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Process analysis of electroless copper plating for AB5-type hydrogen storage alloy using support vector regression

机译:基于支持向量回归的AB5型储氢合金化学镀铜工艺分析

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Surface modification is an effective method to improve the electrochemical property of hydrogen storage alloy. In order to investigate theinfluence ofprocess factors of electroless copper (Cu) platingfor AB5-type hydrogen storage alloy on Cu coating mass, a novel modeling approach, support vector regression (SVR) combined with particle swarm optimization (PSO), wasproposedto construct a mathematical model for prediction of the mass changes of Cu coating over the AB5hydrogen storage alloy surface based on three factors, including temperature, pH value and Ni2+concentration. The modeling accuracy and reliability of the created SVR model are validated through leave-one-out cross validation (LOOCV), and compared with those of a second-order polynomial model. The results show that the predicted errors by SVR-LOOCV models are all smaller than those achieved bythesecond-order polynomial model. The SVR model is further applied to predict the process parameters for themaximumCu coating mass. These studies suggest that SVR can be used as an effective methodology to assist the design of experiment, and is helpful topreciselycontrol thecoating massviafine adjustment of theprocess parameters.
机译:表面改性是提高储氢合金电化学性能的有效方法。为了研究AB5型储氢合金化学镀铜工艺因素对Cu涂层质量的影响,提出了一种新的建模方法-支持向量回归(SVR)结合粒子群算法(PSO),建立了数学模型。用于基于温度,pH值和Ni2 +浓度三个因素预测AB5储氢合金表面Cu涂层的质量变化。通过留一法交叉验证(LOOCV)验证了创建的SVR模型的建模准确性和可靠性,并将其与二阶多项式模型进行了比较。结果表明,SVR-LOOCV模型的预测误差均小于二阶多项式模型的预测误差。 SVR模型进一步应用于预测最大Cu涂层质量的工艺参数。这些研究表明,SVR可以用作辅助实验设计的有效方法,并有助于通过精细调整工艺参数来精确控制涂层质量。

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