Abstract

Visibility degradation is a pervasive environmental problem in winter in China and its prediction accuracy is therefore important, especially in low visibility conditions. However, current visibility parameterization algorithms tend to overestimate low visibility (<5 km) during haze–fog events. The key point of low visibility calculation and prediction depends on a reasonable understanding of the correlation between visibility, PM2.5 concentration, and relative humidity (RH). Using the observations of PM2.5 concentration and meteorology from December 2016 to February 2017, under different RH levels, the relative contribution differences of PM2.5 concentrations and RH to visibility degradation are investigated in depth. On this basis, new multiple nonlinear regressions for low visibility are developed for eight regions of China. The results show that under relatively low RH conditions (<80% or 85%), PM2.5 concentration plays a leading role in visibility changes in China. With the increase in RH (80–90% or 85–95%), the PM2.5 concentration corresponding to the visibility of 10 and 5 km decreases and the contribution of RH becomes increasingly important. When the RH grows to >95%, a relatively low PM2.5 concentration could also lead to visibility decreasing to <5 km. Within this range, the PM2.5 concentration corresponding to the visibility of 5 km in Central China (CC), Sichuan Basin (SCB), and Yangtze River Delta (YRD) is approximately 50, 50, and 30 μg m−3, and that in Beijing-Tianjin-Hebei (BTH) and Guanzhong Plain (GZP) is approximately 125 μg m−3, respectively. Specifically, based on these contribution differences, new multiple nonlinear regression equations of visibility, PM2.5 concentration, temperature, and dew point temperature of the eight regions (Scheme A) are established respectively after grouping the datasets by setting different RH levels (BTH, GZP, and North Eastern China (NEC): RH < 80%, 80 ≤ RH < 90% and RH ≥ 90%; CC, SCB, YRD, and South China Coastal (SCC): RH < 85%, 85 ≤ RH < 95% and RH ≥ 95%; Xinjiang (XJ): RH < 90% and RH ≥ 90%). According to the previous regression methods, we directly established the multiple regression models between visibility and the same factors as a comparison (Scheme B). Statistical results show that the advantage of Scheme A for 5 and 3 km evaluation is more significant compared with Scheme B. For the five low visibility regions (BTH, GZP, CC, SCB, and YRD), RMSEs of Scheme A under visibility <5 and 3 km are 0.77–1.01 and 0.48–0.95 km, 16–43 and 24–57% lower than those of Scheme B, respectively. Moreover, Scheme A reproduced the winter visibility in BTH, GZP, CC, SCB, YRD, and SCC from 2016 to 2020 well. The MAEs, MBs, and RMSEs under visibility < 5 km are 0.44–1.41, −1.33–1.24, and 0.58–2.36 km, respectively. Overall, Scheme A is confirmed to be reliable and applicable for low visibility prediction in many regions of China. This study provides a new visibility parameterization algorithm for the haze–fog numerical prediction system.

Highlights

  • Visibility (VIS) is an important indicator of the transmittance of the atmosphere

  • It is clear that low visibility is mainly located in the central and eastern parts of China, including BTH, Central China (CC), Guanzhong Plain (GZP), Sichuan Basin (SCB), and Yangtze River Delta (YRD) (Figure 1c)

  • The average relative humidity (RH) of the five regions ranked from high to low is SCB (90.0%), CC (86.9%), YRD (86.7%), GZP (80.7%), and BTH (77.3%) respectively (Figure 2b), which is consistent with the ascending order of visibility, suggesting that the higher the RH is, the lower the visibility is

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Summary

Introduction

Visibility (VIS) is an important indicator of the transmittance of the atmosphere. In the recent 10 years, China has experienced many severe haze and fog events which are often accompanied by extremely low visibility and high PM2.5 concentrations due to rapid urbanization and industrialization [1,2,3,4,5,6,7]. Using the observations from December 2016 to February 2017, the relative contribution differences of PM2.5 concentrations and RH changes to visibility reduction in the eight regions of China (Figure 1a) are investigated in depth Considering these differences, the data sets of the eight regions are grouped by different RH levels (BTH, GZP, and NEC: RH < 80%, 80% ≤ RH < 90% and RH ≥ 90%; CC, SCB, YRD, and SCC: RH < 85%, 85% ≤ RH < 95% and RH ≥ 95%; XJ: RH < 90% and RH ≥ 90%). Considering the contribution differences of changes in PM2.5 concentration and humidity to visibility reduction, the 3-hourly data sets of the eight regions are grouped by different RH levels (BTH, GZP, and NEC: RH < 80%, 80 ≤ RH < 90% and RH ≥ 90%; CC, SCB, YRD, and SCC: RH < 85%, 85 ≤ RH < 95% and RH ≥ 95%; XJ: RH < 90% and RH ≥ 90%). The calculated visibility in January 2016–2020 (except 2017), which was calculated by these visibility regression equations, are compared with the observations to evaluate the visibility forecasting capability of this visibility statistical algorithm

Regional Division
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Conclusions
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