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Simulation and Prediction of Fungal Community Evolution Based on RBF Neural Network

Authors :
Ming-Feng Hu
Ya-Qian Bao
Xiao-Wei Cai
Jia-Bao Liu
Jia-Ming Zhu
Source :
Computational and Mathematical Methods in Medicine, Computational and Mathematical Methods in Medicine, Vol 2021 (2021)
Publication Year :
2021
Publisher :
Hindawi, 2021.

Abstract

Simulation and prediction of the scale change of fungal community. First, using the experimental data of a variety of fungal decomposition activities, a mathematical model of the decomposition rate and the relationship between the bacterial species was established, thereby revealing the internal mechanism of fungal decomposition activity in a complex environment. Second, based on the linear regression method and the principle of biodiversity, a model of fungal decomposition rate was constructed, and it was concluded that the interaction between mycelial elongation and moisture resistance could increase the fungal decomposition rate. Third, the differential equations are used to quantify the competitive relationship between different bacterial species, divide the boundaries of superior and inferior species, and simulate the long-term and short-term evolution trends of the community under the same initial environment. And an empirical analysis is made by taking the sudden change of the atmosphere affecting the evolution of the colony as an example. Finally, starting from summer, combining soil temperature, humidity, and fungal species data in five different environments such as arid and semiarid, a three-dimensional model and RBF neural network are introduced to predict community evolution. The study concluded that under given conditions, different strains are in short-term competition, and in the long-term, mutually beneficial symbiosis. Biodiversity is important for the biological regulation of nature.

Details

Language :
English
ISSN :
17486718 and 1748670X
Volume :
2021
Database :
OpenAIRE
Journal :
Computational and Mathematical Methods in Medicine
Accession number :
edsair.doi.dedup.....c9afffec2cee0e9ffe01e901acd623c2