Faculty of Engineering, Pontificia Universidad Javeriana, Cali, Colombia.
Environ Int. 2013 Feb;52:17-28. doi: 10.1016/j.envint.2012.11.007. Epub 2012 Dec 23.
The integration of water quality monitoring variables is essential in environmental decision making. Nowadays, advanced techniques to manage subjectivity, imprecision, uncertainty, vagueness, and variability are required in such complex evaluation process. We here propose a probabilistic fuzzy hybrid model to assess river water quality. Fuzzy logic reasoning has been used to compute a water quality integrative index. By applying a Monte Carlo technique, based on non-parametric probability distributions, the randomness of model inputs was estimated. Annual histograms of nine water quality variables were built with monitoring data systematically collected in the Colombian Cauca River, and probability density estimations using the kernel smoothing method were applied to fit data. Several years were assessed, and river sectors upstream and downstream the city of Santiago de Cali, a big city with basic wastewater treatment and high industrial activity, were analyzed. The probabilistic fuzzy water quality index was able to explain the reduction in water quality, as the river receives a larger number of agriculture, domestic, and industrial effluents. The results of the hybrid model were compared to traditional water quality indexes. The main advantage of the proposed method is that it considers flexible boundaries between the linguistic qualifiers used to define the water status, being the belongingness of water quality to the diverse output fuzzy sets or classes provided with percentiles and histograms, which allows classify better the real water condition. The results of this study show that fuzzy inference systems integrated to stochastic non-parametric techniques may be used as complementary tools in water quality indexing methodologies.
水质监测变量的整合对于环境决策至关重要。在这样复杂的评估过程中,现在需要先进的技术来管理主观性、不精确性、不确定性、模糊性和可变性。我们在这里提出了一种概率模糊混合模型来评估河水水质。模糊逻辑推理已被用于计算水质综合指数。通过应用基于非参数概率分布的蒙特卡罗技术,估计了模型输入的随机性。使用核平滑方法对系统收集的哥伦比亚考卡河的监测数据进行了九个水质变量的年度直方图构建,并应用概率密度估计进行数据拟合。评估了几年的数据,分析了圣地亚哥德卡利市上下游的河流流域,该市有基本的废水处理和高工业活动。概率模糊水质指数能够解释水质的下降,因为河流接收了更多的农业、家庭和工业废水。混合模型的结果与传统水质指数进行了比较。该方法的主要优点是,它考虑了用于定义水状况的语言限定词之间的灵活边界,水质对不同输出模糊集或类别的归属是通过百分位数和直方图提供的,这允许更好地对实际水质状况进行分类。这项研究的结果表明,集成了随机非参数技术的模糊推理系统可以作为水质指标方法学的补充工具。