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Inclusion scraps control in aerospace blades production through cognitive paradigms

机译:通过认知范式生产在航空航天刀片中的包装废料控制

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The reduction of the scraps is fundamental to achieve goals of competitiveness. Some key parameters have a direct influence on any process and they need to be predicted and taken under control. This paper present an approach ) is to develop a robust monitoring solution of the ceramic shell manufacture that will be able to determine a significant reduction of the inclusion scraps (due the ceramic shell) of the superalloy components. The control will be obtained by processing data coming both from sensors and laboratory measured values. The sensor data come from the new equipment of the Europea Microfusioni Aerospaziali SpA (EMA) and have been tested and used to develop the EMA demonstrator within the EC FP7 Project on "Intelligent Fault Correction and self-Optimizing Manufacturing systems-IFaCOM". The sensor data will merge the data measured in the EMA laboratories and both the values will concur to create the sensor fusion pattern vector, which will be used to feed an automatic system for the prediction of the process parameters. The automatic system will be implemented using cognitive paradigms, in particular Artificial Neural Networks, that will combine both data. The first testing phase will predict the number of blades with inclusions. It will provide a first idea of the correlation between the input, as a matrix composed by the sensor fusion pattern vectors per each worked blade, and the outputs, as a vector of rejected blades on the total. Moreover, this work will be the basis to implement a predictive system to estimate which is the reference range of each working parameter.
机译:减少废料是实现竞争力的目标的基础。一些关键参数对任何过程都有直接影响,并且需要在控制下预测和进行。本文提出了一种方法,该方法是开发一种稳健的监测陶瓷壳制造的解决方案,该陶瓷壳制造能够能够确定超合金组分的包含废料(由于陶瓷壳)的显着降低。通过处理来自传感器和实验室测量值的数据来获得控制。传感器数据来自Europea Microfusioni Aerospaziali Spa(EMA)的新设备,并已被测试并用于在EC FP7项目中开发EMA示范器,“智能故障校正和自我优化制造系统 - IFACOM”。传感器数据将合并在EMA实验室中测量的数据,并且两个值都会同意创建传感器融合模式向量,该传感器融合模式向量将用于馈送自动系统以预测过程参数。自动系统将使用认知范例,特定人工神经网络,它们将结合两个数据。第一测试阶段将预测具有夹杂物的叶片的数量。它将提供输入之间的相关性,作为由每个工作刀片的传感器融合模式矢量组成的矩阵,以及输出,作为总共被拒绝刀片的矢量。此外,这项工作将是实现预测系统来估计的基础,这是每个工作参数的参考范围。

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