At present, artificial neural networks are massively and
successfully used for fault diagnosis of grid-connected PV (GCPV) systems
thanks to their capabilities of learning and generalization. Solutions can be
found with almost all types of Artificial Neural Networks in fault detection
and diagnosis of PV systems. In fact, the use of ANN permits the development of
intelligent algorithms that can learn all the PV systems working status and
then be able to detect and identify possible malfunctions status and causes
independently of the ANNs type. In this study, the architecture of both ANNs is
multilayer perceptron (MLP), the transfer function used in this step is the
sigmoid function. The approach required the Bayesian Regulation algorithm for
ANN training. However, each type of ANN owns its proper characteristics from
point of view of its accuracy, efficiency, reliability as well as its response
of time in term of faults detection and diagnosis compared to others. In this
article, fault detection and diagnosis of a small GCPV array based on an
experimental setup using Bayesian Neural Network is presented. This type of
Artificial Neural Network can secure the identification and localization of the
greatest recurring cases in PV generators in particular short-circuit,
open-circuit and healthy cases. This study requires four input data such as irradiation,
cell temperature, current and voltage of maximum power point. Results show that
this study proved an excellent level of accuracy displaying (99.88%) in terms
of detection and localization of treated faults with a global response time
equal to 16 min22. Fault detection and diagnosis of PV systems is necessary not
only to increase system power system reliability but also to reduce the
operating costs of PV plans.
Author(s) Details
C. Kara Mostefa
Khelil
Electrical Engineering Department, Khemis Miliana University, Ain Defla,
Algeria and SET Laboratory, Electronics Department, Blida 1 University, BP 270
Blida, Algeria.
B. Amrouche
SET Laboratory, Electronics Department, Blida 1 University, BP 270 Blida,
Algeria and Renewable Energies Department, Blida 1 University, BP 270 Blida,
Algeria.
K. Kara
SET Laboratory, Electronics Department, Blida 1 University, BP 270 Blida,
Algeria.
Please see the book here:- https://doi.org/10.9734/bpi/caert/v6/1207
No comments:
Post a Comment