CSpace
Testing unidimensional species distribution models to forecast and hindcast changes in marsh vegetation over 40years
Lou, Yanjing1,2; Liu, Ying3; Tang, Zhanhui4; Jiang, Ming1; Lu, Xianguo1; Rydin, Håkan2
2019
摘要Species distribution models (SDM) predicting changes in species occurrences and abundance are increasingly being used as a tool in biogeography and conservation biology. However, we have little information on their predictive performance. Here we used archive-recorded predictor and field-observational verifier data associated with water level to evaluate the performance of response curves over 40 years for marsh plant species in Northeast China. A consensus approach (AUC: area-under-curve) was used as the test measure for internal evaluation and external evaluation (forecast and hindcast). Our results demonstrated that there is no significant differences between internal and external evaluation, and they both showed reasonable accuracy (AUC = 0.73, respectively). There was considerable variation across species and projection direction in model accuracy, and accuracy of model fitting in internal evaluation and restricting the environmental range of data in different time periods may impact the performance of model projection over time. The performance of generalized additive models (GAM) is similar with that of extended Huisman-Olff-Fresco models (eHOF). Cover model is a little better than presence/absence models in prediction over time. Our findings provide some guidelines for the use of SDM for predictions under environmental change. © 2019 Elsevier Ltd
DOI10.1016/j.ecolind.2019.05.024
发表期刊Ecological Indicators
ISSN1470160X
卷号104页码:341-346
语种英语