首页> 外文会议>ASME international manufacturing science and engineering conference 2011 >CONSTRAINED OPTIMIZATION OF SURFACE ROUGHNESS IN LONGITUDINAL TURNING VIA NOVEL MODIFIED HARMONY SEARCH
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CONSTRAINED OPTIMIZATION OF SURFACE ROUGHNESS IN LONGITUDINAL TURNING VIA NOVEL MODIFIED HARMONY SEARCH

机译:新型改进的谐和搜索在纵向车削表面粗糙度的约束优化。

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The present research deals with a modified optimization algorithm of harmony search coupled with artificial neural networks (ANNs) to predict the optimal cutting condition. To this end, several experiments were carried out on AISI 1045 steel to attain required data for training of ANNs. Feed forward artificial neural network was utilized to create predictive models of surface roughness and cutting forces exploiting experimental data, and Modified Harmony Search algorithm (MHS) was used to find the constrained optimum of the surface roughness. Furthermore, Simple Harmony Search algorithm (SHS) and Genetic Algorithm (GA) were used for solving the same optimization problem to illustrate the capabilities of MHS algorithm. The obtained results demonstrate that MHS algorithm is more effective and authoritative in approaching the global solution than the SHS algorithm and GA.
机译:本研究涉及一种改进的和谐搜索优化算法,结合人工神经网络(ANN)预测最佳切削条件。为此,在AISI 1045钢上进行了一些实验,以获取训练ANN所需的数据。利用前馈人工神经网络利用实验数据创建表面粗糙度和切削力的预测模型,并使用改进的和谐搜索算法(MHS)来找到表面粗糙度的约束最优值。此外,使用简单和声搜索算法(SHS)和遗传算法(GA)来解决同一优化问题,以说明MHS算法的功能。所得结果表明,与SHS算法和GA相比,MHS算法在逼近全局解决方案上更为有效和权威。

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