Khalid Abdulla, Julian de Hoog, et al.
IEEE Trans. Sustainable Energy
This paper describes the methods used by Team Cassandra, a joint effort between IBM Research Australia and the University of Melbourne, in the GEFCom2017 load forecasting competition. An important first phase in the forecasting effort involved a deep exploration of the underlying dataset. Several data visualisation techniques were applied to help us better understand the nature and size of gaps, outliers, the relationships between different entities in the dataset, and the relevance of custom date ranges. Improved, cleaned data were then used to train multiple probabilistic forecasting models. These included a number of standard and well-known approaches, as well as a neural-network based quantile forecast model that was developed specifically for this dataset. Finally, model selection and forecast combination were used to choose a custom forecasting model for every entity in the dataset.
Khalid Abdulla, Julian de Hoog, et al.
IEEE Trans. Sustainable Energy
Julian de Hoog, Ramachandra Rao Kolluri, et al.
e-Energy 2019
Valentin Muenzel, Iven Mareels, et al.
ISGT 2015
Ramachandra Rao Kolluri, Julian de Hoog, et al.
SmartGridComm 2017