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Advanced Data Analytics and Machine Learning Applications in Smart Grids: A Comprehensive Review

Nitin Shejwal, Rahul Bibave, Dr. D. B. Pardeshi

Abstract


This paper consists a comprehensive review study on Advanced Data Analytics and Machine Learning Applications system technology used for systematic computations analyses of data generated in grids, helps in better interpretation. This also helps in making precise communication, identification of data trends which develops meaningful patterns which comes in. An Internet of Things (IoT) Base is mainly used in Smart Grid which provides better connectivity and constant communication. Use of (IoT) provides protection to the grid in the form of Cybersecurity. Machine Learning Algorithms helps in increasing efficiency of grid, energy wastage is reduced due to which reliability increases. This will reduce cost of energy which will be profitable for both (consumers and providers). As day-by-day advancements are been made in the field of grid connections networks, which increases reliability and efficiency which will result in guarantee of stable power supply.


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References


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