Optoelectronics Letters, Volume. 18, Issue 9, 541(2022)
Field rapid detection method of wind turbine blade fixing bolt defects based on FPGA
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Yupeng Hou, Lei Zhang, Yuanquan Wang, Xiaosong Zhao, Guoce Feng, Yirui Zhang. Field rapid detection method of wind turbine blade fixing bolt defects based on FPGA[J]. Optoelectronics Letters, 2022, 18(9): 541
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Published Online: Jan. 20, 2023
The Author Email: Zhang Lei (tjhouyupeng@163.com)