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Advanced Quality Control in Foundry Manufacturing Process

机译:铸造制造过程中的高级质量控制

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One of the most complex manufacturing processes is the foundry process which consists of several sub-processes linked together to a complex process chain. The foundry process is defined by the individual dependencies between the process parameters and variables as well as by several elements of uncertainty which affect the stability of any sub-process applied and, consequently, product quality. The final quality of a cast part is made in a process situation where anything and anyone has direct control and correcting possibilities over the process. This fact induces strictly the demand on an extremely accurate and in advance control of all sub-processes. To this end, it is necessary to know and finally to control all causes and factors that contribute to the final quality of the cast part. The integrated control of this process, therefore, is a complex and challenging task. The main requirement of foundries is tools which are able to perform data analysis under consideration of any influences of sub-processes on manufacturing quality. This implicates highest flexibility regarding the availability and applicability of different data analyzing tools. During the last 20 years, several different methods have been developed for data analyzing in manufacturing processes. These are mainly Neural Networks (NN), Bayesian Networks (BN), further statistical data analyses and expert systems. Most of these tools have been designed for a specific application and do not have the ability to be applied on foundry problems. Due to the specific algorithms of analyses each of them provides separate results which are strongly related mostly to one sub-process. Correlation and interaction between several processes, parameters and variables are difficult to establish. An Intelligent process control by self-adjusting systems which automatically trace back specific product quality attributes to input variables and fitting these to specified output results is hardly available. In many applications of these methodologies, it has also been substantiated that it is not possible to meet the demands of an intelligent process control using only a single tool, or simple combination of different tools. This is the basic problem using standard control tools in complex manufacturing processes like foundries. Against this background, we present here a new prediction methodology for foundry process that, on the basis of several machine learning methods, is able to perform a comprehensive analysis as well as preparation of data before it is provided as input to prediction tools. This methodology is implemented as software EIDOminer. The weaker tools, that is, which cannot predict good enough quality characteristics of the existing production process, are switched off automatically by so-called Supervisor in IAM of EIDOminer software. The Supervisor determines, for a given process, which analysis method or combination of methods achieve best prediction results and provide a single optimal output result. After learning from the quality data of a product, the software can give prediction in a run time. The software is tested in two German foundry enterprises and the implemented approach shows significant results.
机译:铸造过程是最复杂的制造过程之一,它由几个子过程组成,这些子过程链接在一起形成一个复杂的过程链。铸造工艺是由工艺参数和变量之间的相互依存关系以及不确定性的几个要素来定义的,这些不确定性会影响所应用的任何子工艺的稳定性,进而影响产品的质量。铸件的最终质量是在任何情况下,任何人都可以直接控制和纠正工艺过程的情况下完成的。这一事实严格地引起了对所有子过程的极其精确且预先控制的需求。为此,有必要知道并最终控制影响铸件最终质量的所有原因和因素。因此,对该过程的集成控制是一项复杂而具有挑战性的任务。铸造厂的主要要求是能够在考虑子过程对制造质量的任何影响的情况下执行数据分析的工具。这意味着在不同数据分析工具的可用性和适用性方面具有最高的灵活性。在过去的20年中,已经开发出几种不同的方法来对制造过程中的数据进行分析。这些主要是神经网络(NN),贝叶斯网络(BN),进一步的统计数据分析和专家系统。这些工具大多数都是为特定的应用程序设计的,不能用于铸造问题。由于特定的分析算法,它们每个都提供了独立的结果,这些结果与一个子过程密切相关。几个过程,参数和变量之间的相关性和相互作用很难建立。几乎没有自动调节系统的智能过程控制功能,该系统可以自动将特定的产品质量属性追溯到输入变量,并将其拟合到指定的输出结果。在这些方法的许多应用中,还证实了仅使用单个工具或简单组合使用不同的工具就不可能满足智能过程控制的需求。这是在复杂的制造过程(如铸造厂)中使用标准控制工具的基本问题。在此背景下,我们在此介绍一种用于铸造过程的新预测方法,该方法基于多种机器学习方法,能够在将数据提供给预测工具之前对其进行全面分析以及数据准备。该方法作为软件EIDOminer实现。较弱的工具(即无法预测现有生产过程的足够好的质量特征)将由EIDOminer软件的IAM中的所谓“主管”自动关闭。主管针对给定的过程确定哪种分析方法或方法组合可实现最佳预测结果并提供单个最佳输出结果。从产品的质量数据中学习后,该软件可以在运行时给出预测。该软件已在两家德国铸造企业中进行了测试,所实施的方法显示出显着的效果。

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