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Instrumental Odour Monitoring System Classification Performance Optimization by Analysis of Different Pattern-Recognition and Feature Extraction Techniques

机译:仪器气味监测系统分类性能优化通过分析不同的模式识别和特征提取技术

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摘要

Instrumental odour monitoring systems (IOMS) are intelligent electronic sensing tools for which the primary application is the generation of odour metrics that are indicators of odour as perceived by human observers. The quality of the odour sensor signal, the mathematical treatment of the acquired data, and the validation of the correlation of the odour metric are key topics to control in order to ensure a robust and reliable measurement. The research presents and discusses the use of different pattern recognition and feature extraction techniques in the elaboration and effectiveness of the odour classification monitoring model (OCMM). The effect of the rise, intermediate, and peak period from the original response curve, in collaboration with Linear Discriminant Analysis (LDA) and Artificial Neural Networks (ANN) as a pattern recognition algorithm, were investigated. Laboratory analyses were performed with real odour samples collected in a complex industrial plant, using an advanced smart IOMS. The results demonstrate the influence of the choice of method on the quality of the OCMM produced. The peak period in combination with the Artificial Neural Network (ANN) highlighted the best combination on the basis of high classification rates. The paper provides information to develop a solution to optimize the performance of IOMS.
机译:仪器气味监测系统(IOM)是智能电子传感工具,主要应用是人类观察者所感知的气味指标的产生。气味传感器信号的质量,所获取的数据的数学处理,以及验证气味度量的相关性是控制的关键主题,以确保稳健且可靠的测量。该研究提出并探讨了不同模式识别和特征提取技术的使用,在气味分类监测模型(OCMM)的制定和有效性中。研究了与线性判别分析(LDA)和人工神经网络(ANN)作为模式识别识别算法的合作的原始响应曲线的兴起,中间和峰值周期的影响。使用先进的智能IOMS在复杂的工厂中收集的真正气味样本进行实验室分析。结果表明了方法选择对所产生的OCMM质量的影响。与人工神经网络(ANN)组合的峰值期基于高分类速率突出显示最佳组合。本文提供了开发解决方案以优化IOMS性能的信息。

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