2014 IEEE 23rd International Symposium on Industrial Electronics (ISIE) 2014
DOI: 10.1109/isie.2014.6865041
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Improving energy efficiency of buildings using data mining technologies

Abstract: Building automation systems record operation data including physical values, system states and operation conditions. This data is stored, but commonly not automatically evaluated. This historic data is the key to efficient operation and to quick recognition of errors and inefficiencies, a potential that is not exploited today. Instead, today the evaluation during operation delivers only alarming in case of system failures. Analysis is commonly done by the facility manager, who uses his experience to interpret … Show more

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Cited by 10 publications
(3 citation statements)
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References 19 publications
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“…Clustering algorithms can also be used for finding various energy states in the building, e.g., k-means clustering can be used to detect the state (On/Off ) of machine, as data toggle between these two states Zucker et al 2015a, b). Another example of using clustering for finding system states can be found in Zucker et al (2014), where the X-Means clustering algorithm is used for automatically detecting the system states (On/Off ), in order to examine the operational data of adsorption.…”
Section: Other Methods For Analysis Of Energy Systems In Buildingsmentioning
confidence: 99%
“…Clustering algorithms can also be used for finding various energy states in the building, e.g., k-means clustering can be used to detect the state (On/Off ) of machine, as data toggle between these two states Zucker et al 2015a, b). Another example of using clustering for finding system states can be found in Zucker et al (2014), where the X-Means clustering algorithm is used for automatically detecting the system states (On/Off ), in order to examine the operational data of adsorption.…”
Section: Other Methods For Analysis Of Energy Systems In Buildingsmentioning
confidence: 99%
“…However, they but did not sufficiently verify whether the rules extracted and as a result the recommendations for changes in the system based on these are actually feasible. Zucker et al [17] successfully used the X-Means algorithm to automate the detection of system states in order to examine operation data of adsorption chillers. Yu and Chan [18] also focused on chillers as a main component of energy consumption and use data envelopment to improve the energy management of chillers.…”
Section: State Of the Artmentioning
confidence: 99%
“…For example, clustering can be used to detect the state of machine for ON/OFF cycle as data vary in these two different states. The [20] used the X-Means clustering algorithm for automatically detecting the system states (ON/OFF), to examine the operational data of adsorption. The ON/OFF state information can also be used for finding outliers in the data [21]- [23].…”
Section: State Of the Artmentioning
confidence: 99%