Atmospheric COâ plays an important role in controlling climate change and its effect on the carbon cycle. However, detailed information on the dynamics of COâ vertical mixing remains lacking, which hinders the accurate understanding of certain key features of the carbon cycle. Differential absorption lidar (DIAL) is a promising technology for COâ detection due to its characteristics of high precision, high time resolution, and high spatial resolution. Ground-based COâ-DIAL can provide the continuous observations of the vertical profile of COâ concentration, which can be highly significant to gaining deeper insights into the rectification effect of COâ, the ratio of respiration photosynthesis, and the COâ dome in urban areas. A set of ground-based COâ-DIAL systems were developed by our team and highly accurate long-term laboratory experiments were conducted. Nonetheless, the performance suffered from low signal-to-noise ratio (SNR) in field explorations because of decreasing aerosol concentrations with increasing altitude and surrounding interference according to the results of our experiments in Wuhan and Huainan. The concentration of atmospheric COâ is derived from the difference of signals between on-line and off-line wavelengths; thus, low SNR will cause the superimposition of the final inversion error. In such a situation, an efficient and accurate denoising algorithm is critical for a ground-based COâ-DIAL system, particularly in field experiments. In this study, a method based on lifting wavelet transform (LWT) for COâ-DIAL signal denoising was proposed. This method, which is an improvement of the traditional wavelet transform, can select different predictive and update functions according to the characteristics of lidar signals, thereby making it suitable for the signal denoising of COâ-DIAL. Experiment analyses were conducted to evaluate the denoising effect of LWT. For comparison, ensemble empirical mode decomposition denoising was also performed on the same lidar signal. In addition, this study calculated the coefficient of variation (CV) at the same altitude among multiple original signals within 10 min and then performed the same calculation on the denoised signal. Finally, high-quality signal of ground-based COâ-DIAL was obtained using the LWT denoising method. The differential absorption optical depths of the denoised signals obtained via LWT were calculated, and the profile distribution information of COâ concentration was acquired during field detection by using our developed COâ-DIAL systems.
Improvement of COâ-DIAL Signal-to-Noise Ratio Using Lifting Wavelet Transform.
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作者:Xiang Chengzhi, Han Ge, Zheng Yuxin, Ma Xin, Gong Wei
| 期刊: | Sensors | 影响因子: | 3.500 |
| 时间: | 2018 | 起止号: | 2018 Jul 20; 18(7):2362 |
| doi: | 10.3390/s18072362 | ||
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