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Remote sensing of fuel moisture content from canopy water indices and normalized dry matter index

机译:根据冠层水分指数和标准化干物质指数遥感燃料水分含量

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Fuel moisture content (FMC), an important variable for predicting the occurrence and spread of wildfire, is the ratio of foliar water content and foliar dry matter content. One approach for the remote sensing of FMC has been to estimate the change in canopy water content over time by using a liquid-water spectral index. Recently, the normalized dry matter index (NDMI) was developed for the remote sensing of dry matter content using high-spectral-resolution data. The ratio of a spectral water index and a dry matter index corresponds to the ratio of foliar water and dry matter contents; therefore, we hypothesized that FMC may be remotely sensed with a spectral water index divided by NDMI. For leaf-scale simulations using the PROSPECT (leaf optical properties spectra) model, all water index/NDMI ratios were significantly related to FMC with a second-order polynomial regression. For canopy-scale simulations using the SAIL (scattering by arbitrarily inclined leaves) model, two water index/NDMI ratios, with numerators of the normalized difference infrared index (NDII) and the normalized difference water index (NDWI), predicted FMC with R~2 values of 0.900 and 0.864, respectively. Leaves from three species were dried or stacked to vary FMC; measured NDII/NDMI was best related to FMC. Whereas the planned NASA mission Hyperspectral Infrared Imager (HyspIRI) will have high spectral resolution and very high signal-to-noise properties, the planned 19-day repeat frequency will not be sufficient for monitoring FMC with NDII/NDMI. Because increased fire frequency is expected with climatic change, operational assessment of FMC at large scales may require polar-orbiting environmental sensors with narrow bands to calculate NDMI.
机译:燃料含水量(FMC)是预测野火的发生和蔓延的重要变量,是叶面含水量与叶面干物质含量的比值。 FMC遥感的一种方法是通过使用液态水光谱指数来估算冠层水含量随时间的变化。最近,使用高光谱分辨率数据开发了标准化干物质指数(NDMI),用于遥感干物质含量。光谱水指数与干物质指数之比对应于叶面水分与干物质含量之比;因此,我们假设FMC可以用光谱水指数除以NDMI进行遥感。对于使用PROSPECT(叶片光学特性光谱)模型进行的叶尺度模拟,所有水指数/ NDMI比率均与FMC显着相关(具有二阶多项式回归)。对于使用SAIL(任意倾斜叶片的散射)模型进行的冠层尺度模拟,两个水指数/ NDMI比率以及归一化差红外指数(NDII)和归一化差水指数(NDWI)的分子将预测FMC的R〜 2个值分别为0.900和0.864。将三种物种的叶片干燥或堆叠以改变FMC;测量的NDII / NDMI与FMC最相关。计划中的NASA任务高光谱红外成像仪(HyspIRI)将具有高光谱分辨率和非常高的信噪比特性,而计划中的19天重复频率将不足以用NDII / NDMI监视FMC。由于随着气候变化预计火频率会增加,因此FMC的大规模运行评估可能需要具有窄带的极地轨道环境传感器来计算NDMI。

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