ADANET
PTDC/EEI-COM/3362/2021 3 years (May 2022 to May 2025) DOI: 10.54499/PTDC/EEI-COM/3362/2021 | |
Summary: | This project aims to design a reliable and secure drones-assisted IoT network, where a swarm of autonomous drones are employed to hover over the area of interest to collect sensory data from the IoT nodes. The flight cruise of the drones can be adapted for the data collection given limited radio coverage of the drone. At a high level, the project will perform fundamental research across the following streams: i) Develop a new onboard deep reinforcement learning based flight resource allocation. The cruise control of the autonomous drone and the data collection schedule will be jointly optimized for preventing data lost resulting from overflowing buffers and transmission failure. ii) Propose a new adversarial deep reinforcement learning framework to enhance the drones-assisted IoT network security. The proposed framework guarantees the optimal cruise control and reliable data collection in presence of adversary’s attacks that seek to manipulate the flight cruise. iii) Develop an innovative cooperative flight resource allocation scheme for the drone swarms. A distributed machine learning approach, such as federated learning, is adopted for training the flight cruise in a distributed fashion across the drones. Moreover, wireless backhaul congestion and flight resource allocation optimization latency will be reduced. iv) Build a drones-assisted IoT network testbed to operationally validate the proposed reliable and secure flight resource allocation frameworks in ADANET. Extensive real-world experiments as well as comprehensive performance evaluations will be conducted for the joint cruise control and data collection. The final outcome of this project will be a reliable and secure drones-assisted IoT network, where a swarm of autonomous drones carry out the optimal cruise control and communication schedule to minimize the data packet loss. The proposed ADANET will integrate deep reinforcement learning, federated learning, wireless communication security, and optimization techniques for the joint cruise control and data collection. The system performance will be evaluated on the advanced experimental testbed in a real-world environment. Consequently, this project is a significant step towards realizing the vision of drones-assisted IoT networks. The achievements of this project can dramatically enhance the research and development on future drones-assisted wireless systems in Portugal, e.g., 5G, smart farming, package delivery, and emergency medicine. |
Funding: | Global: 242KEUR, CISTER: 179KEUR |
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Partners: | |
Contact Person at CISTER: | Kai Li |
Autonomous drones revolutionize data collection in challenging environments
A groundbreaking initiative, ADANET seeks to revolutionize data collection in challenging environments, such as remote or rural areas, through the development of an Autonomous Drones-Assisted IoT Network. This cutting-edge project deploys low-power IoT nodes, harnessing renewable energy sources, and employs autonomous drones for efficient data collection. Technology like this can be especially useful in precision agriculture or disaster-stricken areas. To achieve success, an interdisciplinary team led by seasoned CISTER researchers in collaboration with industry leaders Tekever and AirMind adresses challenges that include optimizing online flight resource allocation in dynamic conditions, guarding against cyber-physical attacks through game-theoretic models, and implementing cooperative flight resource allocation while addressing privacy concerns.
Recent advancements in energy harvesting have empowered Internet-of-Things (IoT) networks to incorporate numerous nodes powered by renewable energy sources. Equipped with solar panels, wind generators, or wireless power receivers, IoT nodes opportunistically charge their batteries. Large-scale data collection in rural and remote areas, where traditional communication infrastructure is lacking, presents challenges. To address this, a project proposes the use of autonomous drones for data collection, especially in scenarios like disaster-stricken areas or smart farming applications.
The ADANET project aims to design a reliable and secure drones-assisted IoT network utilizing a swarm of autonomous drones. Research focuses on developing deep reinforcement learning-based flight resource allocation, an adversarial deep reinforcement learning framework for enhanced security, and an innovative cooperative flight resource allocation scheme using federated learning. It also involves constructing a testbed for operational validation through real-world experiments.
The anticipated outcome is a robust and secure IoT network where a swarm of autonomous drones optimally controls cruise and communication schedules, minimizing data packet loss. The project integrates deep reinforcement learning, federated learning, wireless communication security, and optimization techniques. With international collaboration from academic and industry partners, it has potential to significantly advance drones-assisted wireless systems in Portugal, impacting areas such as 5G, smart farming, package delivery, and emergency medicine.
Led by the Principal Investigator (PI) Dr. Kai Li (CISTER researcher), in collaboration with experts in various domains, the project aims to conduct high-quality research supported by an international academic-industry consortium, including CISTER Research Centre, Laboratory of Artificial Intelligence and Decision Support (LIAAD), National University of Singapore (NUS), University of Houston (UH), Technical University of Berlin (TUB), Tekever Autonomous Systems, and AirMind LLC.
The ADANET initiative tackles three main challenges in developing an Autonomous Drones-Assisted IoT Network:
- Online Flight Resource Allocation Optimization: To address dynamic changes in channel conditions and varying energy levels, the project is exploring reinforcement learning, specifically deep Q-learning, to optimize cruise control and prevent data loss.
- Cyber-Physical Attacks: Recognizing the vulnerability of drones to cyber-physical attacks due to dependence on network state information and employing a game-theoretic model to formulate strategies against adversaries and the drone's reactions to real-time faulty data injection.
