Spatio-seasonal risk assessment of upward lightning at tall objects
using meteorological reanalysis data
Abstract
This study investigates lightning at tall objects and evaluates the risk
of upward lightning (UL) over the eastern Alps and its surrounding
areas. While uncommon, UL poses a threat, especially to wind turbines,
as the long-duration current of UL can cause significant damage. Current
risk assessment methods overlook the impact of meteorological
conditions, potentially underestimating UL risks. Therefore, this study
employs random forests, a machine learning technique, to analyze the
relationship between UL measured at Gaisberg Tower (Austria) and 35
larger-scale meteorological variables. Of these, the larger-scale upward
velocity, wind speed and direction at 10 meters and cloud physics
variables contribute most information. The random forests predict the
risk of UL across the study area at a 1 km^2 resolution. Strong
near-surface winds combined with upward deflection by elevated terrain
increase UL risk. The diurnal cycle of the UL risk as well as high-risk
areas shift seasonally. They are concentrated north/northeast of the
Alps in winter due to prevailing northerly winds, and expanding
southward, impacting northern Italy in the transitional and summer
months. The model performs best in winter, with the highest predicted UL
risk coinciding with observed peaks in measured lightning at tall
objects. The highest concentration is north of the Alps, where most wind
turbines are located, leading to an increase in overall lightning
activity. Comprehensive meteorological information is essential for UL
risk assessment, as lightning densities are a poor indicator of
lightning at tall objects.