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Data-driven Topology and Parameter Identification in Distribution Systems with limited Measurements

Authors :
de Jongh, Steven
Mueller, Felicitas
Osterberg, Fabian
CaƱizares, Claudio A.
Leibfried, Thomas
Bhattacharya, Kankar
Publication Year :
2023

Abstract

This manuscript presents novel techniques for identifying the switch states, phase identification, and estimation of equipment parameters in multi-phase low voltage electrical grids, which is a major challenge in long-standing German low voltage grids that lack observability and are heavily impacted by modelling errors. The proposed methods are tailored for systems with a limited number of spatially distributed measuring devices, which measure voltage magnitudes at specific nodes and some line current magnitudes. The overall approach employs a problem decomposition strategy to divide the problem into smaller subproblems, which are addressed independently. The techniques for identifying switch states and system phases are based on heuristics and a binary optimization problem using correlation analysis of the measured time series. The estimation of equipment parameters is achieved through a data-driven regression approach and by an optimization problem, and the identification of cable types is solved using a Mixed-Integer Quadratic Programming solver. To validate the presented methods, a realistic grid is used and the presented techniques are evaluated for their resilience to data quality and time resolution, discussing the limitations of the proposed methods.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2308.09521
Document Type :
Working Paper