A machine learning framework integrating seed traits and plasma parameters for predicting germination uplift in crops
Saklain Niam, Tashfiqur Rahman, Md. Amjad Patwary, Mukarram Hossain

TL;DR
This paper presents a machine learning framework that predicts seed germination uplift caused by cold plasma treatment, considering seed traits and plasma parameters, to optimize crop germination in precision agriculture.
Contribution
It introduces the first ML framework integrating seed traits and plasma parameters for predicting germination uplift across multiple crops, with embedded decision-support tools.
Findings
Extra Trees model achieved high prediction accuracy (R²=0.919).
Germination response shows hormetic behavior depending on voltage and exposure time.
Discharge power and exposure time are key factors influencing germination uplift.
Abstract
Cold plasma (CP) is an eco-friendly method to enhance seed germination, yet outcomes remain difficult to predict due to complex seed--plasma--environment interactions. This study introduces the first machine learning framework to forecast germination uplift in soybean, barley, sunflower, radish, and tomato under dielectric barrier discharge (DBD) plasma. Among the models tested (GB, XGB, ET, and hybrids), Extra Trees (ET) performed best (R\textsuperscript{2} = 0.919; RMSE = 3.21; MAE = 2.62), improving to R\textsuperscript{2} = 0.925 after feature reduction. Engineering analysis revealed a hormetic response: negligible effects at 7 kV or 200 s, maximum germination at 7--15 kV for 200--500 s, and reduced germination beyond 20 kV or prolonged exposures. Discharge power was also a dominant factor, with germination rate maximizing at 100 W with low exposure time. Species and…
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