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Prediction of clay content from water vapour sorption isotherms considering hysteresis and soil organic matter content

机译:考虑滞后和土壤有机质含量的水蒸气吸附等温线预测粘土含量

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摘要

Soil texture, in particular the clay fraction, governs numerous environmental, agricultural and engineering soil processes. Traditional measurement methods for clay content are laborious and impractical for large-scale soil surveys. Consequently, clay prediction models that are based on water vapour sorption, which can be measured within a shorter period of time, have recently been developed. Such models are often based on single-point measurements of water adsorption and do not account for sorption hysteresis or organic matter content. The present study introduces regression relationships for estimating clay content from hygroscopic water at different relative humidity (RH) levels while considering hysteresis and organic matter content. Continuous adsorption/desorption vapour sorption isotherm loops were measured for 150 differently textured soils with a state-of-the-art vapour sorption analyser within a RH range from 3 to 93%. The clay contents, which ranged between 1 and 56%, were measured with a combination of sieving and sedimentation methods. Two regression models were developed for both adsorption and desorption at 10 RH levels (5, 10, 20, 30, 40, 50, 60, 70, 80 and 90%). While the first model encompasses all 150 soils regardless of organic carbon (OC) content, the second model considers only soils with OC2.4%. Independent validation of the proposed regression models at 50, 60 and 90% RH using literature data for water vapour adsorption showed reasonably accurate (average RMSE = 5.0%, ME = 2.4%) prediction of clay contents. However, the model for soils with small OC contents showed only minor improvement when compared with recently published models. Three main sources of prediction errors, namely large OC and silt contents, and a prevalence of 1:1 clay minerals were identified for both the proposed and published models. To compensate for large OC content, an OC-corrected model was developed and compared with the other models. The corrected model markedly improved clay prediction accuracy for OC-rich soils when compared with all other models considered.
机译:土壤质地,特别是粘土成分,控制着许多环境,农业和工程土壤过程。传统的粘土含量测量方法费力且不适合大规模土壤调查。因此,最近已经开发了基于水蒸气吸附的粘土预测模型,该模型可以在较短的时间内进行测量。此类模型通常基于水吸附的单点测量,并不考虑吸附滞后或有机物含量。本研究介绍了回归关系,用于在考虑滞后和有机物含量的情况下,从不同相对湿度(RH)的吸湿性水中估算粘土含量。使用最先进的蒸汽吸附分析仪,在RH范围为3%至93%的范围内,对150种不同质地的土壤进行了连续吸附/解吸蒸汽吸附等温线测定。结合筛分和沉降法测量的粘土含量为1%至56%。针对在10 RH水平下的吸附和解吸,开发了两个回归模型(5%,10%,20%,30%,40%,50%,60%,70%,80%和90%)。尽管第一个模型涵盖所有150种土壤,无论有机碳(OC)含量如何,但第二个模型仅考虑OC <2.4%的土壤。使用文献中有关水蒸气吸附的数据在50%,60%和90%RH下对建议的回归模型进行的独立验证显示,粘土含量的预测值相当准确(平均RMSE = 5.0%,ME = 2.4%)。但是,与最近发表的模型相比,OC含量低的土壤模型仅显示了较小的改进。对于提议的模型和已发布的模型,确定了三个主要的预测误差来源,即大的OC和泥沙含量以及1:1粘土矿物的普遍性。为了补偿大量的OC含量,开发了OC校正模型并将其与其他模型进行比较。与所有其他考虑的模型相比,校正后的模型显着提高了富含OC的土壤的粘土预测精度。

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