Security of Big Data over IoT Environment by Integration of Deep Learning and Optimization

N. N. Alleema, R. Raman, Fidel Castro-Cayllahua, V. Rathod, J. Cotrina-Aliaga, S. Ajagekar, R. Kanse
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Abstract

This is especially true given the spread of IoT, which makes it possible for two-way communication between various electronic devices and is therefore essential to contemporary living. However, it has been shown that IoT may be readily exploited. There is a need to develop new technology or combine existing ones to address these security issues. DL, a kind of ML, has been used in earlier studies to discover security breaches with good results. IoT device data is abundant, diverse, and trustworthy. Thus, improved performance and data management are attainable with help of big data technology. The current state of IoT security, big data, and deep learning led to an all-encompassing study of the topic. This study examines the interrelationships of big data, IoT security, and DL technologies, and draws parallels between these three areas. Technical works in all three fields have been compared, allowing for the development of a thematic taxonomy. Finally, we have laid the groundwork for further investigation into IoT security concerns by identifying and assessing the obstacles inherent in using DL for security utilizing big data. The security of large data has been taken into consideration in this article by categorizing various dangers using a deep learning method. The purpose of optimization is to raise both accuracy and performance.
深度学习与优化融合的物联网环境下大数据安全
考虑到物联网的普及,这一点尤其正确,物联网使各种电子设备之间的双向通信成为可能,因此对当代生活至关重要。然而,已经证明物联网可能很容易被利用。有必要开发新技术或结合现有技术来解决这些安全问题。DL是机器学习的一种,在早期的研究中被用于发现安全漏洞,并取得了良好的效果。物联网设备数据丰富、多样、可信。因此,在大数据技术的帮助下,可以提高性能和数据管理。物联网安全、大数据和深度学习的现状导致了对该主题的全面研究。本研究考察了大数据、物联网安全和深度学习技术之间的相互关系,并得出了这三个领域之间的相似之处。对所有三个领域的技术工作进行了比较,以便制定专题分类法。最后,我们通过识别和评估利用大数据使用深度学习安全所固有的障碍,为进一步调查物联网安全问题奠定了基础。本文通过使用深度学习方法对各种危险进行分类,考虑了大数据的安全性。优化的目的是提高准确性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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