基于深度学习的智慧城市分布式网络恶意数据包预测

W. Khan, Komal Saleem, Tauqeer Faiz, J. Malik, Muhammad Saeed Khan, Zawaria Sadaf
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引用次数: 0

摘要

智慧城市是完全利用已建成的信息化发展的新技术,提升整个城市的管理和服务。智慧城市从人们那里收集广泛的信息,并监控他们的社会活动。然而,这引起了智慧城市中普遍关注的隐私和安全问题。在当今世界,对隐私和机密数据的潜在威胁引发了无数的担忧,尤其是围绕智慧城市的访问。以前使用了各种方法,如支持向量机,逻辑回归,Naïve贝叶斯等,使用大型数据集,其局限性包括缺乏准确性,增加了风险。为了处理来自多个虚拟源的有害数据包,利用智慧城市接收到的请求数据集,提出了深度极限神经网络(DENN)专家系统的最优解。准确率达到92%。此外,还讨论了使用相同的安全屏障可以防止的大量攻击中值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Distributed Network Malicious Data Packets in Smart City using Deep Learning
Smart city completely employs the new expertise in the development of built-up informatization to enhance the whole city management and service. Smart city collects wide range of information from people and monitor their social activities. However, this arise privacy and security issue in smart city, which is a prevalent concern. Potential threat to privacy and confidential data leads to a myriad of concerns in today’s world, particularly encircling smart city accesses. Previously various methods were used such as SVM, Logistic Regression, Naïve Bayes and more, using large datasets their limitations included lack of accuracy increasing the risk. To tackle the harmful packets from multiple virtual sources an optimal solution of Deep Extreme Neural Network (DENN) expert system is rendered and presented using a dataset of requests received by smart city. Accuracy of 92% is attained. In addition, ample medians of attacks are discussed that can be prevented using the same safety barrier.
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