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Investigating Spatial and Vertical Patterns of Wetland Soil Organic Carbon Concentrations in China's Western Songnen Plain by Comparing Different Algorithms

机译:不同算法研究中国西部湿地土壤有机碳浓度的空间和垂直模式

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Investigating the spatial and vertical patterns of wetland soil organic carbon concentration (SOCc) is important for understanding the regional carbon cycle and managing the wetland ecosystem. By integrating 160 wetland soil profile samples and environmental variables from climatic, topographical, and remote sensing data, we spatially predicted the SOCc of wetlands in China's Western Songnen Plain by comparing four algorithms: random forest (RF), support vector machine (SVM) for regression, inverse distance weighted (IDW), and ordinary kriging (OK). The predicted results of the SOCc from the different algorithms were validated against independent testing samples according to the mean error, root mean squared error, and correlation coefficient. The results show that the measured SOCc values at depths of 0-30, 30-60, and 60-100 cm were 15.28, 7.57, and 5.22 g.kg(-1), respectively. An assessment revealed that the RF algorithm was the most accurate for predicting SOCc; its correlation coefficients at the different depths were 0.82, 0.59, and 0.51, respectively. The attribute importance from the RF indicates that environmental variables have various effects on the SOCc at different depths. The land surface temperature and land surface water index had a stronger influence on the spatial distribution of SOCc at the depths of 0-30 and 30-60 cm, whereas topographic factors, such as altitude, had a stronger influence within 60-100 cm. The predicted SOCc of each vertical depth increased gradually from south to north in the study area. This research provides an important case study for predicting SOCc, including selecting factors and algorithms, and helps understanding the carbon cycles of regional wetlands.
机译:调查湿地土壤有机碳浓度(SOCC)的空间和垂直模式对于了解区域碳循环和管理湿地生态系统是重要的。通过将160个湿地土壤轮廓样本和环境变量从气候,地形和遥感数据集成,我们通过比较四种算法:随机森林(RF),支持向量机(SVM)来空间地预测了中国西部松嫩平原湿地的SOCC。回归,逆距离加权(IDW)和普通克里格(OK)。根据平均误差,根均方误差和相关系数,对不同算法的来自不同算法的SOCC的预测结果被验证。结果表明,测量的SOCC值在0-30,30-60和60-100cm的深度为15.28,7.57和5.22g.kg(-1)。评估显示,RF算法最准确地预测SOCC;其不同深度的相关系数分别为0.82,0.59和0.51。 RF的属性重要性表示环境变量对SOCC的不同深度有各种影响。土地表面温度和陆地面积水指数对SOCC的空间分布在0-30和30-60厘米的深处具有更强的影响,而海拔高度的地形因素在60-100厘米内具有更强的影响。在研究区域,每个垂直深度的预测SOCC从南到北逐渐增加。该研究提供了预测SOCC的重要案例研究,包括选择因素和算法,并有助于了解区域湿地的碳循环。

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