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利用土壤的某些力学性质通过人工神经网络估算土壤比表面积。

Estimation of soil specific surface area using some mechanical properties of soil by artificial neural networks.

机构信息

Department of Agriculture, Payame Noor University, PO BOX 19395-3697, Tehran, Iran.

Young Researchers and Elite Club, Kermanshah Branch, Islamic Azad University, Kermanshah, Iran.

出版信息

Environ Monit Assess. 2018 Sep 27;190(10):614. doi: 10.1007/s10661-018-6980-0.

Abstract

Soil specific surface area (SSA) is an important property of soil. Depending on the measurement techniques, determination of the SSA is costly and time consuming. Hence, a limited number of studies have been conducted to predict the SSA from the soil variables. In this study, the soil samples were taken from the literature. Fractal parameters (FP) were calculated by the model of Bird et al. (European Journal of Soil Science 51, 55-63, 2000) used as the input variables to predict the SSA. Some studies have been carried out on the prediction capability of the different parameters using the artificial neural networks (ANNs). The ANNs were further used and 20 models were developed to investigate the value of input variables to predict the SSA. The results showed that the PTF13 (RMSE = 0.13) and PTF18 (RMSE = 0.13) with the input variables of particle-size distribution and Atterberg limits revealed better performance than the other PTFs (in the training step). It is because of the fact that free swelling index (FSI) and Atterberg limits were closely correlated to the soil clay mineralogy as one of the important factors controlling the SSA. In general, this results demonstrated that the PTF9 with the variables of sand, clay, plastic limit (PL), liquid limit (LL), and FSI showed the best (RMSE = 0.37) results in the estimation of the SSA. In conclusion, there was not a strong correlation between the soil mechanical properties and SSA but also ANNs were a suitable method to predict the SSA from the soil variables.

摘要

土壤比表面积(SSA)是土壤的一个重要性质。根据测量技术的不同,SSA 的测定既昂贵又耗时。因此,只有少数研究致力于通过土壤变量来预测 SSA。在本研究中,土壤样本取自文献。使用 Bird 等人的模型(欧洲土壤科学杂志 51,55-63,2000)计算分形参数(FP),并将其用作预测 SSA 的输入变量。一些研究已经针对不同参数使用人工神经网络(ANNs)的预测能力进行了研究。进一步使用了 ANNs,并开发了 20 个模型来研究输入变量预测 SSA 的价值。结果表明,输入变量为粒径分布和 Atterberg 界限的 PTF13(RMSE=0.13)和 PTF18(RMSE=0.13)的性能优于其他 PTF(在训练步骤中)。这是因为自由膨胀指数(FSI)和 Atterberg 界限与土壤粘土矿物学密切相关,而粘土矿物学是控制 SSA 的重要因素之一。一般来说,结果表明,PTF9 与沙、粘土、塑性极限(PL)、液限(LL)和 FSI 等变量结合的预测 SSA 的效果最佳(RMSE=0.37)。总之,土壤力学性质与 SSA 之间没有很强的相关性,但 ANN 也是从土壤变量预测 SSA 的合适方法。

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