首页> 外文期刊>International journal of applied earth observation and geoinformation >Spatio-temporal variability in remotely sensed land surface temperature, and its relationship with physiographic variables in the Russian Altay Mountains
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Spatio-temporal variability in remotely sensed land surface temperature, and its relationship with physiographic variables in the Russian Altay Mountains

机译:俄罗斯阿勒泰山区遥感地表温度的时空变化及其与生理变量的关系

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Spatio-temporal variability in energy fluxes at the earth’s surface implies spatial and temporal changes in observed land surface temperatures (LST). These fluxes are largely determined by variation in meteorological conditions, surface cover and soil characteristics. Consequently, a change in these parameters will be reflected in a different temporal LST behavior which can be observed by remotely sensed time series. Therefore, the objective of this paper is to perform a quantitative analysis on the parameters that determine this variability in LST to estimate the impact of changes in these parameters on the surface thermal regime. This study was conducted in the Russian Altay Mountains, an area characterized by strong gradients in meteorological conditions and surface cover. Spatio-temporal variability in LST was assessed by applying the fast Fourier transform (FFT) on 8 year of MODIS Aqua LST time series, herein considering both day and nighttime series as well as the diurnal difference. This FFT method was chosen as it allows to discriminate significant periodics, and as such enables distinction between short-term weather components, and strong, climate related, periodic patterns. A quantitative analysis was based on multiple linear regression models between the calculated, significant Fourier components (i.e. the annual and average component) and five physiographic variables representing the regional variability in meteorological conditions and surface cover. Physiographic predictors were elevation, potential solar insolation, topographic convergence, vegetation cover and snow cover duration. Results illustrated the strong inverse relationship between averaged daytime and diurnal difference LST and snow duration, with a R_(adj)~2 of 0.85 and 0.60, respectively. On the other hand, nocturnal LST showed a strong connection with elevation and the amount of vegetation cover. Amplitudes of the annual harmonic experienced both for daytime and for nighttime LST similar trends with the set of physiographic variables – with stronger relationships at night. As such, topographic convergence was found to be the principal single predictor which demonstrated the importance of severe temperature inversions in the region. Furthermore, limited contribution of the physiographic predictors to the observed variation in the annual signal of the diurnal difference was retrieved, although a significant phase divergence was noticed between the majority of the study region and the perennial snowfields. Hence, this study gives valuable insights into the complexity of the spatio-temporal variability in LST, which can be used in future studies to estimate the ecosystems’ response on changing climatic conditions.
机译:地球表面能量通量的时空变化意味着观测到的陆地表面温度(LST)的时空变化。这些通量很大程度上取决于气象条件,地表覆盖率和土壤特性的变化。因此,这些参数的变化将反映在不同的时间LST行为中,这可以通过遥感时间序列观察到。因此,本文的目的是对确定LST中这种可变性的参数进行定量分析,以估计这些参数的变化对表面热状态的影响。这项研究是在俄罗斯阿勒泰山脉进行的,该地区的气象条件和地表覆盖度呈强烈梯度。通过在MODIS Aqua LST时间序列的8年中应用快速傅里叶变换(FFT)来评估LST的时空变异性,此处考虑了白天和夜间序列以及昼夜差异。选择该FFT方法是因为它可以区分重要的周期,因此可以区分短期天气成分和与气候相关的强周期模式。定量分析是基于多个线性回归模型进行的,这些线性回归模型在计算出的重要傅里叶分量(即年度分量和平均分量)与代表气象条件和地表覆盖率区域差异的五个生理变量之间进行了定量分析。生理预测指标包括海拔,潜在的日照,地形收敛,植被覆盖和积雪持续时间。结果表明,平均日间昼夜差异LST与降雪持续时间之间存在很强的反比关系,R_(adj)〜2分别为0.85和0.60。另一方面,夜间LST与海拔高度和植被覆盖量密切相关。白天和夜间LST经历的年谐波振幅与一组生理变量都具有相似的趋势-夜间关系更强。因此,地形收敛被认为是主要的单一预测因子​​,它显示了该地区严重温度反转的重要性。此外,尽管发现大部分研究区域和多年生雪场之间存在明显的相差,但仍恢复了生理预测指标对日变化的年度信号观测值变化的有限贡献。因此,这项研究为LST时空变异的复杂性提供了宝贵的见解,可用于将来的研究中,以估计生态系统对气候条件变化的响应。

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