Spatiotemporal Evolution and Influencing Factors of Air Pollutants in the Three Major Urban Agglomerations of the Yellow River Basin
Abstract
1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Source
2.3. Analytical Methods
2.3.1. Sen’s Slope Estimator and Mann–Kendall Test for Trend Analysis
2.3.2. Partial Correlation Coefficient
2.3.3. GeoDetector
3. Results
3.1. Temporal Evolution and Trend Analysis
3.1.1. Inter-Annual Evolution and Decoupling Trends
3.1.2. Seasonal Variation Patterns
3.2. Spatial Characterization and Seasonal Variations in Multi-Pollutant Concentrations
3.2.1. Seasonal Dynamics and Regional Gradients of Key Air Pollutants
3.2.2. Spatial and Seasonal Patterns of Temporal Trend Slopes of Air Pollutants
3.2.3. Results Comparison with Other Regions
3.3. Partial Correlation Analysis Among the Six Criterion Air Pollutants
3.4. Analysis of Influencing Drivers Based on GeoDetector
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| YRB | Yellow River Basin |
| SPUA | Shandong Peninsula Urban Agglomeration |
| GZPUA | Guanzhong Plain Urban Agglomeration |
| CPUA | Central Plains Urban Agglomeration |
Appendix A
| PM2.5 | PM10 | O3 | NO2 | SO2 | CO | |||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| q | p | q | p | q | p | q | p | q | p | q | p | |
| Annual | X1 0.30 | 0 | X2 0.27 | 0 | X1 0.44 | 0 | X2 0.28 | 0 | X4 0.50 | 0 | X4 0.42 | 0 |
| X2(0.30) | 0 | X1 0.25 | 0 | X9 0.37 | 0 | X4 0.22 | 0 | X6 0.21 | 0 | X6 0.37 | 0 | |
| X9(0.21) | 0 | X9 0.16 | 0 | X5 0.37 | 0 | X6 0.15 | 0 | X2 0.20 | 0 | X5 0.34 | 0 | |
| X5 0.20 | 0 | X5 0.16 | 0 | X3 0.37 | 0 | X3 0.12 | 0 | X3 0.14 | 0 | X9 0.33 | 0 | |
| Spring | X2 0.36 | 0 | X4 0.26 | 0 | X1 0.44 | 0 | X2 0.25 | 0 | X4 0.41 | 0 | X4 0.42 | 0 |
| X1 0.31 | 0 | X2 0.24 | 0 | X3 0.44 | 0 | X4 0.20 | 0 | X3 0.24 | 0 | X5 0.34 | 0 | |
| X5 0.24 | 0 | X1 0.20 | 0 | X9 0.43 | 0 | X5 0.16 | 0 | X2 0.21 | 0 | X9 0.33 | 0 | |
| X9 0.23 | 0 | X6 0.17 | 0 | X5 0.42 | 0 | X9 0.16 | 0 | X5 0.14 | 0 | X6 0.30 | 0 | |
| Summer | X4 0.26 | 0 | X2 0.30 | 0 | X3 0.47 | 0 | X2 0.22 | 0 | X4 0.27 | 0 | X4 0.40 | 0 |
| X1 0.22 | 0 | X1 0.21 | 0 | X1 0.30 | 0 | X4 0.20 | 0 | X3 0.24 | 0 | X5 0.29 | 0 | |
| X2 0.19 | 0 | X4 0.17 | 0 | X4 0.25 | 0 | X6 0.18 | 0 | X2 0.19 | 0 | X9 0.28 | 0 | |
| X9 0.17 | 0 | X6 0.16 | 0 | X2 0.20 | 0 | X5 0.11 | 0 | X5 0.16 | 0 | X6 0.27 | 0 | |
| Autumn | X1 0.33 | 0 | X2 0.30 | 0 | X5 0.47 | 0 | X2 0.28 | 0 | X4 0.40 | 0 | X4 0.39 | 0 |
| X2 0.32 | 0 | X1 0.27 | 0 | X9 0.46 | 0 | X4 0.20 | 0 | X3 0.19 | 0 | X6 0.33 | 0 | |
| X9 0.20 | 0 | X9(0.17) | 0 | X1 0.42 | 0 | X3 0.17 | 0 | X2 0.13 | 0 | X5 0.32 | 0 | |
| X5 0.18 | 0 | X5 0.17 | 0 | X3 0.30 | 0 | X6 0.12 | 0 | X6 0.12 | 0 | X9 0.31 | 0 | |
| Winter | X1 0.32 | 0 | X1 0.31 | 0 | X2(0.22) | 0 | X2 0.35 | 0 | X4 0.54 | 0 | X6 0.45 | 0 |
| X2 0.28 | 0 | X2 0.22 | 0 | X6 0.16 | 0 | X4 0.21 | 0 | X6 0.35 | 0 | X4 0.41 | 0 | |
| X9 0.23 | 0 | X9 0.21 | 0 | X1 0.15 | 0 | X3 0.17 | 0 | X2 0.25 | 0 | X5 0.35 | 0 | |
| X5 0.19 | 0 | X5 0.19 | 0 | X5 0.14 | 0 | X6 0.13 | 0 | X5 0.19 | 0 | X9 0.35 | 0 | |
| PM2.5 | PM10 | O3 | NO2 | SO2 | CO | |
|---|---|---|---|---|---|---|
| Annual | X5X2(0.64) | X5X2(0.61) | X3X2(0.68) | X6X2(0.49) | X4X1(0.63) | X6X3(0.71) |
