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Intelligent Diagnosis Model Based on Optimized Probabilistic Neural Networks

机译:基于优化概率神经网络的智能诊断模型

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Existing intelligent fault diagnosis models for equipment are insufficient in time-consuming and complication, making it hard to apply to practice. A novel intelligent diagnosis model has been carried out in this paper to improve this issue. Firstly, the process that experts realize the reasoning diagnosis by experience is analyzed to design an intelligent analysis flow. Based on the probabilistic neural network, the fault knowledge learning and reasoning from a large number of samples are carried out. Then the fault knowledge is mapped into a high-dimensional spatial distribution to realize the optimization of the probabilistic neural network. Finally, the fault bearing data is used to verify model performance.
机译:现有的设备智能故障诊断模型既费时又复杂,难以应用。本文提出了一种新颖的智能诊断模型来改善这一问题。首先,分析专家通过经验实现推理诊断的过程,设计出智能的分析流程。基于概率神经网络,从大量样本中进行故障知识的学习和推理。然后将故障知识映射到高维空间分布中,以实现概率神经网络的优化。最后,将故障轴承数据用于验证模型性能。

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