首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part E. Journal of Process Mechanical Engineering >Modeling and prediction of metallic powder behavior in explosive compaction process by using genetic programming method based on dimensionless numbers
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Modeling and prediction of metallic powder behavior in explosive compaction process by using genetic programming method based on dimensionless numbers

机译:基于无量纲数的遗传编程方法模拟与预测爆炸压缩过程中的遗传编程方法

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摘要

Explosive compaction process of metallic powders has been studied using a semi-empirical method. This method utilizes dimensional analysis along with genetic programming approach to obtain an expression relating the final density of compacts to the effective parameters during compaction process such as shock compaction energy, properties of metallic powder, and geometry of the problem and explosive charge. Dimensionless numbers have been constructed based on the effective parameters using a complete set of input-output experimental data. The obtained dimensionless numbers then have been applied as input-output data pairs for genetic programming optimization process considering modeling error as the objective. The obtained results show that the proposed model using dimensional analysis method along with genetic programming can predict the final density of compacts with 99.8% accuracy. Also, the outputs of the proposed model have been compared with those obtained by group method of data handling type neural network in the literature. Consequently, genetic programming method has much less root mean square error than group method of data handling model and can be successfully used for modeling and prediction of the complex process behavior.
机译:使用半经验法研究了金属粉末的爆炸压实过程。该方法利用尺寸分析以及遗传编程方法,以获得将压块的最终密度与有效参数相关的表达,例如抗冲击能量,金属粉末的特性,以及问题的几何形状和爆炸性电荷。使用完整的输入输出实验数据,基于有效参数构建无量纲数。然后,所获得的无量纲数被应用于考虑建模误差作为目标的基因编程优化过程的输入 - 输出数据对。所得结果表明,使用尺寸分析方法以及遗传编程的建议模型可以预测紧凑型的最终密度,精度为99.8%。此外,已经将所提出的模型的输出与文献中的数据处理类型神经网络的组方法获得的那些进行比较。因此,遗传编程方法具有比数据处理模型的组方法更少的根均方误差,并且可以成功用于复杂过程行为的建模和预测。

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