Oktrizagita Jassinda Kusbandhini, D. Wijaya, W. Hidayat
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引用次数: 3
摘要
大米是印度尼西亚的一种重要商品,在该国既相对丰富又容易获得。然而,大米超过一定的保质期后,就不再适合消费和销售。传统上,大米样品是定期从仓库中取出来监测其质量的,在提取过程中严重依赖于人类的判断。为了实现自动化,我们提出了一种基于电子鼻数据集的机器学习支持向量回归(SVR)预测大米保质期的方法。因此,本研究的贡献在于利用SVR预测基于电子鼻信号的大米保质期。本研究采用带有两个参数C和Gamma的SVR模型,在其预处理阶段采用最小-最大数据归一化方法。在预测精度方面,使用$R^{2}$ dan RMSE评估结果。我们的测试表明,所提出的方法被认为是准确的,$R^{2}$值为0.9974,RMSE值为0.3597。
Rice Shelf-Life Prediction Using Support Vector Regression Algorithm Based on Electronic Nose Dataset
Rice is an important commodity for Indonesian that is both relatively abundant and accessible in the country. However, after rice passing a certain shelf-life time limit, it is no longer fit for consumption nor sale. Conventionally, sample rice is taken from storage periodically to monitor its quality, relying heavily on human judgment in its process. To automate this, we proposed the method to predict rice shelf life to use a machine learning Support Vector Regression (SVR) based on the electronic nose (e-nose) dataset. Hence, the contribution of this study is using SVR to predict rice shelf-life based on the electronic nose signals. This study used the SVR model with two parameters, namely C and Gamma, and utilized the min-max data normalization method in its preprocessing stage. In terms of prediction accuracy, the results are evaluated using $R^{2}$ dan RMSE. Our test shows that the proposed method is considered accurate with an $R^{2}$ value of 0.9974 and an RMSE value of 0.3597.