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首页> 外文期刊>Bioresource Technology: Biomass, Bioenergy, Biowastes, Conversion Technologies, Biotransformations, Production Technologies >Application of kernel extreme learning machine and Kriging model in prediction of heavy metals removal by biochar
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Application of kernel extreme learning machine and Kriging model in prediction of heavy metals removal by biochar

机译:内核极端学习机和Kriging模型在BioChar预测重金属预测中的应用

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摘要

Kernel extreme learning machine (KELM) and Kriging models are proposed to predict biochar adsorption efficiency of heavy metals. Both six popular ions (Pb2+, Cd2+, Zn2+, Cu2+, Ni2+, As3+) and single ion are considered to test the accuracy of KELM and Kriging models. Two ways (data selection and fix output value) are attempted to improve the model fitting accuracy and the best R2 can reach 0.919 (KELM) and 0.980 (Kriging). In addition, stepwise regression and local sensitivity analysis show that adsorption efficiency has strong relationship with pHsolute and T. Moreover, the most sensitive parameters are T, pHH2O, r, C and pHsolute. The accurate KELM and Kriging models identify the most important controlling factors on metal adsorption, and ultimately provide some sort of predictive framework that will be useful in selecting appropriate biochar for particular treatment scenarios. This, in turn, will reduce the number of metal-biochar adsorption experiments needed going forward.
机译:提出了核极限学习机(KELM)和克里格模型来预测生物炭对重金属的吸附效率。六种常见离子(Pb2+、Cd2+、Zn2+、Cu2+、Ni2+、As3+)和单一离子被认为是测试KELM和Kriging模型准确性的标准。尝试了两种方法(数据选择和固定输出值)来提高模型拟合精度,最佳R2可以达到0.919(凯尔姆)和0.980(克里格)。此外,逐步回归和局部敏感性分析表明,吸附效率与pH溶质和T有很强的关系。而且,最敏感的参数是T、pH H2O、r、C和pH溶质。精确的凯尔姆和克里格模型确定了金属吸附的最重要控制因素,并最终提供了某种预测框架,将有助于为特定处理方案选择合适的生物炭。这反过来将减少今后需要进行的金属生物炭吸附实验的数量。

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