Annual Industrial and Commercial Heat Load Profiles: Modeling Based on k-Means Clustering and Regression Analysis

An accurate method to predict annual heat load profiles is fundamental to many studies, e.g., preliminary design or potential studies on renewable heating systems. This study presents a method to predict annual heat load profiles with a daily resolution for industry and commerce, based on an analysi...

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Main Authors: Mateo Jesper, Felix Pag, Klaus Vajen, Ulrike Jordan
Format: Article
Language:English
Published: Elsevier 2021-06-01
Series:Energy Conversion and Management: X
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2590174521000106
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spelling doaj-7130f6acbdec4e31b646a8b5e28e64e62021-06-13T04:39:45ZengElsevierEnergy Conversion and Management: X2590-17452021-06-0110100085Annual Industrial and Commercial Heat Load Profiles: Modeling Based on k-Means Clustering and Regression AnalysisMateo Jesper0Felix Pag1Klaus Vajen2Ulrike Jordan3Corresponding author.; University of Kassel, Institute of Thermal Engineering, Department of Solar and Systems Engineering, Kurt-Wolters-Str. 3, 34125 Kassel, GermanyUniversity of Kassel, Institute of Thermal Engineering, Department of Solar and Systems Engineering, Kurt-Wolters-Str. 3, 34125 Kassel, GermanyUniversity of Kassel, Institute of Thermal Engineering, Department of Solar and Systems Engineering, Kurt-Wolters-Str. 3, 34125 Kassel, GermanyUniversity of Kassel, Institute of Thermal Engineering, Department of Solar and Systems Engineering, Kurt-Wolters-Str. 3, 34125 Kassel, GermanyAn accurate method to predict annual heat load profiles is fundamental to many studies, e.g., preliminary design or potential studies on renewable heating systems. This study presents a method to predict annual heat load profiles with a daily resolution for industry and commerce, based on an analysis of 797 natural gas load profiles (≥1.5 GWh/a). To derive heat load profiles, these natural gas load profiles are normalized and those with a potentially non-linear relationship between heat demand and natural gas consumption are excluded. The heat load profiles are clustered using the k-means algorithm according to their respective dependency on mean daily ambient temperature. The results reveal that the heat demand of most consumers is characterized by a clear dependency on mean daily ambient temperature, even in industry. The assignment of the load profiles to the clusters can be explained by the respective composition of each consumers’ heat sinks. In a regression analysis, individual regressions for each load profile are only slightly more accurate than the regressions for all load profiles assigned to one of the respective clusters. In terms of accuracy and user-friendliness, the developed cluster regression-based correlations for load profile prediction offer a significant improvement on previous methods.http://www.sciencedirect.com/science/article/pii/S2590174521000106Annual heat load profilesCorrelationsIndustryCommercek-Means clusteringStandard load profiles
collection DOAJ
language English
format Article
sources DOAJ
author Mateo Jesper
Felix Pag
Klaus Vajen
Ulrike Jordan
spellingShingle Mateo Jesper
Felix Pag
Klaus Vajen
Ulrike Jordan
Annual Industrial and Commercial Heat Load Profiles: Modeling Based on k-Means Clustering and Regression Analysis
Energy Conversion and Management: X
Annual heat load profiles
Correlations
Industry
Commerce
k-Means clustering
Standard load profiles
author_facet Mateo Jesper
Felix Pag
Klaus Vajen
Ulrike Jordan
author_sort Mateo Jesper
title Annual Industrial and Commercial Heat Load Profiles: Modeling Based on k-Means Clustering and Regression Analysis
title_short Annual Industrial and Commercial Heat Load Profiles: Modeling Based on k-Means Clustering and Regression Analysis
title_full Annual Industrial and Commercial Heat Load Profiles: Modeling Based on k-Means Clustering and Regression Analysis
title_fullStr Annual Industrial and Commercial Heat Load Profiles: Modeling Based on k-Means Clustering and Regression Analysis
title_full_unstemmed Annual Industrial and Commercial Heat Load Profiles: Modeling Based on k-Means Clustering and Regression Analysis
title_sort annual industrial and commercial heat load profiles: modeling based on k-means clustering and regression analysis
publisher Elsevier
series Energy Conversion and Management: X
issn 2590-1745
publishDate 2021-06-01
description An accurate method to predict annual heat load profiles is fundamental to many studies, e.g., preliminary design or potential studies on renewable heating systems. This study presents a method to predict annual heat load profiles with a daily resolution for industry and commerce, based on an analysis of 797 natural gas load profiles (≥1.5 GWh/a). To derive heat load profiles, these natural gas load profiles are normalized and those with a potentially non-linear relationship between heat demand and natural gas consumption are excluded. The heat load profiles are clustered using the k-means algorithm according to their respective dependency on mean daily ambient temperature. The results reveal that the heat demand of most consumers is characterized by a clear dependency on mean daily ambient temperature, even in industry. The assignment of the load profiles to the clusters can be explained by the respective composition of each consumers’ heat sinks. In a regression analysis, individual regressions for each load profile are only slightly more accurate than the regressions for all load profiles assigned to one of the respective clusters. In terms of accuracy and user-friendliness, the developed cluster regression-based correlations for load profile prediction offer a significant improvement on previous methods.
topic Annual heat load profiles
Correlations
Industry
Commerce
k-Means clustering
Standard load profiles
url http://www.sciencedirect.com/science/article/pii/S2590174521000106
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AT felixpag annualindustrialandcommercialheatloadprofilesmodelingbasedonkmeansclusteringandregressionanalysis
AT klausvajen annualindustrialandcommercialheatloadprofilesmodelingbasedonkmeansclusteringandregressionanalysis
AT ulrikejordan annualindustrialandcommercialheatloadprofilesmodelingbasedonkmeansclusteringandregressionanalysis
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