推进精准农业:大型农场根区土壤湿度评估的机器学习增强GPR分析

Himan Namdari;Majid Moradikia;Seyed Zekavat;Radwin Askari;Oren Mangoubi;Doug Petkie
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摘要

在本文中,我们研究了一种智能探地雷达(GPR),以方便根区土壤湿度的估算,这是精准农业的一个关键参数。为了创建智能探地雷达,我们必须训练应用于探地雷达接收信号的机器学习(ML)方法。这个过程需要大量的标记GPR数据,如果通过现场测量来创建,将是耗时和劳动密集型的。本文利用gprMAX软件模拟无人机耦合GPR接收信号,生成大规模数据用于训练ML模型。数据是通过1.5 GHz Ricker波形创建的,考虑了与现实土壤水平模型一致的三层土壤。该方法的结构如下:首先,我们使用gprMAX生成合成数据集。然后采用特征工程技术从探地雷达信号中提取有意义的成分,然后进行严格的选择过程,以确定最有效的ML模型用于土壤湿度预测。最后,我们将合成数据与伍斯特理工学院SoilX实验室收集的真实GPR数据相结合,验证了我们的模型,提高了预测精度和泛化能力。我们提出的模型在水分和深度估计方面的总体平均均方根误差分别为0.5%和1.56 cm。拟议中的智能GPR安装在无人机上时,可以实现高水平(例如10米)和垂直(例如1.5厘米)分辨率和高穿透深度(超过2米)的巨型农场根区3d湿度地图创建。因此,与传统方法(如合成孔径雷达和卫星成像)相比,它提供了更高的能力。这些结果促进了有效的农业实践,例如优化灌溉模式,以提高作物产量和粮食安全。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing Precision Agriculture: Machine Learning-Enhanced GPR Analysis for Root-Zone Soil Moisture Assessment in Mega Farms
In this article, we investigate an intelligent ground penetrating radar (GPR) that facilitates root-zone soil moisture estimation, a key parameter in precision agriculture. To create an intelligent GPR, we must train machine learning (ML) methods applied to the GPR-received signal. This process requires a large number of labeled GPR data that would be time-consuming and labor-intensive if created via field measurements. This article uses gprMAX software to emulate drone-coupled GPR received signal to generate large-scale data for training ML models. The data are created via a 1.5 GHz Ricker waveform considering a three-layer soil consistent with a realistic soil horizon model. The approach is structured as follows: first, we generate a synthetic dataset using gprMAX. Feature engineering techniques are then employed to extract meaningful components from the GPR signals, followed by a rigorous selection process to identify the most effective ML model for soil moisture prediction. Finally, we validate our model by integrating synthetic data with real GPR data collected at the SoilX lab at Worcester Polytechnic Institute, enhancing prediction accuracy and generalization capability. Our proposed model achieves an overall average root-mean-squared error of 0.5%, and 1.56 cm for moisture and depth estimations, respectively. The proposed intelligent GPR, when installed on a drone, enables high horizontal (e.g., 10 m) and vertical (e.g., 1.5 cm) resolution and high penetration depth (beyond 2 m) megafarm root-zone 3-D moisture map creation. Thus, it offers much higher capabilities when compared to traditional methods, such as synthetic aperture radar and satellite imaging. These results facilitate efficient farming practices, such as optimizing irrigation models, for better crop yields and food security.
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