Cloud computing environments are increasingly vulnerable to security threats such as distributed denial-of-service (DDoS) attacks and SQL injection. Traditional security mechanisms, based on rule matching and feature recognition, struggle to adapt to evolving attack strategies. This paper proposes an adaptive security protection framework leveraging deep learning to construct a multi-layered defense architecture. The proposed system is evaluated in a real-world business environment, achieving a detection accuracy of 97.3%, an average response time of 18 ms, and an availability rate of 99.999%. Experimental results demonstrate that the proposed method significantly enhances detection accuracy, response efficiency, and resource utilization, offering a novel and effective approach to cloud computing security.
翻译:云计算环境日益面临分布式拒绝服务(DDoS)攻击和SQL注入等安全威胁。基于规则匹配和特征识别的传统安全机制难以适应不断演变的攻击策略。本文提出一种利用深度学习构建多层防御架构的自适应安全防护框架。所提系统在真实业务环境中进行评估,实现了97.3%的检测准确率、18毫秒的平均响应时间以及99.999%的可用率。实验结果表明,该方法显著提升了检测精度、响应效率和资源利用率,为云计算安全提供了一种新颖有效的解决方案。