للكاتبين
A. Hassan, A. Elnakib, and M. AboEl-soud
Electronics and Comm. Eng. Dept., Faculty of Eng., Mansoura University
ABSTRACT
Intrusion Detection Systems (IDSs) have emerged as one of the most promising ways of providing
security in computer networks. Software neural-network-based techniques for implementing IDS have
been proved to be capable of learning and recognizing attacks it faces for the first time. Hardware,
particularly FPGA-based, implementation techniques provide much higher performance over software
techniques through its highly parallel architectures. This paper proposes a software neuro-based system
that can detect novel attacks. In addition, this work also introduces the applicability of using FPGA
devices to enhance the performance of software neuro-based systems. An FPGA-based architecture
was optimized to meet the requirements of speed and area such that it can not only enhance the speed,
but also it can provide an improved scope of boosting security over the software-based system.