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Quantitative Analysis of Major Metals in Agricultural Biochar Using Laser-Induced Breakdown Spectroscopy with an Adaboost Artificial Neural Network Algorithm

机译:利用Adaboost人工神经网络算法的激光诱导击穿光谱法对农业生物炭中主要金属进行定量分析

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摘要

To promote the green development of agriculture by returning biochar to farmland, it is of great significance to simultaneously detect heavy and nutritional metals in agricultural biochar. This work aimed first to apply laser-induced breakdown spectroscopy (LIBS) for the determination of heavy (Pb, Cr) and nutritional (K, Na, Ca, Mg, Cu, and Zn) metals in agricultural biochar. Each batch of collected biochar was prepared to a standardized sample using the separating and milling method. Two types of univariate analysis model were developed using peak intensity and integration area of the sensitive emission lines, but the performance did not satisfy the requirements of practical application because of the poor correlations between the measured values and predicted values, as well as large relative standard deviation of the prediction (RSDP) values. An ensemble learning algorithm, adaboost backpropagation artificial neural network (BP-Adaboost), was then used to develop the multivariate analysis models, which had a more robust performance than traditional univariate analysis, partial least squares regression (PLSR), and backpropagation artificial neural network (BP-ANN). The optimized RSDP values for K, Ca, Mg, and Cu were less than 10%, while the RSDP values for Pb, Cr, Zn, and Na were in the range of 10–20%. Moreover, the pairwise -test of its prediction set showed that there was no significant difference between the measurements of LIBS and ICP-MS. The promising results indicate that rapid and simultaneous detection of major heavy and nutritional metals in agricultural biochar can be achieved using LIBS and reasonable chemometric algorithms.
机译:通过将生物炭返还农田来促进农业的绿色发展,同时检测农业生物炭中的重金属和营养金属具有重要意义。这项工作旨在首先应用激光诱导击穿光谱法(LIBS)测定农业生物炭中的重金属(Pb,Cr)和营养性金属(K,Na,Ca,Mg,Cu和Zn)。使用分离和研磨方法将每批收集的生物炭制备成标准样品。利用峰值强度和敏感发射线的积分面积建立了两种类型的单变量分析模型,但由于测量值与预测值之间的相关性较差,且相对标准较大,因此性能无法满足实际应用的要求。预测(RSDP)值的偏差。然后使用集成学习算法adaboost反向传播人工神经网络(BP-Adaboost)开发多元分析模型,该模型的性能比传统的单变量分析,偏最小二乘回归(PLSR)和反向传播人工神经网络要强(BP-ANN)。 K,Ca,Mg和Cu的最佳RSDP值小于10%,而Pb,Cr,Zn和Na的RSDP值在10–20%的范围内。而且,其预测集的成对检验表明,LIBS和ICP-MS的测量之间没有显着差异。有希望的结果表明,使用LIBS和合理的化学计量学算法可以快速,同时检测农业生物炭中的主要重金属和营养金属。

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