1 research outputs found
Informing Urban Flood Risk Adaptation by Integrating Human Mobility Big Data During Heavy Precipitation
Understanding the impact of heavy precipitation on human
mobility
is critical for finer-scale urban flood risk assessment and achieving
sustainable development goals #11 to build resilient and safe cities.
Using ∼2.6 million mobile phone signal data collected during
the summer of 2018 in Jiangsu, China, this study proposes a novel
framework to assess human mobility changes during rainfall events
at a high spatial granularity (500 m grid cell). The fine-scale mobility
map identifies spatial hotspots with abnormal clustering or reduced
human activities. When aggregating to the prefecture-city level, results
show that human mobility changes range between −3.6 and 8.9%,
revealing varied intracity movement across cities. Piecewise structural
equation modeling analysis further suggests that city size, transport
system, and crowding level directly affect mobility responses, whereas
economic conditions influence mobility through multiple indirect pathways.
When overlaying a historical urban flood map, we find such human mobility
changes help 23 cities reduce 2.6% flood risks covering 0.45 million
people but increase a mean of 1.64% flood risks in 12 cities covering
0.21 million people. The findings help deepen our understanding of
the mobility pattern of urban dwellers after heavy precipitation events
and foster urban adaptation by supporting more efficient small-scale
hazard management
