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.
翻译:2019年后期,ASHRAE在卡格勒平台上主办了大能源预测者III(GEPIII)机器学习竞赛,这是ASHRAE第三次能源预测竞争,是1990年代中期以来第一次,这是ASHRAE第三次能源预测竞争,在最新版本中,竞争者获得了从16个来源为1 448座建筑收集的2 380个能源米的2 000多万个培训点的培训数据,这一竞争的总体目标是为预测4 100多万个私人和公共测试数据点找到最准确的模型式解决方案。竞争有4 370名参与者,来自94个国家的3 614个团队,他们提交了39 403个预测。除了前5个赢得的工作流程外,竞争者还公开分享了415个可复制的在线机器学习工作流程范例(笔记本),包括另外40多个完整的解决方案。本文对竞争准备和数据集、竞争者及其讨论、机器学习工作流程和模型的生成、赢家及其提交、经验教训讨论、竞争产出和下一步步骤作了高级别概述。最受欢迎和准确的机器学习工作流程使用了主要梯度升级推进树模型的首个模型,例如灯GBSingsingd-BMingsingdrodestrual lapping lapping dest vicreging lapping vical vical dest dest dest vical vicaldd dest desd destingdal desdd dest des vical vial vicingingingingingingingingd destingingingingingingingingingingingingingingdd destings.