With the ever-growing demand for cybersecurity, static key encryption mechanisms are increasingly vulnerable to adversarial attacks due to their deterministic and non-adaptive nature. Brute-force attacks, key compromise, and unauthorized access have become highly common cyber threats. This research presents a novel fuzzy logic-based cryptographic framework that dynamically generates encryption keys in real-time by accessing system-level entropy and hardware-bound trust. The proposed system leverages a Fuzzy Inference System (FIS) to evaluate system parameters that include CPU utilization, process count, and timestamp variation. It assigns entropy level based on linguistically defined fuzzy rules which are fused with hardware-generated randomness and then securely sealed using a Trusted Platform Module (TPM). The sealed key is incorporated in an AES-GCM encryption scheme to ensure both confidentiality and integrity of the data. This system introduces a scalable solution for adaptive encryption in high-assurance computing, zero-trust environments, and cloud-based infrastructure.
翻译:随着网络安全需求的日益增长,静态密钥加密机制因其确定性和非自适应性而日益容易受到对抗性攻击。暴力破解攻击、密钥泄露和未经授权的访问已成为极为常见的网络威胁。本研究提出了一种新颖的基于模糊逻辑的加密框架,通过访问系统级熵和硬件绑定的信任来实时动态生成加密密钥。该系统利用模糊推理系统(FIS)评估包括CPU利用率、进程数量和时间戳变化在内的系统参数,根据语言定义的模糊规则分配熵级别,并与硬件生成的随机性融合,然后使用可信平台模块(TPM)进行安全密封。密封后的密钥被整合到AES-GCM加密方案中,以确保数据的机密性和完整性。该系统为高可信计算、零信任环境和基于云的基础设施中的自适应加密提供了一种可扩展的解决方案。