Research on early warning system of water quality safety based on RBF neural network model

Luoli Han, Jing Wang, Chunyan Lu, Junqi Xie
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引用次数: 1

Abstract

Water quality safety early warning system is the key point of ensuring the water resources safety and sustainable use. This paper describes early warning system of water quality safety by using RBF (Radical Basis Function) neural network model. The system consists of four parts: water quality monitoring, early warning of water quality evaluation, early warning signal identify of water quality, and decision management. The study is applied to determining and analyzing the hazard degree of water quality safety in Songhua River Basin. Results show that the degree of water quality is in grade four, which is at serious alert. The practice and the result of the fuzzy evaluation method prove that it is feasible and scientific that the study combining RBF model with early warning system of water quality safety, and good effect is achieved.
基于RBF神经网络模型的水质安全预警系统研究
水质安全预警系统是保障水资源安全和可持续利用的关键。本文采用径向基函数(Radical Basis Function, RBF)神经网络模型建立了水质安全预警系统。该系统由四个部分组成:水质监测、水质预警评价、水质预警信号识别和决策管理。将研究结果应用于松花江流域水质安全危害程度的确定与分析。结果表明,该地区水质等级为四级,处于严重警戒状态。实践和模糊评价方法的结果证明,将RBF模型与水质安全预警系统相结合的研究是可行和科学的,取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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