Enhanced Named Entity Recognition and Event Extraction for Power Grid Outage Scheduling Using a Universal Information Extraction Framework
Abstract
1. Introduction
2. Power Outage Plan Information Recognition Method
3. Power Outage Plan Information Recognition Based on the UIE Framework
3.1. Construction Approach of Power Outage Plan Information Recognition Model
- (1)
- Data Preparation
- (2)
- Model Training
- (3)
- Model Prediction
3.2. Entity and Event Annotation in Power Outage Plans
- (1)
- A large amount of historical data exists in the power grid system but lacks label information, making it difficult to apply machine learning algorithms directly.
- (2)
- Each sentence corresponds to a power grid operation and involves many types of operations, which require a deep understanding of power system knowledge. Currently, there is a lack of a related knowledge base.
- (3)
- The content is complex, and the types of operation objects are numerous, with object names composed of many different technical terms from the power system, making extraction difficult.
3.3. Power Outage Schedule Information Recognition Process
4. Results
4.1. Experimental Datasets
4.2. Evaluation Indicators
4.3. Effectiveness Analysis
4.4. Model Comparison
4.5. Model Application
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Model | Precision (%) | Recall (%) | F1 (%) |
---|---|---|---|
word2vec-BiLSTM-CRF | 94.22 | 94.36 | 94.29 |
BERT-BiLSTM-CRF | 94.83 | 94.41 | 94.83 |
BERT-CRF | 97.59 | 95.58 | 96.58 |
UIE | 97.44 | 98.07 | 97.66 |
Model | Precision (%) | Recall (%) | F1 (%) |
---|---|---|---|
word2vec-BiLSTM-CRF | 89.10 | 94.73 | 91.83 |
BERT-BiLSTM-CRF | 90.68 | 97.36 | 93.90 |
BERT-CRF | 91.13 | 97.36 | 94.14 |
UIE | 96.37 | 96.87 | 96.62 |
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Tang, W.; Zhang, Y.; Mao, X.; Shan, M.; Lv, K.; Sun, X.; Ding, Z. Enhanced Named Entity Recognition and Event Extraction for Power Grid Outage Scheduling Using a Universal Information Extraction Framework. Energies 2025, 18, 3617. https://doi.org/10.3390/en18143617
Tang W, Zhang Y, Mao X, Shan M, Lv K, Sun X, Ding Z. Enhanced Named Entity Recognition and Event Extraction for Power Grid Outage Scheduling Using a Universal Information Extraction Framework. Energies. 2025; 18(14):3617. https://doi.org/10.3390/en18143617
Chicago/Turabian StyleTang, Wei, Yue Zhang, Xun Mao, Mingqi Shan, Kai Lv, Xun Sun, and Zhenhuan Ding. 2025. "Enhanced Named Entity Recognition and Event Extraction for Power Grid Outage Scheduling Using a Universal Information Extraction Framework" Energies 18, no. 14: 3617. https://doi.org/10.3390/en18143617
APA StyleTang, W., Zhang, Y., Mao, X., Shan, M., Lv, K., Sun, X., & Ding, Z. (2025). Enhanced Named Entity Recognition and Event Extraction for Power Grid Outage Scheduling Using a Universal Information Extraction Framework. Energies, 18(14), 3617. https://doi.org/10.3390/en18143617