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Analysing fuel transactions of government vehicles in the Eastern Cape, South Africa

Fuel management and fraud detection in government fleets are critical issues that have far-reaching financial and operational implications. To address these challenges, an investigation of fuel usage patterns and anomalies in the Eastern Cape Province government fleet in South Africa from April 2021...

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Main Author: Tavares, Jared
Other Authors: Silal, Sheetal
Format: Thesis
Language:English
English
Published: Department of Statistical Sciences 2025
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access_status_str Open Access
author Tavares, Jared
author2 Silal, Sheetal
author_browse Silal, Sheetal
Tavares, Jared
author_facet Silal, Sheetal
Tavares, Jared
author_sort Tavares, Jared
collection Thesis
description Fuel management and fraud detection in government fleets are critical issues that have far-reaching financial and operational implications. To address these challenges, an investigation of fuel usage patterns and anomalies in the Eastern Cape Province government fleet in South Africa from April 2021 to January 2022 was conducted. Through the application of exploratory data analysis, clustering techniques, and predictive modelling, the research uncovers valuable insights that can be used to optimise fuel consumption and detect fraudulent activities within the fleet. Univariate and bivariate analyses reveal distinct patterns in fleet composition, transaction volumes, and fuel eJiciency across various vehicle makes, model derivatives, and departments. The use of clustering techniques enables the identification of distinct vehicle segments and transaction patterns, emphasising the importance of considering contextual factors when analysing fuel usage. To detect potential fraud, three key indicators are developed: abnormally large transactions, frequent transactions, and fuel price diJerences. Predictive models, including XGBoost, Multi-layer Perceptron, and Random Forest, are employed to automate the classification of transactions based on these fraud indicators. The Multi-layer Perceptron demonstrates the best performance, achieving an accuracy of 87% on the test set. The dissertation acknowledges limitations due to the scope of the data and missing information for certain geographic variables such as district and site. Future research could expand the geographical and temporal range, incorporate qualitative data, explore real-time monitoring systems, and investigate vehicle maintenance and fuel eJiciency. The present research makes a noteworthy contribution to the knowledge of fuel management and fraud detection in government fleets by oJering a data-driven approach to expose ineJiciencies and anomalies. The insights and methodologies presented serve as a foundation for future research and practical applications, ultimately leading to more eJicient, cost-eJective, and transparent fleet operations.
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institution University of Cape Town (South Africa)
language English
eng
last_indexed 2026-06-10T12:37:01.521Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2025
publishDateRange 2025
publishDateSort 2025
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spelling oai:open.uct.ac.za:11427/41957 Analysing fuel transactions of government vehicles in the Eastern Cape, South Africa Tavares, Jared Silal, Sheetal Government vehicles Eastern Cape South Africa Fuel management and fraud detection in government fleets are critical issues that have far-reaching financial and operational implications. To address these challenges, an investigation of fuel usage patterns and anomalies in the Eastern Cape Province government fleet in South Africa from April 2021 to January 2022 was conducted. Through the application of exploratory data analysis, clustering techniques, and predictive modelling, the research uncovers valuable insights that can be used to optimise fuel consumption and detect fraudulent activities within the fleet. Univariate and bivariate analyses reveal distinct patterns in fleet composition, transaction volumes, and fuel eJiciency across various vehicle makes, model derivatives, and departments. The use of clustering techniques enables the identification of distinct vehicle segments and transaction patterns, emphasising the importance of considering contextual factors when analysing fuel usage. To detect potential fraud, three key indicators are developed: abnormally large transactions, frequent transactions, and fuel price diJerences. Predictive models, including XGBoost, Multi-layer Perceptron, and Random Forest, are employed to automate the classification of transactions based on these fraud indicators. The Multi-layer Perceptron demonstrates the best performance, achieving an accuracy of 87% on the test set. The dissertation acknowledges limitations due to the scope of the data and missing information for certain geographic variables such as district and site. Future research could expand the geographical and temporal range, incorporate qualitative data, explore real-time monitoring systems, and investigate vehicle maintenance and fuel eJiciency. The present research makes a noteworthy contribution to the knowledge of fuel management and fraud detection in government fleets by oJering a data-driven approach to expose ineJiciencies and anomalies. The insights and methodologies presented serve as a foundation for future research and practical applications, ultimately leading to more eJicient, cost-eJective, and transparent fleet operations. 2025-10-01T13:11:00Z 2025-10-01T13:11:00Z 2025 2025-09-30T12:46:41Z Thesis / Dissertation Masters MSc http://hdl.handle.net/11427/41957 en eng application/pdf Department of Statistical Sciences Faculty of Science University of Cape Town
spellingShingle Government vehicles
Eastern Cape
South Africa
Tavares, Jared
Analysing fuel transactions of government vehicles in the Eastern Cape, South Africa
thesis_degree_str Master's
title Analysing fuel transactions of government vehicles in the Eastern Cape, South Africa
title_full Analysing fuel transactions of government vehicles in the Eastern Cape, South Africa
title_fullStr Analysing fuel transactions of government vehicles in the Eastern Cape, South Africa
title_full_unstemmed Analysing fuel transactions of government vehicles in the Eastern Cape, South Africa
title_short Analysing fuel transactions of government vehicles in the Eastern Cape, South Africa
title_sort analysing fuel transactions of government vehicles in the eastern cape south africa
topic Government vehicles
Eastern Cape
South Africa
url http://hdl.handle.net/11427/41957
work_keys_str_mv AT tavaresjared analysingfueltransactionsofgovernmentvehiclesintheeasterncapesouthafrica