Optimization of rainfall networks using information entropy and temporal variability analysis Academic Article uri icon

abstract

  • 2018 Elsevier B.V. Rainfall networks are the most direct sources of precipitation data and their optimization and evaluation are essential and important. Information entropy can not only represent the uncertainty of rainfall distribution but can also reflect the correlation and information transmission between rainfall stations. Using entropy this study performs optimization of rainfall networks that are of similar size located in two big cities in China, Shanghai (in Yangtze River basin) and Xi'an (in Yellow River basin), with respect to temporal variability analysis. Through an easy-to-implement greedy ranking algorithm based on the criterion called, Maximum Information Minimum Redundancy (MIMR), stations of the networks in the two areas (each area is further divided into two subareas) are ranked during sliding inter-annual series and under different meteorological conditions. It is found that observation series with different starting days affect the ranking, alluding to the temporal variability during network evaluation. We propose a dynamic network evaluation framework for considering temporal variability, which ranks stations under different starting days with a fixed time window (1-year, 2-year, and 5-year). Therefore, we can identify rainfall stations which are temporarily of importance or redundancy and provide some useful suggestions for decision makers. The proposed framework can serve as a supplement for the primary MIMR optimization approach. In addition, during different periods (wet season or dry season) the optimal network from MIMR exhibits differences in entropy values and the optimal network from wet season tended to produce higher entropy values. Differences in spatial distribution of the optimal networks suggest that optimizing the rainfall network for changing meteorological conditions may be more recommended.

published proceedings

  • JOURNAL OF HYDROLOGY

author list (cited authors)

  • Wang, W., Wang, D., Singh, V. P., Wang, Y., Wu, J., Wang, L., ... He, R.

citation count

  • 22

complete list of authors

  • Wang, Wenqi||Wang, Dong||Singh, Vijay P||Wang, Yuankun||Wu, Jichun||Wang, Lachun||Zou, Xinqing||Liu, Jiufu||Zou, Ying||He, Ruimin

publication date

  • April 2018