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Nature Environmental Protection, 2020, 1(4); doi: 10.38007/NEP.2020.010404.

Economics Supporting the Transformation of Multimodal Data Algorithm in the Natural Protection Environment Model

Author(s)

Akshayasimha Channarayapatna Harshasimha

Corresponding Author:
Akshayasimha Channarayapatna Harshasimha
Affiliation(s)

University of Carthage, Tunis 2085, Tunisia

Abstract

With the increasingly serious natural environment problems, people from all walks of life have sought ways to protect the environment from multiple perspectives. Among them, the intervention and right exchange of the relevant parts are proposed by economists, which have certain effects but also have limitations. It is necessary to treat environmental protection as an industry and form a benign cooperation and balance in production, supply, consumption and other aspects to promote the healthy operation of green industry, so as to improve the utilization efficiency of resources and reduce environmental pollution to protect the ecological environment. Many researchers have provided new ideas for the study of the transformation of the natural protection environment model. This article was based on this as the research direction and research basis. This paper analyzed the natural protection environment model from the perspective of economics, and then carried out academic research and summary on the transformation of natural protection environment model and supporting multimodal data algorithm in the natural protection environment model. Then, the algorithm model was established, and the relevant algorithms were proposed to provide theoretical basis for the economic analysis supporting the transformation of multimodal data algorithm in the natural protection environment model. At the end of the paper, the simulation experiment was carried out, and the experiment was summarized and discussed. According to the change of land use in the ecological protection safety line in the region, after the transformation of natural protection environment mode with the help of multi-modal data algorithm, the difference between the land use rate of residential area and normal was 0.1. The difference between the land use rate of commercial area and normal was 0.4, and the difference between the land use rate of vegetation and normal was 0.7. The difference between the land use rate of water area and normal was 0.4, and the difference between the land use rate of traffic roads and normal was 0.6. At the same time, with the in-depth study of supporting multimodal data algorithms, the research on the transformation of natural protection environment model is also facing new opportunities and challenges.

Keywords

Environmental Model, Economic Analysis, Multimodal Data Algorithm, Economic Index

Cite This Paper

Akshayasimha Channarayapatna Harshasimha. Economics Supporting the Transformation of Multimodal Data Algorithm in the Natural Protection Environment Model. Nature Environmental Protection (2020), Vol. 1, Issue 4: 27-36. https://doi.org/10.38007/NEP.2020.010404.

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