The ASHRAE Great Energy Predictor III competition: Overview and results

07/14/2020
by   Clayton Miller, et al.
0

In late 2019, ASHRAE hosted the Great Energy Predictor III (GEPIII) machine learning competition on the Kaggle platform. This launch marked the third energy prediction competition from ASHRAE and the first since the mid-1990s. In this updated version, the competitors were provided with over 20 million points of training data from 2,380 energy meters collected for 1,448 buildings from 16 sources. This competition's overall objective was to find the most accurate modeling solutions for the prediction of over 41 million private and public test data points. The competition had 4,370 participants, split across 3,614 teams from 94 countries who submitted 39,403 predictions. In addition to the top five winning workflows, the competitors publicly shared 415 reproducible online machine learning workflow examples (notebooks), including over 40 additional, full solutions. This paper gives a high-level overview of the competition preparation and dataset, competitors and their discussions, machine learning workflows and models generated, winners and their submissions, discussion of lessons learned, and competition outputs and next steps. The most popular and accurate machine learning workflows used large ensembles of mostly gradient boosting tree models, such as LightGBM. Similar to the first predictor competition, preprocessing of the data sets emerged as a key differentiator.

READ FULL TEXT

page 1

page 5

page 6

page 7

page 10

page 15

page 17

page 18

research
02/07/2022

Gradient boosting machines and careful pre-processing work best: ASHRAE Great Energy Predictor III lessons learned

The ASHRAE Great Energy Predictor III (GEPIII) competition was held in l...
research
06/03/2020

The Building Data Genome Project 2: Hourly energy meter data from the ASHRAE Great Energy Predictor III competition

This paper describes an open data set of 3,053 energy meters from 1,636 ...
research
06/03/2020

The Building Data Genome Project 2: Energy meter data from the ASHRAE Great Energy Predictor III competition

This paper describes an open data set of 3,053 energy meters from 1,636 ...
research
03/13/2022

ALDI++: Automatic and parameter-less discord and outlier detection for building energy load profiles

Data-driven building energy prediction is an integral part of the proces...
research
03/09/2018

Competitive Machine Learning: Best Theoretical Prediction vs Optimization

Machine learning is often used in competitive scenarios: Participants le...
research
11/11/2021

Improvements to short-term weather prediction with recurrent-convolutional networks

The Weather4cast 2021 competition gave the participants a task of predic...
research
06/25/2021

Limitations of machine learning for building energy prediction

Machine learning for building energy prediction has exploded in populari...

Please sign up or login with your details

Forgot password? Click here to reset