STEMM Institute Press
Science, Technology, Engineering, Management and Medicine
Research on the Crop Planting Scheme in a Mountainous Village in North China
DOI: https://doi.org/10.62517/jlsa.202407404
Author(s)
Xu Li, Jinlin Zhuo, Jiahao He, Zhenting Chen*
Affiliation(s)
School of Artificial Intelligence, Guangzhou Huashang University, Guangzhou, Guangdong, China *Corresponding Author.
Abstract
This study focuses on the crop planting planning in a mountainous village in North China, aiming to optimize the planting strategies from 2024 to 2030. Utilizing the agricultural data of 2023, considering factors such as arable land resources, crop rotation requirements, sales situations, and various uncertainties, models are constructed through the Monte Carlo method, the greedy algorithm, and the genetic algorithm. In response to different sales situations (such as slow sales or sales at reduced prices) and changes in uncertain factors, the optimal planting schemes under various scenarios are solved to increase net profits and reduce risks. The results of the models show that reasonable planning can significantly improve yields, and the robustness of the models is verified through sensitivity analysis, providing strong support for rural planting decisions.
Keywords
Agricultural Planting Strategy; Monte Carlo Simulation; Genetic Algorithm; Greed Algorithm; Multi-Factor Optimization; Sensitivity Analysis
References
[1]Zhou Min. Adjustment of Rice Planting Structure and Industrial Upgrading under the Comprehensive Transformation of Rural Areas. Northern Rice,2024,54(04): 55-57. DOI: 10.16170/j.cnki.1673-6737.2024.04.028. [2]Zhu Lulu. Monte Carlo method and application. Central China Normal University, 2014. [3]Fang Wei. Research on Project Risk Management Method Based on Monte Carlo Simulation. Computer and Modernization,2012, (04):33-36. [4]Chang Youqu, Xiao Guiyuan, Zeng Min. Discussion and Research on Greedy Algorithm. Journal of Chongqing Electric Power College,2008, (03):40-42+47. [5]Ge Jike, Qiu Yuhui, Wu Chunming, et al. A Review of Genetic Algorithm Research. Computer Application Research,2008, (10):2911-2916. [6]Zhao Wence, Shu Chuanhua, Wang Shengxi. Optimal Design of Low-inclination Satellite Constellation Using Genetic Algorithm. Aerospace Control,2024,42(05):76-82. DOI: 10.16804/j.cnki.issn1006-3242.2024.05.003. [7]Qiu Kebin, Chen Weiguo, Zhang Zhiqiang, et al. Color Feature Extraction Method of Colored Fiber Based on Two-dimensional Gaussian Kernel Density Estimation. Journal of Textile Research,2024,45(05):85-93. DOI: 10.13475/j.fzxb.20221100901. [8]Feng Guangliang. Research on Agricultural Planting Structure Allocation in the Lower Reaches of Tarim River Based on Double-layer Planting Optimization Model. Water conservancy technical supervision,2024, (05):213-217. [9]Jin Man, Cao Jitao. Analysis of Centrifugal Compressor Application Model and Parameter Sensitivity. Today's Manufacturing and Upgrading,2024, (05):56-58. [10]Zhang Rui, Yan Wenyi, Yang Shumei, et al. 2023 Crop Yield and Planting Area in Russia. Heilongjiang Grain, 2024, (09):19-21.
Copyright @ 2020-2035 STEMM Institute Press All Rights Reserved