Optimal PMU placement considering N-1contingencies constraints in electrical power systems

Authors

  • Diego Francisco Carrión Galarza Universidad Politécnica Salesiana
  • Jorge Wilson González Sánchez Universidad Pontificia Bolivariana

DOI:

https://doi.org/10.29019/enfoqueute.v10n1.437

Keywords:

Phasor measurement units, N-1 Contingency, Power system measurements, Optimal PMU location, Electrical power Systems

Abstract

The measurement of electrical parameters through phasor measurement units in the power systems is fundamental, since the obtained data is used to estimate the state of its operation. In the present investigation the problem arises for the optimal deployment of phasor measurement units regarding restrictions of observability, redundancy and N-1 contingencies. Unit minimization considers the output of a transmission line or the failure of a phasor measurement unit and guarantees 100 % observability of the power system; For the optimization mixed integer linear programming was used. The proposed algorithm was tested with the IEEE test models of 9, 14, 30 and 118 nodes.

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References

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Published

2019-03-29

How to Cite

Carrión Galarza, D. F., & González Sánchez, J. W. (2019). Optimal PMU placement considering N-1contingencies constraints in electrical power systems. Enfoque UTE, 10(1), pp. 1 - 12. https://doi.org/10.29019/enfoqueute.v10n1.437

Issue

Section

Automation and Control, Mechatronics, Electromechanics, Automotive