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An efficient method for estimating dormant season grass biomass in tallgrass prairie from ultra-high spatial resolution aerial imaging produced with small unmanned aircraft systems

机译:用小型飞机系统生产的超高空间分辨率空中成像估算休眠季草生物量的高效方法

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摘要

Fire is used extensively in prairie grassland management in the Flint Hills region of the midwestern United States, particularly at the end of the dormant season (March-April). A model is used to manage grassland fires in the region to avoid deterioration of air quality beyond acceptable standards. Dormant season dry biomass is an important parameter in the model. The commonly used method for producing high-quality biomass estimates relies on clipping, drying and weighing small biomass samples, which is tedious, expensive and does not scale efficiently to larger areas to provide regional estimates. Small unmanned aircraft systems (sUAS) were used to develop a reliable and more efficient method of biomass estimation based on the correlation between biomass and vegetation canopy height derived from digital surface models (DSMs). A linear regression model was developed from data collected at 11 representative sites in the Kansas Flint Hills region, and the model was validated at two sites. Biomass and canopy heights derived from DSMs were correlated, with a Pearson product moment correlation value of 0.881 (P-value <0.001). Biomass estimated from clipped vegetation at two validation sites positively correlated with model-derived biomass estimates, resulting in linear regression R-2-values of 0.90 and 0.74 and Pearson moment correlation coefficients of 0.99 (P<0.001) and 0.86 (P=0.003). The described sUAS method has the potential to increase the efficiency and reliability of dormant season grassland biomass estimates.
机译:火灾在美国中西部弗林特山地区的大草原草地管理中广泛使用,特别是在休眠季节(4月)结束时。模型用于管理该地区的草原火灾,以避免超出可接受的标准的空气质量的恶化。休眠季节干生物量是模型中的重要参数。用于生产高质量生物质估计的常用方法依赖于剪切,干燥和称重小生物质样品,这是繁琐的,昂贵的,并且不高效地扩展到更大的区域以提供区域估计。小型无人机系统(SUAS)用于基于生物质和植被冠层高度(DSM)的生物质和植被冠层高度的相关性来开发可靠和更有效的生物量估计方法。线性回归模型是从堪萨斯福林山区11个代表站点收集的数据开发的,并且该模型在两个站点验证。从DSM衍生的生物质和冠层高度相关,Pearson产品矩相关值为0.881(p值<0.001)。在两个验证网站的剪切植被估计的生物量与模型衍生的生物量估算呈正相关,导致线性回归R-2值0.90和0.74,Pearson Mony的相关系数为0.99(p <0.001)和0.86(p = 0.003) 。所描述的SUAS方法有可能提高休眠季草原生物量估计的效率和可靠性。

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