Short Term Load Forecasting using Smart Meter Data

Accurate short term electricity load forecasting is crucial for efficient operations of the power sector. Predicting loads at a fine granularity (e.g. households) is made challenging due to a large number of (known or unknown) factors affecting power consumption. At larger scales (e.g. clusters of consumers), since the inherent stochasticity and fluctuations are averaged out, the problem becomes substantially easier. In this work we propose a method for short term (e.g. hourly) load forecasting at fine scale (households). Our method use hourly consumption data for a certain period (e.g. previous year) and predict hourly loads for the next period (e.g. next 6 months). We do not use any non-calendar information, hence our technique is applicable to any locality and dataset. We evaluate effectiveness of our technique on three benchmark datasets from Sweden, Australia, and Ireland.