BioOne.org will be down briefly for maintenance on 17 December 2024 between 18:00-22:00 Pacific Time US. We apologize for any inconvenience.
How to translate text using browser tools
16 March 2024 Study on the prediction method of grasshopper occurrence risk in Inner Mongolia based on the maximum entropy model during the growing period
Fu Wen, Ronghao Liu, Axel Garcia y Garcia, Huichun Ye, Longhui Lu, Eerdeng Qimuge, Zhongxiang Sun, Chaojia Nie, Xuemei Han, Yue Zhang
Author Affiliations +
Abstract

Grasshoppers represent a significant biological challenge in Inner Mongolia's grasslands, severely affecting the region's animal husbandry. Thus, dynamic monitoring of grasshopper infestation risk is crucial for sustainable livestock farming. This study employed the Maxent model, along with remote sensing data, to forecast Oedaleus decorus asiaticus occurrence during the growing season, using grasshopper suitability habitats as a base. The Maxent model's predictive accuracy was high, with an AUC of 0.966. The most influential environmental variables for grasshopper distribution were suitable habitat data (34.27%), the temperature-vegetation dryness index during the spawning period (18.81%), and various other meteorological and vegetation factors. The risk index model was applied to calculate the grasshopper distribution across different risk levels for the years 2019–2022. The data indicated that the level 1 risk area primarily spans central, eastern, and southwestern Inner Mongolia. By examining the variable weights, the primary drivers of risk level fluctuation from 2019 to 2022 were identified as accumulated precipitation and land surface temperature anomalies during the overwintering period. This study offers valuable insights for future O. decorus asiaticus monitoring in Inner Mongolia.

Fu Wen, Ronghao Liu, Axel Garcia y Garcia, Huichun Ye, Longhui Lu, Eerdeng Qimuge, Zhongxiang Sun, Chaojia Nie, Xuemei Han, and Yue Zhang "Study on the prediction method of grasshopper occurrence risk in Inner Mongolia based on the maximum entropy model during the growing period," Journal of Economic Entomology 117(3), 843-857, (16 March 2024). https://doi.org/10.1093/jee/toae036
Received: 10 November 2023; Accepted: 15 February 2024; Published: 16 March 2024
JOURNAL ARTICLE
15 PAGES

This article is only available to subscribers.
It is not available for individual sale.
+ SAVE TO MY LIBRARY

KEYWORDS
influencing factor
insect dynamics
MaxEnt
predictive modeling
remote sensing
RIGHTS & PERMISSIONS
Get copyright permission
Back to Top