Department of Computer Engineering, Cankaya University, Ankara 06790, Turkey.
Department of Software Engineering, Cankaya University, Ankara 06790, Turkey.
Sensors (Basel). 2020 Jun 3;20(11):3173. doi: 10.3390/s20113173.
For the agricultural food production sector, the control and assessment of food quality is an essential issue, which has a direct impact on both human health and the economic value of the product. One of the fundamental properties from which the quality of the food can be derived is the smell of the product. A significant trend in this context is machine olfaction or the automated simulation of the sense of smell using a so-called electronic nose or e-nose. Hereby, many sensors are used to detect compounds, which define the odors and herewith the quality of the product. The proper assessment of the food quality is based on the correct functioning of the adopted sensors. Unfortunately, sensors may fail to provide the correct measures due to, for example, physical aging or environmental factors. To tolerate this problem, various approaches have been applied, often focusing on correcting the input data from the failed sensor. In this study, we adopt an alternative approach and propose machine learning-based failure tolerance that ignores failed sensors. To tolerate for the failed sensor and to keep the overall prediction accuracy acceptable, a Single Plurality Voting System (SPVS) classification approach is used. Hereby, single classifiers are trained by each feature and based on the outcome of these classifiers, and a composed classifier is built. To build our SPVS-based technique, K-Nearest Neighbor (kNN), Decision Tree, and Linear Discriminant Analysis (LDA) classifiers are applied as the base classifiers. Our proposed approach has a clear advantage over traditional machine learning models since it can tolerate the sensor failure or other types of failures by ignoring and thus enhance the assessment of food quality. To illustrate our approach, we use the case study of beef cut quality assessment. The experiments showed promising results for beef cut quality prediction in particular, and food quality assessment in general.
对于农业食品生产部门来说,控制和评估食品质量是一个至关重要的问题,这直接影响到人类健康和产品的经济价值。食品质量可以从中推导出来的基本属性之一是产品的气味。在这方面的一个重要趋势是机器嗅觉,即用所谓的电子鼻或电子鼻自动模拟嗅觉。在这种情况下,使用许多传感器来检测定义气味和产品质量的化合物。正确评估食品质量的基础是所采用的传感器的正确功能。不幸的是,由于物理老化或环境因素等原因,传感器可能无法提供正确的测量值。为了解决这个问题,已经应用了各种方法,通常侧重于纠正来自故障传感器的输入数据。在这项研究中,我们采用了一种替代方法,提出了基于机器学习的故障容忍性,忽略了故障传感器。为了容忍故障传感器并保持整体预测精度可接受,使用了基于单多数投票系统(SPVS)的分类方法。在此,通过每个特征训练单个分类器,并基于这些分类器的结果构建组合分类器。为了构建基于 SPVS 的技术,我们应用了 K-最近邻(kNN)、决策树和线性判别分析(LDA)分类器作为基础分类器。与传统的机器学习模型相比,我们提出的方法具有明显的优势,因为它可以通过忽略传感器故障或其他类型的故障来容忍,从而提高食品质量评估的能力。为了说明我们的方法,我们使用牛肉切割质量评估的案例研究。实验结果表明,该方法特别适用于牛肉切割质量预测,一般适用于食品质量评估。