4.7 Article

Precipitation projection over Daqing River Basin (North China) considering the evolution of dependence structures

Journal

ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH
Volume 29, Issue 4, Pages 5415-5430

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s11356-021-16066-9

Keywords

Bias correction; Precipitation unevenness; Low-intensity precipitation; Partial correlation coefficient; Nonpoint source pollution

Funding

  1. National Key R&D Program of China [2018YFC0407902]
  2. National Natural Science Foundation for Innovative Research Groups of China [51621092]

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This study applied a two-stage bias correction method to simulate precipitation and temperature data in the Daqing River Basin, finding that future precipitation is projected to increase more in the plains compared to mountains, with precipitation unevenness showing a slight increase in the mountains and a decrease in the plains, along with enhanced seasonality.
Understanding dynamic future changes in precipitation can provide prior information for nonpoint source pollution simulations under global warming. However, the evolution of the dependence structure and the unevenness characteristics of precipitation are rarely considered. This study applied a two-stage bias correction to daily precipitation and max/min temperature data in the Daqing River Basin (DQRB) with the HadGEM3-RA climate model. Validated from 1981 to 2015, future scenarios under two emission paths covering 2031-2065 and 2066-2100 were projected to assess variations in both the amount and unevenness of precipitation. The results suggested that, overall, the two-stage bias correction could reproduce the marginal distributions of variables and the evolution process of the dependence structure. In the future, the amount of precipitation in the plains is expected to increase more than that in the mountains, while precipitation unevenness, as measured by relative entropy, shows a slight increase in the mountains and a decrease in the plains, with enhanced seasonality. Conditioned on rising temperatures, high-/low-intensity precipitation tends to intensify/weaken precipitation unevenness. Additionally, the potential application of the bias correction method used herein and the possible impacts of uneven precipitation on nonpoint source pollution are given for further analyses. This study can provide useful information for future nonpoint source pollution simulations in the DQRB.

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