Litcius/Paper detail

Limitations of machine learning for building energy prediction: ASHRAE Great Energy Predictor III Kaggle competition error analysis

Clayton Miller, Bianca Picchetti, Chun Fu, Jovan Pantelic

2022Science and Technology for the Built Environment36 citationsDOIOpen Access PDF

Abstract

Research is needed to explore the limitations and potential for improvement of machine learning for building energy prediction. With this aim, the ASHRAE Great Energy Predictor III (GEPIII) Kaggle competition was launched in 2019. This effort was the largest building energy meter machine learning competition of its kind, with 4370 participants who submitted 39,403 predictions. The test dataset included two years of hourly whole building readings from 2380 meters in 1448 buildings at 16 locations. This paper analyzes the various sources and types of residual model error from an aggregation of the competition’s top 50 solutions. This analysis reveals the limitations for machine learning using the standard model inputs of historical meter, weather, and basic building metadata. The errors are classified according to timeframe, behavior, magnitude, and incidence in single buildings or across a campus. The results show machine learning models have errors within a range of acceptability (RMSLEscaled = < 0.1) on 79.1% of the test data. Lower magnitude (in-range) model errors (0.1 < RMSLEscaled = < 0.3) occur in 16.1% of the test data. These errors could be remedied using innovative training data from onsite and Web-based sources. Higher magnitude (out-of-range) errors (RMSLEscaled > 0.3) occur in 4.8% of the test data and are unlikely to be accurately predicted.

Topics & Concepts

ASHRAE 90.1Competition (biology)Energy (signal processing)Computer sciencePredictive modellingMachine learningReliability engineeringEngineeringStatisticsMeteorologyMathematicsEcologyBiologyPhysicsBuilding Energy and Comfort OptimizationEnergy Load and Power ForecastingWind and Air Flow Studies