November 1, 2020
Journal Article

Sequence-to-sequence neural networks for short-term electrical load forecasting in commercial office buildings

Abstract

The U.S. power grid is transforming to become smarter, cleaner, and more effi- cient. This is leading to the addition of significant distributed variable renew- able generation. Due to the variable nature of renewable generation, the short- and long-term supply-demand imbalances are less predictable, and conventional approaches to mitigating the imbalance will not be efficient or cost-effective. To address this challenge, transactive control technologies have been proposed which balance energy generation and consumption with market activity and in- frastructural limitations. Transactive control requires the ability of individual end-use loads to express flexibility as a function of a transactive signal (e.g., price). Empirical gray- and black-box models have been widely used to express flexibility, and although these approaches are generally easy to construct and simple to use, they do not capture the non-linear behavior that some end-use loads represent . Machine learning approaches have been proposed to address this limitation. Although deep learning approaches for forecasting end-use loads have been explored, certain aspects of the application of deep models to load forecasting are not well understood. These aspects include how much training data is required, and how models should be structured and trained. To that end, this work explores how to approach applying deep recurrent neural networks to short-term electrical load forecasting with a case study of four commercial office buildings. We identify data requirements for training accurate models of whole building electricity use conditioned on outdoor temperature, provide insight into model hyperparameter sensitivity, and demonstrate how readily models can be generalized to unseen buildings.

Revised: November 3, 2020 | Published: November 1, 2020

Citation

Skomski E., J. Lee, W. Kim, V. Chandan, S. Katipamula, and B.J. Hutchinson. 2020. "Sequence-to-sequence neural networks for short-term electrical load forecasting in commercial office buildings." Energy and Buildings 226. PNNL-SA-150099. doi:10.1016/j.enbuild.2020.110350

Research topics