Department of Sustainability and Environment, University of South Dakota, Vermillion, SD, 57069, USA.
Department of Biology, University of South Dakota, Vermillion, SD, 57069, USA.
Environ Manage. 2024 Oct;74(4):742-756. doi: 10.1007/s00267-024-02021-0. Epub 2024 Jul 29.
The adoption of conservation agriculture methods, such as conservation tillage and cover cropping, is a viable alternative to conventional farming practices for improving soil health and reducing soil carbon losses. Despite their significance in mitigating climate change, there are very few studies that have assessed the overall spatial distribution of cover crops and tillage practices based on the farm's pedoclimatic and topographic characteristics. Hence, the primary objective of this study was to use multiple satellite-derived indices and environmental drivers to infer the level of tillage intensity and identify the presence of cover crops in eastern South Dakota (SD). We used a machine learning classifier trained with in situ field samples and environmental drivers acquired from different remote sensing datasets for 2022 and 2023 to map the conservation agriculture practices. Our classification accuracies (>80%) indicate that the employed satellite spectral indices and environmental variables could successfully detect the presence of cover crops and the tillage intensity in the study region. Our analysis revealed that 4% of the corn (Zea mays) and soybean (Glycine max) fields in eastern SD had a cover crop during either the fall of 2022 or the spring of 2023. We also found that environmental factors, specifically seasonal precipitation, growing degree days, and surface texture, significantly impacted the use of conservation practices. The methods developed through this research may provide a viable means for tracking and documenting farmers' agricultural management techniques. Our study contributes to developing a measurement, reporting, and verification (MRV) solution that could help used to monitor various climate-smart agricultural practices.
采用保护性农业方法,如保护性耕作和覆盖作物,是改善土壤健康和减少土壤碳损失的传统耕作方法的可行替代方案。尽管它们在缓解气候变化方面意义重大,但很少有研究基于农场的土壤气候和地形特征评估覆盖作物和耕作实践的总体空间分布。因此,本研究的主要目的是使用多个卫星衍生指数和环境驱动因素来推断耕作强度,并确定南达科他州东部(SD)覆盖作物的存在。我们使用了一种基于现场样本和不同遥感数据集获取的环境驱动因素进行训练的机器学习分类器,用于 2022 年和 2023 年的制图保护农业实践。我们的分类精度(>80%)表明,所采用的卫星光谱指数和环境变量可以成功检测研究区域覆盖作物和耕作强度的存在。我们的分析表明,在南达科他州东部的玉米(Zea mays)和大豆(Glycine max)田中,有 4%的田块在 2022 年秋季或 2023 年春季种植了覆盖作物。我们还发现,环境因素,特别是季节性降水、生长度日和地表质地,对保护性耕作的使用有重大影响。通过这项研究开发的方法可以为跟踪和记录农民的农业管理技术提供可行的手段。我们的研究有助于开发一种测量、报告和验证(MRV)解决方案,以帮助监测各种气候智能型农业实践。