Seasonal trend assessment of US extreme precipitation via changepoint segmentation
Jaechoul Lee, Mintaek Lee, Thea Sukianto

TL;DR
This paper develops a method to detect seasonal changepoints in US extreme precipitation data, revealing regional and seasonal trend variations that are overlooked by traditional long-term analyses.
Contribution
It introduces a novel approach combining penalized likelihood and genetic algorithms to identify multiple seasonal changepoints in nonstationary extreme precipitation series.
Findings
Seasonal trends vary significantly across regions and seasons.
Accounting for changepoints reveals more pronounced trend variations.
Increasing fall trends are prominent in the South and East Coast.
Abstract
Most climate trend studies analyze long-term trends as a proxy for climate dynamics. However, when examining seasonal data, it is unrealistic to assume that long-term trends remain consistent across all seasons. Instead, each season likely experiences distinct trends. Additionally, seasonal climate time series, such as seasonal maximum precipitation, often exhibit nonstationarities, including periodicities and location shifts. Failure to rigorously account for these features in modeling may lead to inaccurate trend estimates. This study quantifies seasonal trends in the contiguous United States' seasonal maximum precipitation series while addressing these nonstationarities. To ensure accurate trend estimation, we identify changepoints where the seasonal maximum precipitation shifts due to factors like measurement device changes, observer differences, or location moves. We employ a…
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Taxonomy
TopicsClimate variability and models · Hydrology and Drought Analysis · Precipitation Measurement and Analysis
