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Rapid determination of water COD using laser-induced breakdown spectroscopy coupled with partial least-squares and random forest

机译:激光诱导击穿光谱结合偏最小二乘和随机森林快速测定水中的COD

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Chemical oxygen demand (COD) is a water quality indicator that is typically measured by lengthy chemical analysis methods in the laboratory, which indicates that obtaining rapid results is difficult. There are only few studies on the determination of water COD by means of laser induced breakdown spectroscopy (LIBS). In the present study, we used LIBS to measure COD in river water samples. Many chemical components can affect COD, and we used chemometrics to reduce the dimensionality of the spectral data and establish a quantitative model. Experimental samples were collected from two rivers in Beijing, China. Partial least-squares regression (PLSR) showed good modeling ability for LIBS data from a single river. However, the model performance was not good for spectral data from both rivers, and R2 of the test set was only 0.8495. This occurred because the components in the two rivers were very different, which resulted in poor transitivity of the model. To solve this problem, we modeled the LIBS spectra using random forest regression (RFR). The main parameters of RFR are ntree and mtry: the former represents the number of decision trees, and the latter represents the number of random variables. When the ntree and mtry in the RFR were optimized, R2 of the training set increased from 0.8947 to 0.9584, and the root mean square error (RMSE) decreased from 27.9579 mg L?1 to 17.5802 mg L?1. Meanwhile, R2 of the test set increased from 0.8495 to 0.9248, and RMSE decreased from 35.5478 mg L?1 to 25.1215 mg L?1. This study demonstrates that LIBS combined with RFR is an effective method for the rapid determination of COD values over a large range.
机译:化学需氧量(COD)是一种水质指标,通常在实验室中通过冗长的化学分析方法进行测量,这表明难以快速获得结果。利用激光诱导击穿光谱法(LIBS)测定水的化学需氧量的研究很少。在本研究中,我们使用LIBS来测量河水样品中的COD。许多化学成分会影响COD,我们使用化学计量学来减少光谱数据的维数并建立定量模型。实验样品是从中国北京的两条河流中收集的。偏最小二乘回归(PLSR)对来自一条河流的LIBS数据显示出良好的建模能力。但是,对于来自两条河流的光谱数据,模型的性能都不佳,并且测试集的R2只有0.8495。发生这种情况的原因是两条河流中的成分非常不同,从而导致模型的传递性较差。为了解决这个问题,我们使用随机森林回归(RFR)对LIBS光谱建模。 RFR的主要参数是ntree和mtry:前者代表决策树的数量,后者代表随机变量的数量。优化RFR中的ntree和mtry时,训练集的R2从0.8947增加到0.9584,并且均方根误差(RMSE)从27.9579 mg L?1减少到17.5802 mg L?1。同时,测试仪的R2从0.8495增加到0.9248,RMSE从35.5478 mg L?1减少到25.1215 mg L?1。这项研究表明,LIBS与RFR结合是在大范围内快速测定COD值的有效方法。

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