Optimal Sensor Placement of Acoustic Sensor for Compressor Blade Crack Detection based on Multi-objective Optimization

Di Song, Tianchi Ma, Junxian Shen, Feiyun Xu
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Abstract

Nowadays, acoustic sensors have been widely applied for crack detection of compressor blades. As the accuracy is mainly affected by signal quality, the optimal sensor placement (OSP) is significant for crack detection. To search the OSP for reliable signals, the multi-objective acoustic sensor optimization method is proposed to detect crack of compressor blade under variable working conditions. First, a multi-objective function is constructed based on comprehensive consideration of signal quality and sensor cost. Furtherly, the placement and number of acoustic sensors are optimized by multi-objective genetic algorithm. Finally, the long-short term memory network is utilized to fuse the reliable acoustic signals on feature-level, which can detect the crack under different working conditions. The compressor experiments are implemented to test the proposed method. After multi-objective optimization, two acoustic sensors at optimal placement are used to detect crack of five lengths. It can reach average accuracy of 97.74% under four working conditions. Comparing with other number and placement of acoustic sensors, the advantage of the proposed method is validated for crack detection with high accuracy and low sensor cost.
基于多目标优化的压气机叶片裂纹声传感器优化布置
目前,声学传感器在压气机叶片裂纹检测中得到了广泛的应用。由于裂纹检测的精度主要受信号质量的影响,因此传感器的最优放置对裂纹检测具有重要意义。为了在OSP中搜索可靠信号,提出了多目标声传感器优化方法,用于变工况下压气机叶片裂纹检测。首先,在综合考虑信号质量和传感器成本的基础上,构造多目标函数;采用多目标遗传算法优化声传感器的位置和数量。最后,利用长短期记忆网络在特征级上融合可靠的声信号,实现不同工况下的裂纹检测。通过压气机实验对该方法进行了验证。经过多目标优化,利用两个声传感器在最优位置对5种长度的裂纹进行检测。在4种工况下,平均精度可达97.74%。与其他数量和位置的声传感器相比,该方法具有检测精度高、成本低的优点。
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