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arxiv: 1708.03981 · v1 · pith:KW2YWQREnew · submitted 2017-08-14 · 💻 cs.SY · math.OC

PSSE Redux: Convex Relaxation, Decentralized, Robust, and Dynamic Approaches

classification 💻 cs.SY math.OC
keywords convexpssestateadvancesbounddecentralizedestimatormodels
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This chapter aspires to glean some of the recent advances in power system state estimation (PSSE), though our collection is not exhaustive by any means. The Cram{\'e}r-Rao bound, a lower bound on the (co)variance of any unbiased estimator, is first derived for the PSSE setup. After reviewing the classical Gauss-Newton iterations, contemporary PSSE solvers leveraging relaxations to convex programs and successive convex approximations are explored. A disciplined paradigm for distributed and decentralized schemes is subsequently exemplified under linear(ized) and exact grid models. Novel bad data processing models and fresh perspectives linking critical measurements to cyber-attacks on the state estimator are presented. Finally, spurred by advances in online convex optimization, model-free and model-based state trackers are reviewed.

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