06
MARS
MARS
Automated Photonic-Pulses Processing for Thin Solar Energy Devices (Δ3P): Leveraging Machine Learning and Data Analysis for Enhanced Efficiency and Stability
Séminaire
Académique ou spécialiste
06.03.2025 11:00 - 12:00
+ Mixte
Perovskite solar cells (PSCs) represent a breakthrough in next-generation photovoltaics, offering exceptional efficiency, flexibility, and cost-effective manufacturing. Their ability to transform solar energy systems positions them as a cornerstone of sustainable energy technologies. Despite these advantages, challenges remain in optimizing PSC performance and stability, particularly in tandem configurations combining perovskite and silicon layers to maximize energy conversion across the solar spectrum. Achieving consistent film quality and precise control over crystallization processes is crucial to enhancing their efficiency and long-term reliability.
To address these challenges, Ornella Vaccarelli and colleagues introduced an automated platform that integrates machine learning (ML) workflows for real-time process refinement and performance enhancement. This research leverages computational analysis and advanced data processing techniques to study the efficiency and stability of PSCs. High-resolution microscopic images obtained during the fabrication process are processed using state-of-the-art segmentation techniques, including the Segment Anything Model (SAM) and Detectron2, to isolate and identify key morphological features such as crystal structures and nuclei. A ResNet152 convolutional neural network (CNN) further classifies segmented regions, enabling detailed morphological characterization. The resulting masks are studied within quantitative metrics, such as crystal size distribution, aspect ratios, spatial density, Shannon entropy, and Computable Information Density (CID). These properties are extracted to evaluate film homogeneity and structural properties, which would permit real-time adjustments to synthesis parameters, optimizing crystallization processes and improving device performance. The resulting automated platform integrates image analysis, machine learning workflows, and data-driven process control, aiming to deliver tandem devices with efficiencies exceeding 30%. By combining cutting-edge AI techniques with real-time optimization, our approach addresses PSC key scalability challenges, paving the way for ultra-efficient, sustainable photovoltaic technologies.
To address these challenges, Ornella Vaccarelli and colleagues introduced an automated platform that integrates machine learning (ML) workflows for real-time process refinement and performance enhancement. This research leverages computational analysis and advanced data processing techniques to study the efficiency and stability of PSCs. High-resolution microscopic images obtained during the fabrication process are processed using state-of-the-art segmentation techniques, including the Segment Anything Model (SAM) and Detectron2, to isolate and identify key morphological features such as crystal structures and nuclei. A ResNet152 convolutional neural network (CNN) further classifies segmented regions, enabling detailed morphological characterization. The resulting masks are studied within quantitative metrics, such as crystal size distribution, aspect ratios, spatial density, Shannon entropy, and Computable Information Density (CID). These properties are extracted to evaluate film homogeneity and structural properties, which would permit real-time adjustments to synthesis parameters, optimizing crystallization processes and improving device performance. The resulting automated platform integrates image analysis, machine learning workflows, and data-driven process control, aiming to deliver tandem devices with efficiencies exceeding 30%. By combining cutting-edge AI techniques with real-time optimization, our approach addresses PSC key scalability challenges, paving the way for ultra-efficient, sustainable photovoltaic technologies.
Quand?
06.03.2025 11:00 - 12:00
En ligne
Meeting ID: 860 2124 5073 Passcode: 234055
Site web
Organisation
Adolphe Merkle Institute
Jessica Clough
jessica.clough@unifr.ch
Chemin des Verdiers 4
1700 Fribourg
+41 26 300 9254
Jessica Clough
jessica.clough@unifr.ch
Chemin des Verdiers 4
1700 Fribourg
+41 26 300 9254
Intervenants
Dr. Ornella Vaccarelli, iCoSys, School of Engineering and Architecture (HEIA) - Fribourg
Pièces jointes