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Working Regimes Classification for Predictive Maintenance of Mill Fan Systems--Neural netwroks and fuzzy sets approaches

机译:用于预测维护轧机系统的工作制度分类 - 神经网络和模糊套装方法

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In the present paper, the subject of analysis is a device from Maritsa East 2 thermal power plant - a mill fan. The choice of the given power plant is not occasional. This is the largest thermal power plant on the Balkan Peninsula. Mill fans are main part of the fuel preparation in the coal fired power plants. The possibility to predict eventual damages or wear out without switching off the device is significant for providing faultless and reliable work of the equipment avoiding incidents. Standard statistical and probabilistic (Bayesian) approaches for diagnostics are inapplicable to estimate mill fan vibration state due to non-stationarity, non-ergodicity and the significant noise level of the monitored vibrations. Promising results are obtained only using computational intelligence methods (fuzzy logic, neural and neuro-fuzzy networks). In the present paper, two neuro-fuzzy approaches are applied for classification of a mill fan system working regimes based on analysis of data available from its control system.
机译:在本文中,分析的主题是来自Maritsa East 2火电厂的设备 - 磨机。给定的发电厂的选择不是偶然的。这是巴尔干半岛上最大的火电厂。轧机风扇是燃煤发电厂燃料制备的主要部分。在不关闭设备的情况下预测最终损坏或磨损的可能性对于提供避免事故的设备的无效和可靠的工作,这是非常重要的。标准统计和概率(Bayesian)诊断方法是不适用的,以估计由于非公平性,非遍密性和监测振动的显着噪声水平而导致的磨机风扇振动状态。仅使用计算智能方法(模糊逻辑,神经和神经模糊网络)仅获得有希望的结果。在本文中,基于从其控制系统可获得的数据分析,应用了两个神经模糊方法用于分类磨机风扇系统工作制度。

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