SPARSE ERROR CORRECTION FOR POWER NETWORK PARAMETERS
Dilan S Senaratne (Oregon State University); Jinsub Kim (Oregon State)
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Transmission line parameters play a key role when accurately
modeling the power network. However, several factors such
as environmental conditions, errors in manufacturing data,
and uninformed network changes can introduce errors to the
line parameter information at the control center. In this paper, we leverage the sparse nature of parameter errors and
propose an iterative greedy algorithm for nonlinear sparse error correction of parameter errors based on SCADA measurements. A benchmark approach of sparse error correction requires long computation time due to the slow convergence of
the iterative reweighted least squares algorithm, with the issue
getting aggravated as the power network scales. In the experiments using the IEEE 57-bus and IEEE 118-bus test cases, we
demonstrate that our approach outperforms the benchmarks
in terms of error correction performance and computation latency.