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Knowledge Mapping in Electricity Demand Forecasting: A Scientometric Insight

Dongchuan Yang, Ju’e Guo, Jie Li, Shouyang Wang, Shaolong Sun

2021Frontiers in Energy Research10 citationsDOIOpen Access PDF

Abstract

Electricity demand forecasting plays a fundamental role in the operation and planning procedures of power systems, and the publications related to electricity demand forecasting have attracted more and more attention in the past few years. To have a better understanding of the knowledge structure in the field of electricity demand forecasting, we applied scientometric methods to analyze the current state and the emerging trends based on the 831 publications from the Web of Science Core Collection during the past 20 years (1999–2018). Employing statistical description analysis, cooperative network analysis, keyword co-occurrence analysis, co-citation analysis, cluster analysis, and emerging trend analysis techniques, this study gives a comprehensive overview of the most critical countries, institutions, journals, authors, and publications in this field, cooperative networks relationships, research hotspots, and emerging trends. The results can provide meaningful guidance and helpful insights for researchers to enhance the understanding of crucial research, emerging trends, and new developments in electricity demand forecasting.

Topics & Concepts

Demand forecastingElectricityField (mathematics)Data scienceBibliometricsNetwork analysisComputer scienceOperations researchEngineeringData miningMathematicsPure mathematicsElectrical engineeringEnergy Load and Power ForecastingElectric Power System OptimizationIntegrated Energy Systems Optimization
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