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A highly accurate machine learning approach for developing wireless sensor network middleware

机译:用于开发无线传感器网络中间件的高精度机器学习方法

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摘要

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 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.
机译:尽管无线传感器网络(WSN)在广泛的应用中广受欢迎,但与它们相关的安全性问题尚未完全解决。通常将中间件作为WSN与最终用户之间的中间层引入,以解决某些限制,但是大多数现有的中间件在传输过程中无法保护数据免受恶意和未知攻击。本文介绍了一种基于无监督学习技术的智能中间件,该技术称为生成对抗网络(GANs)算法。 GAN包含两个网络:一个生成器(G)网络和一个检测器(D)网络。 G会创建类似于真实样本的伪造数据,并将其与来自传感器的真实数据相结合,以使攻击者感到困惑。 D包含多层,可以区分真实数据和伪造数据。用于此算法的输出显示了对通过WSN安全传送的数据的实际解释。该框架是在Python中实现的,并使用Keras执行了实验。结果表明,所提出的算法不仅提高了数据的准确性,而且还通过保护数据免受对手攻击而提高了其安全性。与传统技术相比,从WSN到最终用户的数据传输变得更加安全和准确。

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