SPLGApr 1, 2020

Boosting algorithms in energy research: A systematic review

arXiv:2004.07049v271 citations
AI Analysis

This is an incremental review paper for researchers in energy and machine learning, highlighting underutilized methods without introducing new techniques.

The paper reviews boosting algorithms in energy research, summarizing recent advances, applications in renewable energy, and implementation strategies, and argues that boosting is underexploited with potential for significant improvements in explanation and predictive performance.

Machine learning algorithms have been extensively exploited in energy research, due to their flexibility, automation and ability to handle big data. Among the most prominent machine learning algorithms are the boosting ones, which are known to be "garnering wisdom from a council of fools", thereby transforming weak learners to strong learners. Boosting algorithms are characterized by both high flexibility and high interpretability. The latter property is the result of recent developments by the statistical community. In this work, we provide understanding on the properties of boosting algorithms to facilitate a better exploitation of their strengths in energy research. In this respect, (a) we summarize recent advances on boosting algorithms, (b) we review relevant applications in energy research with those focusing on renewable energy (in particular those focusing on wind energy and solar energy) consisting a significant portion of the total ones, and (c) we describe how boosting algorithms are implemented and how their use is related to their properties. We show that boosting has been underexploited so far, while great advances in the energy field are possible both in terms of explanation and interpretation, and in terms of predictive performance.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes