Automatic priority analysis of emergency response systems using internet of things (IoT) and machine learning (ML)
Abu S. M. Mohsin, Shadab Hafiz Choudhury, Munyem Ahammad Muyeed
Abstract
• In this paper we present a comprehensive framework for deploying an IoT, ML-driven emergency response system (ERS) that leverages real-time data analysis and predictive modeling. • The system is designed to process and analyze diverse data streams from multiple sources, such as IoT sensors, enabling rapid and informed responses to emergencies prioritizing emergency responder (Police, fire brigade, hospital or emergency contacts etc.). • For prioritizing the emergencies we have used the XGBoost model. The accuracy, precision, average recall and average F-1 score was 96.1 %,−99.8 %, 0.972–0.999 0.960–0.976-and 0.990- 0.960 respectively for medical, vehicle and home devices. • Our proposed ML-driven framework enhances real-time data processing, rapid anomaly detection, and predictive analytics, providing timely and precise responses to emergencies. • Additionally, web deployment ensures scalability and broad accessibility, facilitating dynamic interaction and real-time monitoring through user-friendly interfaces. • This framework not only improves immediate response capabilities but also aids in strategic planning by providing actionable insights into potential future events towards smarter, data-driven emergency management, enhancing safety and preparedness at both community and organizational levels. Effective and timely resource deployment is essential during emergencies. By integrating machine learning (ML) and the Internet of Things (IoT), automatic priority analysis of emergency response systems could revolutionise this vital process, save life and minimize damages. This paper presents a comprehensive framework for deploying an IoT, and ML-driven emergency response system (ERS), which uses real-time data analysis and predictive modelling to identify patterns and prioritise responses based on their expected impact, urgency, distance and available resources. The system is designed to process and analyze diverse data streams from multiple sources, such as IoT sensors, enabling rapid and informed responses to emergencies prioritizing emergency responder (Police, fire brigade, hospital or emergency contacts etc.). The XGBoost model was utilised to prioritise the emergencies, and its performance was examined using accuracy, precision, average recall, and average F-1 score. Additionally, a web dashboard was deployed to visualise sensor and projected data in real-time, guaranteeing accessibility and scalability. This allowed users to engage with the system through an intuitive interface and obtain timely alerts and insights. The system provides dynamic visualisation and real-time tracking of emergency scenarios through the integration of geographical information systems (GIS) and the utilisation of cloud computing resources. This framework not only improves immediate response capabilities but also aids in strategic planning by providing actionable insights into potential future events. The deployment of such an ERS marks a significant step towards smarter, data-driven emergency management, enhancing safety and preparedness at both community and organizational levels. This innovative integration of IoT and ML has the potential to transform emergency response systems, optimizing resource allocation, reducing response times, and ultimately saving more lives in critical situations.