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Data quality challenges in existing distribution network datasets

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arxiv 2308.00487 v1 pith:HL7HSY5O submitted 2023-08-01 eess.SY cs.SY

Data quality challenges in existing distribution network datasets

classification eess.SY cs.SY
keywords distributiondataexistingnetworkacademicidentificationnetworkssystem
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Existing digital distribution network models, like those in the databases of network utilities, are known to contain erroneous or untrustworthy information. This can compromise the effectiveness of physics-based engineering simulations and technologies, in particular those that are needed to deliver the energy transition. The large-scale rollout of smart meters presents new opportunities for data-driven system identification in distribution networks, enabling the improvement of existing data sets. Despite the increasing academic attention to system identification for distribution networks, researchers often make troublesome assumptions on what data is available and/or trustworthy. In this paper, we highlight some differences between academic efforts and first-hand industrial experiences, in order to steer the former towards more applicable research solutions.

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