首页> 外文期刊>Communications in Soil Science and Plant Analysis >Identification of Soil Properties Influencing Some Soil Physical Quality Indicators Using Hybrid PSO-ICA-SVR Algorithm in Some Agricultural Land Uses of Kerman Province, Iran
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Identification of Soil Properties Influencing Some Soil Physical Quality Indicators Using Hybrid PSO-ICA-SVR Algorithm in Some Agricultural Land Uses of Kerman Province, Iran

机译:利用克尔曼省一些农业用地利用杂交PSO-ICA-SVR算法对土壤性质影响土壤性质的鉴定

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摘要

This research was conducted in order to determine the importance of the effect of some soil properties on some soil physical quality indicators (SPQIs) in southeast Iran. To this end, 169 points from different locations in Kerman province were selected which had different agricultural land uses, and disturbed and undisturbed soil samples were taken from a depth of 0–20 cm. Soil properties such as soil pH, soil texture, field capacity (FC), permanent wilting point (PWP), soil bulk density (BD), electrical conductivity (ECe), calcium carbonate equivalent (CCE), and soil organic matter (SOM), and soil physical quality indicators (SPQIs) such as field capacity (FC), mean weight diameter (MWD), air capacity (AC), and relative field capacity (RFC) were determined. Subsequently, soil properties affecting SPQIs were ascertained using Particle Swarm Optimization-Imperialist Competitive Algorithm-Support Vector Regression (PSO-ICA-SVR) hybrid algorithm, and after the sensitivity analysis, the importance of each selected property in terms of its impact on SPQIs was recognized. The results indicated OM, BD, clay content, and CaCO3 in general, affect soil physical quality and this selection was carefully made by the hybrid algorithm. Furthermore, after modeling using the features selected by the SVR method and performing the sensitivity analysis, clay content and BD, among the selected properties, had the most significant effects on SPQIs. The highest value of the coefficient of determination was associated with MWD index (R2?=?83.33) and the lowest error was related to AC and RFC indicators (RMSE?=?0.031).
机译:进行了该研究,以确定一些土壤性质对伊朗东南部某些土壤体质指标(SPQIS)作用的重要性。为此,选择了克尔曼省不同地点的169分,这些地方有不同的农业用地用途,并从0-20厘米的深度取出干扰和不受干扰的土壤样品。土壤性质如土壤pH,土壤纹理,现场容量(Fc),永久性点(PWP),土壤堆积密度(BD),导电性(ECE),碳酸钙等效物(CCE),以及土壤有机物(SOM)和土壤物理质量指标(SPQI),如现场容量(Fc),平均重量直径(MWD),空气容量(AC)和相对场容量(RFC)。随后,利用粒子群优化 - 帝国主义竞争算法 - 支持向量回归(PSO-ICA-SVR)混合算法,以及敏感性分析,在灵敏度分析,在对SPQ的影响方面的重要性认可。结果表明OM,Bd,粘土含量和Caco3通常,影响土壤物质质量,并且通过混合算法仔细制作这种选择。此外,在使用由SVR方法选择的特征和进行敏感性分析的特征建模之后,在所选属性中进行粘土含量和BD,对SPIS具有最显着的影响。测定系数的最高值与MWD索引(R2?= 3.333)相关,并且最低误差与AC和RFC指示器有关(RMSE?= 0.031)。

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