scholarly journals Evaluating TCP performance of routing protocols for traffic exchange in street-parked vehicles based fog computing infrastructure

Author(s):  
Awangku Muhammad Iqbal Yura ◽  
S. H. Shah Newaz ◽  
Fatin Hamadah Rahman ◽  
Thien Wan Au ◽  
Gyu Myoung Lee ◽  
...  
2020 ◽  
Vol 108 ◽  
pp. 882-893 ◽  
Author(s):  
Marisol García-Valls ◽  
Christian Calva-Urrego ◽  
Ana García-Fornes

2021 ◽  
Vol 2021 ◽  
pp. 1-7
Author(s):  
Rong Wang ◽  
Cong Tian ◽  
Lin Yan

The Internet of Things (IoT), cloud, and fog computing paradigms provide a powerful large-scale computing infrastructure for a variety of data and computation-intensive applications. These cutting-edge computing infrastructures, however, are nevertheless vulnerable to serious security and privacy risks. One of the most important countermeasures against cybersecurity threats is intrusion detection and prevention systems, which monitor devices, networks, and systems for malicious activity and policy violations. The detection and prevention systems range from antivirus software to hierarchical systems that monitor the traffic of whole backbone networks. At the moment, the primary defensive solutions are based on malware feature extraction. Most known feature extraction algorithms use byte N-gram patterns or binary strings to represent log files or other static information. The information taken from program files is expressed using word embedding (GloVe) and a new feature extraction method proposed in this article. As a result, the relevant vector space model (VSM) will incorporate more information about unknown programs. We utilize convolutional neural network (CNN) to analyze the feature maps represented by word embedding and apply Softmax to fit the probability of a malicious program. Eventually, we consider a program to be malicious if the probability is greater than 0.5; otherwise, it is a benign program. Experimental result shows that our approach achieves a level of accuracy higher than 98%.


Sensors ◽  
2018 ◽  
Vol 18 (9) ◽  
pp. 2830 ◽  
Author(s):  
Long Mai ◽  
Nhu-Ngoc Dao ◽  
Minho Park

The emerging fog computing technology is characterized by an ultralow latency response, which benefits a massive number of time-sensitive services and applications in the Internet of things (IoT) era. To this end, the fog computing infrastructure must minimize latencies for both service delivery and execution phases. While the transmission latency significantly depends on external factors (e.g., channel bandwidth, communication resources, and interferences), the computation latency can be considered as an internal issue that the fog computing infrastructure could actively self-handle. From this view point, we propose a reinforcement learning approach that utilizes the evolution strategies for real-time task assignment among fog servers to minimize the total computation latency during a long-term period. Experimental results demonstrate that the proposed approach reduces the latency by approximately 16.1% compared to the existing methods. Additionally, the proposed learning algorithm has low computational complexity and an effectively parallel operation; therefore, it is especially appropriate to be implemented in modern heterogeneous computing platforms.


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