HyQ2:用于 NextG 漏洞检测的混合量子神经网络

Yifeng Peng;Xinyi Li;Zhiding Liang;Ying Wang
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摘要

随着第五代 (5G) 和下一代通信系统的发展和在关键基础设施中的广泛应用,漏洞检测的重要性日益凸显。这些系统日益复杂,需要进行严格的测试和分析,对准确性和速度都有严格要求。在本文中,我们提出了一种最先进的监督式混合量子神经网络,名为 HyQ2,用于下一代无线通信系统的漏洞检测。所提出的 HyQ2 与图嵌入式和量子变分电路相结合,可根据从日志文件中提取的图,从 5G 系统的状态转换中验证和检测漏洞。我们解决了经典机器学习模型在处理高维数据内在联系关系方面的局限性。这些模型通常会受到死神经元和过大输出的影响,而这是由整流线性单元(ReLU)激活函数的无界范围造成的。我们提出了 HyQ2 方法来克服这些难题,该方法通过从经典神经网络中选择随机神经元输出来构建量子神经元。然后利用这些量子神经元捕捉更复杂的关系,有效限制 ReLU 的输出。仅使用两个量子比特,我们的验证结果表明 HyQ2 在漏洞检测方面优于传统的经典机器学习模型。HyQ2 的变分电路体积小、结构紧凑,能最大限度地减少测量中的噪声和误差。我们的结果表明,HyQ2 的曲线下面积(AUC)值高达 0.9708,准确率高达 95.91%。为了测试模型在量子噪声环境下的性能,我们通过添加比特翻转、相位翻转、振幅阻尼和去极化噪声来模拟量子噪声。结果表明,预测精度和接收器操作特征 AUC 值在 0.2% 左右波动,这表明 HyQ2 在噪声量子环境中具有鲁棒性。此外,通过在 IBM 量子机上的实验,HyQ2 算法的抗噪声能力和鲁棒性得到了证实,与仿真结果相比仅下降了 0.2%。
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HyQ2: A Hybrid Quantum Neural Network for NextG Vulnerability Detection
As fifth-generation (5G) and next-generation communication systems advance and find widespread application in critical infrastructures, the importance of vulnerability detection becomes increasingly critical. The growing complexity of these systems necessitates rigorous testing and analysis, with stringent requirements for both accuracy and speed. In this article, we present a state-of-the-art supervised hybrid quantum neural network named HyQ2 for vulnerability detection in next-generation wireless communication systems. The proposed HyQ2 is integrated with graph-embedded and quantum variational circuits to validate and detect vulnerabilities from the 5G system's state transitions based on graphs extracted from log files. We address the limitations of classical machine learning models in processing the intrinsic linkage relationships of high-dimensional data. These models often suffer from dead neurons and excessively large outputs caused by the unbounded range of the rectified linear unit (ReLU) activation function. We propose the HyQ2 method to overcome these challenges, which constructs quantum neurons by selecting random neurons' outputs from a classical neural network. These quantum neurons are then utilized to capture more complex relationships, effectively limiting the ReLU output. Using only two qubits, our validation results demonstrate that HyQ2 outperforms traditional classical machine learning models in vulnerability detection. The small and compact variational circuit of HyQ2 minimizes the noise and errors in the measurement. Our results demonstrate that HyQ2 achieves a high area under the curve (AUC) value of 0.9708 and an accuracy of 95.91%. To test the model's performance in quantum noise environments, we simulate quantum noise by adding bit flipping, phase flipping, amplitude damping, and depolarizing noise. The results show that the prediction accuracy and receiver operating characteristic AUC value fluctuate around 0.2%, indicating HyQ2’s robustness in noisy quantum environments. In addition, the noise resilience and robustness of the HyQ2 algorithm were substantiated through experiments on the IBM quantum machine with only a 0.2% decrease compared to the simulation results.
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