An artificial neural network modeling of solar drying of mint: Energy, exergy, and drying kinetics
Fevzi Gülçimen,
Hakan Karakaya,
Aydın Durmuş
Abstract:The energy and exergy analysis of thin-layer drying of mint leaves was performed in a forced convective solar dryer with new design solar collector. The effects of inlet airflow rates on the energy utilization ratio (EUR), energy generated by the solar air collector, exergy losses, exergy efficiency, and kinetics of drying were determined. The EUR varied between 7.45 to 87.1% and it increased when the flow rate decreased. The average exergy loss for the air with mass flow rates of 0.012, 0.026, and 0.033 kg/s … Show more
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