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首页> 外文期刊>Russian journal of electrochemistry >Neural Networks Prediction of Different Frequencies' Effects on Calcareous Deposits Formation under Pulse Cathodic Protection
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Neural Networks Prediction of Different Frequencies' Effects on Calcareous Deposits Formation under Pulse Cathodic Protection

机译:脉冲阴极保护下不同频率对钙质沉积物形成的影响的神经网络预测

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This paper deals with the calcareous deposition by using pulse cathodic protection on steel structures submerged in the synthetic sea water. In order to fully characterize the complex underlying mechanism of this process and evaluate the effects of a thorough range of frequencies, a prediction model is developed using a hybrid of Neural Networks and Genetic Algorithms (GA). Process variables, i.e. time, frequency and final required current, have been experimentally studied with the aid of chronoamperometric technique. A portion of this dataset is used to train the prediction model, while the rest is set aside to test its predictive performance. This hybrid Neural Networks model uses GA to achieve its optimal architecture for prediction. Finally, it is concluded that the proposed model has an excellent prediction capability of final current density in the various range of frequencies by comparing the results with the experimental data.
机译:本文通过对人造海水中浸没的钢结构进行脉冲阴极保护来处理钙质沉积。为了充分表征此过程的复杂底层机制并评估整个频率范围的影响,使用了神经网络和遗传算法(GA)的混合模型开发了预测模型。借助于计时安培技术已对实验变量,即时间,频率和最终所需电流进行了实验研究。该数据集的一部分用于训练预测模型,而其余部分用于测试其预测性能。这种混合神经网络模型使用GA来实现最佳的预测架构。最后,通过将结果与实验数据进行比较,可以得出结论:所提出的模型在各种频率范围内具有出色的最终电流密度预测能力。

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