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Nature Environmental Protection, 2020, 1(1); doi: 10.38007/NEP.2020.010103.

Evaluation Natural Environment Protection System Based on IPA Algorithm

Author(s)

Nikolaos Th. Fourniotis

Corresponding Author:
Nikolaos Th. Fourniotis
Affiliation(s)

Institute of Environmental Sciences and Engineering (IESE), School of Civil and Environmental Engineering (SCEE), National University of Sciences and Technology (NUST), Islamabad 44000, Pakistan

Abstract

At present, more and more countries are beginning to attach importance to the construction and development of nature reserves, which are special management areas where biodiversity and ecosystem services are fundamentally safeguarded by the state in order to protect the natural environment and natural resources. Deepening the understanding of the ecological benefits of various ecological assets in nature reserves and quantifying their intrinsic value is conducive to the protection of natural environment in nature reserves and the realisation of This paper uses the F nature reserve as an example. Therefore, this paper takes Nature Reserve F as an example to evaluate and optimise the nature conservation system based on IPA. The paper begins with a brief description of the principles of selecting assessment indicators and the IPA analysis method, followed by the design and construction of the management system and the forest ecosystem energy flow model, and finally the analysis of the IPA and assessment results, and finally the proposed ecological management strategy.

Keywords

Nature Reserves, Environmental Protection, System Assessment and Optimisation, Forest Ecosystems

Cite This Paper

Nikolaos Th. Fourniotis. Evaluation Natural Environment Protection System Based on IPA Algorithm. Nature Environmental Protection (2020), Vol. 1, Issue 1: 18-26. https://doi.org/10.38007/NEP.2020.010103.

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