Adler Paul R
United States Department of Agriculture, Agricultural Research Service (USDA-ARS), Pasture Systems and Watershed Management Research Unit, University Park, PA, United States.
Front Plant Sci. 2023 Jul 27;14:1029141. doi: 10.3389/fpls.2023.1029141. eCollection 2023.
There has been considerable interest in use of Miscanthus (Miscanthus x giganteus) as a feedstock for bioenergy production due to its potential to reduce greenhouse gas emissions associated with cellulosic feedstock production and more recently for alternative uses as a biomass crop. To date, data on Miscanthus production in the US has been based on small scale research plots due to the lack of commercial scale production fields. Research plot yields are often much higher than commercial fields for a variety of reasons including reduced spatial variability and location on better quality farmland. The objectives of this study were to quantify the inputs for production of Miscanthus at the commercial farm scale, evaluating methods to characterize fuel use for establishment and management of Miscanthus production and using satellite data to characterize spatial yield variation of production fields. We logged energy use on agricultural machinery from Miscanthus production planted on more than 1000 ha of land and modeled NO emissions and changes in soil carbon using DayCent. Although fuel use was higher for land preparation in fields with perennial vegetation, fuel to harvest Miscanthus dominated greenhouse gas (GHG) emissions (>90%) from agriculture machinery for crop management. The NO emissions and changes in soil carbon were the largest source and sink of GHG emissions associated with Miscanthus production, respectively. Although ~ 50% of the established lands had Miscanthus yields < 5 Mg/ha, yields needed to be > 5 Mg/ha for ΔSOC to be positive. Given the large impact of yield on ΔSOC, net GHG for Miscanthus production with yields of 5 to 25 Mg/ha ranged ~130 to -260 kg COe/Mg biomass. Use of both energy use for Miscanthus harvest and satellite imagery were good methods to characterize spatial variability of commercial production fields. This demonstrates the potential to use this within field yield data to better understand factors driving subfield yield variability and use of satellite data to quantify early yield predictions.
由于芒草(巨芒草)有潜力减少与纤维素原料生产相关的温室气体排放,且最近还可作为生物质作物用于其他用途,因此人们对将其用作生物能源生产原料产生了浓厚兴趣。迄今为止,由于缺乏商业规模的生产田,美国关于芒草生产的数据一直基于小规模研究地块。由于包括空间变异性降低以及位于质量更好的农田等多种原因,研究地块的产量通常远高于商业田块。本研究的目的是量化商业农场规模下芒草生产的投入,评估表征芒草生产建立和管理过程中燃料使用的方法,并利用卫星数据表征生产田块的空间产量变化。我们记录了种植在超过1000公顷土地上的芒草生产过程中农业机械的能源使用情况,并使用DayCent模型模拟了一氧化氮排放和土壤碳变化。尽管多年生植被田块整地的燃料使用量更高,但收获芒草的燃料占农业机械用于作物管理的温室气体排放的主导地位(>90%)。一氧化氮排放和土壤碳变化分别是与芒草生产相关的温室气体排放的最大源和汇。尽管约50%已开垦土地上的芒草产量<5 Mg/公顷,但产量需>5 Mg/公顷才能使土壤有机碳变化为正值。鉴于产量对土壤有机碳变化的巨大影响,产量为5至25 Mg/公顷的芒草生产的净温室气体排放量约为130至 -260 kg CO₂e/ Mg生物质。将芒草收获的能源使用和卫星图像结合起来是表征商业生产田块空间变异性的良好方法。这表明利用田间产量数据来更好地理解驱动亚田间产量变异性的因素以及利用卫星数据量化早期产量预测具有潜力。