阿拉伯河水样分类的神经网络

Entesar B. Tala, W. F. Hassan, Hala Ali Shabar, Eman Thabet, Donia Kassaf Al-khuzie
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引用次数: 0

摘要

在这项研究中,我们开发了一个自动化系统,该系统使用一系列属性对阿拉贝河的水样进行分类(EC, Cl, Ca, Mg, Na和SO4)。水分类系统分为三个步骤:首先,从2009年10月到2020年9月,每月从巴士拉阿拉伯河沿岸的八个地点采集水样。Qurna、管桥、Al Muzairah(1号站)、Saad Birdge(2号站)、Al- karma(3号站)、Al- sandbad(4号站)、Al- ashar(5号站)、Abo Al- kasseb(6号站)、Al- seba(7号站)和Al- foa(8号站)都是这些地点(8号站)。其次,使用既定的程序,测量和分析化学元素,如电导率(Ec)、氯化物(CL)、钙(Ca)、镁(Mg)、钠(Na)和硫酸盐(SO4)。最后,有三个隐藏层的神经网络用于训练和测试目的。在收集的数据库上进行的实验结果表明,该方法在水的自动分类(正常和异常)中取得了较高的准确率。本课题采用Matlab进行设计。
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Neural network for classification waters sample of shatt al Arabe River
In this study, we develop an automated system that uses a collection of attributes to classify water samples from the Shatt al Arabe River (EC, Cl, Ca, Mg, Na, and SO4). There are three steps to the water categorization system: First and foremost, in this manner From October 2009 to September 2020, water samples were taken monthly from eight locations along the Shatt Al-Arab River in Basra. Qurna, Tubular Bridge, Al Muzairah (station 1), Saad Birdge (station 2), Al-Karma (station 3), Al-Sandbad (station 4), Al-Ashar (station 5), Abo Al-Kasseb (station 6), Al-Seba (station 7) and Al-Foa (station 8) are among these locations (station 8). Second, using established procedures, measured and analyzed chemical elements such as electrical conductivity (Ec), chloride (CL), calcium (Ca), magnesium (Mg), sodium (Na), and Sulphate (SO4). Finally, there are neural networks with three hidden layers are used for training and testing purposes. The experimental results on the collected database show that the proposed approach achieves high accuracy in automatic water classification (normal and abnormal). The Project is designed by Matlab.
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