threats associated with high-impact convective weather. As a result, a disproportionately large number of casualties and damage often occur with premonsoon severe thunderstorms in this region. To address this problem, we combined ensemble numerical weather prediction (NWP), satellite-based precipitation products, and land-imagery techniques into a High-Impact Weather Assessment Toolkit (HIWAT) customized for HKH. In 2018 and 2019 demonstrations, a regional convection-allowing ensemble NWP system was configured to provide real-time probabilistic guidance of thunderstorm hazards over HKH, applying ensemble techniques developed for U.S.-focused experiments. Case studies of damaging wind, large hail, lightning, a rare Nepalese tornado, and landfalling tropical cyclone events show how HIWAT efficiently packages ensemble output into products that are readily interpreted by forecasters in HKH. Precipitation and total lightning flash verification reveal the highest skill occurred where deep convection was most frequently observed in Bangladesh and northeastern India, and verification scores exceeded global ensemble scores for heavy precipitation rates. These results demonstrate that plausible forecasts of thunderstorm hazards can be attained with relatively low computational resources, thereby facilitating advancements in extreme weather forecasting services in historically underserved regions such as HKH. In early 2022, a custom version of HIWAT was installed at the Bangladesh Meteorological Department using in-house computational resources, providing regional ensemble forecast guidance in real time.

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