scholarly journals Machine learning enabled distributed mobile edge computing network

Author(s):  
Junchao Ma ◽  
Hao-Hsuan Chang ◽  
Pingzhi Fan ◽  
Lingjia Liu
2021 ◽  
Author(s):  
Yao Du ◽  
Shuxiao Miao ◽  
Zitian Tong ◽  
Victoria Lemieux ◽  
Zehua Wang

Driven by recent advancements in machine learning, mobile edge computing (MEC) and the Internet of things (IoT), artificial intelligence (AI) has become an emerging technology. Traditional machine learning approaches require the training data to be collected and processed in centralized servers. With the advent of new decentralized machine learning approaches and mobile edge computing, the IoT on-device data training has now become possible. To realize AI at the edge of the network, IoT devices can offload training tasks to MEC servers. However, those distributed frameworks of edge intelligence also introduce some new challenges, such as user privacy and data security. To handle these problems, blockchain has been considered as a promising solution. As a distributed smart ledger, blockchain is renowned for high scalability, privacy-preserving, and decentralization. This technology is also featured with automated script execution and immutable data records in a trusted manner. In recent years, as quantum computers become more and more promising, blockchain is also facing potential threats from quantum algorithms. In this chapter, we provide an overview of the current state-of-the-art in these cutting-edge technologies by summarizing the available literature in the research field of blockchain-based MEC, machine learning, secure data sharing, and basic introduction of post-quantum blockchain. We also discuss the real-world use cases and outline the challenges of blockchain-empowered intelligence.


Sensors ◽  
2019 ◽  
Vol 19 (16) ◽  
pp. 3610 ◽  
Author(s):  
Chen ◽  
Wen ◽  
Wu ◽  
Xu ◽  
Jiang ◽  
...  

In this paper, a light-weight radio frequency fingerprinting identification (RFFID) scheme that combines with a two-layer model is proposed to realize authentications for a large number of resource-constrained terminals under the mobile edge computing (MEC) scenario without relying on encryption-based methods. In the first layer, signal collection, extraction of RF fingerprint features, dynamic feature database storage, and access authentication decision are carried out by the MEC devices. In the second layer, learning features, generating decision models, and implementing machine learning algorithms for recognition are performed by the remote cloud. By this means, the authentication rate can be improved by taking advantage of the machine-learning training methods and computing resource support of the cloud. Extensive simulations are performed under the IoT application scenario. The results show that the novel method can achieve higher recognition rate than that of traditional RFFID method by using wavelet feature effectively, which demonstrates the efficiency of our proposed method.


2021 ◽  
Author(s):  
Romany F. Mansour ◽  
S. Abdel-Khalek ◽  
Inès Hilali-Jaghdam ◽  
Jamel Nebhen ◽  
Woong Cho ◽  
...  

2022 ◽  
Author(s):  
Sardar Khaliq uz Zaman ◽  
Ali Imran Jehangiri ◽  
Tahir Maqsood ◽  
Nuhman ul Haq ◽  
Arif Iqbal Umar ◽  
...  

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