Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
169 tokens/sec
GPT-4o
7 tokens/sec
Gemini 2.5 Pro Pro
45 tokens/sec
o3 Pro
4 tokens/sec
GPT-4.1 Pro
38 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

Physics-informed Graphical Neural Network for Power System State Estimation (2312.17738v1)

Published 29 Dec 2023 in eess.SY and cs.SY

Abstract: State estimation is highly critical for accurately observing the dynamic behavior of the power grids and minimizing risks from cyber threats. However, existing state estimation methods encounter challenges in accurately capturing power system dynamics, primarily because of limitations in encoding the grid topology and sparse measurements. This paper proposes a physics-informed graphical learning state estimation method to address these limitations by leveraging both domain physical knowledge and a graph neural network (GNN). We employ a GNN architecture that can handle the graph-structured data of power systems more effectively than traditional data-driven methods. The physics-based knowledge is constructed from the branch current formulation, making the approach adaptable to both transmission and distribution systems. The validation results of three IEEE test systems show that the proposed method can achieve lower mean square error more than 20% than the conventional methods.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (44)
  1. IEA (2022), Smart Grids. https://www.iea.org/reports/smart-grids/, year = 2022. License: CC BY 4.0.
  2. Rapid voltage changes in power system networks and their effect on flicker. IEEE Transactions on Power Delivery, 31(1):262–270, 2016.
  3. A survey on state estimation techniques and challenges in smart distribution systems. IEEE Transactions on Smart Grid, 10(2):2312–2322, 2019.
  4. Power system dynamic state estimation: Motivations, definitions, methodologies, and future work. IEEE Transactions on Power Systems, 34(4):3188–3198, 2019.
  5. Data-Driven Learning-Based Optimization for Distribution System State Estimation, March 2019. Issue: arXiv:1807.01671 arXiv:1807.01671 [eess].
  6. State and Topology Estimation for Unobservable Distribution Systems Using Deep Neural Networks. IEEE Transactions on Instrumentation and Measurement, 71:1–14, 2022.
  7. Cyber-Physical Microgrids: Toward Future Resilient Communities. IEEE Industrial Electronics Magazine, 14(3):4–17, 2020.
  8. A Robust Iterated Extended Kalman Filter for Power System Dynamic State Estimation. IEEE Transactions on Power Systems, 32(4):3205–3216, July 2017.
  9. Distributed dynamic state-input estimation for power networks of microgrids and active distribution systems with unknown inputs. Electric Power Systems Research, 201:107510, 2021.
  10. The new trend of state estimation: From model-driven to hybrid-driven methods. Sensors, 21(6), 2021.
  11. Physics-aware neural networks for distribution system state estimation. IEEE Transactions on Power Systems, 35(6):4347–4356, 2020.
  12. Physics-guided deep learning for power system state estimation. Journal of Modern Power Systems and Clean Energy, 8(4):607–615, 2020.
  13. Physics-informed graphical learning and bayesian averaging for robust distribution state estimation. IEEE Transactions on Power Systems, pages 1–13, 2023.
  14. Probabilistic physics-informed graph convolutional network for active distribution system voltage prediction. IEEE Transactions on Power Systems, 38(6):5969–5972, 2023.
  15. Estimate three-phase distribution line parameters with physics-informed graphical learning method. IEEE Transactions on Power Systems, 37(5):3577–3591, 2022.
  16. Physics-informed graphical neural network for parameter & state estimations in power systems. arXiv preprint arXiv:2102.06349, 2021.
  17. Physics-informed deep neural network method for limited observability state estimation. arXiv preprint arXiv:1910.06401, 2019.
  18. Physics-informed geometric deep learning for inference tasks in power systems. Electric Power Systems Research, 211:108362, 2022.
  19. Deep learning in power systems research: A review. CSEE Journal of Power and Energy Systems, 7(2):209–220, 2021.
  20. Power System State Estimation and Forecasting using CNN based Hybrid Deep Learning Models. In 2021 IEEE International Conference on Technology, Research, and Innovation for Betterment of Society (TRIBES), pages 1–6, 2021.
  21. Power system state estimation using conditional generative adversarial network. IET Generation, Transmission & Distribution, 14, December 2020.
  22. Real-time Power System State Estimation and Forecasting via Deep Neural Networks. IEEE Transactions on Signal Processing, 67(15):4069–4077, August 2019. Number: 15 arXiv:1811.06146 [cs, stat].
  23. Graph neural networks: A review of methods and applications. AI open, 1:57–81, 2020.
  24. Graph neural network-based distribution system state estimators. IEEE Transactions on Industrial Informatics, pages 1–10, 2023.
  25. Distributed power system state estimation using graph convolutional neural networks. In Hawaii International Conference on System Sciences, 2023.
  26. Graph neural networks on factor graphs for robust, fast, and scalable linear state estimation with pmus. Sustainable Energy, Grids and Networks, 34:101056, 2023.
  27. Spatial-temporal recurrent graph neural networks for fault diagnostics in power distribution systems. arXiv preprint arXiv:2210.15177, 2022.
  28. Informed machine learning – a taxonomy and survey of integrating prior knowledge into learning systems. IEEE Transactions on Knowledge and Data Engineering, 35(1):614–633, 2023.
  29. Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations. Journal of Computational Physics, 378:686–707, 2019.
  30. Physics-informed neural networks for power systems. In 2020 IEEE Power & Energy Society General Meeting (PESGM), pages 1–5. IEEE, 2020.
  31. Applications of physics-informed neural networks in power systems - a review. IEEE Transactions on Power Systems, 38(1):572–588, 2023.
  32. Stiff-pinn: Physics-informed neural network for stiff chemical kinetics. The Journal of Physical Chemistry A, 125(36):8098–8106, 2021.
  33. Parameter estimation of power electronic converters with physics-informed machine learning. IEEE Transactions on Power Electronics, 37(10):11567–11578, 2022.
  34. State estimation in smart grids using temporal graph convolution networks. In 2021 North American Power Symposium (NAPS), pages 01–05, 2021.
  35. Semi-supervised classification with graph convolutional networks. In International Conference on Learning Representations, 2017.
  36. Graph neural network: A comprehensive review on non-euclidean space. IEEE Access, 9:60588–60606, 2021.
  37. Driven by data or derived through physics? a review of hybrid physics guided machine learning techniques with cyber-physical system (cps) focus. IEEE Access, 8:71050–71073, 2020.
  38. Gradient-enhanced physics-informed neural networks for power systems operational support. Electric Power Systems Research, 223:109551, 2023.
  39. A review of graph neural networks and their applications in power systems. Journal of Modern Power Systems and Clean Energy, 10(2):345–360, 2021.
  40. Neural-network-based Power System State Estimation with Extended Observability. Journal of Modern Power Systems and Clean Energy, 9(5):1043–1053, September 2021.
  41. Survey of dropout methods for deep neural networks. arXiv preprint arXiv:1904.13310, 2019.
  42. Revisiting small batch training for deep neural networks. arXiv preprint arXiv:1804.07612, 2018.
  43. Fast graph representation learning with pytorch geometric. arXiv preprint arXiv:1903.02428, 2019.
  44. Scalable distribution systems state estimation using long short-term memory networks as surrogates. IEEE Access, 8:23359–23368, 2020.
Citations (5)

Summary

We haven't generated a summary for this paper yet.