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A neuro-fuzzy online fault detection and diagnosis algorithm for nonlinear and dynamic systems

机译:非线性和动态系统的神经模糊在线故障检测与诊断算法

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摘要

This paper presents a new fault detection and diagnosis approach for nonlinear dynamic plant systems with a neuro-fuzzy based approach to prevent developing of fault as soon as possible. By comparison of plants and neuro-fuzzy estimator outputs in the presence of noise, residual signal is generated and compared with a predefined threshold, the fault can be detected. To diagnose the type, size, time and fault conditions, are used analytical approach and neural network for tracking fault developing online. The neuro-fuzzy nets are compared with some other identification methods in application of power plant gas turbine. Faults are considered in two forms, step, and ramp shape. This work was implemented with real data from gas turbine of Kazeroun (Iran) power plant (Mitsubishi unit) and result is presented to demonstrate the benefits of the proposed method.
机译:本文提出了一种新的基于神经模糊的非线性动态工厂系统故障检测和诊断方法,以尽快防止故障的发展。通过在存在噪声的情况下比较植物和神经模糊估计器的输出,会生成残余信号并将其与预定义的阈值进行比较,从而可以检测到故障。为了诊断类型,大小,时间和故障状况,使用分析方法和神经网络来在线跟踪故障发展。将神经模糊网络与电厂燃气轮机中的其他识别方法进行了比较。故障分为两种形式,即阶梯形和斜坡形。这项工作是利用来自Kazeroun(伊朗)发电厂的燃气轮机(三菱机组)的真实数据进行的,并给出了结果,以证明该方法的益处。

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