Science, Technology, Engineering and Mathematics.
Open Access

ANALYSIS OF CROP PLANTING STRATEGIES USING IMPROVED SIMULATED ANNEALING OPTIMIZATION ALGORITHM

Download as PDF

Volume 7, Issue 3, Pp 46-52, 2025

DOI: https://doi.org/10.61784/ejst3088

Author(s)

Bin Cheng1, Xiang Gao2, JiaWei Zhao1*, KunLin Yu1

Affiliation(s)

1School of Physics and Mechanics, Wuhan University of Technology, Wuhan 430070, Hubei, China.

2School of Management, Wuhan University of Technology, Wuhan 430070, Hubei, China.

Corresponding Author

JiaWei Zhao

ABSTRACT

Given the actual needs of farmers and the need to protect the environment, selecting suitable crop optimization planting strategies is of great significance. Based on the analysis of the impact of different types of land parcels on crop yield, crop rotation demand, and market demand changes, this article optimizes the allocation of arable land resources through an improved simulated annealing algorithm. Determine the indicators based on the given data and use the Stackelberg model to calculate the selling price, establish a single objective optimization model, and solve for the optimal planting results through an improved simulated annealing algorithm. Firstly, visualize the data to understand the features and determine the indicators, and use the Stackelberg model to calculate the selling price. Secondly, construct a single objective optimization model based on indicators and constraints. Finally, in order to simplify the calculation and improve the accuracy of the optimal solution, the plot is divided into four parts, and a preliminary solution is obtained through simulated annealing algorithm. Then, an adaptive threshold is introduced to improve the optimal planting strategy. This indicates that the improved simulated annealing algorithm can obtain the optimal solution for multiple crop planting strategies under different unsold models, demonstrating that the improved simulated annealing algorithm has made good progress in solving related crop planting strategies.

KEYWORDS

Optimization strategies for crop cultivation; Improve simulated annealing algorithm; Single objective optimization model; Optimal planting strategy

CITE THIS PAPER

Bin Cheng, Xiang Gao, JiaWei Zhao, KunLin Yu. Analysis of crop planting strategies using improved simulated annealing optimization algorithm. Eurasia Journal of Science and Technology. 2025, 7(3): 46-52. DOI: https://doi.org/10.61784/ejst3088.

REFERENCES

[1] Luis Eduardo Urbán Rivero, Jonás Velasco, Javier Ramírez Rodríguez. A Simple Greedy Heuristic for Site Specific Management ZoneProb-lem. Axioms, 2022, 11(7): 318.

[2] Araya A, Prasad P V V, Gowda P H, et al. Evaluating optimal irrigation strategies for maize in Western Kansas. Agricultural Water Management, 2021, 246: 106677.

[3] Chen Shang, He Liang, Cao Yinxuan, et al. Comparisons among four different upscaling strategies for cultivar genetic parameters in rainfed spring wheat phenology simulations with the DSSAT-CERES-Wheat model. Agricultural Water Management, 2021, 258: 107181.

[4] Zhang Z, Lin M, Han B, et al. Prediction of local scour depth around cylindrical piles: Using simulated annealing algorithm and ensemble learning. Ocean Engineering, 2025, 330, 121221.

[5] Zhang Q, Song L, Zeng Y, et al. Real-time power optimization strategy for fuel cell ships based on improved genetic simulated annealing algorithm. Electric Power Systems Research, 2025, 245, 111647.

[6] Kumar V, Gautam L, Dahiya R. Hybrid NSGA-III and simulated annealing approach for multi-objective time–cost-quality-sustainability optimization in wastewater treatment plant construction projects. Asian Journal of Civil Engineering, 2025, (prepublish): 1-16.

[7] Yingnian W, Hao W, Manhua L, et al. The adaptive two-stage ant colony Simulated Annealing Algorithm for solving the Traveling Salesman Problem. RAIRO - Operations Research, 2025, 59(2): 1199-1213

[8] Rabbani M, Ganjali A, Asl F H, et al. Using a hybrid genetic- simulated annealing algorithm for designing a recyclable waste collection system. OPSEARCH, 2024, (prepublish): 1-23.

[9] Wu H, Li Z, Deng X, et al. Enhancing agricultural sustainability: Optimizing crop planting structures and spatial layouts within the water-land-energy-economy-environment-food nexus. Geography and Sustainability, 2025, 6(3): 100258.

[10] Wang C, He X, Yan D, et al. Research on Optimal Crop Planting Strategy based on NSGA-II Algorithm. International Core Journal of Engineering, 2025, 11(4): 345-352.

[11] Bellangue D, Barney J, Flessner M, et al. Site Preparation and Planting Strategies to Improve Native Forb Establishment in Pasturelands. Agronomy, 2024, 14(11): 2676.

All published work is licensed under a Creative Commons Attribution 4.0 International License. sitemap
Copyright © 2017 - 2025 Science, Technology, Engineering and Mathematics.   All Rights Reserved.