Based on QUBO models with quantum-inspired algorithms to enhance the CVQKD systems to ensure security of hacking

Feiyue Zhu, Haifeng Qiu, Ziyu Wang
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Abstract

This paper presents the need for innovative solutions to optimize computational power networks and the application of quantum computing to tackle real-world challenges. Our research addresses this critical issue by developing a robust pre-training scheme that integrates Quantum Unweighted Quadratic Unconstrained Binary Optimization (QUBO) models with quantum-inspired algorithms. This approach aims to enhance the adversarial robustness of CVQKD systems, ensuring their security in the face of sophisticated hacking attempts. Our experimental results demonstrate that the proposed strategy effectively defends against adversarial attacks while maintaining the integrity of secret keys, showcasing the adaptability and efficiency of QUBO models in quantum communication scenarios. This work not only contributes to the broader application of QUBO models in quantum communication but also provides a robust pre-training scheme that can be generalized and transplanted to other machine learning-assisted systems, significantly improving their security in the face of adversarial attacks.
基于 QUBO 模型与量子启发算法,增强 CVQKD 系统,确保黑客攻击的安全性
本文介绍了优化计算能力网络对创新解决方案的需求,以及量子计算在应对现实世界挑战中的应用。我们的研究通过开发一种稳健的预训练方案来解决这一关键问题,该方案将量子非加权二次无约束二元优化(QUBO)模型与量子启发算法相结合。这种方法旨在增强 CVQKD 系统的对抗鲁棒性,确保其在面对复杂黑客攻击时的安全性。我们的实验结果表明,所提出的策略能有效抵御对抗性攻击,同时保持密钥的完整性,展示了 QUBO 模型在量子通信场景中的适应性和效率。这项工作不仅有助于 QUBO 模型在量子通信中的更广泛应用,还提供了一种稳健的预训练方案,可以推广并移植到其他机器学习辅助系统中,从而显著提高这些系统在面对对抗性攻击时的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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