Non-intrusive soil carbon content quantification methods using machine learning algorithms: A comparison of microwave and millimeter wave radar sensors

Di An , YangQuan Chen
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Abstract

Agricultural and forestry biomass can be converted to biochar through pyrolysis gasification, making it a significant carbon source for soil. Applying biochar to soil is a carbon-negative process that helps combat climate change, sustain soil biodiversity, and regulate water cycling. However, quantifying soil carbon content conventionally is time-consuming, labor-intensive, imprecise, and expensive, making it difficult to accurately measure in-field soil carbon’s effect on storage water and nutrients. To address this challenge, this paper for the first time, reports on extensive lab tests demonstrating non-intrusive methods for sensing soil carbon and related smart biochar applications, such as differentiating between biochar types from various biomass feedstock species, monitoring soil moisture, and biochar water retention capacity using portable microwave and millimeter wave sensors, and machine learning. These methods can be scaled up by deploying the sensor in-field on a mobility platform, either ground or aerial. The paper provides details on the materials, methods, machine learning workflow, and results of our investigations. The significance of this work lays the foundation for assessing carbon-negative technology applications, such as soil carbon content accounting. We validated our quantification method using supervised machine learning algorithms by collecting real soil mixed with known biochar contents in the field. The results show that the millimeter wave sensor achieves high sensing accuracy (up to 100%) with proper classifiers selected and outperforms the microwave sensor by approximately 10%–15% accuracy in sensing soil carbon content.

使用机器学习算法的非侵入式土壤碳含量定量方法:微波和毫米波雷达传感器的比较
农林生物质可以通过热解气化转化为生物炭,成为土壤的重要碳源。将生物炭应用于土壤是一个负碳过程,有助于应对气候变化、维持土壤生物多样性和调节水循环。然而,传统的土壤碳含量量化是耗时、劳动密集、不精确和昂贵的,因此很难准确测量田间土壤碳对蓄水和养分的影响。为了应对这一挑战,本文首次报道了广泛的实验室测试,证明了传感土壤碳的非侵入性方法和相关的智能生物炭应用,例如区分不同生物质原料物种的生物炭类型,使用便携式微波和毫米波传感器监测土壤湿度和生物炭保水能力,以及机器学习。这些方法可以通过在地面或空中的移动平台上部署传感器来扩大规模。本文详细介绍了我们的研究材料、方法、机器学习工作流程和结果。这项工作的意义为评估土壤碳含量核算等碳负技术应用奠定了基础。我们通过收集田间混合了已知生物炭含量的真实土壤,使用监督机器学习算法验证了我们的量化方法。结果表明,在选择合适的分类器的情况下,毫米波传感器实现了较高的传感精度(高达100%),并且在传感土壤碳含量方面比微波传感器高出约10%-15%的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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