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Implementation and testing of a genetic algorithm for a self-learning and automated parameterisation of an aerodynamic feeding system

机译:一种自学习和自动化参数的遗传算法的实施与测试空气动力学馈送系统

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An active aerodynamic feeding system developed at the IFA offers a large potential regarding output rate, reliability and neutrality towards part geometries. In this paper, the procedure of a genetic algorithm's into the feeding system's control is shown. The genetic algorithm automatically identifies optimal values for the feeding system's parameters which need to be adjusted when setting up for new workpieces. The general functioning of the automatic parameter identification is confirmed during tests on the convergence behaviour of the genetic algorithm. Thereby, a trade-off between the adjustment time of the feeding system and the solution quality is revealed.
机译:在IFA上开发的主动空气动力喂养系统提供了对部件几何形状的输出速率,可靠性和中立性的大潜力。本文示出了遗传算法进入馈电系统的控制。遗传算法自动识别馈送系统参数的最佳值,需要在设置新工件时进行调整。在遗传算法的收敛行为的测试期间确认了自动参数识别的一般功能。由此,揭示了馈电系统的调整时间与溶液质量之间的折衷。

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