基于遗传算法和神经网络的滚压过程优化

Hong-Seok Park, Ta Ngoc Thien Binh
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引用次数: 0

摘要

基于知识的神经网络(KBNN)模型是一种最有用的方法,用于预测每一个变量来执行滚压成形(RF)过程中的参数。在KBNN中,训练的可靠性决定了RF过程中产品的质量和参数。为此,提出了一种将遗传算法(GA)与爬坡算法(HCB)相结合的优化算法来训练KBNN模型。首先,采用遗传算法寻找局部最优区域,然后,HCB将检测KBNN模型训练误差小于8%的最佳定位区域。此外,利用高保真有限元模型的有限元分析(FEA)结果,得到KBNN模型的训练数据集。仿真结果表明,该方法在射频过程优化方面的效率高于传统方法。
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Optimization of Roll forming process using the integration between Genetic Algorithm and Hill climbing with neural network
Knowledge-Based Neural Network (KBNN) model is one of the most useful methods which is used to predict every single variability to perform the parameters on data of the Roll forming (RF) process. It is true that the quality of product and the parameters in RF process depend on the reliability of the training in KBNN. To achieve this, the new novel of the optimal algorithm including integration between Genetic Algorithm (GA) and Hill climbing Algorithm (HCB) was proposed to train the KBNN model. Initially, the GA is applied to find the local optimal region, then, the HCB will detect the best location area in which the training error of the KBNN model is less than 8%. In addition, the Finite Element Analysis (FEA) results of the high fidelity FE model were used to obtain the trained data set of the KBNN model. From simulation results, it can be concluded that the efficiency of the proposed method is higher than that of the conventional methods in optimization of the RF process.
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