Quantifying Distribution System State Estimation Accuracies Achieved By Adding Telemetry and Operational Forecasting

Muhammad Humayun,Christopher R. Clarke, Minqi Zhong,Jens Schoene,Bikash Poudel,Brenden Russell, Gary Sun, Josh Bui,Armando Salazar, Noah Badayos, Moein Lak

southeastcon(2019)

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摘要
Distribution System State Estimation (DSSE) is a fundamental application for the realization of other Distribution Management System (DMS) applications such as Volt-Var Optimization (VVO) and Fault Location Isolation and Service Restoration (FLISR). The small number of sensors typically available on distribution circuits and consequential scarcity of field data presents a major challenge for DSSE, and it is crucial that the few sensors available are placed at optimal locations in order to maximize DSSE accuracy. Electric distribution utilities lack a methodology that allows them to evaluate the DSSE performance based on sensor placement strategies and other operational measures such as forecasting improvement. This paper presents a Monte Carlo simulation based DSSE performance evaluation methodology that allows utilities to quantify the accuracy of DSSE results for simulated sensor placement scenarios. The methodology provides a basis for the selection of sensor placements that provide DSSE results that are sufficiently accurate to support DMS applications.
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关键词
Distribution management,distribution system,meter placement,distribution state estimation,smart grid,state estimation,telemetry sensors
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