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首页> 外文期刊>Ecological indicators >Estimating soil organic carbon stocks using different modelling techniques in the semi-arid rangelands of eastern Australia
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Estimating soil organic carbon stocks using different modelling techniques in the semi-arid rangelands of eastern Australia

机译:使用不同的建模技术估算澳大利亚东部半干旱牧场的土壤有机碳储量

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摘要

Soil organic carbon (SOC) is pivotal for biological, cheniical and physical processes and provides vital information on changes in soil fertility and land degradation. Rangelands, accounting for about 81% of Australian land area; are significant carbon (C) stores and small increases in soil C sequestration over such a vast area represents a considerable climate change mitigation opportunity. Efficient modelling techniques to evaluate the potential to increase rangeland SOC stocks are vitally important to assess their role in the global carbon cycle and quantum abatement. This study aimed to evaluate boosted regression trees (BRT) and random forest (RF) models in predicting SOC stocks from available continuous remotely sensed variables using two feature selection techniques. Dominant variables that affect SOC stocks in the rangelands were also identified. Using field-based measurements of SOC stock collected from 564 data points across the study area and 28 GIS-based environmental variables including climate, topography, radiometry, vegetation and land fractional cover data, we employed stepwise regression (SR, linear approach) and genetic algorithm (GA, nonlinear approach) to select the most informative variables. These selected predictors were then used to train the BRT and RF models. In all, four models were evaluated: BRT using SR (SR BRT); RF using SR (SR RF); BRT using GA (GA BRT) and RF using GA (GA RF). In addition, BRT using all predictors (All BRT) and the RF using all predictors (All_RF) were used as benchmarks to test the performance of the four models. Of the field-based data, 75% were used to train the model ("calibration dataset") and the remaining 25% were used to validate the prediction of SOC stocks ("validation dataset"). The results indicate that the RF exhibited a better performance in predicting SOC stocks than the BRT regardless of input variables. In addition, we verified that feature selection for both machine learning techniques is necessary for estimating SOC stocks because they can increase accuracy and save time. The GA_RF was the most reliable method to predict SOC stocks, with the lowest root mean square error (RMSE) and the highest R2 values (7.44 Mg C ha't and 0.48, respectively), suggesting that the method of using GA-RF to generate a predictive model from measured data and remotely-sensed variables may provide a cost effective alternative to direct sampling to predict SOC stocks in the semi-arid rangelands of 'eastern Australia. The important variables for explaining the observed SOC stocks were rainfall, elevation, Prescott index (PI, a measure of water balance), and land fractional cover (bare ground fraction). The approach proposed here can be extended in areas where field observed data is scarce (e.g. rangelands) to produce more detailed information about SOC stocks..As such, the results of our study are of particular importance in Australian rangelands to provide a statistical and theoretical basis for producing digital SOC stock maps based on readily available remotely-sensed data, with potential for use in similar rangelands conditions internationally.
机译:土壤有机碳(SOC)对于生物,化学和物理过程至关重要,并提供有关土壤肥力和土地退化变化的重要信息。牧场,约占澳大利亚陆地面积的81%;碳(C)的大量存留,而在如此广阔的地区中固存的土壤C的少量增加代表了可观的缓解气候变化的机会。有效的建模技术,以评估其增加牧场SOC储量的潜力,对于评估其在全球碳循环和量子减排中的作用至关重要。这项研究旨在评估增强的回归树(BRT)和随机森林(RF)模型,使用两种特征选择技术从可用的连续遥感变量中预测SOC储量。还确定了影响牧场中SOC储量的主要变量。使用从研究区域的564个数据点和28个基于GIS的环境变量(包括气候,地形,辐射度,植被和土地覆盖率数据)收集的基于SOC的实地测量,我们采用了逐步回归(SR,线性方法)和算法(GA,非线性方法)来选择信息量最大的变量。然后将这些选定的预测变量用于训练BRT和RF模型。总共评估了四个模型:使用SR的BRT(SR BRT);使用SR的RF(SR RF);使用GA的BRT(GA BRT)和使用GA的RF(GA RF)。另外,使用所有预测变量的BRT(All BRT)和使用所有预测变量的RF(All_RF)被用作基准来测试这四个模型的性能。在基于现场的数据中,有75%用于训练模型(“校准数据集”),其余25%用于验证SOC存量的预测(“验证数据集”)。结果表明,无论输入变量如何,RF在预测SOC存量方面均表现出比BRT更好的性能。此外,我们验证了两种机器学习技术的特征选择对于估算SOC库存都是必要的,因为它们可以提高准确性并节省时间。 GA_RF是预测SOC存量的最可靠方法,具有最低的均方根误差(RMSE)和最高的R2值(分别为7.44 Mg C和0.48 Mg C),这表明使用GA-RF的方法可以预测SOC存量。根据测得的数据生成预测模型,遥感变量可能为直接采样提供成本有效的替代方法,以预测'澳大利亚东部半干旱牧场的SOC储量。解释观测到的SOC存量的重要变量是降雨,海拔,普雷斯科特指数(PI,水平衡的度量)和土地覆盖率(裸地分数)。本文提出的方法可以扩展到实地观测数据稀缺的区域(例如牧场),以提供有关SOC储量的更详细信息。因此,我们的研究结果对于在澳大利亚牧场中提供统计和理论意义特别重要。基于随时可用的遥感数据生成数字SOC存量图的基础,并有可能在国际上类似的牧场条件中使用。

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