挤压铸造工艺建模——现状与未来展望

Manjunath Patel Gc, P. Krishna, M. B. Parappagoudar
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引用次数: 3

摘要

在当今竞争激烈的制造环境中不断增长的需求鼓励了研究人员开发和应用建模工具。建模工具的开发和应用有助于铸造行业大大提高生产率和铸造质量。到目前为止,还没有通用的标准可用于建模和优化任何制造过程。然而,目前的工作讨论了一些传统的和非传统的建模工具应用于各种铸造工艺的优点和局限性。此外,还报道了迄今为止各种作者在挤压铸造过程建模和优化方面所做的研究工作。此外,通过识别文献中的趋势,预测和优化的必要步骤高度简化。最后,本文探讨了利用软计算工具,即神经网络、遗传算法、模糊逻辑控制器及其不同组合,通过反向预测自动调整挤压铸造工艺参数的过程在线控制的未来研究范围。目前的工作还提出了一种详细的方法,从过程变量的选择开始,直到使用实验,预测和优化方法为输出的极值负责更好的产品质量的最佳过程变量组合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling in Squeeze Casting Process-Present State and Future Perspectives
The growing demand in today’s competitive manufacturing environment has encouraged the researchers to develop and apply modelling tools. The development and application of modelling tools help the casting industries to considerably increase productivity and casting quality. Till date there is no universal standard available to model and optimize any of the manufacturing processes. However the present work discusses the advantages and limitations of some conventional and non-conventional modelling tools applied for various casting processes. In addition the research effort made by various authors till date in modelling and optimization of the squeeze casting process has been reported. Furthermore the necessary steps for prediction and optimization are high lightened by identifying the trends in the literature. Ultimately this research paper explores the scope for future research in online control of the process by automatically adjusting the squeeze cast process parameters through reverse prediction by utilizing the soft computing tools namely, Neural Network, Genetic Algorithms, Fuzzy-logic Controllers and their different combinations. The present work also proposed a detailed methodology, starting from the selection of process variables till the best process variable combinations for extreme values of the outputs responsible for better product quality using experimental, prediction and optimization methodology.
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