AI BOX:基于人工智能的自主异常网络流量响应机制

Jiann-Liang Chen, Zhengxu Chen, Youg-Sheng Chang, Ching-Iang Li, Tien-I Kao, Yu-Ting Lin, Yu-Yi Xiao, Jian-Fu Qiu
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引用次数: 0

摘要

本文提出了一种基于人工智能的入侵检测方法。人工智能对截获的数据包进行分析,并基于人工智能算法检测是否存在网络攻击或网络流量异常。如果网络流量行为是不自然的或破坏性的,它决定是否立即中断,修改或隔离它。人工智能模型用于检测异常。它允许或限制数据传输,以保护It (information technology)和OT (operational)设备免受异常网络流量、系统中断、背叛和其他威胁的攻击。它还可以在异构网络之间自由移动,以支持数据处理和转换。我们已经开发了机器学习模型、数据包跟踪功能和AI BOX环境选项。我们使用两个公共数据集训练模型,并获得了99.9%的预测精度。AI BOX设备成功测试了人工智能模型的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI BOX: Artificial intelligence-based autonomous abnormal network traffic response mechanism
This paper presents an artificial intelligence-based approach to detecting intrusions. The artificial intelligence analyses intercepted packets and detect the presence of network attacks or abnormal network traffic based on artificial intelligence algorithms. If the network traffic behavior is unnatural or disruptive, it decides whether to interrupt, modify or isolate it immediately. Artificial intelligence models are used to detect anomalies. It enables or restricts data transmission to secure information technology (IT) and operational (OT) devices against attacks from anomalous network traffic, system outages, betrayal, and other threats. It can also move freely between heterogeneous networks to support data processing and transformation. We have developed machine learning models, packet tracking capabilities, and AI BOX environment options. We trained the model using two public datasets and obtained a 99.9% prediction accuracy. The AI BOX device successfully tested the effect of artificial intelligence models.
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