Energy Consumption Forecasting for Smart Meters
Anshul Bansal, Susheel Kaushik Rompikuntla, Jaganadh Gopinadhan,, Amanpreet Kaur, Zahoor Ahamed Kazi

TL;DR
This paper explores machine learning techniques, particularly Boosted Decision Tree Regression, for forecasting energy consumption in smart meters, aiming to improve electricity demand prediction and personalized energy plans.
Contribution
It introduces a methodology for feature engineering in time series forecasting and applies it to smart meter data from Singapore and the UK.
Findings
Effective energy demand forecasting using Boosted Decision Tree Regression
Development of personalized electricity plan offers based on usage history
Validation of methodology on data from Singapore and UK
Abstract
Earth, water, air, food, shelter and energy are essential factors required for human being to survive on the planet. Among this energy plays a key role in our day to day living including giving lighting, cooling and heating of shelter, preparation of food. Due to this interdependency, energy, specifically electricity, production and distribution became a high tech industry. Unlike other industries, the key differentiator of electricity industry is the product itself. It can be produced but cannot be stored for future; production and consumption happen almost in near real-time. This particular peculiarity of the industry is the key driver for Machine Learning and Data Science based innovations in this industry. There is always a gap between the demand and supply in the electricity market across the globe. To fill the gap and improve the service efficiency through providing necessary…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Smart Grid Energy Management · Solar Radiation and Photovoltaics
