自动化持续学习和改进生产过程中的能源效率

Alperen Can, Jessica Fisch, Philipp Stephan, Gregor Thiele, J. Krüger
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引用次数: 0

摘要

自动优化机床的能源效率是有前途的。当涉及到批量生产中的自动化优化方法时,有几个指标需要考虑,特别是质量、技术可用性和周期时间。这些不应该被削弱,而它们被认为是一个中心障碍。测量和机器数据显示了机器中发生的动作,这也导致了机器状态的数据驱动的可追溯性。本文提出了一种方法来制定必要的专家知识,以优化机床的能源效率,基本上是由一个决策树,导致一套规则,将在本文中解释。这组规则协调一个优化算法,该算法在给定规则下技术上操作选定的变量。开发和是一项研究的结果,是在凸轮轴的系列生产在柏林的MB工厂完成。
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Automated continuous learn and improvement process of energy efficiency in manufacturing
Optimizing the energy efficiency of machine tools automatically is promising. There are several metrics to be considered when it comes to automated optimization approaches in serial production which are especially quality, technical availability, and cycle time. These are not supposed to be impaired whereas they are indicated as a central obstacle. The measurements and the machine data show the actions happening in the machine which also leads to the data-driven traceability of machine states. This article presents a method to formulate the necessary expert knowledge to optimize the energy efficiency of a machine tool and is basically done by a decision tree which leads to a set of rules which will be explained in this article. This set of rules coordinate an optimization algorithm, which technically manipulates selected variables under the given rules. The development and is a result of a research which was done at the serial production of camshafts at the MB plant in Berlin.
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