Article, 2024

A novel method for optimizing regional-scale management zones based on a sustainable environmental index

Precision Agriculture, ISSN 1385-2256, Volume 25, 1, Pages 257-282, 10.1007/s11119-023-10067-z

Contributors

Li Y. [1] Cammarano D. 0000-0003-0918-550X [2] Yuan F. 0000-0001-6979-0029 [3] Khosla R. [4] Mandal D. [4] Fan M. [5] Ata-UI-Karim S.T. [6] Liu X. 0000-0001-7593-085X [1] Tian Y. [1] Zhu Y. 0000-0002-1884-2404 [1] Cao W. [1] Cao Q. 0000-0003-3733-2968 (Corresponding author) [1]

Affiliations

  1. [1] Nanjing Agricultural University
  2. [NORA names: China; Asia, East];
  3. [2] Aarhus University
  4. [NORA names: AU Aarhus University; University; Denmark; Europe, EU; Nordic; OECD];
  5. [3] Minnesota State University
  6. [NORA names: United States; America, North; OECD];
  7. [4] Kansas State University
  8. [NORA names: United States; America, North; OECD];
  9. [5] China Agricultural University
  10. [NORA names: China; Asia, East];

Abstract

Delineating management zones (MZs) is considered one of the most important steps towards precision nitrogen (N) management, as MZs are required to optimize N inputs and improve environmental health. However, no reports have fully explored the optimization of regional MZs related to policymaking to achieve long-term Sustainable Development Goals. This study developed a new sustainable environmental index (SEI) by integrating the Euclidean distance after feature normalization, spatial autocorrelation, and expert knowledge. The SEI was then used to delineate MZs in the main wheat-producing provinces of China using the fuzzy C-mean clustering. The results showed that compared to the two data-driven-based methods (Random Forest- and all variables-based methods), the SEI-based method performed the best and identified 9 MZs in terms of practical production and spatial distribution of zones. Further analysis indicated that the dominant drivers of MZ delineation showed strong spatial heterogeneity and high input uncertainty. Climatic factors explained 15.6% of the yield variability, while both soil factors and topographic factors individually accounted for 10.2% of the variability. The similar spatial characteristics of input uncertainty were found to be consistent across various MZs, with a high level of uncertainty ranging from 0.7 on a scale of 0 to 1. Finally, this study provided potentially valuable suggestions for policymakers and farmers, as well as possible directions for further N management. Overall, the proposed methodological framework on regional MZs has important implications for precision N management, providing a new perspective for intensive sustainable development.

Keywords

Environmental drivers, Input uncertainty, Machine learning, Regional crop management, Sustainable agriculture development, Weighted spatial analysis

Funders

  • Qing Lan Project of Jiangsu Universities
  • National Key Research and Development Program of China

Data Provider: Elsevier