SYLGOct 13, 2016

Generalized Online Transfer Learning for Climate Control in Residential Buildings

arXiv:1610.04042v19 citations
Originality Incremental advance
AI Analysis

This work addresses energy efficiency and comfort in residential climate control, but it is incremental as it builds on existing transfer learning methods.

The paper tackles temperature prediction in residential buildings by introducing a generalized online transfer learning algorithm (GOTL) that uses weighted predictors and Transfer Component Analysis to transfer knowledge from multiple source domains, resulting in non-negligible energy savings for given comfort levels.

This paper presents an online transfer learning framework for improving temperature predictions in residential buildings. In transfer learning, prediction models trained under a set of available data from a target domain (e.g., house with limited data) can be improved through the use of data generated from similar source domains (e.g., houses with rich data). Given also the need for prediction models that can be trained online (e.g., as part of a model-predictive-control implementation), this paper introduces the generalized online transfer learning algorithm (GOTL). It employs a weighted combination of the available predictors (i.e., the target and source predictors) and guarantees convergence to the best weighted predictor. Furthermore, the use of Transfer Component Analysis (TCA) allows for using more than a single source domains, since it may facilitate the fit of a single model on more than one source domains (houses). This allows GOTL to transfer knowledge from more than one source domains. We further validate our results through experiments in climate control for residential buildings and show that GOTL may lead to non-negligible energy savings for given comfort levels.

Foundations

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