Using unsupervised learning to classify inlet water for more stable design of water reuse in industrial parks

Kan Chen, Xiaofei Shi, Zhihao Zhang, Shijun Chen, Ji Ma, Tong Zheng, Leonardo Alfonso
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Abstract

The water reuse facilities of industrial parks face the challenge of managing a growing variety of wastewater sources as their inlet water. Typically, this clustering outcome is designed by engineers with extensive expertise. This paper presents an innovative application of unsupervised learning methods to classify inlet water in Chinese water reuse stations, aiming to reduce reliance on engineer experience. The concept of ‘water quality distance’ was incorporated into three unsupervised learning clustering algorithms (K-means, DBSCAN, and AGNES), which were validated through six case studies. Of the six cases, three were employed to illustrate the feasibility of the unsupervised learning clustering algorithm. The results indicated that the clustering algorithm exhibited greater stability and excellence compared to both artificial clustering and ChatGPT-based clustering. The remaining three cases were utilized to showcase the reliability of the three clustering algorithms. The findings revealed that the AGNES algorithm demonstrated superior potential application ability. The average purity in six cases of K-means, DBSCAN, and AGNES were 0.947, 0.852, and 0.955, respectively.
利用无监督学习对进水进行分类,以更稳定地设计工业园区的中水回用系统
工业园区的中水回用设施面临着管理越来越多的废水源的挑战。通常情况下,这种聚类结果是由具有丰富专业知识的工程师设计的。本文介绍了无监督学习方法在中国中水回用站进水分类中的创新应用,旨在减少对工程师经验的依赖。本文将 "水质距离 "的概念纳入三种无监督学习聚类算法(K-means、DBSCAN 和 AGNES),并通过六个案例研究对这些算法进行了验证。在这六个案例中,有三个案例用于说明无监督学习聚类算法的可行性。结果表明,与人工聚类和基于 ChatGPT 的聚类相比,该聚类算法表现出更高的稳定性和卓越性。其余三个案例用于展示三种聚类算法的可靠性。研究结果表明,AGNES 算法表现出了卓越的潜在应用能力。在六个案例中,K-means、DBSCAN 和 AGNES 的平均纯度分别为 0.947、0.852 和 0.955。
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