基于支持向量机的室内人体呼吸系统有害气体识别

M. F. Adak, S. Ercan
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引用次数: 2

摘要

今天,确定生活空间的空气质量并采取适当的行动已成为广泛研究的课题之一。在这项研究中,使用一系列不同的气体传感器连续监测室内空气质量。该系统可以在不同的气体中检测出任何有害气体并发出警告。模型中使用了支持向量机,并通过使用一组对人体健康有害和无害的气体创建的样本气体数据进行训练。对训练模型的测试表明,所提出的模型能够以100%的成功率将气体分类为有害或无害。系统给出这样一个准确率的响应所需的时间非常短。系统的速度也是本研究的一个重要贡献。本研究表明,在测量室内空气质量时,支持向量机可以高精度、高灵敏度和高特异性地用于确定对人体健康有害或无害的气体。
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Identification of Indoor Harmful Gas to Human Respiratory System using Support Vector Machines
Today, it is among widely studied subjects to determine the air quality of living spaces and take appropriate actions. In this study, indoor air quality was continuously monitored using an array of various gas sensors. The system is modelled to detect any harmful gas among different gasses and give a warning. Support Vector Machines was used in the model, and it was trained by sample gas data that was created using a group of harmful and harmless gasses to human health. Tests on the trained model showed that the proposed model was able to classify gasses as harmful or harmless with a 100% success rate. The time it takes for the system to give a response with such an accuracy rate was significantly short. The speed of the system is also an important contribution of this study. This study showed that Support Vector Machines can be used with high accuracy-high sensitivity and high specificity- in determining gasses that are harmful or harmless to human health while measuring indoor air quality.
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