Analysis of the oil content of rapeseed using artificial neural networks based on near infrared spectral data

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Abstract

The oil content of rapeseed is a crucial property in practical applications. In this paper, instead of traditional analytical approaches, an artificial neural network (ANN) method was used to analyze the oil content of 29 rapeseed samples based on near infrared spectral data with different wavelengths. Results show that multilayer feed-forward neural networks with 8 nodes (MLFN-8) are the most suitable and reasonable mathematical model to use, with an RMS error of 0.59. This study indicates that using a nonlinear method is a quick and easy approach to analyze the rapeseed oil's content based on near infrared spectral data. © 2014 Dazuo Yang et al.

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Yang, D., Li, H., Cao, C., Chen, F., Zhou, Y., & Xiu, Z. (2014). Analysis of the oil content of rapeseed using artificial neural networks based on near infrared spectral data. Journal of Spectroscopy, 2014. https://doi.org/10.1155/2014/901310

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