A Highly Accurate Deep Learning Based Approach for Developing Wireless Sensor Network Middleware

@article{Alshinina2018AHA,
  title={A Highly Accurate Deep Learning Based Approach for Developing Wireless Sensor Network Middleware},
  author={Remah A. Alshinina and Khaled M. Elleithy},
  journal={IEEE Access},
  year={2018},
  volume={6},
  pages={29885-29898}
}
Despite 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 a secure wireless sensor network middleware (SWSNM) based on an… CONTINUE READING

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