首页> 外文期刊>Catena: An Interdisciplinary Journal of Soil Science Hydrology-Geomorphology Focusing on Geoecology and Landscape Evolution >Comparative assessment using boosted regression trees, binary logistic regression, frequency ratio and numerical risk factor for gully erosion susceptibility modelling
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Comparative assessment using boosted regression trees, binary logistic regression, frequency ratio and numerical risk factor for gully erosion susceptibility modelling

机译:使用升压回归树的比较评估,沟壑腐蚀易感性建模的二元逻辑回归,频率比和数值风险因素

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The initiation and development of gullies as worldwide features in landscape have resulted in land degradation, soil erosion, desertification, flooding and groundwater level decrease, which in turn, cause severe destruction to infrastructure. Gully erosion susceptibility mapping is the first and most important step in managing these effects and achieving sustainable development. This paper attempts to generate a reliable map using four state-of-the-art models to investigate the Bayazeh Watershed in Iran. These models consists of boosted regression trees (BRT), binary logistic regression (BLR), numerical risk factor (NRF) and frequency ratio (FR), which are based on a geographic information system (GIS). The gully erosion inventory map accounts for 362 gully locations, which were randomly divided into two groups (70% for training and 30% for validation). Sixteen topographical, geological, hydrological and environmental gully-related conditioning factors were selected for modelling. The threshold-independent area under receiver operating characteristic (AUROC) and seed cell area index (SCAI) approaches were used for validation. According to the results of BLR and BRT, the conditioning parameters namely, NDVI and lithology, played a key role in gully occurrence. Validation results showed that the BRT model with AUROC = 0.834 (83.4%) had higher prediction accuracy than other models, followed by FR 0.823 (82.3%), NRF 0.746 (74.6%) and BLR 0.659 (65.9%). SCAI results indicated that the BRT, FR and BLR models had acceptable classification accuracy. The findings, in terms of model and predictor choice, can be used by decision-makers for hazard management and implementation of protective measures in gully erosion-prone areas.
机译:牙龈的启动和发展在景观中的全球特征,导致土地退化,土壤侵蚀,荒漠化,洪水和地下水位下降,这反过来又因对基础设施的严重破坏。沟壑腐蚀易感性映射是管理这些效果和实现可持续发展的第一个也是最重要的一步。本文试图使用四个最先进的模型来创造可靠的地图,以调查伊朗的Bayazeh流域。这些模型由提升的回归树(BRT),二进制逻辑回归(BLR),数值风险因数(NRF)和频率比(FR)组成,其基于地理信息系统(GIS)。沟壑侵蚀库存地图占362个沟壑的地点,随机分为两组(培训70%,验证30%)。选择了16个地形,地质,水文和环境沟壑相关的调节因子进行建模。接收器操作特征(AUROC)和种子细胞区域指数(SCAI)方法下的阈值独立区域用于验证。根据BLR和BRT的结果,调节参数即NDVI和岩性,在沟壑出现时发挥了关键作用。验证结果表明,具有Auroc = 0.834(83.4%)的BRT模型具有比其他模型更高的预测精度,其次是FR 0.823(82.3%),NRF 0.746(74.6%)和BLR 0.659(65.9%)。 SCAI结果表明,BRT,FR和BLR模型具有可接受的分类准确性。在模型和预测的选择方面,决策者可以使用沟壑侵蚀地区保护措施的决策者来使用调查结果。

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