Resisting Quantum Key Distribution Attacks Using Quantum Machine Learning
- URL: http://arxiv.org/abs/2509.14282v1
- Date: Tue, 16 Sep 2025 14:22:39 GMT
- Title: Resisting Quantum Key Distribution Attacks Using Quantum Machine Learning
- Authors: Ali Al-kuwari, Noureldin Mohamed, Saif Al-kuwari, Ahmed Farouk, Bikash K. Behera,
- Abstract summary: Quantum Key Distribution (QKD) offers a promising solution by harnessing the principles of quantum mechanics to establish secure keys.<n>QKD implementations remain vulnerable to hardware imperfections and advanced attacks such as Photon Number Splitting and Trojan-Horse attacks.<n>We propose a Hybrid Quantum Long Short-Term Memory (QLSTM) model to improve the detection of common QKD attacks.
- Score: 2.9189969146057
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The emergence of quantum computing poses significant risks to the security of modern communication networks as it breaks today's public-key cryptographic algorithms. Quantum Key Distribution (QKD) offers a promising solution by harnessing the principles of quantum mechanics to establish secure keys. However, practical QKD implementations remain vulnerable to hardware imperfections and advanced attacks such as Photon Number Splitting and Trojan-Horse attacks. In this work, we investigate the potential of using quantum machine learning (QML) to detect popular QKD attacks. In particular, we propose a Hybrid Quantum Long Short-Term Memory (QLSTM) model to improve the detection of common QKD attacks. By combining quantum-enhanced learning with classical deep learning, the model captures complex temporal patterns in QKD data, improving detection accuracy. To evaluate the proposed model, we introduce a realistic QKD dataset simulating normal QKD operations along with seven attack scenarios, Intercept-and-Resend, Photon-Number Splitting (PNS), Trojan-Horse attacks Random Number Generator (RNG), Detector Blinding, Wavelength-dependent Trojan Horse, and Combined attacks. The dataset includes quantum security metrics such as Quantum Bit Error Rate (QBER), measurement entropy, signal and decoy loss rates, and time-based metrics, ensuring an accurate representation of real-world conditions. Our results demonstrate promising performance of the quantum machine learning approach compared to traditional classical machine learning models, highlighting the potential of hybrid techniques to enhance the security of future quantum communication networks. The proposed Hybrid QLSTM model achieved an accuracy of 93.7.0\% after 50 training epochs, outperforming classical deep learning models such as LSTM, and CNN.
Related papers
- Quantum Machine Learning Approaches for Coordinated Stealth Attack Detection in Distributed Generation Systems [0.0]
Coordinated stealth attacks are a serious cybersecurity threat to distributed generation systems.<n>This study investigates quantum machine learning approaches for detecting coordinated stealth attacks on a distributed generation unit in a microgrid.
arXiv Detail & Related papers (2025-12-30T18:32:13Z) - VQC-MLPNet: An Unconventional Hybrid Quantum-Classical Architecture for Scalable and Robust Quantum Machine Learning [50.95799256262098]
Variational quantum circuits (VQCs) hold promise for quantum machine learning but face challenges in expressivity, trainability, and noise resilience.<n>We propose VQC-MLPNet, a hybrid architecture where a VQC generates the first-layer weights of a classical multilayer perceptron during training, while inference is performed entirely classically.
arXiv Detail & Related papers (2025-06-12T01:38:15Z) - Toward Practical Quantum Machine Learning: A Novel Hybrid Quantum LSTM for Fraud Detection [0.1398098625978622]
We present a novel hybrid quantum-classical neural network architecture for fraud detection.<n>By leveraging quantum phenomena such as superposition and entanglement, our model enhances the feature representation of sequential transaction data.<n>Results demonstrate competitive improvements in accuracy, precision, recall, and F1 score relative to a conventional LSTM baseline.
arXiv Detail & Related papers (2025-04-30T19:09:12Z) - Practical hybrid PQC-QKD protocols with enhanced security and performance [44.8840598334124]
We develop hybrid protocols by which QKD and PQC inter-operate within a joint quantum-classical network.
