Department of Management, Sapienza University of Rome, 00161 Rome, Italy.
Int J Environ Res Public Health. 2023 Aug 4;20(15):6522. doi: 10.3390/ijerph20156522.
Drinking water quality assessment is a major issue today, as it is crucial to supply safe drinking water to ensure the well-being of society. Predicting drinking water quality helps strengthen water management and fight water pollution; technologies and practices for drinking water quality assessment are continuously improving; artificial intelligence methods prove their efficiency in this domain. This research effort seeks a hierarchical fuzzy model for predicting drinking water quality in Rome (Italy). The Mamdani fuzzy inference system is applied with different defuzzification methods. The proposed model includes three fuzzy intermediate models and one fuzzy final model. Each model consists of three input parameters and 27 fuzzy rules. A water quality assessment model is developed with a dataset that considers nine parameters (alkalinity, hardness, pH, Ca, Mg, fluoride, sulphate, nitrates, and iron). These nine parameters of drinking water are anticipated to be within the acceptable limits set to protect human health. Fuzzy-logic-based methods have been demonstrated to be appropriate to address uncertainty and subjectivity in drinking water quality assessment; they are an effective method for managing complicated, uncertain water systems and predicting drinking water quality. The proposed method can provide an effective solution for complex systems; this method can be modified easily to improve performance.
饮用水质量评估是当今的一个主要问题,因为提供安全饮用水对于确保社会福祉至关重要。预测饮用水质量有助于加强水资源管理和应对水污染;饮用水质量评估的技术和实践在不断改进;人工智能方法在这一领域证明了其效率。本研究旨在为意大利罗马的饮用水质量预测建立一个分层模糊模型。采用不同的去模糊化方法应用 Mamdani 模糊推理系统。所提出的模型包括三个模糊中间模型和一个模糊最终模型。每个模型由三个输入参数和 27 条模糊规则组成。通过考虑九个参数(碱度、硬度、pH 值、Ca、Mg、氟化物、硫酸盐、硝酸盐和铁)的数据集开发了一个水质评估模型。这九个饮用水参数预计将在保护人类健康的设定的可接受范围内。基于模糊逻辑的方法已被证明适用于解决饮用水质量评估中的不确定性和主观性;它们是管理复杂、不确定的水系统和预测饮用水质量的有效方法。所提出的方法可以为复杂系统提供有效的解决方案;该方法可以轻松修改以提高性能。