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Similarities in ground- and satellite-based NDVI time series and their relationship to physiological activity of a Scots pine forest in Finland

机译:基于地面和卫星的NDVI时间序列的相似性及其与芬兰松树森林的生理活性的关系

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Daily time-step normalized difference vegetation index (NDVI) time series from satellite-derived (NOAA/AVHRR, SPOT/ VEGETATION, TERRA/MODIS) and ground-based micrometeorological sensors were evaluated for a coniferous pine forest (Pinus sylvestris L.) located in Hyytiala, Finland. Micrometeorology-based broadband NDVI was calculated from observed upward and downward photosynthetically activity radiation (PAR) and global radiation measurements. The composite satellite-derived NDVI time series were smoothed with a best index slope extraction method (BISE) and adjusted Fourier transform (AFT) in order to downscale from the compositing period to daily scale. The broadband and satellite-derived NDVIs were highly correlated during the main growth period (Julian days 90-270), but poorly correlated when the entire year was considered, i.e., large differences occurred during winter. High correlations were also found between the seasonal courses for broadband NDVI and daily air temperature. The analysis revealed that the onset of greenness in spring was consistently determined from broadband NDVI time series in different years, but that fluctuations in NDVI during the late season transition to winter dormancy prevented reliable prediction of the termination in physiological activity. Efforts to retrieve the same relationships during spring from satellite-derived NDVI failed. After comparing the smoothed time series from different NDVI determinations, we examined the relationship between NDVI, gross primary production (GPP) and FAPAR. An obvious exponential relationship is found between broadband NDVI and GPP (R2=0.72 for clear weather conditions; also detectable from the satellite sensors), while a linear relationship occurs between broadband NDVI and FAPAR (R{sup}2=0.79). FAPAR in relation to satellite-derived NDVI is best described with a logistic curve under clear weather conditions, but the level of correspondence is low (R{sup}2=0.53). Overall, broadband NDVI is a good index to describe physiological activity of the pine forest during certain periods, i.e. provides a means for obtaining other physiological parameters that are required by ecosystem models. However, during the late season, broadband NDVI estimated over the pine stand is influenced by more than vegetation physiological activity. Though satellite-derived NDVI is more difficult to link to GPP, it may still provide useful information under clear weather conditions, Satellite-derived NDVI remains our only choice for generalization in large-scale investigations. Thus, intensified examination of the influences of smoothing and downscaling of satellite-derived NDVI is inevitable.
机译:针对位于针叶松树林(Pinus sylvestris L.)的卫星衍生(NOAA / AVHRR,SPOT / VEGETATION,TERRA / MODIS)和地面微气象传感器的每日时间步归一化差异植被指数(NDVI)时间序列进行了评估。在芬兰Hyytiala。基于微气象学的宽带NDVI是根据观察到的向上和向下的光合活动辐射(PAR)和整体辐射测量值计算得出的。使用最佳指数斜率提取方法(BISE)和调整傅里叶变换(AFT)对合成的卫星NDVI时间序列进行平滑处理,以便将其从合成周期缩减为每日尺度。在主要生长时期(朱利安90-270天),宽带和基于卫星的NDVI高度相关,但如果考虑全年,则相关性很低,即冬季差异很大。在宽带NDVI的季节性过程与每日气温之间也发现高度相关。分析表明,春季的绿色开始是由不同年份的宽带NDVI时间序列一致确定的,但是在后期过渡到冬季休眠期间NDVI的波动无法可靠地预测生理活动的终止。春季从卫星NDVI恢复相同关系的尝试失败了。在比较了来自不同NDVI确定的平滑时间序列后,我们检查了NDVI,总初级生产量(GPP)和FAPAR之间的关系。在宽带NDVI和GPP之间发现了明显的指数关系(晴天时R2 = 0.72;也可以从卫星传感器检测到),而在宽带NDVI和FAPAR之间存在线性关系(R {sup} 2 = 0.79)。相对于卫星衍生的NDVI的FAPAR最好用晴朗天气条件下的对数曲线来描述,但是对应水平较低(R {sup} 2 = 0.53)。总体而言,宽带NDVI是描述某些时期松树林的生理活动的良好指标,即提供了一种获取生态系统模型所需的其他生理参数的方法。然而,在后期,松树林上估计的宽带NDVI受植被生理活动的影响更大。尽管从卫星获得的NDVI很难链接到GPP,但它仍然可以在晴朗的天气条件下提供有用的信息,而从卫星获得的NDVI仍然是我们进行大规模调查的唯一选择。因此,不可避免地要对卫星衍生的NDVI的平滑化和缩小化的影响进行深入研究。

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