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首页> 外文期刊>Neural Computing and Applications >Design of an optimized procedure to predict opposite performances in porthole die extrusion
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Design of an optimized procedure to predict opposite performances in porthole die extrusion

机译:设计优化程序以预测舷窗模头挤出中的相反性能

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The main objective of advanced manufacturing control techniques is to provide efficient and accurate tools in order to control the set-up of machines and manufacturing systems. Recent developments and implementations of expert systems and neural networks support this aim. This research explores the combined use of neural networks and Taguchi’s method to enhance the performance of porthole die extrusion process; the energy saving and the quality of the welding line are two conflicting objectives of the process taken into account. The complexity of the analysis, due to the number of the involved variables, does not allow the representation of the specified outputs by means of a simple analytical approach. The implementation of a more accurate and sophisticated tool, such as the neural network, results more efficient and easier to be integrated into a simple “ready to use” procedure for predicting the investigated outputs. The main limit to wider implementation of neural networks is the huge computation resources (times and capacities) required to build the data set; a finite element approach was adopted to overcome the time and money wasting typical of experimental investigations. Satisfactory results in terms of prediction capability of the highlighted outputs were found. Finally, a simple and integrated interface was designed to make easier the application of the proposed procedure and to allow the generalization to other manufacturing processes.
机译:先进的制造控制技术的主要目标是提供有效且准确的工具,以控制机器和制造系统的设置。专家系统和神经网络的最新发展和实施支持了这一目标。这项研究探索了神经网络和田口方法的结合使用,以提高舷窗模具挤压工艺的性能。节能和焊接线质量是考虑到的两个相互矛盾的过程目标。由于涉及变量的数量,分析的复杂性不允许使用简单的分析方法来表示指定的输出。诸如神经网络之类的更准确,更复杂的工具的实施,可以更高效,更轻松地集成到简单的“即用型”过程中,以预测所调查的输出。广泛实施神经网络的主要限制是建立数据集所需的巨大计算资源(时间和容量)。采用有限元方法来克服浪费时间和金钱的实验研究。在突出显示的输出的预测能力方面,发现了令人满意的结果。最后,设计了一个简单且集成的界面,以使所建议程序的应用更加容易,并允许将其推广到其他制造过程。

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