Bijay Neupane, Laurynas Siksnys, et al.
e-Energy 2022
In power systems state estimation, critical sets are groups of measurements whose normalized residuals are (nearly) equal, so that corresponding bad data are not identifiable. A novel methodology for the identification of critical sets and for the estimation of the bad data is introduced, based on a noisy projection of the residuals correlation matrix on a subspace. The proposed solution takes into account model and data uncertainty and is able to detect cases of nearly-critical sets, missed by traditional methods, including higher-order critical k-tuples. A convenient interpretation of the estimated bad data as the total error within the sets is also proposed.
Bijay Neupane, Laurynas Siksnys, et al.
e-Energy 2022
John V. Ringwood, Giorgio Bacelli, et al.
IFAC 2014
Francesco Fusco, Michael Wurst, et al.
ICPR 2012
Francesco Fusco, John V. Ringwood
IEEE Trans. Sustainable Energy