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Hybrid computational intelligence models for groundwater potential mapping

机译:用于地下水潜在映射的混合计算智能模型

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摘要

Groundwater is the most important natural resource in many parts of the world that requires advanced new technologies for monitoring and control. This study presents a comparative analysis of three novel hybrid computational intelligence models that consist of a base Decision Stump classifier and three ensemble learning techniques, i.e., Rotation Forest, MultiBoost, and Bagging, for the groundwater potential mapping. Ten influencing factors (i.e., slope, aspect, plan curvature, topographic wetness index, rainfall, river density, lithology, land use, and soil) and 34 groundwater wells from the Vadodara district, Gujarat, India, were used to prepare a geospatial database. Using this database, three hybrid groundwater models, i.e., Rotation Forest based Decision Stump, MultiBoost based Decision Stump, and Bagging based Decision Stump, were developed. Based on a variety of performance metrics, it is revealed that the Rotation Forest based Decision Stump model had the best performance, followed by the MultiBoost based Decision Stump and Bagging based Decision Stump models. However, all the novel hybrid computational models presented here provided improved estimates of groundwater potential compared to those in previous studies and are sufficiently general to be used in many different landscapes around the world.
机译:地下水是世界许多地方最重要的自然资源,需要先进的新技术来监测和控制。本研究提出了三种新型混合计算智能模型的比较分析,该智能模型包括基本决策树桩分类器和三个集合学习技术,即旋转林,多滤器和袋装,用于地下水潜在映射。古吉拉拉,印度Vadodara区的10种影响因素(即坡,方面,平面曲率,地形湿度指数,降雨,河流密度,岩性,土地利用和土地利用34个地下水井被用来准备一个地理空间数据库。使用该数据库,三种混合地下水模型,即旋转林基的决策树桩,基于多功能机构的决策树桩和基于袋装的决策树桩。基于各种性能指标,揭示了旋转林的决策树桩模型具有最佳性能,其次是基于多滤器基于决策树桩和袋装的决策树桩型号。然而,这里呈现的所有新型混合计算模型提供了与先前研究中的那些相比的地下水潜力的估计,并且足够一般可用于世界各地的许多不同景观中。

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