Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Modeling Thunderstorms Using Machine Learning for WA

View through CrossRef
This research developed and evaluated a machine learning model for predicting thunderstorm frequency, in the Wa region of Ghana, with a focus on its impact for agricultural planning and management. Using a range of meteorological variables including Total Column Water(TCW), Total Column Rain Water(TCRW), and Convective Available Potential Energy (CAPE), the research aim to identify important predictors of thunderstorm occurrence and quantify their relative importance. A Random Forest algorithm was employed to create the predictive model, which was trained and tested on historical weather data. The model demonstrated good predictive capabilities, explaining approximate 72.6% of the variance in thunderstorm occurrences, with a mean absolute error of 2.34 storms and an index of agreement of 0.926. Key findings showed the importance of atmospheric moisture content, particularly TCW and TCRW , in predicting thunderstorm frequency. Atmospheric instability measures, such as CAPE, played a secondary but important role. The model showed strength in capturing overall trends in thunderstorm frequencies but exhibited some limitations in predicting extreme events. The research contributes to the field of meteorology by demonstrating the effectiveness of machine learning techniques in capturing complex atmospheric interactions leading to thunderstorm formation. It also provides a framework for linking thunderstorm predictions to potential agricultural impacts, enhancing the practical applicability of weather forecasting in the agricultural sector. The study lays the groundwork for more sophisticated, localized weather predictions systems that can greatly benefit agricultural planning and broader weather dependent activities in the region. Future research dimensions include exploring advanced feature engineering, integrating temporal and spatial analysis, and developing agricultural impacts models to further enhance the practical utility of thunderstorm predictions.
Title: Modeling Thunderstorms Using Machine Learning for WA
Description:
This research developed and evaluated a machine learning model for predicting thunderstorm frequency, in the Wa region of Ghana, with a focus on its impact for agricultural planning and management.
Using a range of meteorological variables including Total Column Water(TCW), Total Column Rain Water(TCRW), and Convective Available Potential Energy (CAPE), the research aim to identify important predictors of thunderstorm occurrence and quantify their relative importance.
A Random Forest algorithm was employed to create the predictive model, which was trained and tested on historical weather data.
The model demonstrated good predictive capabilities, explaining approximate 72.
6% of the variance in thunderstorm occurrences, with a mean absolute error of 2.
34 storms and an index of agreement of 0.
926.
Key findings showed the importance of atmospheric moisture content, particularly TCW and TCRW , in predicting thunderstorm frequency.
Atmospheric instability measures, such as CAPE, played a secondary but important role.
The model showed strength in capturing overall trends in thunderstorm frequencies but exhibited some limitations in predicting extreme events.
The research contributes to the field of meteorology by demonstrating the effectiveness of machine learning techniques in capturing complex atmospheric interactions leading to thunderstorm formation.
It also provides a framework for linking thunderstorm predictions to potential agricultural impacts, enhancing the practical applicability of weather forecasting in the agricultural sector.
The study lays the groundwork for more sophisticated, localized weather predictions systems that can greatly benefit agricultural planning and broader weather dependent activities in the region.
Future research dimensions include exploring advanced feature engineering, integrating temporal and spatial analysis, and developing agricultural impacts models to further enhance the practical utility of thunderstorm predictions.

Related Results

Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
Winter thunderstorms in Poland (1951–2020)
Winter thunderstorms in Poland (1951–2020)
Abstract One of the climate changes observed in mid-latitudes is the increase in the frequency of winter thunderstorms. These changes are also observed in Poland....
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
The pandemic Covid-19 currently demands teachers to be able to use technology in teaching and learning process. But in reality there are still many teachers who have not been able ...
Long-term variability of winter thunderstorms in Poland (1951–2020)
Long-term variability of winter thunderstorms in Poland (1951–2020)
Due to anthropogenic climate change, warmer and almost snowless winters are increasingly observed in mid-latitudes, including Poland. As a result, air masses can transport more moi...
Lake Victoria Thunderstorms: Radar-Observed Initiation and Storm Evolution Modes
Lake Victoria Thunderstorms: Radar-Observed Initiation and Storm Evolution Modes
Abstract The enhanced observation period during the HIGHWAY field campaign in East Africa provided the opportunity to obtain continuous ground-based radar observations over the Lak...
Thunderstorm Electrification
Thunderstorm Electrification
Understanding how thunderstorms work is important as it can help assess risks associated with electrical activity in thunderstorms and electrical activity in other areas such as vo...
Analysis of Hailstone and Thunderstorm Characteristics in Tianjin during Recent Years
Analysis of Hailstone and Thunderstorm Characteristics in Tianjin during Recent Years
Based on the hailstorm and thunderstorm data from 13 meteorological observation stations, this article analyzes the spatial and temporal distribution characteristics of hailstorms ...
Machine Learning for Enhancing Mortgage Origination Processes: Streamlining and Improving Efficiency
Machine Learning for Enhancing Mortgage Origination Processes: Streamlining and Improving Efficiency
The mortgage industry, historically characterized by manual processes, paperwork, and complex decision-making, is on the brink of a digital revolution driven by machine learning (M...

Back to Top