Comparison Study the Modeling of Limiting Current in the Magneto Electrodeposition of Vanadium using Neural-Wiener Model and Feed Forward Neural Network

Lukman Nulhakim, Ismoyo Aji Sasmita, M. Rozana, S. Sudibyo
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Abstract

Vanadium has long been used as a corrosion-resistant coating, including as a metal alloy for battery cathodes. However, batteries discovered with non-smooth cathode surfaces due to the fabrication process have a short battery life. So, a cathode coating stage is required via the electroplating method under the influence of a magnetic field or Magneto Electro Deposition (MED). Knowing the limiting current in MED is very important because the optimum mass transport achieves at the limiting current (iB). The smoothest and most compact electrodeposit surface will occur at this limiting current. In this study, Feed Forward Neural Network and Neural-Wiener are suggested and compared as a nonlinear modeling approach to determine the ideal limiting current because of their strong capacity to anticipate the link between input and output from experiment data. The Levenberg-Marquadt optimization technique with hidden neurons was used to evaluate and compare the modeling capabilities of two neural networks, the Feed Forward Neural Network, and the Neural Wiener. The results of this study are presented as a comparison of the Mean Square Error (MSE) values obtained from the nonlinear modeling of two artificial neural network algorithms. The algorithm that models the ideal current limiting has the lowest MSE value (iB). 
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用神经-维纳模型和前馈神经网络建立钒磁电沉积极限电流模型的比较研究
钒长期以来一直被用作耐腐蚀涂层,包括作为电池阴极的金属合金。然而,由于制造工艺的原因,阴极表面不光滑的电池寿命很短。因此,需要在磁场或磁电沉积(MED)的影响下通过电镀方法进行阴极涂层阶段。知道MED的极限电流是非常重要的,因为最佳的质量输运达到极限电流(iB)。在这一极限电流下,电镀层表面会变得最光滑、最致密。在本研究中,由于前馈神经网络和神经-维纳网络具有从实验数据预测输入和输出之间联系的强大能力,因此提出并比较了它们作为确定理想极限电流的非线性建模方法。采用Levenberg-Marquadt隐神经元优化技术,对前馈神经网络和神经维纳神经网络的建模能力进行了评价和比较。本研究的结果是通过比较两种人工神经网络算法的非线性建模得到的均方误差(MSE)值。模拟理想限流的算法具有最低的MSE值(iB)。
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