Study on Analysis of Environmental Parameters and Ecological Prediction of Flowers Based on Machine Learning
DOI: 10.23977/erej.2025.090118 | Downloads: 4 | Views: 313
Author(s)
Zhu Xiangcai 1, Luan Yuncai 1
Affiliation(s)
1 School of Information Science and Technology, Taishan University, Tai'an, 271021, China
Corresponding Author
Zhu XiangcaiABSTRACT
This paper uses machine learning and related technologies to process, analyze and study the ecological environment parameters of flowers, and makes ecological predictions on them. Taking orchids as an example, data collection and processing were conducted to analyze and study the correlation and distribution density of environmental parameters such as temperature, moisture, conductivity, pH value, nitrogen, phosphorus, potassium, and fertility, as well as their impact on leaf color parameters. And our research team gradually improve the data collection method to increase the accuracy of the original data. According to the obtained statistical data, a regression model is established for modeling analysis and ecological prediction. Further this paper improved the coefficients, reduced errors, and enhanced the actual performance of the data model. The research methods, content, and predictive information presented in this paper provide valuable practical applications for the technological development and intelligent management in the field of flowers.
KEYWORDS
Machine Learning, Flower Ecology, Python Platform, Ecological PredictionCITE THIS PAPER
Zhu Xiangcai, Luan Yuncai, Study on Analysis of Environmental Parameters and Ecological Prediction of Flowers Based on Machine Learning. Environment, Resource and Ecology Journal (2025) Vol. 9: 156-162. DOI: http://dx.doi.org/10.23977/erej.2025.090118.
REFERENCES
[1] CHEN Shaozhen, YE Wujian, LIU Yijun. Flower fine-grained images classification based on the knowledge distillation and improved vision transforme [J].Journal of Optoelectronics•Lase, 2024, 35(01):29-39.
[2] WANG Junmi, LIN Hui. Study on Flower Recognition Based on Lightweight Model and Transfer Learning[J]. Journal of Pingdingshan University, 2023, 38(05):43-47.
[3] V Vijayaganth,M Krishnamoorthi.A novel plant leaf disease detection by adaptive fuzzy C-Means clustering with deep neural network[J].Journal of Experimental & Theoretical Artificial Intelligence,2024,36(05):785-813.
[4] Lu Weizhong, Huang Hongmei, Yang Ru, Cao Yan.Intelligent Flower Maintenance System Based On Deep Learning[J]. Computer Applications and Software, 2021, 38(08):72-77.
[5] LIU Di, SUN Jiaqian, YU Zhongbo. Multi-layer soil moisture inversion based on machine learning models[J]. Journal of Hohai University (Natural Sciences), 2024, 52(03):7-14.
[6] LU Baoming, XU Jinming.Estimation of environmental parameters of Yungang Grottoes based on empirical mode decomposition and long short-term memory artificial neural network[J].Journal Of Shanghai University (Natural Science Edition),2024,30(01):2-16.
[7] GOU Aning, YAO Wen, LEI Yansen, MING Shaohui, LU Yi, WEI Fan. Environment Parameter Characteristics of Different Types of Cold Season Elevated Thunderstorms in Hubei[J].Journal Of Tropical Meteorology,2024,40(01):23-32.
[8] Guo Hongjie, Ma Rui, Wang Jia, Zhao Wei, Ma Dexi. Research on apple leaf disease image recognition based on convolutional neural network[J].Journal of Chinese Agricultural Mechanization, 2024,45(05):239-245.
[9] Dong Fuguo. Python Programming Basis and Application (2nd Edition)[M]. Beijing: CHINA MACHINE PRESS, 2021.
[10] Wang Shibo, Wu Zhiyong. Python programming and data analysis project[M]. Beijing: Tsinghua University Press, 2023.
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