Insects (Jun 2024)

Combining the Optimized Maximum Entropy Model to Detect Key Factors in the Occurrence of <i>Oedaleus decorus asiaticus</i> in the Typical Grasslands of Central and Eastern Inner Mongolia

  • Xiaolong Ding,
  • Bobo Du,
  • Longhui Lu,
  • Kejian Lin,
  • Rina Sa,
  • Yang Gao,
  • Jing Guo,
  • Ning Wang,
  • Wenjiang Huang

DOI
https://doi.org/10.3390/insects15070488
Journal volume & issue
Vol. 15, no. 7
p. 488

Abstract

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Grasshoppers pose a significant threat to both natural grassland vegetation and crops. Therefore, comprehending the relationship between environmental factors and grasshopper occurrence is of paramount importance. This study integrated machine learning models (Maxent) using the kuenm package to screen MaxEnt models for grasshopper species selection, while simultaneously fitting remote sensing data of major grasshopper breeding areas in Inner Mongolia, China. It investigated the spatial distribution and key factors influencing the occurrence of typical grasshopper species in grassland ecosystems. The modelling results indicate that a typical steppe has a larger suitable area. The soil type, above biomass, altitude, and temperature, predominantly determine the grasshopper occurrence in typical steppes. This study explicitly delineates the disparate impacts of key environmental factors (meteorology, vegetation, soil, and topography) on grasshopper occurrence in typical steppes. Furthermore, it provides a methodology to guide early warning and precautions for grasshopper pest prevention. The findings of this study will be instrumental in formulating future management measures to guarantee grass ecological environment security and the sustainable development of grassland.

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