Abstract Screen printing is a widely adopted technique in flexible printed electronics, but accurate control over deposition thickness and electrical resistance remains challenging due to complex interactions among process parameters. This study presents a two-stage neural network-based framework that predicts wet thickness, dry thickness, and electrical resistance from key printing parameters, including mesh count, ink viscosity, squeegee speed, and curing conditions. A Multi-Layer Perceptron (MLP) model, trained on experimentally collected data, achieves high predictive accuracy ( R ² > 0.98) with low mean squared error (MSE), effectively capturing nonlinear dependencies and curing-induced variations. Compared to traditional empirical models, the MLP approach eliminates trial-and-error iterations, reduces material waste, and enhances process reproducibility. The proposed framework enables real-time, data-driven optimization and offers a scalable solution for improving fabrication efficiency in printed electronics.
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Ajay Narayan Konda Ravindranath
Sunil Suresh Domala
Prashanth Kannan
npj Flexible Electronics
Indian Institute of Technology Bombay
IITB-Monash Research Academy
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Ravindranath et al. (Wed,) studied this question.
www.synapsesocial.com/papers/69d895796c1944d70ce066c9 — DOI: https://doi.org/10.1038/s41528-025-00471-y