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Modeling distribution of vegetation types in arid and semiarid rangelands of Iran through binary logistic regression and canonical correspondence analysis techniques

机译:二元逻辑回归和规范对应分析技术建模伊朗干旱和半干旱牧场地区的分布

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摘要

The distribution of nine vegetation types in arid and semiarid Nodushan rangelands was predicted based on the indicator species by using binary logistic regression (BLR) and canonical correspondence analysis (CCA) techniques. Nine soil variables (salinity, pH, C/N, available water, gravel, texture, gypsum, organic matter and lime) in two depths (0-20 and 20-60 cm) and three topographic variables (elevation, slope and aspect) were used for modeling. The habitat suitability was determined using the maximum sensitivity plus specificity threshold. Results indicated that the indicator species in each vegetation type was effective and efficient for modeling the distribution of the vegetation type. BLR models provided more accurate predictions than CCA models in most of the vegetation types. The vegetation type whose distribution was well modeled by CCA was also well modeled by BLR but not vice-versa. None of the techniques provided accurate results for the vegetation type that was under grazing disturbance.
机译:通过使用二元逻辑回归(BLR)和规范对应分析(CCA)技术,基于指示物种预测ARID和半干旱群岛九种植被类型的分布。九个土壤变量(盐度,pH,C / N,可用水,砾石,质地,石膏,有机物和石膏)在两个深度(0-20和20-60cm)和三个地形变量(高度,斜坡和方面)用于建模。使用最大灵敏度加上特异性阈值确定栖息地适用性。结果表明,每个植被类型的指标物种都是有效且有效地建模植被类型的分布。 BLR模型提供比大多数植被类型的CCA型号更准确的预测。 CCA分布良好的植被类型也由BLR建模良好,但不反之亦然。这些技术都没有提供植被类型的准确结果,该植被类型是放牧紊乱的植被类型。

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