An artificial neural network emulator of the rangeland hydrology and erosion model

IF 7.3 1区 农林科学 Q1 ENVIRONMENTAL SCIENCES International Soil and Water Conservation Research Pub Date : 2023-11-17 DOI:10.1016/j.iswcr.2023.11.002
Mahmoud Saeedimoghaddam , Grey Nearing , Mariano Hernandez , Mark A. Nearing , David C. Goodrich , Loretta J. Metz
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Abstract

Machine learning (ML) is becoming an ever more important tool in hydrologic modeling. Previous studies have shown the higher prediction accuracy of those ML models over traditional process-based ones. However, there is another advantage of ML which is its lower computational demand. This is important for the applications such as hydraulic soil erosion estimation over a large area and at a finer spatial scale. Using traditional models like Rangeland Hydrology and Erosion Model (RHEM) requires too much computation time and resources. In this study, we designed an Artificial Neural Network that is able to recreate the RHEM outputs (annual average runoff, soil loss, and sediment yield and not the daily storm event-based values) with high accuracy (Nash-Sutcliffe Efficiency ≈ 1.0) and a very low computational time (13 billion times faster on average using a GPU). We ran the RHEM for more than a million synthetic scenarios and train the Emulator with them. We also, fine-tuned the trained Emulator with the RHEM runs of the real-world scenarios (more than 32,000) so the Emulator remains comprehensive while it works specifically accurately for the real-world cases. We also showed that the sensitivity of the Emulator to the input variables is similar to the RHEM and it can effectively capture the changes in the RHEM outputs when an input variable varies. Finally, the dynamic prediction behavior of the Emulator is statistically similar to the RHEM.

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牧场水文和侵蚀模型的人工神经网络模拟器
机器学习(ML)正成为水文建模中越来越重要的工具。以往的研究表明,与传统的基于过程的模型相比,ML 模型的预测精度更高。不过,ML 的另一个优势是计算需求较低。这对于大面积和更精细空间尺度的水力土壤侵蚀估算等应用非常重要。使用牧场水文和侵蚀模型(RHEM)等传统模型需要耗费大量的计算时间和资源。在这项研究中,我们设计了一种人工神经网络,能够以高精度(纳什-萨特克利夫效率≈1.0)和极低的计算时间(使用 GPU 平均快 130 亿倍)重新创建 RHEM 输出(年平均径流、土壤流失和泥沙产量,而不是基于每日风暴事件的值)。我们在超过一百万个合成场景中运行了 RHEM,并用它们训练模拟器。我们还利用 RHEM 运行的现实世界场景(超过 32,000 个)对训练有素的仿真器进行了微调,因此仿真器在保持全面性的同时,还能特别准确地处理现实世界的案例。我们还发现,仿真器对输入变量的敏感度与 RHEM 相似,当输入变量发生变化时,仿真器能有效捕捉 RHEM 输出的变化。最后,仿真器的动态预测行为在统计学上与 RHEM 相似。
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来源期刊
International Soil and Water Conservation Research
International Soil and Water Conservation Research Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
12.00
自引率
3.10%
发文量
171
审稿时长
49 days
期刊介绍: The International Soil and Water Conservation Research (ISWCR), the official journal of World Association of Soil and Water Conservation (WASWAC) http://www.waswac.org, is a multidisciplinary journal of soil and water conservation research, practice, policy, and perspectives. It aims to disseminate new knowledge and promote the practice of soil and water conservation. The scope of International Soil and Water Conservation Research includes research, strategies, and technologies for prediction, prevention, and protection of soil and water resources. It deals with identification, characterization, and modeling; dynamic monitoring and evaluation; assessment and management of conservation practice and creation and implementation of quality standards. Examples of appropriate topical areas include (but are not limited to): • Conservation models, tools, and technologies • Conservation agricultural • Soil health resources, indicators, assessment, and management • Land degradation • Sustainable development • Soil erosion and its control • Soil erosion processes • Water resources assessment and management • Watershed management • Soil erosion models • Literature review on topics related soil and water conservation research
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