Team Nimbleness council

فكرة الفريق

𝙉𝙄𝙈𝘽𝙇𝙀𝙉𝙀𝙎𝙎 𝘾𝙊𝙐𝙉𝘾𝙄𝙇
Abdulaziz_Jandaly
Abdulaziz Jandaly
Abdulaziz_Jandaly

Project Manager

abdullah_alqarni807
Abdullah Alqarni
abdullah_alqarni807

محلل بيانات

QUAISHTA
Thamer Quaish
QUAISHTA

Mohammed12
Mohammed Saeed
Mohammed12

Aqk90
Abdullah Alkathiri
Aqk90

Data Analyst , AI programmer

التسليمة

Flight Anomaly Detection and Prediction

Flight Anomaly Detection and Prediction

The Flight Anomaly Detection and Prediction project revolutionizes aviation safety. Leveraging cutting-edge AI techniques, our approach involves the generation of comprehensive datasets, capturing both normal and anomalous flight scenarios. The Isolation Forest model, chosen for its efficiency in anomaly detection, undergoes meticulous training on a curated subset of the data. A crucial element is the Feature Engineering phase, empowering the model with enhanced capabilities through the extraction of meaningful insights from the existing data. This project addresses the critical challenges faced by the aerospace industry, aiming to mitigate unforeseen failures in flight systems that could lead to safety compromises and operational disruptions. By proactively identifying anomalies in flight data, our system provides a predictive maintenance framework, minimizing downtime and optimizing safety measures. The commitment to innovation is evident in our testing and refinement process, ensuring the model's accuracy and reliability in diverse flight scenarios. The Implementation Strategy encompasses a Prototype Development phase, where a functional model is constructed to showcase the predictive maintenance capabilities. The subsequent Testing and Refinement phase involves rigorous evaluation, fine-tuning, and feedback incorporation to enhance the system's efficacy. The final stage involves Full-Scale Deployment, launching the predictive maintenance system for widespread commercial use. This comprehensive approach signifies a pivotal advancement in aviation safety, marking our dedication to excellence in predictive maintenance and anomaly detection.