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CHARACTERIZING COMBUSTION INSTABILITY USING DEEP CONVOLUTIONAL NEURAL NETWORK

机译:利用深度卷积神经网络表征燃烧不稳定性

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Detecting the transition to an impending instability is important to initiate effective control in a combustion system. As one of the early applications of characterizing thermoacoustic instability using Deep Neural Networks, we train our proposed deep convolutional neural network (CNN) model on sequential image frames extracted from hi-speed flame videos by inducing instability in the system following a particular protocol- varying the acoustic length. We leverage the sound pressure data to define a non-dimensional instability measure used for applying an inexpensive but noisy labeling technique to train our supervised 2D CNN model. We attempt to detect the onset of instability in a transient dataset where instability is induced by a different protocol. With the continuous variation of the control parameter, we can successfully detect the critical transition to a state of high combustion instability demonstrating the robustness of our proposed detection framework, which is independent of the combustion inducing protocol.
机译:检测到即将发生的不稳定性的转变对于启动燃烧系统中的有效控制很重要。作为使用深层神经网络表征热声不稳定性的早期应用之一,我们通过根据特定协议的变化在系统中引起不稳定性,从而在从高速火焰视频提取的连续图像帧上训练了我们提出的深卷积神经网络(CNN)模型声长。我们利用声压数据来定义一个无量纲的不稳定性度量,该度量用于应用廉价但嘈杂的标记技术来训练我们的受监督2D CNN模型。我们尝试在瞬态数据集中检测不稳定性的发生,在该数据集中,不稳定性是由其他协议引起的。随着控制参数的不断变化,我们可以成功地检测到高燃烧不稳定性状态的关键转变,从而证明了我们提出的检测框架的稳健性,而该框架与燃烧诱导方案无关。

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