A statistical approach for reconstructing natural streamflow series based on streamflow variation identification Academic Article uri icon

abstract

  • Abstract Natural streamflow reconstruction is highly significant to assess long-term trends, variability, and pattern of streamflow, and is critical for addressing implications of climate change for adaptive water resources management. This study proposed a simple statistical approach named NSR-SVI (natural streamflow reconstruction based on streamflow variation identification). As a hybrid model coupling Pettitt's test method with an iterative algorithm and iterative cumulative sum of squares algorithm, it can determine the reconstructed components and implement the recombination depending only on the information of change points in observed annual streamflow records. Results showed that NSR-SVI is suitable for reconstructing natural series and can provide the stable streamflow processes under different human influences to better serve the hydrologic design of water resource engineering. Also, the proposed approach combining the cumulative streamflow curve provides an innovative way to investigate the attributions of streamflow variation, and the performance has been verified by comparing with the relevant results in nearby basin.

published proceedings

  • HYDROLOGY RESEARCH

author list (cited authors)

  • Dang, C., Zhang, H., Singh, V. P., Zhi, T., Zhang, J., & Ding, H.

citation count

  • 4

publication date

  • October 2021