Accès libre

NeuroCyberGuard: Developing a Robust Cybersecurity Defense System through Deep Neural Learning-Based Mathematical Modeling

À propos de cet article

Citez

Due to the increasing sophistication and frequency of cyber threats, cyber security has become a pressing issue in today’s interconnected society. The traditional security methods have proven insufficient to tackle the evolving threat landscape, leading to the need for more advanced and effective defence mechanisms. The emerging field of deep neural learning has shown promise in cybersecurity, as it can learn complex patterns and behaviors in data and provide more accurate and efficient detection and prediction capabilities. This research aims to develop a robust cybersecurity defense system, named NeuroCyberGuard, by using deep neural learning-based mathematical modelling. The proposed approach leverages the power of deep neural networks to analyze large amounts of network traffic data, identify potential threats, and provide real-time alerts and responses to prevent security breaches. The mathematical modelling component enables the system to optimize its performance and adapt to changing network conditions and attack patterns. The system will be evaluated using a variety of benchmark datasets and real-world scenarios to validate its effectiveness and efficiency. The expected outcome of this research is a state-of-the-art cybersecurity defense system that provides comprehensive protection against cyber threats and enhances the security posture of organizations.