Cohen A, Hegg D, de Michele M, Song Q, Kasabov N
Waste Solutions Ltd, Dunedin, New Zealand.
Water Sci Technol. 2003;47(12):57-63.
In this paper the results are presented of original research into the automatic and "intelligent" detection of breakpoints in Dissolved Oxygen (DO) profiles. The research has been based on a large body of data collected from laboratory SBRs operating on synthetic wastewater. Two different approaches were followed to identify the endpoints. The paper analyses and evaluates the results of automatic detection on the basis of geometric features in the DO profiles. This was followed by classification of the detected breakpoints using different soft computing techniques based on Neural Network (NN), Fuzzy Neural Network (FuNN) and Evolving Fuzzy Neural Network (EfuNN) software systems for breakpoint classification. A high rate of successful detection and classification was obtained with up to 96% of the decisions made correctly. In order to overcome the limitations of this system to adapt to dynamically changing process conditions, an intelligent control model was developed by a combination between an Evolving Fuzzy Neural Net (EfuNN) combined with a logic decision unit. This system has the ability to "learn on-the-fly" and adjust its response pattern in order to maintain a high rate of successful breakpoint detection under varying changing process conditions. This software system has been sucessfully embedded on a small programmable controller for integration into larger process control systems for the operation of SBR plants.
本文介绍了对溶解氧(DO)剖面中断点进行自动和“智能”检测的原创性研究结果。该研究基于从处理合成废水的实验室序批式反应器(SBR)收集的大量数据。采用了两种不同的方法来识别端点。本文基于溶解氧剖面中的几何特征分析和评估自动检测结果。随后,使用基于神经网络(NN)、模糊神经网络(FuNN)和进化模糊神经网络(EfuNN)软件系统的不同软计算技术对检测到的断点进行分类,以进行断点分类。成功检测和分类的比例很高,高达96%的决策正确。为了克服该系统适应动态变化的过程条件的局限性,通过将进化模糊神经网络(EfuNN)与逻辑决策单元相结合,开发了一种智能控制模型。该系统能够“实时学习”并调整其响应模式,以便在变化的过程条件下保持较高的断点成功检测率。该软件系统已成功嵌入到一个小型可编程控制器中,以便集成到更大的过程控制系统中,用于SBR工厂的运行。