Optimisation Of Crop Planting Strategies Based on Matrix Genetic Algorithm

Authors

  • Kunwei Wu
  • Liangshun Wang

DOI:

https://doi.org/10.54097/d1ckxa55

Keywords:

MGA, Dynamic Optimisation Models, Crop Strategy Optimization, Rural Mountain Areas.

Abstract

With the increasing demand for sustainable agricultural development, it has become crucial to develop crop planting optimisation strategies, which are important for enhancing production efficiency, reducing planting risks, and using resources efficiently. This study focuses on the optimisation strategy of rural crop cultivation in the mountainous areas of North China, and adopts matrix genetic algorithm to take into account the actual influencing factors such as sales volume, yield per unit area, cultivation cost and sales price, and establishes a multi-period dynamic optimisation model to explore the optimal cultivation strategy for the next seven years under two scenarios, namely, the excess yield stagnation and the price reduction, and the optimal cultivation strategy for the next seven years under two scenarios, namely, the excess yield stagnation and the price reduction. In this way, the optimal planting strategies for the next seven years were investigated under the two scenarios of excess production and sales. The average annual profits for the next seven years under these two scenarios reached RMB 2,527,837 and RMB 2,684,160, respectively. Based on the results, it can be concluded that the optimisation of planting strategies carried out by this model is very considerable and has practical applicability, which solves the current situation that the optimisation of crop planting strategies fails to integrate the actual situation.

Downloads

Download data is not yet available.

References

[1] LI Shaoting,MU Na,REN Yanjun,Thomas GLAUBEN.Spatiotemporal characteristics of cultivated land use eco-efficiency and its influencing factors in China from 2000 to 2020[J].Journal of Arid Land,2024,16(3):396-414

[2] ZHANG Hao, ZHAO Shengwei, QIAN Jun, MAO Jinqiao, ZHANG Peipei, GONG Yiqing.Optimisation of planting structure in irrigation areas with savannah climate based on stochastic dynamic planning[J]. Water Saving Irrigation,2024(10):15-21

[3] Bi Xiaoyang,Fang Lan.Research on the structural optimisation model of agriculture, forestry, animal husbandry and fishery based on linear programming and entropy weight TOPSIS method - A case study of Shandong Province[J].Advances in Applied Mathematics,2024,13(5):2399-2408

[4] Crop Switching for Improved Agricultural Sustainability in China[J]. Bulletin of the Chinese Academy of Sciences,2023,37(01):6.

[5] Chen Man,Liu Shiwei.Research on the optimisation of crop planting structure in Southwest China[J].Journal of Jiangxi Agricultural University,2022,44(01):12-20.

[6] Ke Wei,Keke Huang,Chunhua Yang,Weihua Gui.Multi-Objective Adaptive Optimization Model Predictive Control:Decreasing Carbon Emissions from a Zinc Oxide Rotary Kiln[J].Engineering,2023(8):96-105

[7] ZOU, FEI, YEN, GARY G., TANG, LIXIN, et al. A reinforcement learning approach for dynamic multi-objective optimization[J]. Information Sciences: An International Journal,2021,546815-834.

[8] DERONG LIU, SHAN XUE, BO ZHAO, et al. Adaptive Dynamic Programming for Control: A Survey and Recent Advances[J]. 2021,51(1):142-160.

[9] FEI-YUE WANG, HUAGUANG ZHANG, DERONG LIU. Adaptive Dynamic Programming: An Introduction[J]. IEEE computational intelligence magazine,2009,4(2):39-47.

[10] Deng Qi,Gao Jianjun,Ge Dongdong,et al.Modern optimisation theory and application[J].Chinese Science:Mathematics,2020,50(07):899-968.

[11] GUO, YUNLI. Integrating genetic algorithm with ARIMA and reinforced random forest models to improve agriculture economy and yield forecasting[J]. Soft computing: A fusion of foundations, methodologies and applications,2024,28(2):1685-1706.

[12] XIUMING SONG. Research on genetic algorithm optimization for agricultural machinery operation path planning[J]. Applied Mathematics and Nonlinear Sciences,2024,9(1).

[13] QIU J., CAI X., ZHANG L., et al. A loss matrix-based alternating optimization method for sparse PU learning[J]. Swarm and Evolutionary Computation,2022,75101174-1-101174-15.

[14] Geng JM, Li W. Historical Exploration of the Delicacy Principle [J]. Journal of Guangxi University for Nationalities (Natural Science Edition),2024,30(01):59-65+73.

Downloads

Published

17-03-2025

How to Cite

Wu, K., & Wang, L. (2025). Optimisation Of Crop Planting Strategies Based on Matrix Genetic Algorithm. Highlights in Business, Economics and Management, 53, 335-342. https://doi.org/10.54097/d1ckxa55