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Meteorological-Data-Driven Rubber Tree Powdery Mildew Model and Its Application on Spatiotemporal Patterns: A Case Study of Hainan Island

Author

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  • Jiayan Kong

    (Ecology and Environment College, Hainan University, Haikou 570208, China)

  • Yinghe An

    (Ecology and Environment College, Hainan University, Haikou 570208, China)

  • Xian Shi

    (Ecology and Environment College, Hainan University, Haikou 570208, China
    College of Water Conservancy and Electric Power, Heilongjiang University, Harbin 150006, China)

  • Zhongyi Sun

    (Ecology and Environment College, Hainan University, Haikou 570208, China
    Key Laboratory of Agro-Forestry Environmental Processes and Ecological Regulation of Hainan Province, Hainan University, Haikou 570228, China)

  • Lan Wu

    (Ecology and Environment College, Hainan University, Haikou 570208, China
    Key Laboratory of Agro-Forestry Environmental Processes and Ecological Regulation of Hainan Province, Hainan University, Haikou 570228, China)

  • Wei Cui

    (Development Research Center, National Forestry and Grassland Administration, Beijing 100714, China)

Abstract

Given that rubber is an important strategic material and the prevalence of rubber tree powdery mildew (RTPM) is a serious issue, the study of RTPM is becoming increasingly significant in aiding our understanding and managing rubber plantations. By enhancing our understanding, we may improve both the yield and quality of the rubber produced. Using meteorological station and reanalysis data, we employed factor expansion and three different feature-selection methods to screen for significant meteorological factors, ultimately constructing a data-driven RTPM disease index (RTPM-DI) model. This model was then used to analyze the spatiotemporal distribution of RTPM-DI in Hainan Island from 1980 to 2018, to reproduce and explore its patterns. The results show that (1) the RTPM-DI is dominantly negatively influenced by the average wind speed and positively affected by days with moderate rain; (2) the average wind speed and the days with moderate rain could explain 71% of the interannual variations in RTPM-DI, and a model established on the basis of these can simulate the changing RTPM-DI pattern very well (RMSE = 8.2511, MAE = 6.7765, MAPE = 0.2486, KGE = 0.9921, MSE = 68.081, RMSLE = 0.0953); (3) the model simulation revealed that during the period from 1980 to 2018, oscillating cold spots accounted for 72% of the whole area of Hainan Island, indicating a declining trend in RTPM-DI in the middle, western, southwestern, and northwestern regions. Conversely, new hot-spots and oscillating hot-spots accounted for 1% and 6% of the entire island, respectively, demonstrating an upward trend in the southeastern and northern regions. Additionally, no discernible pattern was observed for 21% of the island, encompassing the southern, eastern, and northeastern regions. It is evident that the whole island displayed significant spatial differences in the RTPM-DI pattern. The RTPM-DI model constructed in this study enhances our understanding of how climate change impacts RTPM, and it provides a useful tool for investigating the formation mechanism and control strategies of RTPM in greater depth.

Suggested Citation

  • Jiayan Kong & Yinghe An & Xian Shi & Zhongyi Sun & Lan Wu & Wei Cui, 2023. "Meteorological-Data-Driven Rubber Tree Powdery Mildew Model and Its Application on Spatiotemporal Patterns: A Case Study of Hainan Island," Sustainability, MDPI, vol. 15(16), pages 1-17, August.
  • Handle: RePEc:gam:jsusta:v:15:y:2023:i:16:p:12119-:d:1212795
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    References listed on IDEAS

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    1. Hyndman, Rob J. & Koehler, Anne B., 2006. "Another look at measures of forecast accuracy," International Journal of Forecasting, Elsevier, vol. 22(4), pages 679-688.
    2. Chaoyang Wu & Jie Peng & Philippe Ciais & Josep Peñuelas & Huanjiong Wang & Santiago Beguería & T. Andrew Black & Rachhpal S. Jassal & Xiaoyang Zhang & Wenping Yuan & Eryuan Liang & Xiaoyue Wang & Hao, 2022. "Increased drought effects on the phenology of autumn leaf senescence," Nature Climate Change, Nature, vol. 12(10), pages 943-949, October.
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