Abstract

Biodiversity conservation is important for the protection of ecosystems. One key task for sustainable biodiversity conservation is to effectively preserve species’ habitats. However, for various reasons, many of these habitats have been reduced or destroyed in recent decades. To deal with this problem, it is necessary to effectively identify potential habitats based on habitat suitability analysis and preserve them. Various techniques for habitat suitability estimation have been proposed to date, but they have had limited success due to limitations in the data and models used. In this paper, we propose a novel scheme for assessing habitat suitability based on a two-stage ensemble approach. In the first stage, we construct a deep neural network (DNN) model to predict habitat suitability based on observations and environmental data. In the second stage, we develop an ensemble model using various habitat suitability estimation methods based on observations, environmental data, and the results of the DNN from the first stage. For reliable estimation of habitat suitability, we utilize various crowdsourced databases. Using observational and environmental data for four amphibian species and seven bird species in South Korea, we demonstrate that our scheme provides a more accurate estimation of habitat suitability compared to previous other approaches. For instance, our scheme achieves a true skill statistic (TSS) score of 0.886, which is higher than other approaches (TSS = 0.725 ± 0.010).

Highlights

  • The importance of biodiversity conservation has been emphasized globally because high biodiversity offers a variety of natural services that support sustainable human living [1]

  • In this paper, we propose a novel two-stage based ensemble model called TSEM for the development of an effective habitat suitability model using an ensemble of various habitat suitability estimation techniques and deep neural network (DNN)

  • To improve the performance of habitat suitability models, we focus on three major issues, which are the main contributions of this paper

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Summary

Introduction

The importance of biodiversity conservation has been emphasized globally because high biodiversity offers a variety of natural services that support sustainable human living [1] Despite this importance, ecosystem services have rapidly declined for a variety of reasons, such as indiscriminate resource development, rapid urban expansion, and global climate change. Until a few decades ago, the prediction of habitat suitability for particular species over a wide range of areas with reasonable accuracy was very challenging. This is because remote sensing technology at that time had several limitations, including high costs, poor spatial resolution, complicated digital maps at scales larger than remote sensing images, and human error during interpretation analysis. State-of-the-art remote sensing technologies have overcome previous data-processing issues, making it possible to obtain reliable temporal and spatial data for factors such as land cover and the climate and to subsequently construct inference models for habitat suitability that can cover very small to large areas

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