Identification of O3 Sensitivity to Secondary HCHO and NO2 Measured by MAX-DOAS in Four Cities in China
Abstract
:1. Introduction
2. Method and Methodology
2.1. Instrument Setup
2.2. Spectral Analysis
2.3. Vertical Profile Retrieval
2.4. Regression Model for Source Separation in Ambient HCHO
2.5. Methodology for O3 Sensitivity Analysis
2.6. Ancillary Data
3. Results
3.1. Verification of MAX-DOAS Results
3.2. Vertical Structural Differences in NO2 and HCHO among the Four Cities
3.3. Detailed Overview of NO2 and HCHO in Four Cities
4. Discussion
4.1. Primary and Secondary Sources of HCHO in Four Cities
4.2. O3-NOx-VOCs Sensitivities in Vertical Space in Four Cities
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Appendix B
References
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Parameter | NO2 | HCHO |
---|---|---|
Wavelength range | 338.0–370.0 nm | 322.5–358.0 nm |
NO2 (220 K) [32] | √ | √ |
NO2 (298 K) [32] | √ | √ |
O3 (223 K) [33] | √ | √ |
O3 (243 K) [33] | √ | √ |
O4 (293 K) [34] | √ | √ |
BrO (223 K) [35] | √ | √ |
HCHO (298 K) [36] | √ | √ |
Ring spectrum [37] | By QDOAS | By QDOAS |
Polynomial degree | 5th order | 5th order |
Intensity offset | Constant | Constant |
Nearest CNEMC Site Name | Longitude | Latitude | Distance from MAX-DOAS Instrument | |
---|---|---|---|---|
Xianghe | Development Zone | 116.7729°E | 39.5747°N | 3.0592 km |
Lanzhou | Railway Design Institute | 103.8310°E | 36.0464°N | 2.5557 km |
Shenyang | Taiyuan Street | 123.3997°E | 41.7972°N | 1.6491 km |
Guangzhou | Tiyu West Street | 113.3208°E | 23.132 °N | 4.6733 km |
City | Season | Threshold | VOCs | NOx-VOCs | NOx |
---|---|---|---|---|---|
Xianghe | Spring | [0.2, 0.5] | 71.76% | 22.90% | 5.34% |
Summer | [0.8, 1.8] | 44.83% | 36.38% | 18.78% | |
Autumn | [0.5, 0.9] | 50.53% | 22.11% | 27.34% | |
Winter | [0.07, 0.1] | 71.03% | 12.15% | 16.82% | |
Lanzhou | Spring | [0.045, 0.080] | 69.39% | 25.07% | 5.54% |
Summer | [0.09, 0.12] | 54.82% | 18.94% | 26.25% | |
Autumn | [0.007, 0.008] | 11.96% | 7.18% | 80.86% | |
Winter | [0.014, 0.021] | 73.36% | 21.83% | 4.80% | |
Shenyang | Spring | [0.042, 0.065] | 38.30% | 30.70% | 31.00% |
Summer | [0.15, 0.23] | 37.04% | 22.75% | 40.21% | |
Autumn | [0.04, 0.14] | 51.76% | 44.72% | 3.52% | |
Winter | [0.016, 0.023] | 24.04% | 17.31% | 58.66% | |
Guangzhou | Spring | [0.19, 0.31] | 82.22% | 12.22% | 5.56% |
Summer | [0.34, 0.47] | 35.48% | 19.35% | 45.16% | |
Autumn | [0.3, 0.6] | 53.79% | 31.05% | 15.16% | |
Winter | [0.19, 0.35] | 33.48% | 33.03% | 33.48% |
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Lu, C.; Li, Q.; Xing, C.; Hu, Q.; Tan, W.; Lin, J.; Zhang, Z.; Tang, Z.; Cheng, J.; Chen, A.; et al. Identification of O3 Sensitivity to Secondary HCHO and NO2 Measured by MAX-DOAS in Four Cities in China. Remote Sens. 2024, 16, 662. https://doi.org/10.3390/rs16040662
Lu C, Li Q, Xing C, Hu Q, Tan W, Lin J, Zhang Z, Tang Z, Cheng J, Chen A, et al. Identification of O3 Sensitivity to Secondary HCHO and NO2 Measured by MAX-DOAS in Four Cities in China. Remote Sensing. 2024; 16(4):662. https://doi.org/10.3390/rs16040662
Chicago/Turabian StyleLu, Chuan, Qihua Li, Chengzhi Xing, Qihou Hu, Wei Tan, Jinan Lin, Zhiguo Zhang, Zhijian Tang, Jian Cheng, Annan Chen, and et al. 2024. "Identification of O3 Sensitivity to Secondary HCHO and NO2 Measured by MAX-DOAS in Four Cities in China" Remote Sensing 16, no. 4: 662. https://doi.org/10.3390/rs16040662