In particular, we consider different hybrid designs that may offer enhanced speed and/or security over the individual performance of either approach.
arXiv Detail & Related papers (2024-11-02T00:02:01Z) - Towards Scalable Quantum Key Distribution: A Machine Learning-Based Cascade Protocol Approach [2.363573186878154]
Quantum Key Distribution (QKD) is a pivotal technology in the quest for secure communication.
Traditional key rate determination methods, dependent on complex mathematical models, often fall short in efficiency and scalability.
We propose an approach that involves integrating machine learning (ML) techniques with the Cascade error correction protocol.
arXiv Detail & Related papers (2024-09-12T13:40:08Z) - Deep-learning-based continuous attacks on quantum key distribution protocols [0.0]
In this paper, we design a new individual attack scheme that exploits continuous measurement together with the powerful pattern recognition capacities of deep recurrent neural networks.<n>Our attack increases only slightly the Quantum Bit Error Rate (QBER) of a noisy channel and allows the spy to infer a significant part of the sifted key.
arXiv Detail & Related papers (2024-08-22T17:39:26Z) - Efficient Learning for Linear Properties of Bounded-Gate Quantum Circuits [62.46800898243033]
Recent progress in quantum learning theory prompts a question: can linear properties of a large-qubit circuit be efficiently learned from measurement data generated by varying classical inputs?<n>We prove that the sample complexity scaling linearly in $d$ is required to achieve a small prediction error, while the corresponding computational complexity may scale exponentially in d.<n>We propose a kernel-based method leveraging classical shadows and truncated trigonometric expansions, enabling a controllable trade-off between prediction accuracy and computational overhead.
arXiv Detail & Related papers (2024-08-22T08:21:28Z) - A Quantum-Classical Collaborative Training Architecture Based on Quantum
State Fidelity [50.387179833629254]
We introduce a collaborative classical-quantum architecture called co-TenQu.
Co-TenQu enhances a classical deep neural network by up to 41.72% in a fair setting.
It outperforms other quantum-based methods by up to 1.9 times and achieves similar accuracy while utilizing 70.59% fewer qubits.
arXiv Detail & Related papers (2024-02-23T14:09:41Z) - QKSAN: A Quantum Kernel Self-Attention Network [53.96779043113156]
A Quantum Kernel Self-Attention Mechanism (QKSAM) is introduced to combine the data representation merit of Quantum Kernel Methods (QKM) with the efficient information extraction capability of SAM.
A Quantum Kernel Self-Attention Network (QKSAN) framework is proposed based on QKSAM, which ingeniously incorporates the Deferred Measurement Principle (DMP) and conditional measurement techniques.
Four QKSAN sub-models are deployed on PennyLane and IBM Qiskit platforms to perform binary classification on MNIST and Fashion MNIST.
arXiv Detail & Related papers (2023-08-25T15:08:19Z) - Quantum Imitation Learning [74.15588381240795]
We propose quantum imitation learning (QIL) with a hope to utilize quantum advantage to speed up IL.
We develop two QIL algorithms, quantum behavioural cloning (Q-BC) and quantum generative adversarial imitation learning (Q-GAIL)
Experiment results demonstrate that both Q-BC and Q-GAIL can achieve comparable performance compared to classical counterparts.
arXiv Detail & Related papers (2023-04-04T12:47:35Z) - Quantum Federated Learning with Quantum Data [87.49715898878858]
Quantum machine learning (QML) has emerged as a promising field that leans on the developments in quantum computing to explore large complex machine learning problems.
This paper proposes the first fully quantum federated learning framework that can operate over quantum data and, thus, share the learning of quantum circuit parameters in a decentralized manner.
arXiv Detail & Related papers (2021-05-30T12:19:27Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.