Localización de faltas en enlaces de tipo VSC-HVDC usando redes neuronales
Abstract
High-voltage direct current (HVDC) using voltage source
converter (VSC) in transmission systems applications are
currently a competitive alternative to the traditional AC
transmission systems, especially for offshore wind power
applications. The increases of rated power and distance to the
shore have made VSC-HVDC transmission systems economically
more efficient than the conventional solution based on AC
lines. Locating a fault in a submarine DC line must be fast and
accurate because of the high cost of the submarine repairs as
well as the operation cost (not-supplied energy). This paper
proposed a fault location methodology based on artificial
neural networks (ANN) for VSC-HVDC transmission system.
The methodology only uses instantaneous values of electrical
quantities (voltage and current) at one of the VSC terminal
eliminating the problem of synchronisation. The proposed
methodology has been tested and demonstrated using a typical
VSC-HVDC test network, and simulation results show the
appropriate performance of the methodology.