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利用人工智能方法对地下水硝酸盐浓度进行建模——以加沙沿海含水层为例。

Modeling of nitrate concentration in groundwater using artificial intelligence approach--a case study of Gaza coastal aquifer.

机构信息

School of Civil Engineering, Universiti Sains Malaysia, 14300, Nibong Tebal, Pulau Pinang, Malaysia.

出版信息

Environ Monit Assess. 2014 Jan;186(1):35-45. doi: 10.1007/s10661-013-3353-6. Epub 2013 Aug 23.

Abstract

Nitrate concentration in groundwater is influenced by complex and interrelated variables, leading to great difficulty during the modeling process. The objectives of this study are (1) to evaluate the performance of two artificial intelligence (AI) techniques, namely artificial neural networks and support vector machine, in modeling groundwater nitrate concentration using scant input data, as well as (2) to assess the effect of data clustering as a pre-modeling technique on the developed models' performance. The AI models were developed using data from 22 municipal wells of the Gaza coastal aquifer in Palestine from 2000 to 2010. Results indicated high simulation performance, with the correlation coefficient and the mean average percentage error of the best model reaching 0.996 and 7 %, respectively. The variables that strongly influenced groundwater nitrate concentration were previous nitrate concentration, groundwater recharge, and on-ground nitrogen load of each land use land cover category in the well's vicinity. The results also demonstrated the merit of performing clustering of input data prior to the application of AI models. With their high performance and simplicity, the developed AI models can be effectively utilized to assess the effects of future management scenarios on groundwater nitrate concentration, leading to more reasonable groundwater resources management and decision-making.

摘要

地下水硝酸盐浓度受到复杂且相互关联的变量的影响,这使得在建模过程中存在很大的困难。本研究的目的是:(1)评估两种人工智能(AI)技术,即人工神经网络和支持向量机,在使用少量输入数据对地下水硝酸盐浓度进行建模方面的性能;(2)评估数据聚类作为一种预建模技术对所开发模型性能的影响。使用来自巴勒斯坦加沙沿海含水层的 22 个市政井的数据,于 2000 年至 2010 年期间建立 AI 模型。结果表明,这些模型具有很高的模拟性能,最佳模型的相关系数和平均平均百分比误差分别达到 0.996 和 7%。强烈影响地下水硝酸盐浓度的变量是先前的硝酸盐浓度、地下水补给以及每个井附近土地利用/土地覆盖类别中的地面氮负荷。结果还表明,在应用 AI 模型之前对输入数据进行聚类是有价值的。所开发的 AI 模型具有高性能和简单性,可以有效地用于评估未来管理情景对地下水硝酸盐浓度的影响,从而实现更合理的地下水资源管理和决策。

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