ON THE EVALUATION OF THE GRADIENT TREE BOOSTING MODEL FOR GROUNDWATER LEVEL FORECASTING

Sujay Raghavendra Naganna, B. H. Beyaztas, N. Bokde, A. Armanuos
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引用次数: 34

Abstract

Though groundwater is a replenishable resource, it’s over exploitation has posed greater problem of its depletion. Hence, monitoring and forecasting of groundwater levels has become a primary task of governmental water boards/agencies for sustainable water management. The current study focused on evaluating the performance of Gradient Tree Boosting (GTB) model with that of conventional Adaptive Neuro-Fuzzy Inference System (ANFIS) and Group Method of Data Handling (GMDH) models in forecasting groundwater levels of two coastal aquifers. Data of two groundwater level monitoring wells penetrating into unconfined aquifers located at Shirtadi and Rayee near to Mangalore city of Karnataka state, India was considered in the present study. Monthly groundwater level data of the years 2000 – 2013 were used for model simulation; wherein 70% of data was used for model training and the remaining 30% served as testing data. Comparative result evaluation shows that the proposed GTB approach for one month ahead groundwater level forecasting was giving much accurate results than the other models for the same period of time and same set of data. For Rayee monitoring well, the error statistic, RRMSE of GTB, GMDH and ANFIS models obtained during test phase were 0.473, 0.517 and 0.7522, respectively. The comparison is examined further with different performance metrics.
梯度树提升模型在地下水位预报中的评价
地下水是一种可补充的资源,但过度开采造成了更大的枯竭问题。因此,监测和预测地下水位已成为政府水务局/机构可持续水管理的一项主要任务。本文研究了梯度树增强(GTB)模型与传统的自适应神经模糊推理系统(ANFIS)模型和数据处理组方法(GMDH)模型在预测两个沿海含水层地下水位中的性能。本研究考虑了位于印度卡纳塔克邦芒格洛尔市附近Shirtadi和Rayee的两个地下水位监测井的数据,这些井渗透到无承压含水层。采用2000 - 2013年的月地下水位数据进行模型模拟;其中70%的数据用于模型训练,其余30%作为测试数据。对比结果评价表明,本文提出的GTB方法预测1个月前地下水位的预报结果比其他模型在同一时间段、同一资料下的预报结果要准确得多。对于Rayee监测井,测试阶段得到的GTB、GMDH和ANFIS模型的误差统计量和RRMSE分别为0.473、0.517和0.7522。用不同的性能指标进一步进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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