首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Principal Component Analysis Based Dynamic Fuzzy Neural Network for Internal Corrosion Rate Prediction of Gas Pipelines
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Principal Component Analysis Based Dynamic Fuzzy Neural Network for Internal Corrosion Rate Prediction of Gas Pipelines

机译:基于基于动态模糊神经网络的气体管道内部腐蚀速率预测的主成分分析

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Aiming at the characteristics of the nonlinear changes in the internal corrosion rate in gas pipelines, and artificial neural networks easily fall into a local optimum. This paper proposes a model that combines a principal component analysis (PCA) algorithm and a dynamic fuzzy neural network (D-FNN) to address the problems above. The principal component analysis algorithm is used for dimensional reduction and feature extraction, and a dynamic fuzzy neural network model is utilized to perform the prediction. The study implementing the PCA-D-FNN is further accomplished with the corrosion data from a real pipeline, and the results are compared among the artificial neural networks, fuzzy neural networks, and D-FNN models. The results verify the effectiveness of the model and algorithm for inner corrosion rate prediction.
机译:旨在瞄准气体管道内部腐蚀速率的非线性变化的特点,人工神经网络容易落入局部最佳状态。本文提出了一种组合主成分分析(PCA)算法和动态模糊神经网络(D-FNN)来解决上述问题的模型。主成分分析算法用于尺寸减小和特征提取,并且利用动态模糊神经网络模型来执行预测。实现PCA-D-FNN的研究进一步利用来自实际管道的腐蚀数据来完成,并且在人工神经网络,模糊神经网络和D-FNN模型中比较结果。结果验证了内部腐蚀速率预测模型和算法的有效性。

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