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Development of smart data analytics tools to support wastewater treatment plant operation

机译:开发智能数据分析工具,以支持污水处理厂运行

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摘要

A case study of applying chemometrics approach, k-means, a clustering algorithm to develop a real-time industrial process early warning system using online measurements was conducted. An online spectrophotometer was installed for an eighteen-month monitoring study between 2013 and 2015 at the inlet of a wastewater treatment plant. During this time a web-based prototype portal with data integration, visualization, prediction and anomaly detection functions for complex online data sets was developed in-house to assess the spectral data acquired by the spectrophotometer together with other databases (such as rainfall and temperature). Several chemometrics options, such as association analysis and feature selection, were used to extract useful operational information from the acquired data. In this paper, the anomaly detection function which includes pattern learning and comparison algorithms and a powerful user interface was described in detail. By using the functions, process upsets were successfully detected from the spectral data at the inlet of the treatment plant. The detected events/ upsets were then compared with the treatment plant logs and they were found aligned well, which proved that the anomaly detection technique was effective and has the potential to inform decision to assist plant operators. In addition, the proposed anomaly detection technique is also a flexible algorithm which works with any similar time series data to detect other process related issues to provide real-time warning to support treatment plant operations.
机译:进行了应用化学计量方法,K均值,聚类算法的案例研究,采用在线测量开发实时工程预警系统。在污水处理厂的入口处安装了一个在线分光光度计2013年和2015年的监测研究。在此期间,在内部开发了基于网络的基本原型门户,具有复杂的在线数据集的数据集成,可视化,预测和异常检测功能,以评估分光光度计获取的光谱数据以及其他数据库(如降雨和温度) 。几种化学计量器选项,例如关联分析和特征选择,用于从所获取的数据中提取有用的操作信息。在本文中,详细描述了包括模式学习和比较算法的异常检测功能和强大的用户界面。通过使用该功能,从处理厂的入口处的光谱数据成功地检测到处理upsets。然后将检测到的事件/扰动与治疗植物原木进行比较,它们被发现对齐,这证明了异常检测技术是有效的,有可能为协助植物运营商提供信息。此外,所提出的异常检测技术也是一种灵活的算法,它适用于任何类似的时间序列数据来检测其他过程相关问题,以提供支持治疗厂操作的实时警告。

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