Book contents
- Frontmatter
- Contents
- List of Contributors
- Preface
- Part I Statistical Learning
- 1 Learning Power Grid Topologies
- 2 Probabilistic Forecasting of Power System and Market Operations
- 3 Deep Learning in Power Systems
- 4 Estimating the System State and Network Model Errors
- Part II Data-Driven Anomaly Detection
- Part III Data Quality, Integrity, and Privacy
- Part IV Signal Processing
- Part V Large-Scale Optimization
- Part VI Game Theory
- Index
1 - Learning Power Grid Topologies
from Part I - Statistical Learning
Published online by Cambridge University Press: 22 March 2021
- Frontmatter
- Contents
- List of Contributors
- Preface
- Part I Statistical Learning
- 1 Learning Power Grid Topologies
- 2 Probabilistic Forecasting of Power System and Market Operations
- 3 Deep Learning in Power Systems
- 4 Estimating the System State and Network Model Errors
- Part II Data-Driven Anomaly Detection
- Part III Data Quality, Integrity, and Privacy
- Part IV Signal Processing
- Part V Large-Scale Optimization
- Part VI Game Theory
- Index
Summary
Identifying arbitrary topologies of power networks in real time is a computationally hard problem due to the number of hypotheses that grows exponentially with the network size. The potential of recovering the topology of a grid using only the publicly available data (e.g., market data) provides an effective approach to learning the topology of the grid based on the dynamically changing and up-to-date data. This enables learning and tracking the changes in the topology of the grid in a timely fashion. A major advantage of this method is that the labeled data used for training and inference is available in an arbitrarily large amount fast and at very little cost. As a result, the power of offline training is fully exploited to learn very complex classifiers for effective real-time topology identification.
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- Advanced Data Analytics for Power Systems , pp. 3 - 27Publisher: Cambridge University PressPrint publication year: 2021
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