Periodic Reporting for period 1 - INITIATE (Intelligent and Sustainable Aerial-Terrestrial IoT Networks)
Période du rapport: 2022-01-01 au 2023-12-31
WP1 focused on the project management and impact. The consortium has completed two annual plenary meetings and organized two focused workshops, as well as delivered numerous conference presentations, keynote speeches and exploitation events.
WP2 completed two use case studies focusing on landslide monitoring and oil pipeline monitoring, respectively. For monitoring landslide disasters and ensuring the safety of oil pipelines, IoT networks are highly effective and valuable for their abilities to provide comprehensive, efficient, and real-time data collection, transmission, processing, and analysis. WP2 designed a software-defined aerial-terrestrial network architecture and completed the definition of the functional components.
WP3 reviewed the energy needs in IoT networks for environmental monitoring, identified the key limitations and QoS requirements, and developed an effective machine learning algorithm to achieve dynamic power splitting, aimed at optimizing the power ratio for energy harvesting and traffic scheduling.
WP4 designed a lightweight AI model and online learning methods, including a streamlined object detector based on Convolutional Neural Networks (CNN) for embedded systems.
WP5 completed an exploratory analysis on IoT trust management techniques for security and reliability of interconnected devices. An effective approach for network management and anomaly detection was further developed for the IoT networks.
1) Designing an efficient SDN aerial-terrestrial network architecture to optimise the performance of IoT networks.
2) Developing an efficient simultaneous power and information transfer approach.
3) Developing efficient compression, pruning and simplification methods to decrease the complexity and size of AI models while maintaining their performance.
4) Proposing a new approach for smart network management and anomaly detection.