ABC2-type short-wave infrared photodetector materials discovered via high-throughput screening and machine learning
Abstract
Rapid discovery of short-wave infrared (SWIR) detection materials requires efficient strategies to identify candidates with suitable bandgaps, favorable carrier transport properties, and structural stability. Here, we propose a high-throughput screening (HTS) framework that integrates machine learning (ML) models with density functional theory (DFT) calculations to accelerate the prediction and validation of infrared-detection materials (see Figure 1). Using a curated dataset of 1327 I–X–VI chalcogenide compounds retrieved from the Materials Project database, we trained five regression models-random forest, gradient boosting, support vector regression, extreme gradient boosting, and decision tree-to predict electronic bandgaps with high accuracy and computational efficiency. The optimized extreme gradient boosting regression (XGBR) model delivers a test-set coefficient of determination (R2) of 0.945, a mean absolute error (MAE) of 0.150 eV, and a mean squared error (MSE) of 0.056 eV, with a 5-fold cross-validation (R2) of 0.927, verifying its robust prediction performance and generalization ability. This ML-guided screening highlights five promising chalcogenides: KGaSe2, KGaTe2, KInSe2, KInTe2, and CsInTe2. These candidates were further evaluated using first-principles DFT calculations to assess their band structures, density of states, and carrier effective masses. Among them, KGaSe2 exhibits a direct bandgap of ~0.8 eV, low effective mass, and excellent thermodynamic stability, making it a highly attractive candidate for SWIR detection. This work demonstrates the power of combining ML and DFT in accelerating the discovery of IR optoelectronic materials and provides a scalable, generalizable approach for next-generation photodetector design.
Keywords
High throughput screening, machine learning, DFT calculation, short-wave infrared detection, material prediction
Cite This Article
Guan X, Zhang Y, Han S, Xiong C, Yang Y, Chen C, Zhang F, Zhang Y, Gao H, Zhou F, Guan P, Lu P. ABC2-type short-wave infrared photodetector materials discovered via high-throughput screening and machine learning. J Mater Inf 2026;6:[Accept]. http://dx.doi.org/10.20517/jmi.2025.89