- Cooperative Flight Resource Allocation: Privacy concerns and limited backhaul resources pose challenges in transmitting all flight resource allocation information. The approach involves implementing backhaul-aware federated learning for cooperative cruise control, ensuring minimal latency while maintaining privacy.
The project consists of five key tasks, including online flight resource allocation optimization, practical application of adversarial deep reinforcement learning, development of a cooperative flight resource allocation scheme, construction of an experimental testbed for validation, and overall project management and coordination. These efforts aim to overcome these challenges and advance the development of a secure and efficient Autonomous Drones-Assisted IoT Network.
Ultimately, through this initiative, CISTER looks to achieve significant progress in drone-assisted wireless systems, with an impact on key sectors such as 5G, smart agriculture, parcel delivery and emergency medicine.
Kai Li, Xin Yuan, Jingjing Zheng, Wei Ni, Falko Dressler, Abbas JamalipourIEEE Transactions on Neural Networks and Learning Systems (TNNLS) (TNNLS), IEEE. 3, May, 2024.
Syed Kumayl Raza Moosavi, Ahsan Saadat, Zainab Abaid, Wei Ni, Kai Li, Mohsen GuizaniFuture Generation Computer Systems (FGCS) (FGCS), Elsevier. 19, Feb, 2024, Volume 155, pp 272-286.
Kai Li, Jingjing Zheng, Xin Yuan, Wei Ni, Ozgur B. Akan, H. Vincent PoorIEEE Transactions on Information Forensics and Security (TIFS) (TIFS), IEEE. 2024.
Alam Noor, Murray J. Corke, Eduardo TovarSmart Agricultural Technology (SAT), Elsevier. 21, Nov, 2023, Volume 6, pp 100366.
Bo Wei, WEITAO XU, Mingcen Gao, Guohao Lan, Kai Li, CHENGWEN LUO, JIN ZHANGACM Transactions on Sensor Networks (TOSN) (TOSN), ACM. 2023.
Kai Li, Billy Pik Lik Lau, Xin Yuan, Wei Ni, Mohsen Guizani, Chau YuenIEEE Internet of Things Journal (IoTJ) (IoTJ), IEEE. 2023.
Siguo Bi, Kai Li, Shuyan Hu, Wei Ni, Cong Wang, Xin WangIEEE Transactions on Information Forensics and Security (TIFS) (TIFS), IEEE. 2023.
Kai Li, Wei Ni, Xin Yuan, Alam Noor, Abbas JamalipourIEEE Internet of Things Journal (IoTJ) (IoTJ), Article No 21, IEEE. 10, Jun, 2022, Volume 9, pp 21676-21686.
Kai Li, Yingping Cui, Weicai Li, Tiejun Lv, Xin Yuan, Shenghong Li, Wei Ni, Meryem Simsek, Falko DresslerIEEE Internet of Things Journal (IoTJ) (IoTJ), IEEE. 2022.
Kai Li, Wei Ni, Xin Yuan, Alam Noor, Abbas JamalipourIEEE Internet of Things Journal (IOTJ), IEEE. 2022.
Yunhan Ma, Yong Niu, Zhu Han, Bo Ai, Kai Li, Zhangdui Zhong, Ning WangIEEE Transactions on Vehicular Technology (TVT) (TVT), IEEE. 2022.
Kai Li, Alam Noor, Wei Ni, Eduardo Tovar, Xiaoming Fu, Ozgur B. AkanIEEE International Conference on Computer Communications and Networks (ICCCN 2024) (ICCCN). 29 to 31, Jul, 2024, Track 7: Security, Privacy, and Trust. Big Island, Hawaii, U.S.A..
Kai Li, Wei Ni, Xin Yuan, Alam Noor, Abbas JamalipourIEEE Vehicular Technology Conference: VTC2023-Spring (VTC2023-Spring). 20 to 23, Jun, 2023, Unmanned Aerial Vehicle Communications, Vehicular Networks, and Telematics. Florence, Italy.
Kai Li, Xin Yuan, Jingjing Zheng, Wei Ni, Mohsen GuizaniInternational Wireless Communications & Mobile Computing Conference (IWCMC) (IWCMC). 19 to 23, Jun, 2023, IoT & Wireless Sensors. Marrakesh, Morocco.Kai Li is a chair of AI FOR AUTONMOUS UNMANNED SYSTEMS SYMPOSIUM (AAUSS).
Yue Guan, Sai Zou, Bochun Wu, Kai Li, Wei NiThe 24th IEEE International Symposium on a World of Wireless, Mobile and Multimedia Networks (WoWMoM) (WoWMoM 2023). 12 to 15, Jun, 2023, The 1st IEEE Workshop on Wireless outdoor, Long-Range and Low-Power Networks (WOLOLO). Boston, Massachusetts, U.S.A..Kai Li is also an organizing committee member for The 1st IEEE Workshop on Wireless outdoor, Long-Range and Low-Power Networks (WOLOLO).
Jingjing Zheng, Kai Li, Wei Ni, Eduardo Tovar, Mohsen Guizani, Naram MhaisenIEEE Wireless Communications and Networking Conference (WCNC2023). 2022. Glasgow, Scotland, United Kingdom.