E ISSN: 2583-049X
logo

International Journal of Advanced Multidisciplinary Research and Studies

Volume 4, Issue 6, 2024

Predictive Analytics in Site Operations Management: Optimizing Rural Deployment in Telecom Networks



Author(s): Benedict Ifechukwude Ashiedu, Ejielo Ogbuefi, Uloma Stella Nwabekee, Jeffrey Chidera Ogeawuchi, Abraham Ayodeji Abayomi

DOI: https://doi.org/10.62225/2583049X.2024.4.6.4327

Abstract:

Predictive analytics is revolutionizing site operations management, particularly in the context of rural telecom network deployment. As network providers face mounting pressure to expand coverage to underserved regions, the ability to make data-driven decisions becomes essential for cost efficiency, speed, and service quality. This presents a predictive analytics framework tailored to optimize rural deployment strategies by refining the analysis of contractor payments and site-level operational data. Leveraging historical payment records, project timelines, and performance metrics from existing sites, the framework applies machine learning algorithms to forecast contractor reliability, project delays, and cost overruns. These predictions enable proactive risk management, ensuring better selection and scheduling of contractors for future rural deployments. In parallel, the model analyzes geospatial, environmental, and operational datasets to identify the most viable and cost-effective rural sites for expansion. By integrating data such as terrain, proximity to existing infrastructure, and regional demand indicators, the system generates deployment scenarios ranked by projected ROI and operational feasibility. This targeted planning reduces the guesswork involved in rural rollouts and optimizes resource allocation. A key innovation of the framework is its continuous learning loop: As new site data and contractor performance records are collected, the predictive models are updated, enhancing accuracy over time. The approach enables telecom operators to scale rural networks more strategically while controlling operational risks and capital expenditures. Furthermore, it establishes a transparent, analytics-driven standard for evaluating contractor performance and deployment outcomes. This framework not only supports operational optimization but also promotes accountability and strategic foresight in telecom infrastructure expansion. The research demonstrates that the integration of predictive analytics into rural site operations planning leads to significant improvements in cost predictability, project timelines, and service availability in hard-to-reach areas.


Keywords: Predictive Analytics, Site Operations, Management, Optimizing Rural Deployment in Telecom Networks

Pages: 2326-2336

Download Full Article: Click Here