Abstract:
Topology identification is a critical precursor to several distribution system analyses, such as state estimation, power flow analysis, and volt/VAR optimization. However...Show MoreMetadata
Abstract:
Topology identification is a critical precursor to several distribution system analyses, such as state estimation, power flow analysis, and volt/VAR optimization. However, the inability of utilities to capture the status of all switches due to monetary and resource constraints necessitates developing topology identification strategies. While several methods have been proposed to identify network topology, they have certain draw-backs. Some limitations include evaluating all possible topologies and large computational times, rendering them unsuitable for real-time application. Therefore, this paper proposes a graph neural network (GNN) approach for topology identification in distribution systems to overcome these limitations. The topology identification problem is formulated as a link-prediction problem on the graph representation of distribution systems. The status of each switch is predicted by edge scores computed for the link connecting the two nodes in the graph representation of the system. Bus measurements, such as voltage phasor and loads, are used as node-level features in the proposed GNN. The proposed approach has been evaluated on a three-phase unbalanced 559-node distribution system (modeled on the IEEE 37-node distribution system). The approach showed comparable performance with existing techniques while utilizing significantly lower computational time.
Date of Conference: 22-25 May 2023
Date Added to IEEE Xplore: 29 September 2023
ISBN Information:
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- IEEE Keywords
- Index Terms
- Neural Network ,
- Distribution System ,
- Graph Neural Networks ,
- Topology Design ,
- Distribution System Topology ,
- Computation Time ,
- Network Topology ,
- Identification Problem ,
- Representation Of System ,
- Unbalanced Distribution ,
- Large Computational Time ,
- Unbalanced System ,
- Edge Score ,
- Deep Learning ,
- Linear Discriminant Analysis ,
- Deep Learning Models ,
- Time Instants ,
- Graph Convolutional Network ,
- Degree Matrix ,
- Switching States ,
- Graph Convolutional Network Model ,
- Topological Configuration ,
- Set Of Branches ,
- Mixed-integer Nonlinear Programming ,
- Switching Network ,
- Mixed Integer Linear Programming ,
- State Estimation Problem ,
- Matrix Layer
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Distribution System ,
- Graph Neural Networks ,
- Topology Design ,
- Distribution System Topology ,
- Computation Time ,
- Network Topology ,
- Identification Problem ,
- Representation Of System ,
- Unbalanced Distribution ,
- Large Computational Time ,
- Unbalanced System ,
- Edge Score ,
- Deep Learning ,
- Linear Discriminant Analysis ,
- Deep Learning Models ,
- Time Instants ,
- Graph Convolutional Network ,
- Degree Matrix ,
- Switching States ,
- Graph Convolutional Network Model ,
- Topological Configuration ,
- Set Of Branches ,
- Mixed-integer Nonlinear Programming ,
- Switching Network ,
- Mixed Integer Linear Programming ,
- State Estimation Problem ,
- Matrix Layer
- Author Keywords