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Multi-sensor fusion and feature selection in ultraviolet-visible spectrometry system for predicting chemical oxygen demand

机译:用于预测化学需氧量的紫外 - 可见光光谱系统多传感器融合与特征选择

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The ultraviolet-visible (UV-Vis) spectrometry system is increasingly employed in chemical oxygen demand (COD) predicting recently for its significant advantages compared with traditional standard chemical method. In this study, an investigation is undertaken to determine whether the physic-chemical parameters of samples provide a good compensation for prediction. Meanwhile, a feature selecting algorithm is employed to reduce the size of UV-Vis absorption spectroscopy provided as data input to the modeling algorithm. A high correlation of above 0.90 is obtained with the data using the stand chemical method, while less absorbance values are necessary to measure and a spectrometer with industrial wavelength resolution is adequate.
机译:紫外 - 可见(UV-VIS)光谱系统越来越多地用于最近预测其与传统标准化学方法相比其显着优势的化学需氧量(COD)。在这项研究中,进行了调查以确定样品的物理化学参数是否提供了良好的预测补偿。同时,采用特征选择算法来降低作为对建模算法的数据输入提供的UV-Vis吸收光谱的尺寸。使用待化学方法的数据获得高于0.90的高相关,而测量的吸光度值较少,具有工业波长分辨率的光谱仪是足够的。

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