Remote Sensing Monitoring of Grassland Locust Density Based on Machine Learning
Author:
Du Qiang12ORCID, Wang Zhiguo12, Huang Pingping12ORCID, Zhai Yongguang12, Yang Xiangli3, Ma Shuai12
Affiliation:
1. College of Information Engineering, Inner Mongolia University of Technology, Hohhot 010080, China 2. Inner Mongolia Key Laboratory of Radar Technology and Application, Hohhot 010051, China 3. College of Information Science and Engineering, Chongqing Jiaotong University, Chongqing 400074, China
Abstract
The main aim of this study was to utilize remote sensing data to establish regression models through machine learning to predict locust density in the upcoming year. First, a dataset for monitoring grassland locust density was constructed based on meteorological data and multi-source remote sensing data in the study area. Subsequently, an SVR (support vector regression) model, BP neural network regression model, random forest regression model, BP neural network regression model with the PCA (principal component analysis), and deep belief network regression model were built on the dataset. The experimental results show that the random forest regression model had the best prediction performance among the five models. Specifically, the model achieved a coefficient of determination (R2) of 0.9685 and a root mean square error (RMSE) of 1.0144 on the test set, which were the optimal values achieved among all the models tested. Finally, the locust density in the study area for 2023 was predicted and, by comparing the predicted results with actual measured data, it was found that the prediction accuracy was high. This is of great significance for local grassland ecological management, disaster warning, scientific decision-making support, scientific research progress, and sustainable agricultural development.
Funder
Inner Mongolia Autonomous Region Natural Science Foundation Inner Mongolia Autonomous Region Science and Technology Plan Basic Scientific Research Fund Project of the Autonomous Region Directly Universities
Reference30 articles.
1. Analysis of Insect Diversity in Typical Grasslands of XilinGol League;Chang;J. Plant Prot.,2023 2. Construction of a Prediction Model for the Occurrence and Harm of Locusts in Tianjun County’s Grasslands;Yu;Mod. Agric. Sci. Technol.,2023 3. Zhao, L., Li, H., Huang, W., Dong, Y., Geng, Y., Ma, H., and Chen, J. (2023). Outbreak Mechanism of Locust Plagues under Dynamic Drought and Flood Environments Based on Time Series Remote Sensing Data: Implication for Identifying Potential High-Risk Locust Areas. Remote Sens., 15. 4. Lu, L., Kong, W., Ye, H., Sun, Z., Wang, N., Du, B., Zhou, Y., and Huang, W. (2022). Detecting Key Factors of Grasshopper Occurrence in Typical Steppe and Meadow Steppe by Integrating Machine Learning Model and Remote Sensing Data. Insects, 13. 5. Locust Remote Sensing Monitoring Methods Based on Landsat8 Satellite Data;Huang;J. Agric. Mach.,2015
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|