Low-to-medium voltage distribution networks are experiencing rising levels of
distributed energy resources, including renewable generation, along with
improved sensing, communication, and automation infrastructure. As such, state
estimation methods for distribution systems are becoming increasingly relevant
as a means to enable better control strategies that can both leverage the
benefits and mitigate the risks associated with high penetration of variable
and uncertain distributed generation resources. The primary challenges of this
problem include modeling complexities (nonlinear, non-convex power-flow
equations), limited availability of sensor measurements, and high penetration
of uncertain renewable generation. This paper formulates the distribution
system state estimation as a nonlinear, weighted, least squares problem, based
on sensor measurements as well as forecast data (both load and generation). We
investigate the sensitivity of state estimator accuracy to (load/generation)
forecast uncertainties, sensor accuracy, and sensor coverage levels.Comment: accepted for presentation at the IEEE 2019 American Control
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