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Artificial Intelligence-Based, Wavelet-Aided Prediction of Long-Term Outdoor Performance of Perovskite Solar Cells.

Ioannis KouroudisKenedy Tabah TankoMasoud KarimipourAziz Ben AliD Kishore KumarVediappan SudhakarRitesh Kant GuptaIris Visoly-FisherMonica Lira-CantuAlessio Gagliardi
Published in: ACS energy letters (2024)
The commercial development of perovskite solar cells (PSCs) has been significantly delayed by the constraint of performing time-consuming degradation studies under real outdoor conditions. These are necessary steps to determine the device lifetime, an area where PSCs traditionally suffer. In this work, we demonstrate that the outdoor degradation behavior of PSCs can be predicted by employing accelerated indoor stability analyses. The prediction was possible using a swift and accurate pipeline of machine learning algorithms and mathematical decompositions. By training the algorithms with different indoor stability data sets, we can determine the most relevant stress factors, thereby shedding light on the outdoor degradation pathways. Our methodology is not specific to PSCs and can be extended to other PV technologies where degradation and its mechanisms are crucial elements of their widespread adoption.
Keyphrases
  • machine learning
  • air pollution
  • artificial intelligence
  • perovskite solar cells
  • particulate matter
  • big data
  • deep learning
  • electronic health record
  • high resolution
  • heat stress