USE OF CONVOLUTIONAL NEURAL NETWORK IMAGE CLASSIFICATION AND HIGH-SPEED ION PROBE DATA TOWARDS REAL-TIME DETONATION CHARACTERIZATION IN A WATER-COOLED ROTATING DETONATION ENGINE

IF 1.6 4区 工程技术 Q3 ENGINEERING, MECHANICAL
Kristyn Johnson, Donald Ferguson, Andrew C. Nix
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引用次数: 0

Abstract

Abstract As rotating detonation engines (RDEs) progress in maturity, the importance of monitoring advancements toward development of active control becomes more critical. Experimental RDE data processing at time scales which satisfy real-time diagnostics will likely require the use of machine learning. This study aims to develop and deploy a novel real-time monitoring technique capable of determining detonation wave number, direction, frequency, and individual wave speeds throughout experimental RDE operational windows. To do so, the diagnostic integrates image classification by a convolutional neural network (CNN) and ionization current signal analysis. Wave mode identification through single-image CNN classification bypasses the need to evaluate sequential images and offers instantaneous identification of the wave mode present in the RDE annulus. Real-time processing speeds are achieved due to low data volumes required by the methodology, namely one short-exposure image and a short window of sensor data to generate each diagnostic output. The diagnostic acquires live data using a modified experimental setup alongside Pylon and PyDAQmx libraries within a python data acquisition environment. Lab-deployed diagnostic results are presented across varying wave modes, operating conditions, and data quality, currently executed at 3–4 Hz with a variety of iteration speed optimization options to be considered as future work. These speeds exceed that of conventional techniques and offer a proven structure for real-time RDE monitoring. The demonstrated ability to analyze detonation wave presence and behavior during RDE operation will certainly play a vital role in the development of RDE active control, necessary for RDE technology maturation toward industrial integration.
利用卷积神经网络图像分类和高速离子探针数据实现水冷旋转爆轰发动机的实时爆轰表征
随着旋转爆震发动机(RDEs)的日益成熟,监测技术的进步对主动控制技术的发展变得越来越重要。满足实时诊断的时间尺度的实验性RDE数据处理可能需要使用机器学习。本研究旨在开发和部署一种新的实时监测技术,能够在整个实验RDE操作窗口中确定爆震波数、方向、频率和单个波速。为此,诊断集成了卷积神经网络(CNN)和电离电流信号分析的图像分类。通过单幅图像CNN分类进行波模识别,无需对连续图像进行评估,可以对RDE环空中存在的波模进行即时识别。由于该方法所需的数据量少,即一个短曝光图像和一个短窗口的传感器数据来生成每个诊断输出,因此实现了实时处理速度。该诊断程序在python数据采集环境中使用经过修改的实验设置以及Pylon和PyDAQmx库来获取实时数据。实验室部署的诊断结果在不同的波模式、操作条件和数据质量下呈现,目前在3-4 Hz下执行,具有各种迭代速度优化选项,可作为未来工作的考虑因素。这些速度超过了传统技术,并为实时RDE监控提供了一种经过验证的结构。在RDE运行过程中分析爆震波存在和行为的能力将在RDE主动控制的发展中发挥至关重要的作用,这是RDE技术走向工业集成的必要条件。
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来源期刊
Journal of Thermal Science and Engineering Applications
Journal of Thermal Science and Engineering Applications THERMODYNAMICSENGINEERING, MECHANICAL -ENGINEERING, MECHANICAL
CiteScore
3.60
自引率
9.50%
发文量
120
期刊介绍: Applications in: Aerospace systems; Gas turbines; Biotechnology; Defense systems; Electronic and photonic equipment; Energy systems; Manufacturing; Refrigeration and air conditioning; Homeland security systems; Micro- and nanoscale devices; Petrochemical processing; Medical systems; Energy efficiency; Sustainability; Solar systems; Combustion systems
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