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Treffer: Artificial Intelligence-Guided Supervised Learning Models for Photocatalysis in Wastewater Treatment.

Title:
Artificial Intelligence-Guided Supervised Learning Models for Photocatalysis in Wastewater Treatment.
Source:
AI; Oct2025, Vol. 6 Issue 10, p258, 45p
Database:
Complementary Index

Weitere Informationen

Artificial intelligence (AI), when integrated with photocatalysis, has demonstrated high predictive accuracy in optimizing photocatalytic processes for wastewater treatment using a variety of catalysts such as TiO<subscript>2</subscript>, ZnO, CdS, Zr, WO<subscript>2</subscript>, and CeO<subscript>2</subscript>. The progress of research in this area is greatly enhanced by advancements in data science and AI, which enable rapid analysis of large datasets in materials chemistry. This article presents a comprehensive review and critical assessment of AI-based supervised learning models, including support vector machines (SVMs), artificial neural networks (ANNs), and tree-based algorithms. Their predictive capabilities have been evaluated using statistical metrics such as the coefficient of determination (R<sup>2</sup>), root mean square error (RMSE), and mean absolute error (MAE), with numerous investigations documenting R<sup>2</sup> values greater than 0.95 and RMSE values as low as 0.02 in forecasting pollutant degradation. To enhance model interpretability, Shapley Additive Explanations (SHAP) have been employed to prioritize the relative significance of input variables, illustrating, for example, that pH and light intensity frequently exert the most substantial influence on photocatalytic performance. These AI frameworks not only attain dependable predictions of degradation efficiency for dyes, pharmaceuticals, and heavy metals, but also contribute to economically viable optimization strategies and the identification of novel photocatalysts. Overall, this review provides evidence-based guidance for researchers and practitioners seeking to advance wastewater treatment technologies by integrating supervised machine learning with photocatalysis. [ABSTRACT FROM AUTHOR]

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