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Journal article

Conditional monitoring in photovoltaic systems by semi-supervised machine learning

From

Department of Applied Mathematics and Computer Science, Technical University of Denmark1

Cognitive Systems, Department of Applied Mathematics and Computer Science, Technical University of Denmark2

Aalborg University3

Queensland University of Technology4

With the rapid increase in photovoltaic energy production, there is a need for smart condition monitoring systems ensuring maximum throughput. Complex methods such as drone inspections are costly and labor intensive; hence, condition monitoring by utilizing sensor data is attractive. In order to recognize meaningful patterns from the sensor data, there is a need for expressive machine learning models.

However, supervised machine learning, e.g., regression models, suffer from the cumbersome process of annotating data. By utilizing a recent state-of-the-art semi-supervised machine learning based on probabilistic modeling, we were able to perform condition monitoring in a photovoltaic system with high accuracy and only a small fraction of annotated data.

The modeling approach utilizes all the unsupervised data by jointly learning a low-dimensional feature representation and a classification model in an end-to-end fashion. By analysis of the feature representation, new internal condition monitoring states can be detected, proving a practical way of updating the model for better monitoring.

We present (i) an analysis that compares the proposed model to corresponding purely supervised approaches, (ii) a study on the semi-supervised capabilities of the model, and (iii) an experiment in which we simulated a real-life condition monitoring system.

Language: English
Publisher: MDPI AG
Year: 2020
Pages: 584
ISSN: 19961073
Types: Journal article
DOI: 10.3390/en13030584
ORCIDs: Winther, Ole , 0000-0001-8112-2779 and 0000-0001-9050-2423

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