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Nonlinear relationship of vegetation greening with nature and human factors and its forecast - A case study of Southwest China

机译:植被绿化与自然和人为因素的非线性关系及其预测-以西南地区为例。

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Vegetation showed a greening trend in most Southwest China. However, the nonlinear relationship of vegetation greening with nature and human factors remains unclear. In this study, we studied the nonlinear relationship and predicted the future changes of the greening with Boosted Regression Tree (BRT) method. Results showed that: (1) Precipitation of Driest Month (Bio14, 20.64%), land use changes (10.39%) and population density (8%) were the three most important factors limiting vegetation greening. Climate changes (42.655%) and human activities (33.163%) were the two most important variable types, but topography was also important (18.481%), which cannot be ignored; (2) Bio14 and elevation had the strongest variable interactions. Climate changes had strong interactions with both human activities and elevation, but human activities and elevation had less interactions; (3) vegetation greening was facilitated by the increasing of Bio14, distance to residential area, temperature annual range (Bio7), but inhibited by the increasing of GDP and precipitation of coldest quarter (Bio19) with changing rates. These factors would have no further impacts when approaching threshold values. The increase of population density improved vegetation greening greatly when it was low, while inhibited the greening strongly when it was high. Elevation increase promoted vegetation greening when elevation < 300 m, then inhibited it. For land use changes, 'Grain for Green' improved vegetation greening, but urbanization decreased it; (4) Under current environmental condition, area percentage of vegetation browning will greatly increase from 13.88% to 37.69%, which is mostly from insignificant vegetation changes and located in the west. However, future climate changes will facilitate vegetation greening in the most area except the northwest. Our results highlight the importance of nonlinear analysis for determining the drivers and predicting future changes of vegetation greening, and developing adaptation and alleviation strategies for climate changes and human activities in fragile ecosystem.
机译:西南大部分地区的植被呈绿色趋势。但是,植被绿化与自然和人为因素之间的非线性关系仍然不清楚。在这项研究中,我们研究了非线性关系,并通过增强回归树(BRT)方法预测了绿化的未来变化。结果表明:(1)干旱月份(Bio14,20.64%),土地利用变化(10.39%)和人口密度(8%)是限制植被绿化的三个最重要因素。气候变化(42.655%)和人类活动(33.163%)是两个最重要的变量类型,但地形也很重要(18.481%),这是不容忽视的。 (2)Bio14和海拔之间的相互作用最强。气候变化与人类活动和海拔高度都具有很强的相互作用,但人类活动与海拔高度之间却没有相互作用。 (3)Bio14的增加,到居民区的距离,温度年变化范围(Bio7)促进了植被的绿化,而GDP的增加和最冷季的降水量(Bio19)随速率的变化而受到抑制。当接近阈值时,这些因素不会有进一步的影响。人口密度的增加在低时会大大改善植被的绿化,而在高时会强烈地抑制绿化。海拔升高时,海拔<300 m时促进了植被绿化,然后被抑制。对于土地用途的变化,“五谷换绿”改善了植被绿化,但城市化却减少了绿化。 (4)在目前的环境条件下,植被褐变的面积百分比将从13.88%大大增加到37.69%,这主要是由于植被变化不明显且位于西部。但是,未来的气候变化将促进西北地区以外大部分地区的植被绿化。我们的结果强调了非线性分析对于确定驱动力和预测植被绿化的未来变化以及为气候变化和脆弱生态系统中人类活动制定适应和缓解策略的重要性。

著录项

  • 来源
    《Ecological indicators》 |2020年第4期|106009.1-106009.12|共12页
  • 作者

  • 作者单位

    Nanjing Normal Univ Sch Geog Sci Nanjing 210023 Peoples R China|Nanjing Normal Univ Minist Educ Key Lab Virtual Geog Environm Nanjing 210023 Peoples R China|Jiangsu Ctr Collaborat Innovat Geog Informat Reso Nanjing 210023 Peoples R China|Nanjing Normal Univ State Key Lab Cultivat Base Geog Environm Evolut Nanjing 210023 Peoples R China;

    Nanjing Univ Informat Sci & Technol Coll Geog Sci Nanjing 210044 Peoples R China;

    Taizhou Univ Coll Pharm & Chem & Chem Engn Taizhou 225300 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Nonlinear relationship; Variable interactions; Bioclimatic variables; Human activities of different kinds; Boosted Regression Tree method (BRT);

    机译:非线性关系;可变的互动;生物气候变量;各种人类活动;增强回归树方法(BRT);

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