E-nose based rapid prediction of early mouldy grain using probabilistic neural networks

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Abstract

In this paper, early mouldy grain rapid prediction method using probabilistic neural network (PNN) and electronic nose (e-nose) was studied. E-nose responses to rice, red bean, and oat samples with different qualities were measured and recorded. E-nose data was analyzed using principal component analysis (PCA), back propagation (BP) network, and PNN, respectively. Results indicated that PCA and BP network could not clearly discriminate grain samples with different mouldy status and showed poor predicting accuracy. PNN showed satisfying discriminating abilities to grain samples with an accuracy of 93.75%. E-nose combined with PNN is effective for early mouldy grain prediction.

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APA

Ying, X., Liu, W., Hui, G., & Fu, J. (2015). E-nose based rapid prediction of early mouldy grain using probabilistic neural networks. Bioengineered, 6(4), 222–226. https://doi.org/10.1080/21655979.2015.1022304

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