Abstract: Natural disasters such as floods, earthquakes,cyclones, droughts, wildfires, and landslides have becomeincreasingly frequent due to climate change, urbanization,and environmental degradation. These disasters result insevere human casualties, infrastructure destruction, economiclosses, and environmental damage. Conventional disastermanagement systems mainly depend on manual monitoringand delayed communication mechanisms, which often fail toprovide timely early warnings and efficient emergencyresponse. To overcome these limitations, this researchproposes a Real-Time Disaster Prediction and EmergencyResponse System using Artificial Intelligence (AI) andSatellite Data. The proposed system integrates MachineLearning (ML), Deep Learning (DL), GeographicInformation Systems (GIS), Internet of Things (IoT), cloudcomputing, and remote sensing technologies for intelligentdisaster prediction and rapid emergency management. Thesystem collects real-time environmental information fromsatellite imagery, meteorological reports, IoT sensors, anddisaster databases. Deep learning models such asConvolutional Neural Networks (CNN), Long Short-TermMemory (LSTM), and Computer Vision techniques are usedto identify disaster patterns and predict disaster-proneconditions. The framework supports flood prediction,wildfire detection, cyclone tracking, drought analysis, andlandslide monitoring using satellite image processing andclimate data analysis. Furthermore, the proposed systemincludes emergency response functionalities such as real-timealert generation, affected area mapping, evacuation guidance,rescue route optimization, multilingual notification systems,and cloud-based communication platforms
Mrs. Cheruggattu Nagalakshmi, Dr. Gandi Satyanarayana, Dr. BVA Swamy (Wed,) studied this question.