Visible to the public A highly accurate machine learning approach for developing wireless sensor network middleware

TitleA highly accurate machine learning approach for developing wireless sensor network middleware
Publication TypeConference Paper
Year of Publication2018
AuthorsAlshinina, Remah, Elleithy, Khaled
Conference Name2018 Wireless Telecommunications Symposium (WTS)
Keywordscomposability, confusion matrix, Data Transmission, detector, fake data, Gallium nitride, gan, GANs, Generative Adversarial Networks algorithm, generator, Generators, intelligent middleware, learning (artificial intelligence), machine learning, malicious attacks, middleware, middleware security, policy-based governance, pubcrawl, resilience, Resiliency, security, security of data, security problems, Sensors, unsupervised learning, unsupervised learning technique, visualization, wireless sensor network middleware, Wireless sensor networks, WSN, WSNs
AbstractDespite the popularity of wireless sensor networks (WSNs) in a wide range of applications, security problems associated with them have not been completely resolved. Middleware is generally introduced as an intermediate layer between WSNs and the end user to resolve some limitations, but most of the existing middleware is unable to protect data from malicious and unknown attacks during transmission. This paper introduces an intelligent middleware based on an unsupervised learning technique called Generative Adversarial Networks (GANs) algorithm. GANs contain two networks: a generator (G) network and a detector (D) network. The G creates fake data similar to the real samples and combines it with real data from the sensors to confuse the attacker. The D contains multi-layers that have the ability to differentiate between real and fake data. The output intended for this algorithm shows an actual interpretation of the data that is securely communicated through the WSN. The framework is implemented in Python with experiments performed using Keras. Results illustrate that the suggested algorithm not only improves the accuracy of the data but also enhances its security by protecting data from adversaries. Data transmission from the WSN to the end user then becomes much more secure and accurate compared to conventional techniques.
DOI10.1109/WTS.2018.8363955
Citation Keyalshinina_highly_2018