TY - JOUR
T1 - Towards more reliable photovoltaic energy conversion systems
T2 - A weakly-supervised learning perspective on anomaly detection
AU - Chang, Zhonghao
AU - Jia, Kaiwen
AU - Han, Te
AU - Wei, Yi Ming
N1 - Publisher Copyright:
© 2024 Elsevier Ltd
PY - 2024/9/15
Y1 - 2024/9/15
N2 - With the increasing popularity of photovoltaic (PV) systems, both academia and industry have been paying growing attention to fault prediction and health management. Although deep learning has achieved remarkable results in this field, the high cost of labeled data acquisition has become a bottleneck for its application. While unsupervised methods can reduce this cost, they fail to effectively utilize the prior knowledge of anomalous samples. To address this issue, this paper innovatively proposes a weakly-supervised anomaly detection network based on feature map conversion and hypersphere transformation (FMC-HT). Firstly, PV electroluminescence (EL) images are input into the feature extraction layer based on feature map conversion, which can reduce redundancy, enhance information density, and achieve efficient feature extraction through feature map conversion. Subsequently, inverse squared norm loss is set to utilize the knowledge of unlabeled sample features and labeled anomalous sample features, and backpropagation is performed separately to train the hypersphere transformation network, ultimately achieving effective distinction between normal and anomalous samples. On real PV EL datasets, this model exhibits impressive performance and remains stable under different prior knowledge and anomaly rates. This study not only provides a new solution for anomaly detection in PV systems but also expands new directions for the application of deep learning in scenarios with limited labeled data.
AB - With the increasing popularity of photovoltaic (PV) systems, both academia and industry have been paying growing attention to fault prediction and health management. Although deep learning has achieved remarkable results in this field, the high cost of labeled data acquisition has become a bottleneck for its application. While unsupervised methods can reduce this cost, they fail to effectively utilize the prior knowledge of anomalous samples. To address this issue, this paper innovatively proposes a weakly-supervised anomaly detection network based on feature map conversion and hypersphere transformation (FMC-HT). Firstly, PV electroluminescence (EL) images are input into the feature extraction layer based on feature map conversion, which can reduce redundancy, enhance information density, and achieve efficient feature extraction through feature map conversion. Subsequently, inverse squared norm loss is set to utilize the knowledge of unlabeled sample features and labeled anomalous sample features, and backpropagation is performed separately to train the hypersphere transformation network, ultimately achieving effective distinction between normal and anomalous samples. On real PV EL datasets, this model exhibits impressive performance and remains stable under different prior knowledge and anomaly rates. This study not only provides a new solution for anomaly detection in PV systems but also expands new directions for the application of deep learning in scenarios with limited labeled data.
KW - Anomaly detection
KW - Electroluminescence image
KW - Feature map conversion
KW - Hypersphere transformation
KW - Weakly-supervised
UR - http://www.scopus.com/inward/record.url?scp=85199676651&partnerID=8YFLogxK
U2 - 10.1016/j.enconman.2024.118845
DO - 10.1016/j.enconman.2024.118845
M3 - Article
AN - SCOPUS:85199676651
SN - 0196-8904
VL - 316
JO - Energy Conversion and Management
JF - Energy Conversion and Management
M1 - 118845
ER -