A machine learning framework to measure Water Drop Penetration Time (WDPT) for soil water repellency analysis

Danxu Wang , Emma Regentova , Venkatesan Muthukumar , Markus Berli , Frederick C. Harris Jr.
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引用次数: 0

Abstract

The heat from wildfires volatilizes soil’s organic compounds which form a waxy layer when condensed on cooler soil particles causing soil to repel water. Timely assessment of soil water repellency (SWR) is critical for prediction and prevention of detrimental impacts of hydrophobic soils such as soil erosion, reduced availability of water to plants, and water runoff after rainfalls leading to floods. The Water Drop Penetration Time (WDPT), i.e., the time elapsed from a drop landing on the soil surface to its complete absorption is commonly used to assess the SWR level. Its manual measurements have variability based on the used instruments and subjective observations. The goal of this work is to design an automated system to perform standardized WDPT tests and assess the SWR levels. It consists of an electronically controlled mechanism to release a water drop, and a video camera to record the water penetration process. The latter is modeled as an “action” in video and Temporal Action Localization (TAL) analytics is used for predicting the WDPT and assessing the SWR level.
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测量水滴渗透时间(WDPT)的机器学习框架,用于土壤憎水性分析
野火产生的热量会挥发土壤中的有机化合物,这些有机化合物在较冷的土壤颗粒上凝结后会形成一层蜡质层,导致土壤憎水。及时评估土壤憎水性(SWR)对于预测和预防疏水性土壤的有害影响至关重要,例如土壤侵蚀、植物可用水量减少以及降雨后导致洪水的径流。水滴渗透时间(WDPT),即水滴从落到土壤表面到被完全吸收的时间,通常用于评估 SWR 水平。其人工测量值会因所用仪器和主观观察而产生差异。这项工作的目标是设计一个自动系统,用于执行标准化的 WDPT 测试和评估 SWR 水平。该系统由一个释放水滴的电子控制装置和一个记录水渗透过程的摄像机组成。后者在视频中被建模为一个 "动作",并使用时间动作定位(TAL)分析法来预测 WDPT 和评估 SWR 水平。
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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98 days
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