首页> 外文期刊>Journal of Thermal Spray Technology >Aeroacoustics and Artificial Neural Network Modeling of Airborne Acoustic Emissions During High Kinetic Energy Thermal Spraying
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Aeroacoustics and Artificial Neural Network Modeling of Airborne Acoustic Emissions During High Kinetic Energy Thermal Spraying

机译:高动能热喷涂期间机载声排放空气声学与人工神经网络建模

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摘要

This work describes an online, non-destructive monitoring technology for thermal spray coating processes based on the airborne acoustic emissions (AAE) in the booth. First, numerical simulations were carried out to probe into the relationship between AAE signals and the frequency spectrum generated during high velocity-oxy-fuel thermal spray. The experimental part consisted of spraying a plane substrate. The torch was traversed in front of the substrate at a constant speed, 90 degrees impact angle and for different combinations of standoff distance and powder feed rate. The AAE signals were acquired using a broadband piezoelectric sensor positioned at a fixed point near the torch, and the experimental power spectrum of the signal was processed and compared with model predictions. A neural network-based model was implemented capturing and representing the complex relationships between the power spectrum of the AAE and the resulting coating microhardness. The research outcomes demonstrate that the sound contains detectable information associated with spray parameters such as powder feed rate, spray distance and the resulting coating microhardness. The proposed technology can be used to detect process flaws so that deviations from the optimum spraying conditions can be detected and corrected promptly.
机译:这项工作描述了基于展位空气中的气动声排放(AAE)的热喷涂过程的在线,非破坏性监测技术。首先,进行数值模拟以探测AAE信号与高速 - 氧燃料热喷涂期间产生的频谱之间的关系。实验部分包括喷涂平面基板。以恒定的速度,90度冲击角和待距离的距离和粉末进料速率的不同组合横穿焊炬。使用位于焊炬附近的固定点处的宽带压电传感器获得AAE信号,并处理信号的实验功率谱并与模型预测进行比较。实现了基于神经网络的模型,实现了AAE和所得涂层显微硬度的功率谱之间的复杂关系。研究结果表明声音包含与喷射参数相关的可检测信息,例如粉末进料速率,喷射距离和所得涂层显微硬度。所提出的技术可用于检测过程缺陷,从而可以迅速地检测和校正与最佳喷涂条件的偏差。

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