Enhancing dynamic security assessment in smart grids through quantum federated learning

Dynamic Security Assessment (DSA) is critical for maintaining stability in large-scale smart grids, especially with the growing integration of renewable energy sources and the inherent uncertainties. Traditional model-based analytical methods are increasingly inadequate under these complex condition...

وصف كامل

محفوظ في:
التفاصيل البيبلوغرافية
المؤلفون الرئيسيون: Ren, Chao, Dong, Zhao Yang, Skoglund, Mikael, Gao, Yulan, Wang, Tianjing, Zhang, Rui
مؤلفون آخرون: School of Electrical and Electronic Engineering
التنسيق: مقال
اللغة:English
منشور في: 2025
الموضوعات:
الوصول للمادة أونلاين:https://hdl.handle.net/10356/183062
الوسوم: إضافة وسم
لا توجد وسوم, كن أول من يضع وسما على هذه التسجيلة!
المؤسسة: Nanyang Technological University
اللغة: English
id sg-ntu-dr.10356-183062
record_format dspace
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering
Quantum federated learning
Dynamic security assessment
spellingShingle Engineering
Quantum federated learning
Dynamic security assessment
Ren, Chao
Dong, Zhao Yang
Skoglund, Mikael
Gao, Yulan
Wang, Tianjing
Zhang, Rui
Enhancing dynamic security assessment in smart grids through quantum federated learning
description Dynamic Security Assessment (DSA) is critical for maintaining stability in large-scale smart grids, especially with the growing integration of renewable energy sources and the inherent uncertainties. Traditional model-based analytical methods are increasingly inadequate under these complex conditions. To address these challenges, we propose a pioneering Quantum Federated Learning-based DSA (QFLDSA) method by combining hybrid quantum-classical machine learning and federated learning. QFLDSA offers an effective way to deal with high-dimensional data and uncertainties inherent in the grid. Moreover, QFLDSA leverages the unique capabilities of quantum computing to enhance the processing of differential-algebraic equations that underpin grid stability. This paper demonstrates through extensive simulations that QFLDSA significantly outperforms traditional methods, achieving the highest average F1-score performance at 97.94%, while maintaining 97.67 ± 0.17% prediction accuracy on both classical and quantum computing devices only with fewer transmitted model parameters (reducing up to ∼ 1000X). These enhancements enable more reliable and rapid deployment of preventive stability control measures across smart grids. Our results underscore QFLDSA's potential as a robust solution for the dynamic security challenges of modern smart grids, paving the way for future innovations in grid management technology. Note to Practitioners - In the rapidly evolving world of smart cyber-physical grids, ensuring the stability of electric power systems is paramount. Failures in these systems can lead to catastrophic blackouts, affecting countless homes and businesses. Traditional DSA methods to assess and ensure this stability, while effective, are becoming increasingly complex and vulnerable to single points of failure or cyberattacks. Enter the QFLDSA method, a novel approach we introduce in this paper. In simple terms, this method combines the strengths of quantum machine learning and federated learning to analyze data efficiently across a distributed system. Here's why these matters: 1) Localized Analysis: Instead of relying on a central hub to analyze all data, QFLDSA allows for localized data analysis. This means that if one part of the system fails, it does not bring down the entire grid's analysis capabilities. It is akin to having multiple control rooms instead of one, ensuring that a problem in one room does not halt the entire operation. 2) Future-Ready: As we move towards a future where quantum computing becomes more prevalent, QFLDSA is designed to work seamlessly with both today's classical devices and tomorrow's quantum devices. This ensures that as technology evolves, our method remains relevant and efficient. 3) Proven Performance: We have not just introduced a new method; we have rigorously tested it. Our theoretical proofs and practical tests confirm that QFLDSA offers accurate and efficient data analysis for smart grids. For industry professionals, the takeaway is clear: if looking for a resilient, future-ready, and proven method to ensure the stability of smart grid, QFLDSA offers a compelling solution.
author2 School of Electrical and Electronic Engineering
author_facet School of Electrical and Electronic Engineering
Ren, Chao
Dong, Zhao Yang
Skoglund, Mikael
Gao, Yulan
Wang, Tianjing
Zhang, Rui
format Article
author Ren, Chao
Dong, Zhao Yang
Skoglund, Mikael
Gao, Yulan
Wang, Tianjing
Zhang, Rui
author_sort Ren, Chao
title Enhancing dynamic security assessment in smart grids through quantum federated learning
title_short Enhancing dynamic security assessment in smart grids through quantum federated learning