| X2X1(0.60) | X6X2 0.59 | X6X3 0.66 | X5X4 0.48 | X4X2 0.63 | X5X4 0.64 | |
| X9X2(0.61) | X9X2 0.59 | X9X3 0.64 | X9X4 0.48 | X4X3 0.62 | X6X5 0.64 | |
| X5X1(0.58) | X2X1 0.56 | X5X3 0.63 | X2X1 0.45 | X5X4 0.62 | X9X4 0.63 | |
| Spring | X4X2 0.63 | X4X2 0.60 | X6X3 0.73 | X9X4 0.50 | X4X2 0.63 | X6X3 0.67 |
| X5X2 0.63 | X5X2 0.59 | X3X2 0.73 | X5X4 0.50 | X4X3 0.62 | X4X3 0.64 | |
| X2X1 0.63 | X2X1 0.26 | X9X3 0.69 | X6X2 0.44 | X5X4 0.61 | X9X4 0.62 | |
| X5X1 0.60 | X4X1 0.55 | X6X1 0.64 | X9X3 0.44 | X9X4 0.59 | X5X3 0.62 | |
| Summer | X4X2 0.61 | X4X2 0.61 | X3X2 0.71 | X9X4 0.48 | X4X3 0.56 | X6X3 0.67 |
| X4X1 0.57 | X4X1 0.58 | X9X3 0.69 | X5X4 0.47 | X4X2 0.54 | X4X3 0.62 | |
| X6X3 0.53 | X6X1 0.56 | X9X4 0.68 | X6X3 0.45 | X6X3 0.53 | X9X4 0.60 | |
| X2X1 0.54 | X6X3 0.56 | X4X3 0.68 | X4X3 0.45 | X5X3 0.52 | X5X4 0.60 | |
| Autumn | X5X2 0.63 | X5X2 0.58 | X6X1 0.71 | X6X2 0.50 | X4X2 0.60 | X6X3 0.68 |
| X2X1 0.62 | X2X1 0.57 | X6X3 0.71 | X9X4 0.46 | X4X1 0.59 | X4X3 0.62 | |
| X9X2 0.61 | X9X2 0.56 | X3X20.67 | X2X1 0.46 | X5X4 0.55 | X5X4 0.61 | |
| X5X2 0.59 | X6X2 0.56 | X9X4 0.66 | X5X4 0.46 | X4X3 0.55 | X6X5 0.61 | |
| Winter | X5X2 0.67 | X5X2 0.65 | X6X2 0.50 | X6X2 0.54 | X4X1 0.68 | X6X3 0.72 |
| X9X2 0.65 | X9X2 0.64 | X2X1 0.49 | X2X1 0.51 | X4X2 0.64 | X6X5 0.70 | |
| X6X2 0.60 | X6X2 0.59 | X9X4 0.47 | X5X2 0.49 | X6X3 0.64 | X9X6 0.67 | |
| X2X1 0.59 | X2X1 0.57 | X9X5 0.45 | X4X2 0.49 | X6X4 0.64 | X5X4 0.63 |
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| Pollutant | Mean (2015) | Mean (2024) | Sen’s Slope | M-K(Z) | p-Value |
|---|---|---|---|---|---|
| PM2.5 (µg/m3) | 67.27 | 39.29 | −0.25 | −4.21 | <0.001 |
| SO2 (µg/m3) | 37.38 | 8.11 | −0.17 | −5.13 | <0.001 |
| O3 (µg/m3) | 58.61 | 77.97 | 0.12 | 2.32 | 0.02 |
| CO (mg/m3) | 1.40 | 0.65 | −0.01 | −3.95 | <0.001 |
| NO2 (µg/m3) | 38.20 | 24.07 | −0.15 | −4.08 | <0.001 |
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Yin, Y.; Zhang, F.; Wu, Q.; Sun, L.; Li, Y.; Wang, P.; Liu, Z.; Cui, T.; Zhou, Z.; Hou, R.; et al. Spatiotemporal Evolution and Influencing Factors of Air Pollutants in the Three Major Urban Agglomerations of the Yellow River Basin. Atmosphere 2026, 17, 242. https://doi.org/10.3390/atmos17030242
Yin Y, Zhang F, Wu Q, Sun L, Li Y, Wang P, Liu Z, Cui T, Zhou Z, Hou R, et al. Spatiotemporal Evolution and Influencing Factors of Air Pollutants in the Three Major Urban Agglomerations of the Yellow River Basin. Atmosphere. 2026; 17(3):242. https://doi.org/10.3390/atmos17030242
Chicago/Turabian StyleYin, Yanli, Fan Zhang, Qifan Wu, Linan Sun, Yuanzheng Li, Peng Wang, Zilin Liu, Tian Cui, Zhaomeng Zhou, Runjing Hou, and et al. 2026. "Spatiotemporal Evolution and Influencing Factors of Air Pollutants in the Three Major Urban Agglomerations of the Yellow River Basin" Atmosphere 17, no. 3: 242. https://doi.org/10.3390/atmos17030242
APA StyleYin, Y., Zhang, F., Wu, Q., Sun, L., Li, Y., Wang, P., Liu, Z., Cui, T., Zhou, Z., Hou, R., Zhang, M., Liu, J., & Hu, Q. (2026). Spatiotemporal Evolution and Influencing Factors of Air Pollutants in the Three Major Urban Agglomerations of the Yellow River Basin. Atmosphere, 17(3), 242. https://doi.org/10.3390/atmos17030242

