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首页> 外文期刊>Research journal of applied science, engineering and technology >Corrosion Control by Impressed Cathodic Protection Using Intelligent Systems
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Corrosion Control by Impressed Cathodic Protection Using Intelligent Systems

机译:使用智能系统抑制阴极保护的腐蚀控制

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The aim of this study is to adopt the Artificial Neural Network (ANN) to Model the Cathodic Protection system (CPS) and evaluation the potential required to protect the coated and bared pipeline as well as to the prediction of corrosion rate. On the other hand, the experimental work was carried out to collect the required data to be used for training and testing the neural network. The objective of this research paper is to corrosion control in the pipeline with different potential values. The proposed structure of ANN for potential and corrosion is an input layer, two hidden layers and one output layer and this structure is arbitrarily selected. The transfer function that has been used in the first hidden layer for each network is the Tan-Sigmoid function and for the second layer is the pure line. The back propagation training algorithm with one variable learning rate is used to train these neural networks. For the potential assessment; the ANN input data includes the distance between anodes and cathodes (D), Current Density (CD), length of pipe from end to the drain point (L), resistivity of solution (ρ) and the voltage of power stations, while the potential is the network output. For the corrosion rate prediction, the network input information is only time, surface area and resistivity of the soil (solution) (ρ), while the corrosion rate is the network output. Many networks are constructed by changing the number of neurons for the hidden layers. This has been simulated by using the MATLAB R2009a software. The optimum network for coated pipe was (13) neurons in the first hidden layer and (8) neurons in the second hidden layer which is tested and trained by using (120 data sample). This network has proved to be reliable and can be used to assess the potential required for CPS. Concerning the bared pipe-lines, the collected experimental data is not stable and the fluctuation of the data occurs due to the interference between the corroded part of the pipe and the protected parts, which causes the un-stability of potential. The optimum network for coated pipe was (15) neurons in the first hidden layer and (4) neurons in the second hidden layer) which is tested and trained by using (250 data sample). This network demonstrates to be reliable and capable of predicting the corrosion rate.
机译:本研究的目的是采用人工神经网络(ANN)来模拟阴极保护系统(CPS)和评估保护涂层和裸露管道所需的潜力以及腐蚀速率的预测。另一方面,进行实验工作以收集所需数据以用于培训和测试神经网络。本研究论文的目的是具有不同潜在值的管道中的腐蚀控制。对于电位和腐蚀的所提出的ANN结构是输入层,两个隐藏层和一个输出层,并且该结构被任意选择。在每个网络的第一个隐藏层中使用的传递函数是Tan-Sigmoid函数,并且第二层是纯线。具有一个可变学习率的后传播训练算法用于训练这些神经网络。潜在评估; ANN输入数据包括阳极和阴极(d),电流密度(CD),从端到漏点(L)的管道长度,溶液电阻率和电站电压的距离,电位是网络输出。对于腐蚀速率预测,网络输入信息仅是时间,表面积和土壤(溶液)(ρ)的电阻率,而腐蚀速率是网络输出。通过改变隐藏层的神经元数来构建许多网络。这是通过使用MATLAB R2009A软件进行模拟的。涂层管的最佳网络是(13)神经元在第一个隐藏层中的神经元和(8)神经元在第二隐藏层中通过使用(120个数据样本)进行测试和培训。该网络证明可靠,可用于评估CPS所需的潜力。关于辐射管线,收集的实验数据不稳定,并且由于管道的腐蚀部分与受保护部分之间的干涉而发生数据的波动,这导致潜在的潜在稳定性。通过使用(250个数据样本)测试和培训的第一隐藏层中的涂覆管中的最佳网络(15)神经元(4)在第二隐藏层中的神经元。该网络表明可靠并且能够预测腐蚀速率。

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