2023
DOI: 10.3390/en16135225
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A Holistic Approach to Power Systems Using Innovative Machine Learning and System Dynamics

Abstract: The digital revolution requires greater reliability from electric power systems. However, predicting the growth of electricity demand is challenging as there is still much uncertainty in terms of demographics, industry changes, and irregular consumption patterns. Machine learning has emerged as a powerful tool, particularly with the latest developments in deep learning. Such tools can predict electricity demand and, thus, contribute to better decision-making by energy managers. However, it is important to reco… Show more

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“…• The features of preliminary simulation modeling of power supply systems for industrial consumers, as well as the need to have a set of statistical data for the implementation of machine learning [48,49]; • The potential capabilities for classifying PQI deviations from standard values in the event of complex emergency disturbances (distortions of sinusoidal voltage waveforms) and the impact of noise and interference [50]; • The volumes of necessary calculations and their high speed required when implementing PQI control devices based on software and hardware platforms; • The amount of memory required to store simulation results and other information for making decisions on classification of PQI deviations from standard values [51]; • The organization of special digital processing of current and voltage signals [52];…”
mentioning
confidence: 99%
“…• The features of preliminary simulation modeling of power supply systems for industrial consumers, as well as the need to have a set of statistical data for the implementation of machine learning [48,49]; • The potential capabilities for classifying PQI deviations from standard values in the event of complex emergency disturbances (distortions of sinusoidal voltage waveforms) and the impact of noise and interference [50]; • The volumes of necessary calculations and their high speed required when implementing PQI control devices based on software and hardware platforms; • The amount of memory required to store simulation results and other information for making decisions on classification of PQI deviations from standard values [51]; • The organization of special digital processing of current and voltage signals [52];…”
mentioning
confidence: 99%