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Automated Operational Forecasting of Monsoon Low Pressure Systems

BULLETIN OF THE AMERICAN METEOROLOGICAL SOCIETY(2024)

Univ Calif Berkeley

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Abstract
Monsoon low pressure systems (LPSs) are the dominant rain-bearing weather system of South Asia, often producing extreme precipitation and hydrological disasters in a region inhabited by nearly two billion people. Despite the importance of these storms, no operational system has automatically identified and tracked LPS in real time in numerical weather prediction model output; many commonly used vortex-tracking algorithms are ill suited for monsoon LPS because of the weak winds and cold cores of these systems. Here, we describe a new system that uses optimized algorithms to identify monsoon LPS in short- to medium-range forecasts from the U.S. Global Ensemble Forecast System (GEFS) and a version of the deterministic Global Forecast System (GFS) adapted and used operationally by the Indian Institute of Tropical Meteorology (IITM). We also assess the historical performance of these models in forecasting South Asian monsoon LPS, comparing this with the performance of the Integrated Forecasting System of the ECMWF. We assess the accuracy of model predictions of LPS genesis, position, intensity, and precipitation rates for forecast lead times of 1-5 days, yielding quantitative information on model biases to guide operational forecasters and disaster managers. The system we introduce here could be extended to other low-latitude regions affected by dynamically weak, heavily precipitating atmospheric vortices that are often not included in tropical cyclone inventories. SIGNIFICANCE STATEMENT: South Asia frequently experiences intense rainfall and hydrological disasters produced by atmospheric vortices known as monsoon low pressure systems (LPSs). In this work, we introduce the first automated system that uses numerical weather prediction model output with a tracking algorithm optimized for the characteristically weak winds of monsoon LPS, producing operational forecasts of these storms. This system provides forecasts of LPS positions, intensities, and rain rates with accuracies that we quantify here, offering valuable information for forecasters and disaster managers that serve the nearly two billion people living in South Asia.
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Key words
Monsoons,Precipitation,Tropical cyclones,Numerical weather prediction/ forecasting,Operational forecasting,Short-range prediction
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