| Literature DB >> 35440581 |
Haowei Mu1, Xuecao Li2,3, Yanan Wen1, Jianxi Huang1,4, Peijun Du5, Wei Su1,4, Shuangxi Miao1,4, Mengqing Geng1.
Abstract
Human Footprint, the pressure imposed on the eco-environment by changing ecological processes and natural landscapes, is raising worldwide concerns on biodiversity and ecological conservation. Due to the lack of spatiotemporally consistent datasets of Human Footprint over a long temporal span, many relevant studies on this topic have been limited. Here, we mapped the annual dynamics of the global Human Footprint from 2000 to 2018 using eight variables that reflect different aspects of human pressures. The accuracy assessment revealed a good agreement between our mapped results and the previously developed datasets in different years. We found more than two million km2 of wilderness (i.e., regions with Human Footprint values below one) were lost over the past two decades. The biome dominated by mangroves experienced the most significant loss (i.e., above 5%) of wilderness, likely attributed to intensified human activities in coastal areas. The derived annual and spatiotemporally consistent global Human Footprint can be a fundamental dataset for many relevant studies about human activities and natural resources.Entities:
Year: 2022 PMID: 35440581 PMCID: PMC9018937 DOI: 10.1038/s41597-022-01284-8
Source DB: PubMed Journal: Sci Data ISSN: 2052-4463 Impact factor: 8.501
Fig. 1The proposed framework in this study by collecting eight human pressure variables from multiple sources (a), generating annual global Human Footprint datasets (b), and the evaluation and application of derived results (c).
The framework of mapping annual Human Footprint at the global scale as illustrated in Williams et al.[18].
| Pressure | Score | Details |
|---|---|---|
| Built environment | 0,4,10 | The pressure score for pixels with urban fractions above 20% was assigned as 10; otherwise, it was assigned as 4. |
| Population density | 0–10 | |
| Night-time lights | 0–10 | Assigned from 0 to 10 according to intervals determined by ten equal quantiles |
| Croplands | 0,4,7 | The pressure score for pixels with crop fraction above 20% was assigned as 7; otherwise, it was assigned as 4. |
| Pasture | 0–4 | Fraction of pasture in each grid multiplied by 4 |
| Roads | 0–8 | |
| Railways | 0,8 | |
| Navigable waterways | 0–4 |
Fig. 2The derived Human Footprint map in 2009 (a) with evaluations using interpreted samples and other published products (b). We normalized our results for comparison because the ranges of visually interpreted samples and Kennedy’s result[24] are 0-1, and visually interpreted samples from Venter et al.[13].
Fig. 3Difference of Human Footprint datasets between our result and the original map developed by Venter et al.[13] in 2009 (a). Enlarged views in representative regions are presented in (b), with a spatial extent of 2000 km × 2000 km.
Fig. 4The temporal trend of global wilderness and highly modified areas from 2000 to 2018 (a), with detailed dynamics of Human Footprint maps in China with enlarged views (b) and the change of our and Williams’s[18] Human Footprint from 2000 to 2013 (c). Note: the red and blue boxes in (c) indicate the Eastern US and Eastern China (extent in (b)), respectively.
Fig. 5The spatial distribution of global terrestrial biomes (a), the changes of the wilderness of typical biomes (b), and the proportions of different categories (i.e., wilderness, intact, and modified) in terrestrial biomes in 2018 (c).
| Measurement(s) | human footprint |
| Technology Type(s) | remote sensing |
| Factor Type(s) | Built Environment • Population Density • Nighttime lights • Croplands • Pastures • Roads • Railways • Navigable waterways |