5G核心人工智能威胁检测和缓解策略中的安全和隐私挑战

IF 0.5 Q4 TELECOMMUNICATIONS
Bin Ren
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引用次数: 0

摘要

在5G核心网中集成人工智能(AI),增强了危险检测和缓解能力,确保了强大的安全和隐私安全性。然而,现有技术面临的挑战包括高假阳性价格、实时危险版本问题以及对抗性攻击的脆弱性。自适应人工智能驱动的安全框架(AASF)是我们解决这些问题的答案。它使用深度学习、联邦学习和异常检测来提高威胁识别的准确性,减少新的网络威胁的影响。AASF采用实时危险情报共享和分散数据处理,在提高检测效率的同时加强隐私保护。该方法保证了主动的安全特性,减少了风险缓解的延迟,并最大限度地降低了记录公开风险。实验评估表明,AASF比传统方法具有更高的识别精度,减少误报,缩短响应时间,是保障5G核心网安全的可行方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Security and Privacy Challenges in 5G Core AI-Powered Threat Detection and Mitigation Strategies

Integrating artificial intelligence (AI) in the 5G core network enhances danger detection and mitigation capabilities, which ensure strong security and privacy security. However, existing techniques face challenges which include high fake positive prices, actual-time hazard version issues, and vulnerability to adversarial assaults. The adaptive AI-driven security framework (AASF) is our answer to these problems. It uses deep learning, federated learning, and anomaly detection to improve the accuracy of threat identification and lessen the effects of new cyber threats. AASF employs actual-time danger intelligence sharing and decentralized data processing to reinforce privacy preservation while enhancing detection efficiency. The proposed method ensures proactive security features, reduces latency in hazard mitigation, and minimizes records publicity risks. Experimental evaluation suggests that AASF performs better by traditional methods by acquiring high recognition accuracy, reduces false positives, and the response improves time, making it a viable solution to secure the 5G core network.

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