District Heating Substation Behaviour Modelling for Annotating the Performance

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Abstract

In this ongoing study, we propose a higher order data mining approach for modelling district heating (DH) substations’ behaviour and linking operational behaviour representative profiles with different performance indicators. We initially create substation’s operational behaviour models by extracting weekly patterns and clustering them into groups of similar patterns. The built models are further analyzed and integrated into an overall substation model by applying consensus clustering. The different operational behaviour profiles represented by the exemplars of the consensus clustering model are then linked to performance indicators. The labelled behaviour profiles are deployed over the whole heating season to derive diverse insights about the substation’s performance. The results show that the proposed method can be used for modelling, analyzing and understanding the deviating and sub-optimal DH substation’s behaviours.

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APA

Abghari, S., Boeva, V., Brage, J., & Johansson, C. (2020). District Heating Substation Behaviour Modelling for Annotating the Performance. In Communications in Computer and Information Science (Vol. 1168 CCIS, pp. 3–11). Springer. https://doi.org/10.1007/978-3-030-43887-6_1

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