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  4. Model identification and parameter tuning of dynamic loads in power distribution grid: Digital twin approach
 
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Model identification and parameter tuning of dynamic loads in power distribution grid: Digital twin approach

Publikationstyp
Conference Paper
Date Issued
2021-09
Sprache
English
Author(s)
Huxoll, Nils  
Aldebs, Mohannad  
Teimourzadeh Baboli, Payam  orcid-logo
Lehnhoff, Sebastian  
Babazadeh, Davood  orcid-logo
Institut
Elektrische Energietechnik E-6  
TORE-URI
http://hdl.handle.net/11420/10608
Citation
International Conference on Smart Energy Systems and Technologies (SEST 2021)
Contribution to Conference
International Conference on Smart Energy Systems and Technologies, SEST 2021  
Publisher DOI
10.1109/SEST50973.2021.9543095
Scopus ID
2-s2.0-85116632880
With the ongoing changes in power systems, not only on the generation side but also on the load side, new approaches are necessary to monitor and control power systems. Therefore, this paper investigates the Digital Twin technology for power system loads with a novel parameter identification method based on Bayesian Inference. A framework for load model Digital Twins is proposed based on an existing model, and a novel approach to load model identification is investigated and compared to existing methods. Even though Bayesian Inference relies on prior knowledge of the model, compared to other approaches, it returns a Probability Density Function for the whole model and each model parameter and fares very well with sparse data as well as an increased level of measurement noise. The results promise to use Bayesian Inference as the primary identification method for a Digital Twin as proposed in this paper. This Digital Twin framework can be utilized to overcome new challenges arising for power system control and monitoring.
Subjects
Bayesian Inference
Digital Twins
Load Modelling
Parameter Identification
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