首页> 外文期刊>Geoderma: An International Journal of Soil Science >Multi-task convolutional neural networks outperformed random forest for mapping soil particle size fractions in central Iran
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Multi-task convolutional neural networks outperformed random forest for mapping soil particle size fractions in central Iran

机译:多任务卷积神经网络表现出伊朗中部地区土壤粒子尺寸分数的随机林

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摘要

Knowledge about the spatial distribution of soil particle size fractions (PSF) is critical for sustainable management and resource assessment of the agricultural regions. Although conventional machine learning algorithms, such as random forest (RF) or support vector machine, have been extensively used in digital soil mapping to predict the PSF, less research examined the potential of state-of-the-art deep learning approaches for such processing. Importantly, deep learning approaches such as convolutional neural networks (CNNs) are able to incorporate contextual information about the landscape, which is of great use for DSM analysis. Accordingly, this study addresses this much-needed investigation by using a patch-based, multi-task CNN for predicting PSF of clay, sand, and silt contents at six standard layers given as soil depth increments as recommended by the GlobalSoilMap.net (i.e., 0-5, 5-15, 15-30, 30-60, 60-100, 100-200 cm). The depth functions were derived from equal-area smoothing splines in a region covering large parts (similar to 140,000 km(2)) of central Iran. The robustness of the proposed architecture is evaluated against RF. Additionally, to allow a fairer comparison between RF and CNN models, we used simple smoothing (mean) filters to effectively reproduce the auxiliary data which are then fed in the RF (RF*). To evaluate the three models, we established a training (75%) and test set (25%). According to the test set, for all soil depths and all PSFs, the results demonstrate that CNN consistently outperforms RF and RF* in terms of root mean square error (RMSE) and coefficient of determination (R-2). At the top layer, for example, CNN decreased the RMSE values for clay, sand, and silt contents compared to the RF (22.4%, 18.9%, and 10.7%) and RF* (18.0%, 7.4%, and 9.6%). These findings indicate that even the use of feature-engineered auxiliary data did not enable the RF* models to reach the performance of CNN. The resulting maps can be used as valuable baseline soil information for the effective management of agricultural and environmental resources in the study area and beyond.
机译:关于土壤粒度分数(PSF)的空间分布的知识对于农业区域的可持续管理和资源评估至关重要。虽然常规机器学习算法(例如随机森林(RF)或支持向量机)已广泛用于数字土壤映射以预测PSF,但研究较少研究检查了这种处理的最先进的深度学习方法的潜力。重要的是,诸如卷积神经网络(CNNS)之类的深度学习方法能够合并有关景观的上下文信息,这对于DSM分析非常有用。因此,本研究通过使用GlobalSOILMAP.NET的土壤深度增量的六个标准层,通过使用基于补丁的多任务CNN来解决这一苛刻的多任务CNN的这种急需的研究。 ,0-5,5-15,15-30,30-60,60-100,100-200 cm)。深度函数源自覆盖大部分的区域(类似于140,000km(2))的伊朗中央的平滑花键。拟议架构的稳健性是针对RF评估的。另外,为了允许RF和CNN模型之间的比较,我们使用简单的平滑(平均值)滤波器来有效地再现辅助数据,然后在RF(RF *)中馈送。为了评估三种型号,我们建立了培训(75%)和测试集(25%)。根据测试集,对于所有土壤深度和所有PSF,结果表明,CNN在均方根误差(RMSE)和确定系数(R-2)方面始终如一地优于RF和RF *。例如,在顶层,CNN与RF(22.4%,18.9%和10.7%)和RF *(18.0%,7.4%和9.6%)降低了粘土,沙子和淤泥含量的RMSE值。(18.0%,7.4%) 。这些发现表明,即使使用特征设计的辅助数据也没有使RF *模型能够达到CNN的性能。由此产生的地图可用作有效管理研究区及以后的农业和环境资源的有效管理的宝贵基线土壤信息。

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