Exploring Deep Learning to Predict Coconut Milk Adulteration Using FT-NIR and Micro-NIR Spectroscopy

Agustami Sitorus, R. Lapcharoensuk
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Abstract

Accurately identifying adulterants in agriculture and food products is associated with preventing food safety and commercial fraud activities. However, a rapid, accurate, and robust prediction model for adulteration detection is hard to achieve in practice. Therefore, this study aimed to explore deep-learning algorithms as an approach to accurately identify the level of adulterated coconut milk using two types of NIR spectrophotometer, including benchtop FT-NIR and portable Micro-NIR. Coconut milk adulteration samples came from deliberate adulteration with corn flour and tapioca starch in the 1 to 50% range. A total of four types of deep-learning algorithm architecture that were self-modified to a one-dimensional framework were developed and tested to the NIR dataset, including simple CNN, S-AlexNET, ResNET, and GoogleNET. The results confirmed the feasibility of deep-learning algorithms for predicting the degree of coconut milk adulteration by corn flour and tapioca starch using NIR spectra with reliable performance (R2 of 0.886–0.999, RMSE of 0.370–6.108%, and Bias of −0.176–1.481). Furthermore, the ratio of percent deviation (RPD) of all algorithms with all types of NIR spectrophotometers indicates an excellent capability for quantitative predictions for any application (RPD > 8.1) except for case predicting tapioca starch, using FT-NIR by ResNET (RPD < 3.0). This study demonstrated the feasibility of using deep-learning algorithms and NIR spectral data as a rapid, accurate, robust, and non-destructive way to evaluate coconut milk adulterants. Last but not least, Micro-NIR is more promising than FT-NIR in predicting coconut milk adulteration from solid adulterants, and it is portable for in situ measurements in the future.
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利用傅立叶变换近红外光谱和显微近红外光谱探索预测椰奶掺假的深度学习方法
准确识别农产品和食品中的掺假物质与防止食品安全和商业欺诈活动息息相关。然而,快速、准确、稳健的掺假检测预测模型在实践中很难实现。因此,本研究旨在利用两种近红外分光光度计(包括台式傅立叶变换近红外光度计和便携式微近红外光度计)探索深度学习算法,以准确识别掺假椰奶的含量。椰奶掺假样品来自故意掺入的玉米粉和木薯淀粉,掺假量在 1%至 50%之间。针对近红外数据集,共开发并测试了四种自我修改为一维框架的深度学习算法架构,包括简单 CNN、S-AlexNET、ResNET 和 GoogleNET。结果证实,利用近红外光谱预测玉米粉和木薯淀粉椰奶掺假程度的深度学习算法是可行的,且性能可靠(R2 为 0.886-0.999,RMSE 为 0.370-6.108%,偏差为 -0.176-1.481)。此外,所有算法与所有类型近红外分光光度计的百分比偏差比(RPD)表明,除了使用 ResNET 的傅立叶变换近红外光谱预测木薯淀粉的情况(RPD < 3.0)外,所有应用的定量预测能力都非常出色(RPD > 8.1)。这项研究证明了使用深度学习算法和近红外光谱数据作为一种快速、准确、稳健和非破坏性方法来评估椰奶掺假物的可行性。最后但并非最不重要的一点是,与傅立叶变换近红外光谱相比,显微近红外光谱在从固体掺假物中预测椰奶掺假方面更有前途,而且在未来可用于现场测量。
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