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Quantum computing based hybrid deep learning for fault diagnosis in electrical power systems

机译:基于量子计算的电力系统故障诊断的混合深度学习

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摘要

Quantum computing (QC) and deep learning have shown promise of supporting transformative advances and have recently gained popularity in a wide range of areas. This paper proposes a hybrid QC-based deep learning framework for fault diagnosis of electrical power systems that combine the feature extraction capabilities of conditional restricted Boltzmann machine with an efficient classification of deep networks. Computational challenges stemming from the complexities of such deep learning models are overcome by QC-based training methodologies that effectively leverage the complementary strengths of quantum assisted learning and classical training techniques. The proposed hybrid QC-based deep learning framework is tested on a simulated electrical power system with 30 buses and wide variations of substation and transmission line faults, to demonstrate the framework's applicability, efficiency, and generalization capabilities. High computational efficiency is enjoyed by the proposed hybrid approach in terms of computational effort required and quality of diagnosis performance over classical training methods. In addition, superior and reliable fault diagnosis performance with faster response time is achieved over state-of-the-art pattern recognition methods based on artificial neural networks (ANN) and decision trees (DT).
机译:量子计算(QC)和深度学习表明了支持变革性进展的承诺,最近在广泛的地区获得了普及。本文提出了一种基于混合QC的深度学习框架,用于电力系统的故障诊断,其将条件限制Boltzmann机器的特征提取能力与深网络有效分类相结合。基于QC的培训方法克服了这些深度学习模型的复杂性的计算挑战,有效利用量子辅助学习和古典训练技术的互补优势。基于混合的基于QC的深度学习框架在模拟电力系统上测试了具有30个总线的模拟电力系统和变电站和传输线路故障的宽变化,以展示框架的适用性,效率和泛化能力。在古典训练方法的计算工作方面,拟议的混合方法享有高计算效率。此外,通过基于人工神经网络(ANN)和决策树(DT)的最先进的模式识别方法,实现了具有更快的响应时间的优异和可靠的故障诊断性能。

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