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Predicting future hourly residential electrical consumption: A machine learning case study
Highlights ► We apply seven machine learning methods to predicting residential electrical consumption. ► Establishes performance for predicting hourly residential consumption. ► Work shows that Least Squares Support Vector Machine is the best predictor.
Abstract Traditional whole building energy modeling suffers from several factors, including the large number of inputs required for building characterization, simplifying assumptions, and the gap between the as-designed and as-built building. Prior work has attempted to mitigate these problems by using sensor-based machine learning approaches to statistically model energy consumption, applying the techniques primarily to commercial building data, which makes use of hourly consumption data. It is unclear, however, whether these techniques can translate to residential buildings, since the energy usage patterns may vary significantly. Until now, most residential modeling research only had access to monthly electrical consumption data. In this article, we report on the evaluation of seven different machine learning algorithms applied to a new residential data set that contains sensor measurements collected every 15min, with the objective of determining which techniques are most successful for predicting next hour residential building consumption. We first validate each learner's correctness on the ASHRAE Great Energy Prediction Shootout, confirming existing conclusions that Neural Network-based methods perform best on commercial buildings. However, our additional results show that these methods perform poorly on residential data, and that Least Squares Support Vector Machines perform best – a technique not previously applied to this domain.
Predicting future hourly residential electrical consumption: A machine learning case study
Highlights ► We apply seven machine learning methods to predicting residential electrical consumption. ► Establishes performance for predicting hourly residential consumption. ► Work shows that Least Squares Support Vector Machine is the best predictor.
Abstract Traditional whole building energy modeling suffers from several factors, including the large number of inputs required for building characterization, simplifying assumptions, and the gap between the as-designed and as-built building. Prior work has attempted to mitigate these problems by using sensor-based machine learning approaches to statistically model energy consumption, applying the techniques primarily to commercial building data, which makes use of hourly consumption data. It is unclear, however, whether these techniques can translate to residential buildings, since the energy usage patterns may vary significantly. Until now, most residential modeling research only had access to monthly electrical consumption data. In this article, we report on the evaluation of seven different machine learning algorithms applied to a new residential data set that contains sensor measurements collected every 15min, with the objective of determining which techniques are most successful for predicting next hour residential building consumption. We first validate each learner's correctness on the ASHRAE Great Energy Prediction Shootout, confirming existing conclusions that Neural Network-based methods perform best on commercial buildings. However, our additional results show that these methods perform poorly on residential data, and that Least Squares Support Vector Machines perform best – a technique not previously applied to this domain.
Predicting future hourly residential electrical consumption: A machine learning case study
Edwards, Richard E. (author) / New, Joshua (author) / Parker, Lynne E. (author)
Energy and Buildings ; 49 ; 591-603
2012-03-06
13 pages
Article (Journal)
Electronic Resource
English
Predicting future hourly residential electrical consumption: A machine learning case study
Online Contents | 2012
|A Review of the Main Machine Learning Methods for Predicting Residential Energy Consumption
BASE | 2019
|A Review of the Main Machine Learning Methods for Predicting Residential Energy Consumption
BASE | 2019
|Hourly monitoring of single‐family residential areas
Wiley | 1995
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