干旱区研究 ›› 2024, Vol. 41 ›› Issue (10): 1719-1730.doi: 10.13866/j.azr.2024.10.10 cstr: 32277.14.j.azr.2024.10.10
樊玉科1(), 任菊1, 王润龙1, 周栋栋1, 潘自凯2, 张晓玮1, 周晓雷1()
收稿日期:
2024-04-01
修回日期:
2024-07-13
出版日期:
2024-10-15
发布日期:
2024-10-14
通讯作者:
周晓雷. E-mail: zhouxl@gsau.edu.cn作者简介:
樊玉科(2000-),男,硕士研究生,主要从事植物多样性研究. E-mail: fanyuke823@foxmail.com
基金资助:
FAN Yuke1(), REN Ju1, WANG Runlong1, ZHOU Dongdong1, PAN Zikai2, ZHANG Xiaowei1, ZHOU Xiaolei1()
Received:
2024-04-01
Revised:
2024-07-13
Published:
2024-10-15
Online:
2024-10-14
摘要:
研究旨在预测白皮松潜在适生区分布及气候变化对其的影响,明确其未来适宜的分布范围,为白皮松保护和其在生态工程建设中的应用提供参考。基于白皮松83个野生分布点及气候因子数据,利用MaxEnt模型和ArcGIS软件,模拟白皮松当前和未来3种(2080—2100年,低温室气体排放情景、中温室气体排放情景和高温室气体排放情景)气候变化情景(SSP126、SSP370、SSP585)下的潜在适生区分布。MaxEnt模型模拟结果AUC(受试者工作特征曲线下面积值)值均>0.973,预测结果精度较高。当前气候条件下,白皮松的潜在适生区主要分布在陕西省、山西省南部、甘肃省东南部、河南省和湖北省西北部等地,总面积约74.5×104 km2,未来气候变化背景下,核心适生区面积均有不同程度的缩减,温度为白皮松潜在适生区分布的主限制因子;中、低温室气体排放情景下,白皮松潜在适生区分布的限制因子仍以温度为主;高温室气体排放情景下,全球温度升高加快,降雨量成为影响白皮松适生区分布的主要限制因子,白皮松适生区质心向东偏移,尤其在温室气体高排放浓度下更敏感,迁移距离更远。本文结合白皮松当前和未来潜在适生区的变化,提出了对白皮松保护的建议,且对利用白皮松进行生态工程建设提供参考价值。
樊玉科, 任菊, 王润龙, 周栋栋, 潘自凯, 张晓玮, 周晓雷. 气候变化背景下白皮松在中国潜在适宜分布预测[J]. 干旱区研究, 2024, 41(10): 1719-1730.
FAN Yuke, REN Ju, WANG Runlong, ZHOU Dongdong, PAN Zikai, ZHANG Xiaowei, ZHOU Xiaolei. Prediction of potential suitable distribution area of Pinus bungeana in China under the background of climate change[J]. Arid Zone Research, 2024, 41(10): 1719-1730.
表1
气候变量数据"
数据图层编号 | 数据说明 | 数据图层编号 | 数据说明 |
---|---|---|---|
Bio01 | 年平均温度/℃ | Bio11 | 最冷季度的平均温度/℃ |
Bio02 | 每月温差的平均值/℃ | Bio12 | 年降水量/mm |
Bio03 | 等温性/% | Bio13 | 最湿月的降水量/mm |
Bio04 | 温度季节性差异/% | Bio14 | 最干月的降水量/mm |
Bio05 | 最热月的最高温度/℃ | Bio15 | 季节性降水量变异系数 |
Bio06 | 最冷月的最低温度/℃ | Bio16 | 最湿季度的降水量/mm |
Bio07 | 温度年较差/℃ | Bio17 | 最干季度的降水量/mm |
Bio08 | 最湿季度的平均温度/℃ | Bio18 | 最热季度的降水量/mm |
Bio09 | 最干季度的平均温度/℃ | Bio19 | 最冷季度的降水量/mm |
Bio10 | 最热季度的平均温度/℃ |
表3
未来不同气候情景下白皮松潜在适生区面积"
适生区 | 当前面积 /104 km2 | 2080—2100年SSP126 | 2080—2100年SSP370 | 2080—2100年SSP585 | |||||
---|---|---|---|---|---|---|---|---|---|
面积/104 km2 | 面积变化比例/% | 面积/104 km2 | 面积变化比例/% | 面积/104 km2 | 面积变化比例/% | ||||
高适生区 | 23.23 | 19.38 | -16.57 | 20.60 | -11.32 | 20.48 | -11.84 | ||
中适生区 | 22.40 | 22.37 | -0.13 | 19.99 | -10.75 | 22.46 | 0. 27 | ||
低适生区 | 28.95 | 29.15 | 0.69 | 30.17 | 4.21 | 31.97 | 10.43 | ||
总计 | 74.58 | 70.90 | -4.93 | 70.76 | -5.12 | 74.91 | 0.44 |
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