Aznan Aimi, Gonzalez Viejo Claudia, Pang Alexis, Fuentes Sigfredo
Digital Agriculture, Food and Wine Group (DAFW), School of Agriculture and Food, Faculty of Veterinary and Agricultural Sciences, University of Melbourne, Melbourne, VIC 3010, Australia.
Faculty of Chemical Engineering Technology, University Malaysia Perlis, Arau 02600, Perlis, Malaysia.
Foods. 2022 Apr 19;11(9):1181. doi: 10.3390/foods11091181.
Aroma and other physicochemical parameters are important attributes influencing consumer perception and acceptance of rice. However, current methods using multiple instruments and laboratory analysis make these assessments costly and time-consuming. Therefore, this study aimed to assess rice quality traits of 17 commercial rice types using a low-cost electronic nose and portable near-infrared spectrometer coupled with machine learning (ML). Specifically, artificial neural networks (ANN) were used to classify the type of rice and predict rice quality traits (aromas, color, texture, and pH of cooked rice) as targets. The ML models developed showed that the chemometrics obtained from both sensor technologies successfully classified the rice (Model 1: 98.7%; Model 2: 98.6%) and predicted the peak area of aromas obtained by gas chromatography-mass spectroscopy found in raw (Model 3: R = 0.95; Model 6: R = 0.95) and cooked rice (Model 4: R = 0.98; Model 7: R = 0.96). Furthermore, a high R = 0.98 was obtained for Model 5 to estimate the color, texture, and pH of cooked rice. The proposed method is rapid, low-cost, reliable, and may help the rice industry increase high-quality rice production and accelerate the adoption of digital technologies and artificial intelligence to support the rice value chain.
香气和其他理化参数是影响消费者对大米的感知和接受度的重要属性。然而,目前使用多种仪器和实验室分析的方法使得这些评估成本高昂且耗时。因此,本研究旨在使用低成本电子鼻和便携式近红外光谱仪结合机器学习(ML)来评估17种商业大米品种的品质特性。具体而言,使用人工神经网络(ANN)对大米类型进行分类,并将大米品质特性(香气、颜色、质地和米饭的pH值)作为目标进行预测。所开发的ML模型表明,从两种传感器技术获得的化学计量学成功地对大米进行了分类(模型1:98.7%;模型2:98.6%),并预测了生米(模型3:R = 0.95;模型6:R = 0.95)和米饭(模型4:R = 0.98;模型7:R = 0.96)中通过气相色谱 - 质谱法获得的香气峰面积。此外,模型5在估计米饭的颜色、质地和pH值方面获得了较高的R = 0.98。所提出的方法快速、低成本、可靠,可能有助于大米行业提高优质大米产量,并加速数字技术和人工智能的应用以支持大米价值链。