Advanced Integration of Geoinformatics and AI with Cyber Security for Real-Time Data

Authors

  • Tirumala Bala Koteswara Rao Kamisetty

Keywords:

Artificial intelligence, Cybersecurity, Edge computing, Geoinformatics, Smart cities,, Spatial analytics, Threat detection

Abstract

Modern digital ecosystems generate massive volumes of heterogeneous, high-velocity data, making it increasingly difficult for conventional security systems to detect, interpret, and respond to threats in real-time. This paper presents a unified framework that integrates Geographic Information Systems (GIS), artificial intelligence (AI), and cybersecurity principles to enhance situational awareness and automated threat response across complex environments. The proposed approach leverages spatial analytics, machine learning, computer vision, and distributed sensing to identify anomalies, predict risk patterns, and support rapid, data-driven decision-making. By combining geospatial intelligence with AI-driven inference, the system enables continuous monitoring of dynamic urban and infrastructural settings, providing a richer understanding of threat evolution. To improve scalability and resilience, the framework incorporates edge computing for processing, cloud analytics for large-scale computation, and secure data exchange mechanisms to protect sensitive information. Federated architecture further supports privacy-preserving model training across multiple agencies. Key challenges related to interoperability, governance, and ethical data handling are examined to ensure responsible deployment. Experimental evaluation demonstrates that the fusion of GIS and AI significantly strengthens cybersecurity operations, enhances predictive capabilities, and supports the development of robust smart city security infrastructures. The framework offers a scalable foundation for next-generation real-time monitoring systems.

 

Published

2026-07-02