Evaluating Energy Consumption Patterns in a Smart Grid with Data Analytics Models
Sushruta Mishra, Vandana Sharma, T. Sivani, Ahmed Alkhayyat, Tridiv Swain
Abstract
With the rapid pace of technological advancement, it is a well established fact that in today’s era, economical and industrial development go hand in hand with the growth in technology. Today, massive amounts of data are generated everyday and are only growing exponentially. The collected data, whether structured or unstructured, could prove to be very beneficial in terms of improving operational efficiency by analyzing and extracting valuable information to find patterns to optimize asset utilization and improve asset intelligence. Big data analytics can very well contribute to the evolution of the digital electrical power industry. The objective of this paper is to explore how smart grid technology can be enhanced by leveraging big data analytics. Different predictive models are used for the purpose. Among them, decision tree model outperformed others recording a training and tetsing accuracy of 94.4% and 92.7% respectively while noting a least execution latency of only 4.3 seconds.