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Using commercial off-the-shelf business intelligence software tools to support aircraft and automated test system maintenance environments

机译:使用商用现成的商业智能软件工具来支持飞机和自动测试系统维护环境

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The purpose of this paper is to provide information about the benefits using Commercial Off-the-Shelf (COTS) business intelligence software tools to support aircraft and automated test system maintenance environments. Aircraft and automated test system parametric and maintenance warehouse-based data can be shared and used for predictive data mining exploitation which will enable better decision support for War Fighters and back shop maintenance. When utilizing common industry business intelligence Predictive Modeling Processes, engineering designers can create initial business intelligence aircraft and automated test system maintenance environment engineering cluster models. This is a process of grouping together engineering data that have similar aggregate patterns. By using these engineering cluster models produced earlier to develop and build more accurate predictive models, predictive algorithms are utilized to make use of the cluster results to improve predictive accuracy. Common industry business intelligence Decision Trees and Neural Network models are developed to determine which algorithm produces the most accurate models (as measured by comparing predictions with actual values over the testing set). After an initial mining structure and mining model is built (specifying the input and predictable attributes), the analyst can easily add other mining models. COTS business intelligence software tools provide for a more cost effective support and predictive role for War Fighter support personnel in a time of decreased defense spending. Having access to applicable engineering data at the time of need will; decrease troubleshooting time on production aircraft and back shop maintenance, increase the ability of the technical user to better understand the diagnostics, reduce ambiguities which drive false removals of system components, decrease misallocated spares, and maintain/increase knowledge management.
机译:本文的目的是提供有关使用现成的商业(COTS)商业智能软件工具来支持飞机和自动测试系统维护环境的好处的信息。飞机和自动测试系统基于参数和维护仓库的数据可以共享并用于预测数据挖掘,这将为战机和后勤维护提供更好的决策支持。使用通用的行业商业智能预测建模流程时,工程设计人员可以创建初始的商业智能飞机和自动测试系统维护环境工程集群模型。这是将具有相似聚合模式的工程数据分组在一起的过程。通过使用较早产生的这些工程聚类模型来开发和构建更准确的预测模型,可以使用预测算法来利用聚类结果来提高预测准确性。开发了通用的行业商业智能决策树和神经网络模型,以确定哪种算法可以生成最准确的模型(通过将预测值与测试集上的实际值进行比较来进行测量)。建立初始挖掘结构和挖掘模型(指定输入和可预测属性)后,分析人员可以轻松添加其他挖掘模型。 COTS商业智能软件工具可在减少国防开支的情况下为War Fighter支持人员提供更具成本效益的支持和预测作用。在需要时可以访问适用的工程数据;减少了生产飞机上的故障排除时间和后勤维护,提高了技术用户更好地理解诊断的能力,减少了导致错误拆卸系统组件的歧义,减少了误分配的备件,并维护/增加了知识管理。

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