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Using a posterior probability support vector machine model to assess soil quality in Taiyuan, China

机译:使用后验概率支持向量机模型评估太原,中国的土壤质量

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Soil quality is a significant but complicated issue. To more reliably and objectively assess this issue, we used a posterior probability support vector machine model (SVM), a method with fuzzy characteristics and robustness, to assign soil a quality grade based on concentrations of potentially toxic elements (PTEs) and fertilizers. To demonstrate this comprehensive assessment method, we analyzed soil quality in Taiyuan, Shanxi, China. The results indicated that 52.6% of the soil samples were grade I (good quality) and 70.3% of the soil samples were grade II (medium quality). We also used principal component analysis (PCA) to indirectly infer causes of the spatial distribution of differing soil qualities based on previous studies and to validate this model. The spatial distribution of soil quality in Taiyuan was mainly influenced by industrial and vehicular emissions, sewage irrigation, and application of phosphorus and potassium fertilizers. Comparing assessment results based on the posterior probability SVM and an SVM, we found the results calculated by the former model fit more closely with the soil quality expected based on artificial and natural factors in the study area. Our study indicates that soil quality assessment model, with a clear structure and ease in operation, can be used to study other ecosystems once properly calibrated.
机译:土壤质量是一个重要但复杂的问题。更可靠地客观地评估该问题,我们使用了后验概率支持向量机模型(SVM),一种具有模糊特性和鲁棒性的方法,基于潜在有毒元素(PTE)和肥料的浓度分配土壤质量等级。为了证明这种综合评估方法,我们分析了中国山西太原土壤质量。结果表明,52.6%的土壤样品是I级(质量好),70.3%的土壤样品是II级(中质)。我们还根据先前的研究使用主成分分析(PCA)来间接推断出不同土壤质量的空间分布的原因,并验证该模型。太原土壤质量的空间分布主要受工业和车辆排放,污水灌溉以及磷和钾肥的应用。基于后验概率SVM和SVM比较评估结果,我们发现前模型与基于研究区域人工和自然因素的土壤质量更密切地拟合的结果。我们的研究表明,经营明确结构和易于操作的土壤质量评估模型可用于研究其他生态系统一旦适当校准。

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