학술논문

Support Vector Classifiers with Different Kernel Functions to Detect Mismatching Conditions Affecting Photovoltaic Arrays
Document Type
Conference
Source
2023 International Conference on Clean Electrical Power (ICCEP) Clean Electrical Power (ICCEP), 2023 International Conference on. :422-429 Jun, 2023
Subject
Components, Circuits, Devices and Systems
Power, Energy and Industry Applications
Support vector machines
Training
Photovoltaic systems
Performance evaluation
Shape
Measurement uncertainty
Support vector machine classification
kernel function
photovoltaic mismatch detection
self–organizing map (SOM)
support vector machine (SVM)
Language
ISSN
2474-9664
Abstract
The current–voltage curve of a photovoltaic module affected by mismatching exhibits several local maximum power points, in such a way the rightmost one exhibit a different shape to the one without mismatch. A small set of points around the maximum power point can be enough to detect the presence of mismatching, in such a way it is not necessary to perform a full curve scan, avoiding power losses. In this paper, a support vector machine is used to classify each measurement into mismatched or non–mismatched. However, the performance of this type of models strongly depends on the kernel function used by the classifier: linear, polynomial, sigmoidal or Gaussian. All of these approaches are tested and compared in this work, not only with the synthetic set of simulated curves used to train the models, but also with real measurements from commercial solar modules under different levels of mismatching. From the results, it can be seen that the minimum errors are achieved when a cubic polynomial kernel is selected. Moreover, to improve these results, we propose a novel procedure to select the samples of the training set using a self–organizing map, that increases the weight of the non–frequent cases.