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Fault detection of sludge bulking using a self-organizing type-2 fuzzy-neural-network

机译:使用自组织2型模糊神经网络的污泥膨胀故障检测

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摘要

Fault detection is important in the operation of wastewater treatment process (WWTP). In this paper, to ensure the process safety and effluent qualities, an intelligent fault detection (IFD) method, based on self-organizing type-2 fuzzy-neural-network (SOT2FNN) and intelligent identification method, was developed to detect and identify different types of sludge bulking. The main advantages of IFD are as follows. First, a data-driven framework, based on a data-driven model and an intelligent identification algorithm, was developed to facilitate the fault diagnosis. Second, a SOT2FNN, based on the intensity of information transmission algorithm and adaptive second-order algorithm, was designed to predict the sludge volume index (SW) with high accuracy to provide necessary information for process monitoring. Third, an intelligent identification method, using the target-related identification algorithm (TRIA), was proposed to extract the correlation information to identify the types of sludge bulking. Finally, simulations and experimental examples were provided to confirm the effectiveness of the proposed IFD method.
机译:故障检测在废水处理过程(WWTP)的操作中很重要。为了确保过程安全和废水质量,开发了一种基于自组织2型模糊神经网络(SOT2FNN)和智能识别方法的智能故障检测(IFD)方法,以检测和识别不同的故障。污泥膨胀的类型。 IFD的主要优点如下。首先,开发了一种基于数据驱动模型和智能识别算法的数据驱动框架,以促进故障诊断。其次,基于信息传递算法和自适应二阶算法的强度,设计了SOT2FNN,以高精度预测污泥量指数(SW),为过程监控提供必要的信息。第三,提出了一种基于目标相关识别算法(TRIA)的智能识别方法,用于提取相关信息来识别污泥膨胀的类型。最后,通过仿真和实验实例验证了所提出的IFD方法的有效性。

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