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Conference Paper

Model-Driven Approach to Smart Grid Stability Prediction in Neo4j

Dec 08, 2021

DOI:

Published in: International Conference on Science, Technology and Management in Energy (eNergetics)

Nenad Petrovic / Issam Al-Azzoni Abdullah Alqahtani

Stability is of utmost importance when it comes to smart grid infrastructures. Dramatic parameter variations and fluctuations can lead to wrong decisions, which could lead to fatal consequences. In this paper, we propose a model-driven methodology for highly automated machine learning approach to smart grid stability prediction. Stability prediction is treated as binary classification problem and implemented relying on Neo4j graph database's Graph Data Science Library (GDS). The proposed framework is evaluated on open, publicly available dataset. According to the achieved results, the predictive model shows better performance in terms of accuracy and execution time compared to other solutions based on deep learning. On the other side, the adoption of model-driven approach is beneficial when it comes to reusability and convenient experimentation compared to manual, non-automated design.

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