Abstract:
Fog, usually considered a calm-weather phenomenon, impairs horizontal visibility near the
ground and badly affects many sectors of society like transportation, power, agriculture, and
communication, leading to huge socio-economic losses. We have investigated fog occurrence
at the Kempegowda International Airport, Bengaluru (KIAB), which includes extensive field
campaigns during 2020-24 and numerical simulations using models like the deterministic and
ensemble Weather Research and Forecasting (WRF) model, single-column model, as well
as machine learning (ML) models. We have used observations from field experiments and
the Meteorological Aerodrome Report (METAR) to understand fog occurrence, its long-term
trends, and the effects of different meteorological factors on its occurrence and development,
whereas numerical simulations have been used to improve visibility parameterization, bias
corrections, and to develop an effective operational forecasting model for fog prediction at the
KIAB.
We have analyzed 16 years (2008-24) of the METAR dataset and shown that fog at the
KIAB usually occurs around sunrise from October to February and holds significant intra- and
inter-seasonal variability. December faces the highest fog hours and days, followed by January
and November. Although mist is mostly ignored in numerical weather prediction (NWP) model,
its occurrence in total hours is 6–7 times higher than fog occurrence in the fog season and can
play an important role in preconditioning of fog.To identify the favorable conditions for fog occurrence at the KIAB, we have compared
many parameters between foggy and non-foggy days of the fog season during 2020-24. Near ground cooling and middle-layer warming are some of the favored conditions for fog occurrence.
Contrary to the assumption that fog usually appears in high-humidity environments near the
ground, fog in December occurs in dry environments where dryness can be observed from the
surface to a few kilometers above the ground. Other favorable conditions include middle-level
drying, anticyclonic conditions (i.e., clear-sky conditions), a relatively unstable boundary layer
in the day, and a stable layer at night.
Along with the fog study, we also elucidate the impact of aerosols/fog on longwave
cooling of the ABL using field experiments and simulations that integrate aerosol interaction
in a radiation-conduction model. Field observations indicate that under calm and clear-sky
conditions, the evening transition typically results in a distinct vertical thermal structure called
the Lifted Temperature Minimum (LTM). We observe that after sunset, the prevailing profile
near the surface is the LTM profile. Additionally, the occurrence of LTM increases with a
decrease in parameters like downward and upward longwave flux, soil sensible heat flux, wind
speed, and turbulent kinetic energy measured at two meters above ground level (AGL). In such
scenarios, the intensity of LTM profiles is primarily governed by aerosol-induced longwave
heating rate (LHR) within the surface layer. Furthermore, the presence of clouds leads to
increased downward flux, causing the disappearance of LTM, whereas shallow fog can enhance
LTM intensity, as observed in both field observations and simulations.Usually, prevailing radiation models underestimate aerosol-induced longwave heating rate
(LHR) by an order compared to actual field observations. We attribute this difference to aerosol induced radiation divergence. We show that the impact of aerosol-induced LHR extends
hundreds of meters into the inversion layer, affecting temperature profiles and potentially
influencing processes such as fog formation. As the fog layer develops, LHR strengthens at
its upper boundary, however, we highlight the difficulty in detecting this cooling using remote
instruments such as microwave radiometer.
A comparison between WRF output, input, and observations has revealed that the WRF
model shows significant biases of varying magnitude at vertical levels, which are primarily
introduced via initial and boundary conditions. We attempt to reduce biases in temperature and
humidity profiles from the WRF model at 7 hours of lead time using the ML model and show
that total biases in temperature and humidity profiles, including all levels up to 10 km, reduce
to 0.49 K and 0.63 g kg−3
from 1.06 K and 1.26 g kg−3
after applying ML-based corrections,
respectively. Based on extensive observations and analysis, we have performed visibility and Runway
Visual Range (RVR) parameterization using the WRF model and METAR. Further, determinis tic, ensemble, and ML-based approaches have been tested to get an operational fog forecasting
model at KIAB. Analysis shows that the ML-based model, configured and tested using satellite
and WRF datasets, outperformed on many metrics. Concurrently, we have performed oper ational fog forecasting to predict visibility at KIAB for three fog seasons, where accuracy
in predicting foggy/non-foggy days was 69% in 2021-22, 72.4% in 2022-23, and 74.1% in
2023-24.