4.6 Article

Power Factor Prediction in Three Phase Electrical Power Systems Using Machine Learning

期刊

SUSTAINABILITY
卷 14, 期 15, 页码 -

出版社

MDPI
DOI: 10.3390/su14159113

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power factor; prediction; three phase systems; machine learning

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The power factor in electrical power systems has significant impact on energy consumption cost and power quality. This study proposes a machine learning-based technique for predicting power factor variations in medium voltage installations, which can reduce monitoring costs and facilitate decision-making, maintenance cost reduction, and disturbance reduction.
The power factor in electrical power systems is of paramount importance because of the influence on the economic cost of energy consumption as well as the power quality requested by the grid. Low power factor affects both electrical consumers and suppliers due to an increase in current requirements for the installation, bigger sizing of industrial equipment, bigger conductor wiring that can sustain higher currents, and additional voltage regulators for the equipment. In this work, we present a technique for predicting power factor variations in three phase electrical power systems, using machine learning algorithms. The proposed model was developed and tested in medium voltage installations and was found to be fairly accurate thus representing a cost reduced approach for power quality monitoring. The model can be modified to predict the variation of the power factor, taking into account removable energy sources connected to the grid. This new way of analyzing the behavior of the power factor through prediction has the potential to facilitate decision-making by customers, reduce maintenance costs, reduce the probability of injecting disturbances into the network, and above all affords a reliable model of behavior without the need for real-time monitoring, which represents a potential cost reduction for the consumer.

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