Image classification is a machine learning task that involves assigning a label or class to an input image. In the context of the Infrared Solar Modules dataset, image classification can be used to identify anomalies in solar panel imagery. To achieve this goal, A convolutional neural network (CNN) model trained from scratch and fine-tuned on the Infrared Solar Modules dataset from ai4earthscience. Model includes techniques such as dropout and image data generation to enhance its accuracy on this specific dataset. With these methods, Model can achieve high accuracy in identifying solar panel anomalies even with low-size images
The world’s energy systems are transforming rapidly and switching from fossil fuels to renewables to...
Photovoltaic solar energy is increasing the energy production due to the technological advances, to...
In the last decade, the photovoltaic market has grown impressively and, with it, the size of the sol...
Image classification is a machine learning task that involves assigning a label or class to an input...
Increasing deployment of photovoltaic (PV) plants requires methods for automaticdetection of faulty ...
Renewable energy sources will represent the only alternative to limit fossil fuel usage and pollutio...
Infrared thermography is the science of measuring the infrared energy emitted by an object, translat...
With the increasingly growing number of solar energy sites, the need for better and faster fault det...
Today, solar energy is taking an increasing share of the total energy mix. Unfortunately, many opera...
As the global energy demand continues to soar, solar energy has become an attractive and environment...
A new computational procedure is proposed for the automated detection-classification of defects on p...
Defects in solar cells affect the overall output of a photovoltaic (PV) module. When there is a defe...
Increasing deployment of photovoltaics (PV) plants demands for cheap and fast inspection. A viable t...
Thermography is a frequently used and appreciated method to detect underperforming PV modulesin PV p...
Photovoltaic (PV) module monitoringand upkeep are essential for a dependable and effective operation...
The world’s energy systems are transforming rapidly and switching from fossil fuels to renewables to...
Photovoltaic solar energy is increasing the energy production due to the technological advances, to...
In the last decade, the photovoltaic market has grown impressively and, with it, the size of the sol...
Image classification is a machine learning task that involves assigning a label or class to an input...
Increasing deployment of photovoltaic (PV) plants requires methods for automaticdetection of faulty ...
Renewable energy sources will represent the only alternative to limit fossil fuel usage and pollutio...
Infrared thermography is the science of measuring the infrared energy emitted by an object, translat...
With the increasingly growing number of solar energy sites, the need for better and faster fault det...
Today, solar energy is taking an increasing share of the total energy mix. Unfortunately, many opera...
As the global energy demand continues to soar, solar energy has become an attractive and environment...
A new computational procedure is proposed for the automated detection-classification of defects on p...
Defects in solar cells affect the overall output of a photovoltaic (PV) module. When there is a defe...
Increasing deployment of photovoltaics (PV) plants demands for cheap and fast inspection. A viable t...
Thermography is a frequently used and appreciated method to detect underperforming PV modulesin PV p...
Photovoltaic (PV) module monitoringand upkeep are essential for a dependable and effective operation...
The world’s energy systems are transforming rapidly and switching from fossil fuels to renewables to...
Photovoltaic solar energy is increasing the energy production due to the technological advances, to...
In the last decade, the photovoltaic market has grown impressively and, with it, the size of the sol...