首页> 外文会议>International conference on intelligent computing;CICI 2009 >Fault Diagnosis of Steam Turbine-Generator Sets Using CMAC Neural Network Approach and Portable Diagnosis Apparatus Implementation
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Fault Diagnosis of Steam Turbine-Generator Sets Using CMAC Neural Network Approach and Portable Diagnosis Apparatus Implementation

机译:基于CMAC神经网络方法和便携式诊断仪实现的汽轮发电机组故障诊断

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Based on the vibration spectrum analysis, this paper proposed a CMAC (Cerebellar Model Articulation Controller) neural network diagnosis technique to diagnose the fault type of turbine-generator sets. This novel fault diagnosis methodology contains an input layer, quantization layer, binary coding layer, excited memory addresses coding unit, and an output layer to indicate the fault type possibility. Firstly, we constructed the configuration of diagnosis scheme depending on the vibration fault patterns. Secondly, the known fault patterns were used to train the neural network. Finally, combined with a Visual C++ program the trained neural network can be used to diagnose the possible fault types of turbine-generator sets. Moreover, a PIC microcontroller based portable diagnosis apparatus is developed to implement the diagnosis scheme. All the diagnosis results demonstrate the following merits are obtained at least: 1) High learning and diagnosis speed. 2) High noise rejection ability. 3) Eliminate the weights interference between different fault type patterns. 4) Memory size is reduced by new excited addresses coding technique. 5) Implement easily by chip design technology.
机译:在振动频谱分析的基础上,提出了一种CMAC神经网络诊断技术,对汽轮发电机组的故障类型进行诊断。这种新颖的故障诊断方法包括输入层,量化层,二进制编码层,激励存储器地址编码单元和输出层,以指示故障类型的可能性。首先,我们根据振动故障模式构造了诊断方案的配置。其次,使用已知的故障模式来训练神经网络。最后,结合Visual C ++程序,可以使用经过训练的神经网络来诊断涡轮发电机组的可能故障类型。此外,开发了基于PIC微控制器的便携式诊断装置以实现诊断方案。所有的诊断结果都证明至少获得了以下优点:1)学习诊断速度快。 2)高噪声抑制能力。 3)消除不同故障类型模式之间的权重干扰。 4)通过新的激励地址编码技术减少了内存大小。 5)通过芯片设计技术轻松实现。

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