基于熵权决策理论的沿海含水层盐水入侵预测元模型选择

D. Roy, B. Datta
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引用次数: 1

摘要

元模型的正确选择是决定海岸带含水层海水入侵预测精度的重要因素之一。本文采用基于熵权的决策理论对元模型的性能进行排序。考虑了6个元模型的训练和验证,这些元模型是由统一的流动和溶质运移模型产生的一组输入-输出训练模式。对绩效评价指标赋予熵权,以确定指标在元模型绩效中的比较显著性。然后将元模型结合各个性能指标的相对重要性进行排序。这种排名方法通过考虑一组性能指标而不是依赖于单一指标,为元模型选择提供了可靠性。并与变差系数加权法进行了比较。结果表明,所提出的基于熵权的排序方法可以成功地选择预测海岸线含水层海水入侵过程的最佳元模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selection of Meta-models to Predict Saltwater Intrusion in Coastal Aquifers Using Entropy Weight Based Decision Theory
Right choice of meta-models is one of the most important factors determining the accuracy of predicting seawater intrusion phenomena in the aquifers of coastal belts. In this paper, entropy weight based decision theory is applied to rank the performances of meta-models. Six meta-models trained and validated by a set of input-output training patterns generated from a unified flow and solute transport model for saltwater intrusion are considered. Entropy weights are assigned to performance evaluation indicators in order to decide on the comparative significance of the indicators in meta-model performance. Meta-models are then ranked by incorporating this relative importance of individual performance indicators. This method of ranking provides reliability in meta-model selection by considering a set of performance indicators instead of relying on a single indicator. Furthermore, this method is compared with variation coefficient weighting method. It is shown that the proposed entropy weight based ranking methodology can be successfully applied to select the best meta-model for predicting seawater intrusion processes in coastline aquifers.
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