Digital Agriculture, Food and Wine Group, School of Agriculture and Food, Faculty of Veterinary and Agricultural Sciences, University of Melbourne, Parkville, VIC 3010, Australia.
Department of Agrotechnology, Faculty of Mechanical Engineering and Technology, University Malaysia Perlis, Arau 02600, Perlis, Malaysia.
Sensors (Basel). 2022 Nov 9;22(22):8655. doi: 10.3390/s22228655.
Rice fraud is one of the common threats to the rice industry. Conventional methods to detect rice adulteration are costly, time-consuming, and tedious. This study proposes the quantitative prediction of rice adulteration levels measured through the packaging using a handheld near-infrared (NIR) spectrometer and electronic nose (e-nose) sensors measuring directly on samples and paired with machine learning (ML) algorithms. For these purposes, the samples were prepared by mixing rice at different ratios from 0% to 100% with a 10% increment based on the rice's weight, consisting of (i) rice from different origins, (ii) premium with regular rice, (iii) aromatic with non-aromatic, and (iv) organic with non-organic rice. Multivariate data analysis was used to explore the sample distribution and its relationship with the e-nose sensors for parameter engineering before ML modeling. Artificial neural network (ANN) algorithms were used to predict the adulteration levels of the rice samples using the e-nose sensors and NIR absorbances readings as inputs. Results showed that both sensing devices could detect rice adulteration at different mixing ratios with high correlation coefficients through direct (e-nose; R = 0.94-0.98) and non-invasive measurement through the packaging (NIR; R = 0.95-0.98). The proposed method uses low-cost, rapid, and portable sensing devices coupled with ML that have shown to be reliable and accurate to increase the efficiency of rice fraud detection through the rice production chain.
大米掺假是大米行业面临的常见威胁之一。传统的检测大米掺假的方法成本高、耗时且繁琐。本研究提出了一种使用手持式近红外(NIR)光谱仪和电子鼻(e-nose)传感器通过包装直接测量样品,并结合机器学习(ML)算法来定量预测大米掺假水平的方法。为此,将不同产地的大米、优质米与普通米、香米与非香米、有机米与非有机米按 0%至 100%,10%递增的比例混合制备样品。采用多元数据分析方法,探索样品分布及其与 e-nose 传感器之间的关系,为 ML 建模前进行传感器参数工程设计。使用人工神经网络(ANN)算法,将 e-nose 传感器和 NIR 吸光度读数作为输入,预测大米样品的掺假水平。结果表明,两种传感设备都可以通过直接(e-nose;R = 0.94-0.98)和通过包装的非侵入式测量(NIR;R = 0.95-0.98)在不同混合比例下检测到大米掺假,并具有很高的相关性系数。该方法使用低成本、快速、便携的传感设备,并结合 ML,已被证明可以提高通过大米生产链检测大米掺假的效率,具有可靠性和准确性。