Residual Analysis of Predictive Modelling Data for Automated Fault Detection in Building’s Heating, Ventilation and Air Conditioning Systems

Faults in Heating, Ventilation and Air Conditioning (HVAC) systems affect the energy efficiency of buildings. To date, there rarely exist methods to detect and diagnose faults during the operation of buildings that are both cost-effective and sufficient accurate. This study presents a method that us...

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Main Authors: Michael Parzinger, Lucia Hanfstaengl, Ferdinand Sigg, Uli Spindler, Ulrich Wellisch, Markus Wirnsberger
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/12/17/6758
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spelling doaj-416f35784a5845388f3f29116a6a26c22020-11-25T03:38:39ZengMDPI AGSustainability2071-10502020-08-01126758675810.3390/su12176758Residual Analysis of Predictive Modelling Data for Automated Fault Detection in Building’s Heating, Ventilation and Air Conditioning SystemsMichael Parzinger0Lucia Hanfstaengl1Ferdinand Sigg2Uli Spindler3Ulrich Wellisch4Markus Wirnsberger5Development and Technology Transfer, Center for Research, Rosenheim Technical University of Applied Sciences, Hochschulstraße 1, 83024 Rosenheim, GermanyDevelopment and Technology Transfer, Center for Research, Rosenheim Technical University of Applied Sciences, Hochschulstraße 1, 83024 Rosenheim, GermanyDevelopment and Technology Transfer, Center for Research, Rosenheim Technical University of Applied Sciences, Hochschulstraße 1, 83024 Rosenheim, GermanyDevelopment and Technology Transfer, Center for Research, Rosenheim Technical University of Applied Sciences, Hochschulstraße 1, 83024 Rosenheim, GermanyDevelopment and Technology Transfer, Center for Research, Rosenheim Technical University of Applied Sciences, Hochschulstraße 1, 83024 Rosenheim, GermanyDevelopment and Technology Transfer, Center for Research, Rosenheim Technical University of Applied Sciences, Hochschulstraße 1, 83024 Rosenheim, GermanyFaults in Heating, Ventilation and Air Conditioning (HVAC) systems affect the energy efficiency of buildings. To date, there rarely exist methods to detect and diagnose faults during the operation of buildings that are both cost-effective and sufficient accurate. This study presents a method that uses artificial intelligence to automate the detection of faults in HVAC systems. The automated fault detection is based on a residual analysis of the predicted total heating power and the actual total heating power using an algorithm that aims to find an optimal decision rule for the determination of faults. The data for this study was provided by a detailed simulation of a residential case study house. A machine learning model and an ARX model predict the building operation. The model for fault detection is trained on a fault-free data set and then tested with a faulty operation. The algorithm for an optimal decision rule uses various statistical tests of residual properties such as the Sign Test, the Turning Point Test, the Box-Pierce Test and the Bartels-Rank Test. The results show that it is possible to predict faults for both known faults and unknown faults. The challenge is to find the optimal algorithm to determine the best decision rules. In the outlook of this study, further methods are presented that aim to solve this challenge.https://www.mdpi.com/2071-1050/12/17/6758residual analysisfault detectionHVAC system faultsmodel predictionrandom forestARX modeling
collection DOAJ
language English
format Article
sources DOAJ
author Michael Parzinger
Lucia Hanfstaengl
Ferdinand Sigg
Uli Spindler
Ulrich Wellisch
Markus Wirnsberger
spellingShingle Michael Parzinger
Lucia Hanfstaengl
Ferdinand Sigg
Uli Spindler
Ulrich Wellisch
Markus Wirnsberger
Residual Analysis of Predictive Modelling Data for Automated Fault Detection in Building’s Heating, Ventilation and Air Conditioning Systems
Sustainability
residual analysis
fault detection
HVAC system faults
model prediction
random forest
ARX modeling
author_facet Michael Parzinger
Lucia Hanfstaengl
Ferdinand Sigg
Uli Spindler
Ulrich Wellisch
Markus Wirnsberger
author_sort Michael Parzinger
title Residual Analysis of Predictive Modelling Data for Automated Fault Detection in Building’s Heating, Ventilation and Air Conditioning Systems
title_short Residual Analysis of Predictive Modelling Data for Automated Fault Detection in Building’s Heating, Ventilation and Air Conditioning Systems
title_full Residual Analysis of Predictive Modelling Data for Automated Fault Detection in Building’s Heating, Ventilation and Air Conditioning Systems
title_fullStr Residual Analysis of Predictive Modelling Data for Automated Fault Detection in Building’s Heating, Ventilation and Air Conditioning Systems
title_full_unstemmed Residual Analysis of Predictive Modelling Data for Automated Fault Detection in Building’s Heating, Ventilation and Air Conditioning Systems
title_sort residual analysis of predictive modelling data for automated fault detection in building’s heating, ventilation and air conditioning systems
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2020-08-01
description Faults in Heating, Ventilation and Air Conditioning (HVAC) systems affect the energy efficiency of buildings. To date, there rarely exist methods to detect and diagnose faults during the operation of buildings that are both cost-effective and sufficient accurate. This study presents a method that uses artificial intelligence to automate the detection of faults in HVAC systems. The automated fault detection is based on a residual analysis of the predicted total heating power and the actual total heating power using an algorithm that aims to find an optimal decision rule for the determination of faults. The data for this study was provided by a detailed simulation of a residential case study house. A machine learning model and an ARX model predict the building operation. The model for fault detection is trained on a fault-free data set and then tested with a faulty operation. The algorithm for an optimal decision rule uses various statistical tests of residual properties such as the Sign Test, the Turning Point Test, the Box-Pierce Test and the Bartels-Rank Test. The results show that it is possible to predict faults for both known faults and unknown faults. The challenge is to find the optimal algorithm to determine the best decision rules. In the outlook of this study, further methods are presented that aim to solve this challenge.
topic residual analysis
fault detection
HVAC system faults
model prediction
random forest
ARX modeling
url https://www.mdpi.com/2071-1050/12/17/6758
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