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A Novel Cost-Effective Portable Electronic Nose for Indoor-/In-Car Air Quality Monitoring

机译:一种新颖的具有成本效益的便携式电子鼻,用于室内/车内空气质量监测

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With today's competitive and complex environment which results from rapid industrial development, air quality monitoring is becoming a necessity. Devising devices that provide reliable, cost-effective, and fast monitoring of indoor/in-car harmful chemical compounds is of paramount importance for governments as well as individuals. Sensors array systems or commonly called electronic nose (E-nose) systems have been used in various fields of consumer applications. Owing to their versatility and ease of use, these systems can be an adequate alternative for indoor/in-car air quality monitoring. In this study a novel self-made and cost-effective electronic nose aiming at quantifying five indoor/in-car harmful gases (formaldehyde, benzene, CO, NO2, toluene), has been devised and implemented at the college of electronic and communication engineering of Chongqing University, China. A hybrid genetic algorithm support machine vector regression (GA-LSSVMR) model is used for pattern recognition and concentrations estimation. With absolute relative errors of prediction (MAREP) less than 10%, these models outperform those based on hybrid genetic algorithm back-propagation neural network regression (GA-BPNNR). Furthermore, the best regression models were embedded into the system for real-time concentration estimation, our system's predictions mostly agree with those of specific gas detectors. The product will therefore be a good alternative for indoor/in-car air quality monitoring.
机译:随着当今工业快速发展所带来的竞争和复杂环境,空气质量监测已成为必需。对于政府和个人而言,设计出可提供可靠,具有成本效益的快速监视室内/车内有害化合物的设备至关重要。传感器阵列系统或通常称为电子鼻(E-nose)系统已用于各种消费应用领域。由于它们的多功能性和易用性,这些系统可以作为室内/车内空气质量监测的适当替代方案。在这项研究中,旨在量化五种室内/车内有害气体(甲醛,苯,CO,NO2,甲苯)的新型自制且经济高效的电子鼻已在电子和通信工程学院设计并实施中国重庆大学。混合遗传算法支持机器矢量回归(GA-LSSVMR)模型用于模式识别和浓度估计。在绝对绝对预测误差(MAREP)小于10%的情况下,这些模型优于基于混合遗传算法反向传播神经网络回归(GA-BPNNR)的模型。此外,将最佳回归模型嵌入到系统中以进行实时浓度估算,我们系统的预测结果与特定气体探测器的预测结果基本一致。因此,该产品将成为室内/车内空气质量监测的理想选择。

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