Automated Statistical Methods for Fault Detection in District Heating Customer Installations
Título
Automated Statistical Methods for Fault Detection in District Heating Customer Installations
Autor
Sara Månsson, Kristin Davidsson, Patrick Lauenburg, Marcus Thern
Descripción
In order to develop more sustainable district heating systems, the district heating sector is currently trying to increase the energy efficiency of these systems. One way of doing so is to identify customer installations in the systems that have poor cooling performance. This study aimed to develop an algorithm that was able to detect the poorly performing installations automatically using meter readings from the installations. The algorithm was developed using statistical methods and was tested on a data set consisting of data from 3000 installations located in a district heating system in Sweden. As many as 1273 installations were identified by the algorithm as having poor cooling performance. This clearly shows that it is of major interest to the district heating companies to identify the installations with poor cooling performance rapidly and automatically, in order to rectify them as soon as possible.
Fecha
2018
Materia
automatic fault detection, district heating, substation performance
Identificador
DOI: 10.3390/en12010113
Fuente
Energies
Editor
MDPI AG
Cobertura
Technology
Idioma
EN
Colección
Citación
Sara Månsson, Kristin Davidsson, Patrick Lauenburg, Marcus Thern, “Automated Statistical Methods for Fault Detection in District Heating Customer Installations,” SOCICT Open, consulta 24 de abril de 2026, https://socictopen.socict.org/items/show/1031.
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