Water quality classification approach based on bio-inspired Gray Wolf Optimization

Asmaa Hashem Sweidan, Nashwa El-Bendary, A. Hassanien, O. Hegazy, A. Mohamed
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引用次数: 8

Abstract

This paper presents a bio-inspired optimized classification approach for assessing water quality. As fish liver histopathology is a good biomarker for detecting water pollution, the proposed classification approach uses fish liver microscopic images in order to detect water pollution and determine water quality. The proposed approach includes three phases; preprocessing, feature extraction, and classification phases. Color histogram and Gabor wavelet transform have been utilized for feature extraction phase. The Machine Learning (ML) Support Vector Machines (SVMs) classification algorithm has been employed, along with the bio-inspired Gray Wolf Optimization (GWO) algorithm for optimizing SVMs parameters, in order to classify water pollution degree. Experimental results showed that the average accuracy achieved by the proposed GWO-SVMs classification approach exceeded 95% considering a variety of water pollutants.
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基于仿生灰狼优化的水质分类方法
本文提出了一种以生物为灵感的水质优化分类方法。由于鱼肝脏组织病理学是检测水体污染的良好生物标志物,本文提出的分类方法利用鱼肝脏显微图像检测水体污染,判断水质。拟议的办法包括三个阶段;预处理、特征提取和分类阶段。特征提取阶段采用颜色直方图和Gabor小波变换。采用机器学习(ML)支持向量机(svm)分类算法,结合生物启发的灰狼优化(GWO)算法对svm参数进行优化,对水污染程度进行分类。实验结果表明,考虑多种水污染物,本文提出的gwo - svm分类方法的平均准确率超过95%。
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