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NFIDS: a neuro-fuzzy intrusion detection system

机译:NFIDS:神经模糊入侵检测系统

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Heavy reliance on the Internet and worldwide connectivity has greatly increased the potential damage that can be inflicted by remote attacks launched over the Internet. Since it is not technically feasible to build a system with no vulnerabilities, intrusion detection has become an important area of research. The neuro-fuzzy intrusion detection system (NFIDS) is an anomaly based intrusion detection system that uses fuzzy logic and neural networks to detect if malicious activity is taking place on a network. This paper describes the architecture of the NFIDS and its components. The sample fuzzy rules are developed for some kinds of attacks and the testing results with actual network data are described.
机译:对互联网和全球连接的良好依赖性大大增加了通过互联网推出的远程攻击可以造成的潜在损害。由于构建没有漏洞的系统并没有技术上不可行,因此入侵检测已成为研究的重要领域。神经模糊入侵检测系统(NFID)是基于异常的入侵检测系统,使用模糊逻辑和神经网络来检测网络上是否正在发生恶意活动。本文介绍了NFID及其组件的架构。示例模糊规则是为某些类型的攻击而开发的,并且描述了具有实际网络数据的测试结果。

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