Ocampo-Duque William, Schuhmacher Marta, Domingo José L
School of Chemical and Process Engineering, Rovira i Virgili University, Av. Países Catalanes 26, 43007 Tarragona, Spain.
Environ Pollut. 2007 Jul;148(2):634-41. doi: 10.1016/j.envpol.2006.11.027. Epub 2007 Jan 23.
A methodology based on a hybrid approach that combines fuzzy inference systems and artificial neural networks has been used to classify ecological status in surface waters. This methodology has been proposed to deal efficiently with the non-linearity and highly subjective nature of variables involved in this serious problem. Ecological status has been assessed with biological, hydro-morphological, and physicochemical indicators. A data set collected from 378 sampling sites in the Ebro river basin has been used to train and validate the hybrid model. Up to 97.6% of sampling sites have been correctly classified with neural-fuzzy models. Such performance resulted very competitive when compared with other classification algorithms. With non-parametric classification-regression trees and probabilistic neural networks, the predictive capacities were 90.7% and 97.0%, respectively. The proposed methodology can support decision-makers in evaluation and classification of ecological status, as required by the EU Water Framework Directive.
一种基于模糊推理系统和人工神经网络相结合的混合方法已被用于对地表水的生态状况进行分类。提出这种方法是为了有效处理这一严重问题中涉及的变量的非线性和高度主观性。生态状况已通过生物、水文形态和物理化学指标进行评估。从埃布罗河流域的378个采样点收集的数据集已用于训练和验证混合模型。高达97.6%的采样点已被神经模糊模型正确分类。与其他分类算法相比,这种性能具有很强的竞争力。使用非参数分类回归树和概率神经网络时,预测能力分别为90.7%和97.0%。所提出的方法可以按照欧盟水框架指令的要求,为决策者在生态状况评估和分类方面提供支持。