Fault Detection and Diagnosis for Brine to Water Heat Pump Systems

The overall objective of this thesis is to develop methods for fault detection and diagnosis for ground source heat pumps that can be used by servicemen to assist them to accurately detect and diagnose faults during the operation of the heat pump. The aim of this thesis is focused to develop two fau...

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Main Author: Abuasbeh, Mohammad
Format: Others
Language:English
Published: KTH, Tillämpad termodynamik och kylteknik 2016
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-183595
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spelling ndltd-UPSALLA1-oai-DiVA.org-kth-1835952016-03-22T05:21:44ZFault Detection and Diagnosis for Brine to Water Heat Pump SystemsengAbuasbeh, MohammadKTH, Tillämpad termodynamik och kylteknik2016Fault detection and diagnosisheat pumpsresidualsbrine to watermodel basedPrinciple Component AnalysisThe overall objective of this thesis is to develop methods for fault detection and diagnosis for ground source heat pumps that can be used by servicemen to assist them to accurately detect and diagnose faults during the operation of the heat pump. The aim of this thesis is focused to develop two fault detection and diagnosis methods, sensitivity ratio and data-driven using principle component analysis. For the sensitivity ratio method model, two semi-empirical models for heat pump unit were built to simulate fault free and faulty conditions in the heat pump. Both models have been cross-validated by fault free experimental data. The fault free model is used as a reference. Then, fault trend analysis is performed in order to select a pair of uniquely sensitive and insensitive parameters to calculate the sensitivity ratio for each fault. When a sensitivity ratio value for a certain fault drops below a predefined value, that fault is diagnosed and an alarm message with that fault appears. The simulated faults data is used to test the model and the model successfully detected and diagnosed the faults types that were tested for different operation conditions. In the second method, principle component analysis is used to drive linear correlations of the original variables and calculate the principle components to reduce the dimensionality of the system. Then simple clustering technique is used for operation conditions classification and fault detection and diagnosis process. Each fault is represented by four clusters connected with three lines where each cluster represents different fault intensity level. The fault detection is performed by measuring the shortest orthogonal distance between the test point and the lines connecting the faults’ clusters. Simulated fault free and faulty data are used to train the model. Then, a new set of simulated faults data is used to test the model and the model successfully detected and diagnosed all faults type and intensity level of the tested faults for different operation conditions. Both models used simple seven temperature measurements, two pressure measurements (from which the condensation and evaporation temperatures are calculated) and the electrical power, as an input to the fault detection and diagnosis model. This is to reduce the cost and make it more convenient to implement. Finally, for each models, a user friendly graphical user interface is built to facilitate the model operation by the serviceman. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-183595application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic Fault detection and diagnosis
heat pumps
residuals
brine to water
model based
Principle Component Analysis
spellingShingle Fault detection and diagnosis
heat pumps
residuals
brine to water
model based
Principle Component Analysis
Abuasbeh, Mohammad
Fault Detection and Diagnosis for Brine to Water Heat Pump Systems
description The overall objective of this thesis is to develop methods for fault detection and diagnosis for ground source heat pumps that can be used by servicemen to assist them to accurately detect and diagnose faults during the operation of the heat pump. The aim of this thesis is focused to develop two fault detection and diagnosis methods, sensitivity ratio and data-driven using principle component analysis. For the sensitivity ratio method model, two semi-empirical models for heat pump unit were built to simulate fault free and faulty conditions in the heat pump. Both models have been cross-validated by fault free experimental data. The fault free model is used as a reference. Then, fault trend analysis is performed in order to select a pair of uniquely sensitive and insensitive parameters to calculate the sensitivity ratio for each fault. When a sensitivity ratio value for a certain fault drops below a predefined value, that fault is diagnosed and an alarm message with that fault appears. The simulated faults data is used to test the model and the model successfully detected and diagnosed the faults types that were tested for different operation conditions. In the second method, principle component analysis is used to drive linear correlations of the original variables and calculate the principle components to reduce the dimensionality of the system. Then simple clustering technique is used for operation conditions classification and fault detection and diagnosis process. Each fault is represented by four clusters connected with three lines where each cluster represents different fault intensity level. The fault detection is performed by measuring the shortest orthogonal distance between the test point and the lines connecting the faults’ clusters. Simulated fault free and faulty data are used to train the model. Then, a new set of simulated faults data is used to test the model and the model successfully detected and diagnosed all faults type and intensity level of the tested faults for different operation conditions. Both models used simple seven temperature measurements, two pressure measurements (from which the condensation and evaporation temperatures are calculated) and the electrical power, as an input to the fault detection and diagnosis model. This is to reduce the cost and make it more convenient to implement. Finally, for each models, a user friendly graphical user interface is built to facilitate the model operation by the serviceman.
author Abuasbeh, Mohammad
author_facet Abuasbeh, Mohammad
author_sort Abuasbeh, Mohammad
title Fault Detection and Diagnosis for Brine to Water Heat Pump Systems
title_short Fault Detection and Diagnosis for Brine to Water Heat Pump Systems
title_full Fault Detection and Diagnosis for Brine to Water Heat Pump Systems
title_fullStr Fault Detection and Diagnosis for Brine to Water Heat Pump Systems
title_full_unstemmed Fault Detection and Diagnosis for Brine to Water Heat Pump Systems
title_sort fault detection and diagnosis for brine to water heat pump systems
publisher KTH, Tillämpad termodynamik och kylteknik
publishDate 2016
url http://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-183595
work_keys_str_mv AT abuasbehmohammad faultdetectionanddiagnosisforbrinetowaterheatpumpsystems
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