title_full Enhancing dynamic security assessment in smart grids through quantum federated learning
title_fullStr Enhancing dynamic security assessment in smart grids through quantum federated learning
title_full_unstemmed Enhancing dynamic security assessment in smart grids through quantum federated learning
title_sort enhancing dynamic security assessment in smart grids through quantum federated learning
publishDate 2025
url https://hdl.handle.net/10356/183062
_version_ 1829245219581722624
spelling sg-ntu-dr.10356-1830622025-03-21T15:41:09Z Enhancing dynamic security assessment in smart grids through quantum federated learning Ren, Chao Dong, Zhao Yang Skoglund, Mikael Gao, Yulan Wang, Tianjing Zhang, Rui School of Electrical and Electronic Engineering Engineering Quantum federated learning Dynamic security assessment Dynamic Security Assessment (DSA) is critical for maintaining stability in large-scale smart grids, especially with the growing integration of renewable energy sources and the inherent uncertainties. Traditional model-based analytical methods are increasingly inadequate under these complex conditions. To address these challenges, we propose a pioneering Quantum Federated Learning-based DSA (QFLDSA) method by combining hybrid quantum-classical machine learning and federated learning. QFLDSA offers an effective way to deal with high-dimensional data and uncertainties inherent in the grid. Moreover, QFLDSA leverages the unique capabilities of quantum computing to enhance the processing of differential-algebraic equations that underpin grid stability. This paper demonstrates through extensive simulations that QFLDSA significantly outperforms traditional methods, achieving the highest average F1-score performance at 97.94%, while maintaining 97.67 ± 0.17% prediction accuracy on both classical and quantum computing devices only with fewer transmitted model parameters (reducing up to ∼ 1000X). These enhancements enable more reliable and rapid deployment of preventive stability control measures across smart grids. Our results underscore QFLDSA's potential as a robust solution for the dynamic security challenges of modern smart grids, paving the way for future innovations in grid management technology. Note to Practitioners - In the rapidly evolving world of smart cyber-physical grids, ensuring the stability of electric power systems is paramount. Failures in these systems can lead to catastrophic blackouts, affecting countless homes and businesses. Traditional DSA methods to assess and ensure this stability, while effective, are becoming increasingly complex and vulnerable to single points of failure or cyberattacks. Enter the QFLDSA method, a novel approach we introduce in this paper. In simple terms, this method combines the strengths of quantum machine learning and federated learning to analyze data efficiently across a distributed system. Here's why these matters: 1) Localized Analysis: Instead of relying on a central hub to analyze all data, QFLDSA allows for localized data analysis. This means that if one part of the system fails, it does not bring down the entire grid's analysis capabilities. It is akin to having multiple control rooms instead of one, ensuring that a problem in one room does not halt the entire operation. 2) Future-Ready: As we move towards a future where quantum computing becomes more prevalent, QFLDSA is designed to work seamlessly with both today's classical devices and tomorrow's quantum devices. This ensures that as technology evolves, our method remains relevant and efficient. 3) Proven Performance: We have not just introduced a new method; we have rigorously tested it. Our theoretical proofs and practical tests confirm that QFLDSA offers accurate and efficient data analysis for smart grids. For industry professionals, the takeaway is clear: if looking for a resilient, future-ready, and proven method to ensure the stability of smart grid, QFLDSA offers a compelling solution. Nanyang Technological University Published version This work was supported in part by the Wallenberg-NTU Presidential Postdoctoral Fellowship, in part by the Global Science, Technology, Engineering and Mathematics (STEM) Professorship and City University Startup Grant, and in part by Australian Research Council Australian Discovery Early Career Award under Project DE220101277. 2025-03-18T02:34:21Z 2025-03-18T02:34:21Z 2024 Journal Article Ren, C., Dong, Z. Y., Skoglund, M., Gao, Y., Wang, T. & Zhang, R. (2024). Enhancing dynamic security assessment in smart grids through quantum federated learning. IEEE Transactions On Automation Science and Engineering. https://dx.doi.org/10.1109/TASE.2024.3486070 1545-5955 https://hdl.handle.net/10356/183062 10.1109/TASE.2024.3486070 2-s2.0-85209887167 en IEEE Transactions on Automation Science and Engineering © 2024 The Authors. This work is licensed under a Creative Commons Attribution 4.0 License. application/pdf