首页> 外文期刊>Catena: An Interdisciplinary Journal of Soil Science Hydrology-Geomorphology Focusing on Geoecology and Landscape Evolution >An improved genetic algorithm for determining modified water-retention model for biochar-amended soil
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An improved genetic algorithm for determining modified water-retention model for biochar-amended soil

机译:一种改进的遗传算法,用于确定生物炭修正土壤改性水保留模型

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Biochar has been globally recognized as a soil amendment to ameliorate the degraded soil structures. We investigated the different biochar percentages contributed to the changes in soil water retention, soil infiltration, and water-holding capacity of one dimensional scale. Besides, infiltration models were compared, and an improved genetic algorithm (GA) combined with multi-objective optimization and elitist strategy was proposed to upgrade the modified van-Genuchten (VG) model. Results indicated that observed cumulative infiltration displayed reductions by 14.06%, 46.62%, and 71.78% for the soil mixed with 5%, 10%, and 15% biochar, respectively, relative to the pure soil. The Kostiakov model was more effective than the Philip model in predicting cumulative infiltration. Furthermore, the constructed modified VG model based on the inversed hydraulic parameters was capable of predicting soil moisture at suction less than 2070 kPa (i.e., 1.38 times wilting point) but caused an underestimation beyond it. This research has the potential to replace the soil water retention curve (SWRC) measurement by one-dimensional infiltration experiment with parameters inversed from the improved GA combined with a modified VG model. It is time-saving and efficient during the SWRC study.
机译:生物炭作为一种改善退化土壤结构的土壤改良剂,已被全球公认。我们在一维尺度上研究了不同生物炭含量对土壤保水性、土壤入渗性和持水能力的影响。此外,还对渗透模型进行了比较,提出了一种结合多目标优化和精英策略的改进遗传算法(GA)对改进的van Genuchten(VG)模型进行升级。结果表明,与纯土壤相比,添加5%、10%和15%生物炭的土壤的累积入渗量分别减少了14.06%、46.62%和71.78%。在预测累积入渗方面,Kostiakov模型比Philip模型更有效。此外,基于反演的水力参数构建的修正VG模型能够预测吸力小于2070 kPa(即1.38倍萎蔫点)时的土壤水分,但会导致低估。本研究有可能用改进的遗传算法结合改进的VG模型反演的参数代替一维入渗试验测量土壤水分保持曲线(SWRC)。在SWRC研究期间,它既省时又高效。

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