基于单目标神经随机搜索技术的热挤压优化

K. Hans Raj, R.S. Sharma, S. Srivastava, C. Patvardhan
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引用次数: 2

摘要

本文提出了一种新的单目标神经随机搜索技术(SONSST),用于用冷挤压不能成形的材料生产棒材、实心和空心型材、管材、线材和带材等截面的直长金属制品的热挤压经济负荷估计问题。模具的形状和在挤压过程中形成的温度以及模具的速度对锻造力有很大的影响。为了理解材料和工艺变量之间的复杂关系,在FORGE2环境下建立了一些有限元模型并进行了仿真。这些有限元模拟被用来训练神经网络(NN)模型。随后,将同一模型与遗传算法(GA)和模拟退火(SA)相结合,形成SONSST。它结合了一个遗传交叉算子BLX-/spl alpha/和一个特定于问题的突变算子,结合了一个局部搜索启发式,以提供更好的搜索能力。从各个方面进行了大量的模拟,并与文献中已有的有限元方法的结果进行了验证。这些结果表明,新的SONSST启发式算法可以快速收敛到更好的解。SONSST是一种真正的单目标技术,因为它提供了各种工艺参数的值,以优化单目标(挤压载荷),在一次运行中,从而有助于实现能源和材料的节约,质量的提高和良好的挤压部件的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of hot extrusion using single objective neuro stochastic search technique
This paper presents a new single-objective neuro-stochastic search technique (SONSST) for the economic load estimation problem in hot extrusion which is often used to produce long straight metal products of constant cross-sections such as bars, solid and hollow sections, tubes, wires and strips from materials that cannot be formed by cold extrusion. The shape of the dies and the temperature developed during extrusion and the velocity of the dies significantly influence forging force at which the process is to be carried out. In order to understand the complex relationship between the material and process variables, a few finite element models are developed and simulated in the FORGE2 environment. These finite element simulations are used to train a neural network (NN) model. Later the same model is incorporated along with a genetic algorithm (GA) and simulated annealing (SA) to form SONSST. It incorporates a genetic crossover operator BLX-/spl alpha/ and a problem specific mutation operator incorporating a local search heuristic: to provide it a better search capability. Extensive simulations have been carried out considering various aspects and the results are validated with those of the existing finite element method in the literature. These results indicate that the new SONSST heuristic converges to better solutions rapidly. SONSST is a truly single-objective technique as it provides the values of various process parameters for optimizing single objective (extrusion load), in a single run and thus assists in achieving energy and material saving, quality improvement and in the development of sound extruded parts.
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