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Comparative Study of Statistical, Numerical and Machine Learning-Based Pedotransfer Functions of Water Retention Curve with Particle Size Distribution Data

机译:粒度分布数据统计,数值和机器学习的统计学,数值和机器学习的网兜传递功能

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摘要

The water retention curve (WRC) describes the nonlinear relation of soil water content (SWC) and matric potential. Since direct measurement of SWC and matric potential is difficult and time consuming, indirect approaches including statistical, numerical, and pattern recognition-based pedo-transfer functions (PTFs) that relate basic soil properties to the WRC have been developed during the last few decades. Although several studies reporting the performance of these models can be found in literature, it seems that an extensive investigation which compares the available models and introduces a reliable method to soil hydrologists can be useful. Therefore, in this study, the performance of multiple linear regressions (MLR) models, scaled numerical models and machine learning methods including artificial neural networks (ANN) and adaptive neuro-fuzzy inference systems (ANFIS) are compared using 98 UNSODA codes with various soil textures to estimate WRC. Results showed that regardless of the soil texture, ANN (RMSE = 0.029) predicts the WRC more accurately than ANFIS (RMSE = 0.035), scaled model (RMSE = 0.060) and MLR (RMSE = 0.071), respectively. Considering the soil texture, ANFIS performance is the best in the moderate and fine textured soils, while scaled numerical model predicts with acceptable performance in sandy soils. WRC prediction using easily available soil characteristics particularly when there is a lack of data, shows that newly developed machine learning methods are capable of predicting WRC considerably accurate for sustainable water flow and solute transport management.
机译:水保持曲线(WRC)描述了土壤含水量(SWC)和Matric潜力的非线性关系。由于SWC和Matric电位的直接测量是困难和耗时的,因此在过去几十年中已经开发了包括与基于统计,数值和模式的PTO转移功能(PTF)与WRC相关的基于统计,数值和模式的PCO转移功能(PTF)。虽然有几项关于这些模型的表现的研究可以在文献中找到,但似乎是一项广泛的调查,它比较可用的模型并向土壤水文学中引入可靠的方法可以是有用的。在本研究中,使用具有各种土壤的98个Unsoda代码对多元线性回归(MLR)模型,缩放数值模型和机器学习方法(包括人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)的性能进行比较纹理估计WRC。结果表明,无论土壤纹理如何,ANN(RMSE = 0.029)分别比ANFIS(RMSE = 0.035),缩放模型(RMSE = 0.060)和MLR(RMSE = 0.071)更精确地预测WRC。考虑到土壤质地,ANFIS性能是中等和细色织织地状土壤的最佳状态,而缩放的数值模型以砂土可接受的性能预测。 WRC预测使用易于可用的土壤特性,特别是当存在缺乏数据时,表明新开发的机器学习方法能够预测可持续水流和溶质运输管理的WRC。

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