2017
DOI: 10.1051/e3sconf/20172200192
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An application of data mining in district heating substations for improving energy performance

Abstract: Abstract. Automatic meter reading system is capable of collecting and storing a huge number of district heating (DH) data. However, the data obtained are rarely fully utilized. Data mining is a promising technology to discover potential interesting knowledge from vast data. This paper applies data mining methods to analyse the massive data for improving energy performance of DH substation. The technical approach contains three steps: data selection, cluster analysis and association rule mining (ARM). Two-heati… Show more

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