2023
DOI: 10.3390/land12030709
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Disaster Risk Regionalization and Prediction of Corn Thrips Combined with Cloud Model: A Case Study of Shandong Province, China

Abstract: Corn thrips do serious harm to the yield and quality of corn. In this paper, the Shandong Province of China was taken as the study area. Based on the data of the occurrence of corn thrips in Shandong Province, a risk regionalization model was established by using eight indicators under four categories of hazard, sensitivity, vulnerability and the disaster prevention and mitigation capacity of diseases and pests on a monthly time scale. Firstly, the cloud model was introduced to determine the weight of each ind… Show more

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“…BP is a multilayer feed-forward neural network that automatically updates weights and thresholds (Meng & Dou, 2023). Considering the powerful selflearning and adaptive capabilities, BP is fit for constructing a nonlinear prediction model (Zuo et al, 2023). SVR is a significant branch of the support vector machine (Dong & Li, 2022), which has an excellent regression capability to process various types of continuous data and obtain the optimal hyperplane.…”
Section: Introductionmentioning
confidence: 99%
“…BP is a multilayer feed-forward neural network that automatically updates weights and thresholds (Meng & Dou, 2023). Considering the powerful selflearning and adaptive capabilities, BP is fit for constructing a nonlinear prediction model (Zuo et al, 2023). SVR is a significant branch of the support vector machine (Dong & Li, 2022), which has an excellent regression capability to process various types of continuous data and obtain the optimal hyperplane.…”
Section: Introductionmentioning
confidence: 99%