Smart Seed Germination Prediction Box
DOI:
https://doi.org/10.15662/IJEETR.2026.0802151Keywords:
Seed Viability, Germination, SensorsAbstract
The Smart Seed Germination Prediction Box is a compact system designed to evaluate seed viability at an early stage, focusing on tomato and chilli seeds. It creates a controlled environment where seeds are placed on a moist medium to initiate germination. The system uses temperature, humidity, and soil moisture sensors to continuously monitor environmental conditions. During germination, viable seeds produce slight increases in temperature and humidity due to metabolic activity. These variations are detected and processed by a microcontroller to predict seed viability based on threshold values. The system is portable, cost-effective, and powered by a rechargeable battery, making it suitable for farmers. It reduces seed wastage, improves germination accuracy, and supports efficient agricultural practices.
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