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APPLICATION OF ARTIFICIAL NEURAL NETWORKS FOR MISFIRING DETECTION IN AN ANNULAR PULSED DETONATION COMBUSTOR MOCKUP

机译:人工神经网络在环形脉冲爆轰燃烧室内瘤中的误导检测中的应用

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An annular pulsed detonation combustor basically consists of a number of detonation tubes which are firing in a predetermined sequence into a common downstream annular plenum. Fluctuating initial conditions and fluctuating environmental parameters strongly affect the detonation. Operating such a set-up without misfiring is delicate. Misfiring of individual combustion tubes will significantly lower performance or even stop the engine. Hence, an operation of such an engine requires a misfiring detection. Here, a supervised data driven machine learning approach is used for the misfiring detection. The features used as inputs for the classifier are extracted from measurements incorporating physical knowledge about the given set-up. To this end, a neural network is trained based on labeled data which is then used for classification purposes, i.e., misfiring detection. A surrogate, non-reacting experimental set-up is considered in order to develop and test these methods.
机译:环形脉冲爆震燃烧器基本上由许多爆炸管组成,所述爆炸管在预定的序列中烧成普通的下游环形气囊。 波动初始条件和波动的环境参数强烈影响爆炸。 在没有误兵的情况下运行这种设置是微妙的。 单个燃烧管的误兵将显着降低性能甚至停止发动机。 因此,这种发动机的操作需要错误检测。 这里,监督数据驱动的机器学习方法用于错误检测。 用作分类器的输入的功能从包含关于给定设置的物理知识的测量来提取。 为此,基于标记的数据训练神经网络,然后被标记的数据用于分类目的,即错误检测。 考虑替代,非反应实验设置,以便开发和测试这些方法。

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