基于电子鼻数据集的梯度树增强稻米品质检测

Irvan Aulia, D. Wijaya, W. Hidayat
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引用次数: 4

摘要

大米是大多数印尼人的主食。然而,随着时间的推移,大米的质量会下降,以至于大米变得过时,不能食用。目前,区分过期大米和未过期大米的传统方法仍然是用人类的嗅觉来感知大米。然而,这种方法被认为效果较差,因为人类的嗅觉会因身体健康的变化而改变。因此,我们建立了一种利用电子鼻数据集(e-nose)检测大米保质期的方法。我们提出了一种利用电子鼻来评估过期和未过期大米质量的机器学习模型。数据集是通过记录25周的传感器信息和存储7天的1955个传感器信息摘要从电子鼻传感器获得的。我们的研究使用梯度树增强机器学习模型进行分类,准确率为96%,误差为4%。
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Rice Quality Detection Using Gradient Tree Boosting Based On Electronic Nose Dataset
Rice is the staple food consumed by most Indonesians. However, the quality of the rice can decline over time so that the rice becomes obsolete and cannot be consumed. For now, the traditional method to distinguish between expired rice and non-expired rice is still performed by perceiving the rice with the human's sense of smell. However, this method is considered less effective because the human sense of smell can change due to changes in body health. Therefore, we established a method for detecting the shelf life of rice by using the electronic nose dataset (e-nose). We propose a machine learning model that utilizes the e-nose to assess the quality of expired and non-expired rice. The dataset was obtained from the e-nose sensor by recording sensor information for 25 weeks and storing 1955 summaries of sensor information for seven days. Our study used the gradient tree boosting machine learning model for classification with an accuracy of 96% and an error of 4%.
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