Department of Geography, National Taiwan University, Taipei, 10617, Taiwan.
Graduate School of Disaster Management, Central Police University, Taoyuan, 33304, Taiwan.
Int J Biometeorol. 2018 May;62(5):809-822. doi: 10.1007/s00484-017-1482-2. Epub 2017 Dec 3.
Tropical and subtropical ecosystems, the largest terrestrial carbon pools, are very susceptible to the variability of seasonal precipitation. However, the assessment of drought conditions in these regions is often overlooked due to the preconceived notion of the presence of high humidity. Drought indices derived from remotely sensed imagery have been commonly used for large-scale monitoring, but feasibility of drought assessment may vary across regions due to climate regimes and local biophysical conditions. Therefore, this study aims to evaluate the feasibility of 11 commonly used MODIS-derived vegetation/drought index in the forest regions of Taiwan through comparison with the station-based standardized precipitation index with a 3-month time scale (SPI3). The drought indices were further transformed (standardized anomaly, SA) to make them better delineate the spatiotemporal variations of drought conditions. The results showed that the Normalized Difference Infrared Index utilizing the near-infrared and shortwave infrared bands (NDII6) may be more superior to other indices in delineating drought patterns. Overall, the NDII6 SA-SPI3 pair yielded the highest correlation (mean r ± standard deviation = 0.31 ± 0.13) and was most significant in central and south Taiwan (r = 0.50-0.90) during the cold, dry season (January and April). This study illustrated that the NDII6 is suitable to delineate drought conditions in a relatively humid region. The results suggested the better performance of the NDII6 SA-SPI3 across the high climate gradient, especially in the regions with dramatic interannual amplifications of rainfall. This synthesis was conducted across a wide bioclimatic gradient, and the findings could be further generalized to a much broader geographical extent.
热带和亚热带生态系统是最大的陆地碳汇,非常容易受到季节性降水变化的影响。然而,由于人们认为这些地区湿度高,往往忽略了对干旱条件的评估。基于遥感图像的干旱指数已被广泛用于大规模监测,但由于气候模式和当地生物物理条件的不同,干旱评估的可行性可能会有所不同。因此,本研究旨在通过与基于站点的标准化降水指数(SPI3,时间尺度为 3 个月)的比较,评估 11 种常用 MODIS 衍生植被/干旱指数在台湾森林地区的可行性。为了更好地描绘干旱条件的时空变化,对干旱指数进行了进一步的转换(标准化异常,SA)。结果表明,利用近红外和短波红外波段的归一化差异红外指数(NDII6)在描绘干旱模式方面可能优于其他指数。总体而言,NDII6 SA-SPI3 对的相关性最高(平均 r±标准偏差=0.31±0.13),在冷干季(1 月和 4 月)对台湾中部和南部的相关性最强(r=0.50-0.90)。本研究表明,NDII6 适合于描绘相对湿润地区的干旱条件。结果表明,NDII6 SA-SPI3 在高气候梯度下表现更好,尤其是在降雨量年际增幅较大的地区。本研究在广泛的生物气候梯度上进行,研究结果可以进一步推广到更广泛的地理范围。