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Open AccessJournal ArticleDOI

The Applicability of Bipartite Graph Model for Thunderstorms Forecast over Kolkata

Sutapa Chaudhuri, +1 more
- 31 Dec 2009 - 
- Vol. 2009, pp 50-61
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TLDR
In this article, a single spectrum bipartite graph connectivity model was developed to forecast thunderstorms over Kolkata during the premonsoon season (April-May) and the statistical distribution of normal probability was observed for temperature, relative humidity, convective available potential energy (CAPE), and convective inhibition energy (CIN) to quantify the threshold values of the parameters for the prevalence of thunderstorms.
Abstract
Single Spectrum Bipartite Graph (SSBG) model is developed to forecast thunderstorms over Kolkata during the premonsoon season (April-May). The statistical distribution of normal probability is observed for temperature, relative humidity, convective available potential energy (CAPE), and convective inhibition energy (CIN) to quantify the threshold values of the parameters for the prevalence of thunderstorms. Method of conditional probability is implemented to ascertain the possibilities of the occurrence of thunderstorms within the ranges of the threshold values. The single spectrum bipartite graph connectivity model developed in this study consists of two sets of vertices; one set includes two time vertices (00UTC, 12UTC) and the other includes four meteorological parameters: temperature, relative humidity, CAPE, and CIN. Three distinct ranges of maximal eigen values are obtained for the three categories of thunderstorms. Maximal eigenvalues for severe, ordinary, and no thunderstorm events are observed to be , , and , respectively. The ranges of the threshold values obtained using ten year data (1997–2006) are considered as the reference range and the result is validated with the IMD (India Meteorological Department) observation, Doppler Weather Radar (DWR) Products, and satellite images of 2007. The result reveals that the model provides 12- to 6-hour forecast (nowcasting) of thunderstorms with 96% to 98% accuracy.

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Adaptive neuro-fuzzy inference system to forecast peak gust speed during thunderstorms

TL;DR: In this article, an adaptive neuro-fuzzy inference system (ANFIS) was developed to forecast the peak gust speed associated with thunderstorms during the pre-monsoon season (April-May) over Kolkata (22°32′N, 88°20′E), India.
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Thermodynamical Structure of Atmosphere during Pre-monsoon Thunderstorm Season over Kharagpur as Revealed by STORM Data

TL;DR: In this paper, the authors presented a variation of atmospheric thermodynamic structure parameters between days of thunderstorm occurrence and nonoccurrence based on data sets obtained during Severe Thunderstorm-Observations and Regional Modeling (STORM) experiments conducted over Kharagpur (22.3°N, 87.2°E) in pre-monsoon season of 2009 and 2010.
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Exploring a graph theory based algorithm for automated identification and characterization of large mesoscale convective systems in satellite datasets

TL;DR: The results show that applying graph theory to this problem allows for the identification of features from infrared satellite data and the seamlessly identification in a precipitation rate satellite-based dataset, while innately handling the inherent complexity and non-linearity of mesoscale convective systems.
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Impact of Doppler weather radar data on thunderstorm simulation during STORM pilot phase—2009

TL;DR: In this article, the authors assess the impact of Doppler weather radar (DWR) data (reflectivity and radial wind) assimilation on the simulation of severe thunderstorms (STS) events over the Indian monsoon region.
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Evaluating the impact of climate change in threshold values of thermodynamic indices during pre-monsoon thunderstorm season over Eastern India

TL;DR: In this article, the authors analyzed thermodynamic indices variation over three sites of eastern Indian region: Bhubaneswar, Kolkata and Ranchi, associated with pre-monsoon thunderstorms for 20-year period (1987-2006) for Bhubaneh and Kolkatha and 15-years (1996-2010) for Ranchi.
References
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