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INTELLIGENT IDENTIFICATION METHOD OF SLUDGE BULKING BASED ON TYPE-2 FUZZY NEURAL NETWORK

机译:基于2型模糊神经网络的污泥膨胀智能识别方法。

摘要

An intelligent identification method of sludge bulking based on type-2 fuzzy-neural-network belongs to the field of intelligent detection technology. The sludge volume index (SVI) in wastewater treatment plant is an important index to measure the sludge bulking of activated sludge process. However, poor production conditions and serious random interference in sewage treatment process are characterized by strong coupling, large time-varying and serious hysteresis, which makes the detection of SVI concentration of sludge volume index extremely difficult. At the same time, there are many types of sludge bulking faults, which are difficult to identify effectively. Due to the sludge volume index (SVI) is unable to online monitoring and the fault type of sludge bulking is difficult to determined, the invention develop soft-computing model based on type-2 fuzzy-neural-network to complete the real-time detection of sludge volume index (SVI). Combined with the target-related identification algorithm, the fault type of sludge bulking is determined. Results show that the intelligent identification method can quickly obtain the sludge volume index (SVI), accurate identification fault type of sludge bulking, improve the quality and ensure the safety operation of the wastewater treatment process.
机译:基于2型模糊神经网络的污泥膨胀智能识别方法属于智能检测技术领域。污水处理厂的污泥量指数(SVI)是衡量活性污泥工艺污泥膨胀率的重要指标。但是,生产条件差,污水处理过程中的随机干扰严重,具有耦合性强,时变大,滞后现象严重的特点,这使得污泥体积指数的SVI浓度检测非常困难。同时,污泥膨胀故障类型很多,难以有效识别。由于污泥体积指数(SVI)无法在线监测,污泥膨胀的故障类型难以确定,本发明开发了基于2型模糊神经网络的软计算模型,以完成实时检测。污泥体积指数(SVI)。结合目标识别算法,确定污泥膨胀的故障类型。结果表明,智能识别方法可以快速获得污泥体积指数(SVI),准确识别污泥膨胀的故障类型,提高质量,保证废水处理过程的安全运行。

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