Jiang Fan, Peng Peng, Xu Zhenting, Xu Yu, Yang Ding, Chai Shouquan, Yuan Shuai, Hua Limin, Wang Dawei, Wen Xuanye
Center for Biological Disaster Prevention and Control National Forestry and Grassland Administration Shenyang China.
College of Grassland, Resources and the Environment Inner Mongolia Agricultural University Hohhot China.
Ecol Evol. 2025 May 26;15(5):e71452. doi: 10.1002/ece3.71452. eCollection 2025 May.
The great gerbil () is a pest rodent that is widely distributed in Eurasia, and assessing its outbreak risk and instituting timely population control are very important for protecting vegetation and human health. Because traditional assessment methods are difficult to monitor and cannot effectively predict the population growth trend of , an activity prediction model was constructed using the particle swarm optimization algorithm-extreme learning machine (PSO-ELM). First, data for 13 factors influencing growth, such as those related to the environment, vegetation, and activity in the previous year, at 46 monitoring sites in China from 2020 to 2022 were selected. Second, principal component analysis was used to reduce the dimensionality of the 92 sets of collected data to six principal components, thus eliminating the correlation between the indicators. Third, after dimensionality reduction, the data were divided into a training set (80 sets of data) and a test set (12 sets of data) for model training and simulation, and the prediction results of the PSO-ELM model and back propagation model were compared. The simulation results revealed that the PSO-ELM model has a stronger convergence ability and higher prediction accuracy for the activity level of in fall (91.67%). In this study, a new method is provided for surveying pest rodents. The proposed method provides an auxiliary means of managing . We will continue to improve the sample data in future work to obtain more accurate predictions.
大沙鼠是一种在欧亚大陆广泛分布的有害啮齿动物,评估其爆发风险并及时进行种群控制对于保护植被和人类健康非常重要。由于传统评估方法难以监测且无法有效预测大沙鼠的种群增长趋势,因此构建了一种基于粒子群优化算法-极限学习机(PSO-ELM)的大沙鼠活动预测模型。首先,选取了2020年至2022年中国46个大沙鼠监测点的13个影响大沙鼠生长的因素数据,如与环境、植被及上一年活动相关的数据。其次,采用主成分分析将收集到的92组数据降维为6个主成分,从而消除指标间的相关性。第三,降维后将数据分为训练集(80组数据)和测试集(12组数据)进行模型训练与模拟,并比较了PSO-ELM模型和反向传播模型的预测结果。模拟结果表明,PSO-ELM模型对秋季大沙鼠活动水平具有更强的收敛能力和更高的预测准确率(91.67%)。本研究为有害啮齿动物的调查提供了一种新方法。所提出的方法为大沙鼠的管理提供了一种辅助手段。在未来工作中,我们将继续完善样本数据以获得更准确的预测。