This paper presents an Expert Decision Support System for the identification of time-invariant, aeroacoustic source types. The system comprises two steps: first, acoustic properties are calculated based on spectral and spatial information. Second, clustering is performed based on these properties. The clustering aims at helping and guiding an expert for quick identification of different source types, providing an understanding of how sources differ. This supports the expert in determining similar or atypical behavior. A variety of features are proposed for capturing the characteristics of the sources. These features represent aeroacoustic properties that can be interpreted by both the machine and by experts. The features are independent of the absolute Mach number which enables the proposed method to cluster data measured at different flow configurations. The method is evaluated on deconvolved beamforming data from two scaled airframe half-model measurements. For this exemplary data, the proposed support system method results in clusters that mostly correspond to the source types identified by the authors. The clustering also provides the mean feature values and the cluster hierarchy for each cluster and for each cluster member a clustering confidence. This additional information makes the results transparent and allows the expert to understand the clustering choices.
翻译:本文介绍了用于确定时间变量和大气源类型的专家决定支持系统。该系统由两步组成:第一,声学特性根据光谱和空间信息计算;第二,根据这些特性进行集群。集群的目的是帮助和指导专家快速识别不同源类型,了解来源的不同情况;这有利于专家确定类似或非典型的行为;提出了各种特征以捕捉源的特征。这些特征代表了机器和专家都可以解释的空气声学特性。这些特征独立于绝对马赫数字,该数字使得拟议方法能够按不同流量配置计量的数据群集。该方法根据两种规模的机体半模型测量的分解波束成数据进行评估。关于这一示范性数据,拟议的支助系统方法在主要与作者确定的源类型相对应的集群中产生结果。该组合还提供了每个组和每个组成员的平均特征值和组群等级。该额外信息使结果透明,使专家能够理解分组的选择。