核心概念
Deep Neural network-based State Estimator (DeNSE) addresses challenges in time-synchronized state estimation for power systems.
摘要
The article discusses the challenges of time-synchronized state estimation in power systems due to PMU placement trade-offs. It introduces the DeNSE, a Deep Neural network-based State Estimator, to overcome these challenges. The DeNSE combines SCADA and PMU data to achieve sub-second situational awareness. It addresses scalability, non-Gaussian noise, bad data detection, and correction issues. Results show its superiority over traditional methods.
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Introduction
- State estimation importance for power utilities.
- Traditional methods vs. new challenges with rapid fluctuations.
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Motivations
- Issues with SCADA-only and hybrid state estimators.
- Need for high-speed state estimation due to renewable energy integration.
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Novel Contributions
- Introduction of DeNSE for high-speed state estimation.
- Overcoming observability issues with few PMUs.
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Proposed Formulation
- Bayesian approach to Transmission System State Estimation (TSSE).
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Architecture of the DNN in the DeNSE
- Feed-forward architecture with hidden layers.
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Creation of Training Database
- Unique feature of using SCADA data indirectly through MC sampling.
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Enhancements to Proposed Formulation and Online Implementation
- Transfer learning for topology changes.
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Robust Bad Data Detection and Correction (BDDC)
- Wald test methodology for bad data detection.
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Impact of Topology Changes
- Transfer learning efficiency demonstrated after topology changes.
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Mitigating Impact of Bad Data
- Proposed NOC-based BDDC methodology outperforms mean value replacement.
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Tackling Extreme Scenarios
- Extreme scenario filter improves performance under extreme conditions.
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Investigating Impact of Different Database Sizes
- Performance improvement observed with increasing database sizes.
統計資料
The DeNSE results in an average magnitude MAPE of 0.1676% and an average angle MAE of 0.0042%.
The proposed methodology for correcting bad data consistently outperformed the mean value replacement method.
引述
"The DeNSE employs a Bayesian framework to combine SCADA and PMU data."
"Transfer learning is used to update the DNN after topology changes."