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        Coupling Effect Analysis for Hybrid Piezoelectric and Electromagnetic Energy Harvesting from Random Vibrations

        Ping Li,Shiqiao Gao,Huatong Cai,Huamin Wang 한국정밀공학회 2014 International Journal of Precision Engineering and Vol. No.

        Through establishing the electroelastic model of hybrid piezoelectric(PE) and electromagnetic(EM) energy harvesting from randomvibrations, normalized expressions of mean amplitude, voltage, current, power and their spectral density (SD) are derived, and effectsof electromechanical coupling strength on harvester’s performances are studied by numerical calculation and experimental test. It isfound that the stronger coupling effect, the smaller amplitude and working space required, and the bigger mean voltage, current andpower output until up to their maximums. Furthermore, variation extent of mean voltage, current and power with the PE and EMload increasing varies with the coupling strength. Besides, coupling strength changes the SD distributing in frequency domain. In theweak coupling, maximal SD of voltage, current and power are at the natural frequency of harvester. However, with the coupling effectstrengthening, the frequency corresponding to peak spectral density is bigger than the natural frequency , and the 3dB bandwidth ofharvester is much larger accordingly; moreover, the bandwidth decreases with EM load increasing while it rises firstly and fall laterwith PE load increasing, which reaches the maximum at the optimal load. The analysis results can provide certain criteria for hybridpiezoelectric-electromagnetic energy harvester design.

      • A three-stage deep-learning-based method for crack detection of high-resolution steel box girder image

        Ying Zhou,Shiqiao Meng,Zhiyuan Gao,Bin He,Qingzhao Kong 국제구조공학회 2022 Smart Structures and Systems, An International Jou Vol.29 No.1

        Crack detection plays an important role in the maintenance and protection of steel box girder of bridges. However, since the cracks only occupy an extremely small region of the high-resolution images captured from actual conditions, the existing methods cannot deal with this kind of image effectively. To solve this problem, this paper proposed a novel three-stage method based on deep learning technology and morphology operations. The training set and test set used in this paper are composed of 360 images (4928 × 3264 pixels) in steel girder box. The first stage of the proposed model converted highresolution images into sub-images by using patch-based method and located the region of cracks by CBAM ResNet-50 model. The <i>Recall</i> reaches 0.95 on the test set. The second stage of our method uses the Attention U-Net model to get the accurate geometric edges of cracks based on results in the first stage. The <i>IoU</i> of the segmentation model implemented in this stage attains 0.48. In the third stage of the model, we remove the wrong-predicted isolated points in the predicted results through dilate operation and outlier elimination algorithm. The <i>IoU</i> of test set ascends to 0.70 after this stage. Ablation experiments are conducted to optimize the parameters and further promote the accuracy of the proposed method. The result shows that: (1) the best patch size of sub-images is 1024 × 1024. (2) the CBAM ResNet-50 and the Attention U-Net achieved the best results in the first and the second stage, respectively. (3) Pre-training the model of the first two stages can improve the <i>IoU</i> by 2.9%. In general, our method is of great significance for crack detection.

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