Abstract
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<p>The behavior of a district heatin … <p>The behavior of a district heating (DH) substation has a social and operational context. The social context comes from its general usage pattern and personal requirements of building inhabitants. The operational context comes from its configuration settings which considers both the weather conditions and social requirements. The parameter estimating thermal energy demand response with respect to change in outdoor temperature conditions along with the strength of the relationship between these variables are two important measures of operational efficiency of a substation. In practice, they can be estimated using a regression model where the slope parameter measures the average response and R2 measures the strength of the relationship. These measures are also important from a monitoring perspective. However, factors related to the social context of a building and the presence of unexplained outliers can make the estimation of these measures a challenging task. Social context of a data point in DH, in many cases appears as an outlier. Data efficiency is also required if these measures are to be estimated in a timely manner. Under these circumstances, methods that can isolate and reduce the effect of outliers in a principled and data efficient manner are required. We therefore propose to use Huber regression, a robust method based on M-estimator type loss function. This method can not only identify possible outliers present in the data of each substation but also reduce their effect on the estimated slope parameter. Moreover, substations that are comparable according to certain criteria, for instance, those with almost identical energy demand levels, should have relatively similar slopes. This provides an opportunity to observe deviating substations under the assumption that comparable substations should show homogeneity in their behavior. Furthermore, the slope parameter can be compared across time to observe if the dynamics of a substation has changed. Our analysis shows that Huber regression in combination with ordinary least squares can provide reliable estimates on the operational efficiency of DH substations. © 2018 The Authors. Published by Elsevier Ltd.</p>hors. Published by Elsevier Ltd.</p>
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Author
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Shiraz Farouq +
, Stefan Byttner +
, Henrik Gadd +
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Conference
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16th International Symposium on District Heating and Cooling, DHC 2018, 9-12 September, 2018
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DOI
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http://dx.doi.org/10.1016/j.egypro.2018.08.188 +
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Diva
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http://hh.diva-portal.org/smash/record.jsf?searchId=1&pid=diva2:1276514
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EndPage
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245 +
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HostPublication
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Energy Procedia +
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PublicationType
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Conference Paper +
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Publisher
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Elsevier +
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Series
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Energy Procedia ; 149 +
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StartPage
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236 +
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Title
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Towards understanding district heating substation behavior using robust first difference regression +
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Volume
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149 +
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Year
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2018 +
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Has queryThis property is a special property in this wiki.
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Publications:Towards understanding district heating substation behavior using robust first difference regression +
, Publications:Towards understanding district heating substation behavior using robust first difference regression +
, Publications:Towards understanding district heating substation behavior using robust first difference regression +
, Publications:Towards understanding district heating substation behavior using robust first difference regression +
, Publications:Towards understanding district heating substation behavior using robust first difference regression +
, Publications:Towards understanding district heating substation behavior using robust first difference regression +
, Publications:Towards understanding district heating substation behavior using robust first difference regression +
, Publications:Towards understanding district heating substation behavior using robust first difference regression +
, Publications:Towards understanding district heating substation behavior using robust first difference regression +
, Publications:Towards understanding district heating substation behavior using robust first difference regression +
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Categories |
Publication +
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Modification dateThis property is a special property in this wiki.
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9 January 2019 21:23:09 +
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