Quantifying the Uncertainty of Sensitivity Coefficients Computed from Uncertain Compound Admittance Matrix and Noisy Grid Measurements

14 Dec 2023  ·  Rahul Gupta ·

The power-flow sensitivity coefficients (PFSCs) are widely used in the power system for expressing linearized dependencies between the controlled (i.e., the nodal voltages, lines currents) and control variables (e.g., active and reactive power injections, transformer tap positions, etc.). The PFSCs are often computed by knowing the compound admittance matrix of a given network and the grid states. However, when the branch parameters (or admittance matrix) are inaccurate or known with limited accuracy, the computed PFSCs can not be relied upon. Uncertain PFSCs, when used in control, can lead to infeasible control set-points. In this context, this paper presents a method to quantify the uncertainty of the PFSCs from uncertain branch parameters and noisy grid-state measurements that can be used for formulating safe control schemes. We derive an analytical expression using the error-propagation principle. The developed tool is numerically validated using Monte Carlo simulations.

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