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Accident Factors Importance Ranking for Intelligent Energy Systems Based on a Novel Data Mining Strategy
by
Li, Rongbin
, Deng, Fangming
, Zhang, Jian
in
Algorithms
/ China
/ Classification
/ Clustering
/ Coal mining
/ Data mining
/ data mining strategy
/ Datasets
/ Decision making
/ Electric power
/ Electric power systems
/ Electricity distribution
/ FP-Growth algorithm
/ Machine learning
/ Mathematical optimization
/ Methods
/ Natural language
/ power security
/ Research methodology
/ Risk factors
/ Semantics
/ smart grid
/ Technology application
/ text analysis
2025
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Accident Factors Importance Ranking for Intelligent Energy Systems Based on a Novel Data Mining Strategy
by
Li, Rongbin
, Deng, Fangming
, Zhang, Jian
in
Algorithms
/ China
/ Classification
/ Clustering
/ Coal mining
/ Data mining
/ data mining strategy
/ Datasets
/ Decision making
/ Electric power
/ Electric power systems
/ Electricity distribution
/ FP-Growth algorithm
/ Machine learning
/ Mathematical optimization
/ Methods
/ Natural language
/ power security
/ Research methodology
/ Risk factors
/ Semantics
/ smart grid
/ Technology application
/ text analysis
2025
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Do you wish to request the book?
Accident Factors Importance Ranking for Intelligent Energy Systems Based on a Novel Data Mining Strategy
by
Li, Rongbin
, Deng, Fangming
, Zhang, Jian
in
Algorithms
/ China
/ Classification
/ Clustering
/ Coal mining
/ Data mining
/ data mining strategy
/ Datasets
/ Decision making
/ Electric power
/ Electric power systems
/ Electricity distribution
/ FP-Growth algorithm
/ Machine learning
/ Mathematical optimization
/ Methods
/ Natural language
/ power security
/ Research methodology
/ Risk factors
/ Semantics
/ smart grid
/ Technology application
/ text analysis
2025
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Accident Factors Importance Ranking for Intelligent Energy Systems Based on a Novel Data Mining Strategy
Journal Article
Accident Factors Importance Ranking for Intelligent Energy Systems Based on a Novel Data Mining Strategy
2025
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Overview
As global energy networks expand and smart grid technology evolves rapidly, the volume of historical power accident data has increased dramatically, containing valuable risk information that is essential for building efficient public safety early warning systems. This paper introduces an innovative text analysis method, the Sparse Coefficient Optimized Weighted FP-Growth Algorithm (SCO-WFP), which is designed to optimize the processing of power accident-related textual data and more effectively uncover hidden patterns behind accidents. The method enhances the evaluation of sparse risk factors by preprocessing, clustering analysis, and calculating piecewise weights of power accident data. The SCO-WFP algorithm is then applied to extract frequent itemsets, revealing deep associations between accident severity and risk factors. Experimental results show that, compared to traditional methods, the SCO-WFP algorithm significantly improves both accuracy and execution speed. The findings demonstrate the method’s effectiveness in mining frequent itemsets from text semantics, facilitating a deeper understanding of the relationship between risk factors and accident severity.
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