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An evaluation of predictive habitat models performance of plant species in Hoze soltan rangelands of Qom province

H.P. Sahragard and M.A. Zare Chahouki

Ecological Modelling, 2015, vol. 309-310, 64-71

Abstract: The current study addresses an assessment of performance of modeling techniques including logistic regression (LR), maximum entropy modeling technique (MaxEnt) and artificial neural network (ANN) to predict habitat distribution of plant species in Qom Province rangelands of Iran. After determination of homogeneous units, vegetation sampling was carried out using random systematic method. Depending on the plant species, the plot size was determined using Minimal Area method from 2 to 25m2. Sample size was also determined to be 60 plots with respect to vegetation cover variations using statistical method. In order to sample the soil at each habitat, eight holes was drilled and samples were taken from 0 to 30 and 30 to 80cm depths. Plant distribution modeling was conducted using LR, the MaxEnt and ANN. After implementation of the model, to evaluate and predict the actual maps conformity, Kappa coefficient and true skill statistic (TSS) were measured. On the basis of Kappa and TSS values calculated, prediction accuracy of the methods used varies for different habitats. Results indicate that LR model is capable to predict habitats distribution of Halocnemum strobilaceum, which has limited ecological niche at very good level (κ=0.71). The model obtained from the MaxEnt could predict habitat distribution of Artemisia sieberi at very good level. However, the prediction maps derived from ANN models for all studied habitats were obtained to be at good and very good level. Results indicate a strong relationship between model performance and the kinds of species distributions being modeled. Some methods performed generally better, but no method was superior in all circumstances. Based on these results it can be said that in order to choose the optimal approach of habitats distribution modeling in addition to the statistical considerations, purpose and expected accuracy, data available types, ecological niche range of species and be interpreted of method in terms of ecological concepts also should be considered.

Keywords: Modeling distribution of plant species; Qom rangelands; Logistic regression; Maximum entropy; Artificial neural network; Geostatistics (search for similar items in EconPapers)
Date: 2015
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Persistent link: https://EconPapers.repec.org/RePEc:eee:ecomod:v:309-310:y:2015:i::p:64-71

DOI: 10.1016/j.ecolmodel.2015.04.005

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