The impact of inter-annual variability in remote sensing time series on modeling tree species distributions

A. Cord, D. Klein, S. Dech
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引用次数: 3

Abstract

Predictions of species occurrence as indicators of ecosystem integrity are of high relevance for decision-makers in conservation biology, invasive species' management, and climate change research. Remote sensing data can serve as valuable input for Species Distribution Models (SDMs) since they provide information on current habitat conditions and disturbance factors besides bioclimatic suitability which is commonly derived from climatic data. However, little is known about the usefulness of multi-temporal remote sensing data in general for modeling species distributions and the related effects of inter-annual variability on the extent and accuracy of modeled distribution ranges. This study investigates the above-mentioned questions for two tropical tree species, Brosimum alicastrum and Liquidambar macrophylla, in Mexico. From the MODIS 16-day vegetation index product (MOD13A2), 18 annual phenological metrics (time-related, NPP-related and seasonality-related) were computed for the period from 2001 to 2009 and combined to a set of multi-year average values (covering 3, 5, 7, and 9 years). The results show that inter-annual variability has a significant impact on model predictions and that models based on longer composite periods show less deviance from observed species presence-absence field data.
遥感时间序列年际变率对树种分布建模的影响
物种发生预测作为生态系统完整性的指标,对保护生物学、入侵物种管理和气候变化研究的决策者具有重要意义。遥感数据可以作为物种分布模型(SDMs)的宝贵输入,因为它们提供了关于当前栖息地条件和干扰因素的信息,而生物气候适宜性通常来自气候数据。然而,关于多时相遥感数据在模拟物种分布方面的作用以及年际变率对模拟分布范围的范围和准确性的相关影响,人们知之甚少。本研究对墨西哥两种热带树种白菖蒲(Brosimum alicastrum)和巨叶菖蒲(Liquidambar macrophylla)的上述问题进行了调查。利用MODIS 16天植被指数产品(MOD13A2),计算了2001 - 2009年18个年际物候指标(时间相关、npp相关和季节相关),并将其合并为一组多年平均值(覆盖3、5、7和9年)。结果表明,年际变率对模式预测结果有显著影响,且基于较长复合周期的模式与观测到的物种有无野外数据偏差较小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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