收藏设为首页 广告服务联系我们在线留言

干旱区地理 ›› 2026, Vol. 49 ›› Issue (3): 484-495.doi: 10.12118/j.issn.1000-6060.2025.281 cstr: 32274.14.ALG2025281

• 气候与水文 • 上一篇    下一篇

中国西北干旱区大型湖泊湖冰物候时空差异及影响因素

周灵敏(), 伊木然·库鲁万, 玉素甫江·如素力(), 吴海智, 娜扎开提·尼加提   

  1. 新疆师范大学地理科学与旅游学院,新疆 乌鲁木齐 830000
  • 收稿日期:2025-05-15 修回日期:2025-08-25 出版日期:2026-03-25 发布日期:2026-03-24
  • 通讯作者: 玉素甫江·如素力(1975-),男,博士,教授,主要从事水文遥感与生态系统研究. E-mail: yusupjan@xjnu.edu.cn
  • 作者简介:周灵敏(2003-),女,本科,主要从事资源环境遥感研究. E-mail: zhoulingmin@163.com
  • 基金资助:
    国家自然科学基金项目(42461056);大学生创新创业项目(202210762005);大学生创新创业项目(202110762006);新疆维吾尔自治区科技创新基地建设计划项目(2020D04039)

Spatiotemporal variations and influencing factors of lake ice phenology in large lakes of the arid region of northwest China

ZHOU Lingmin(), Yimuran KULUWAN, Yusufujiang RUSULI(), WU Haizhi, Nazhakaiti NIJIATI   

  1. College of Geography and Tourism, Xinjiang Normal University, Urumqi 830000, Xinjiang, China
  • Received:2025-05-15 Revised:2025-08-25 Published:2026-03-25 Online:2026-03-24

摘要:

基于贝叶斯集合变化检测算法,融合被动微波数据、MODIS以及气象和水情数据,综合分析了1978—2022年中国西北干旱区7个大型湖泊湖冰的物候变化特征及其影响因素。结果表明:(1)被动遥感数据和Landsat数据交叉验证的决定系数均值为0.86,平均绝对误差和均方根误差均值分别为1.56 d和2.52 d,表明被动遥感数据获取湖冰物候信息的方法可行且可靠,但存在局部差异。(2)西北干旱区7个湖泊开始冻结日平均出现在11月17日—次年1月19日,完全消融日平均出现在7月11日—10月25日,冰盖期平均为143 d。冰盖期均呈现缩短趋势,其中博斯腾湖缩短趋势最小,缩短率为0.24 d·(10a)-1,赛里木湖缩短趋势最大,缩短率为0.55 d·(10a)-1。(3)1978—2022年西北干旱区湖泊冻结日呈现提前和推迟2种趋势,消融日均呈现提前趋势。多数湖泊的开始冻结日和完全冻结日呈现推迟趋势,推迟率分别为0.09~0.38 d·(10a)-1和0.24~0.29 d·(10a)-1,少数湖泊(如吉力湖和博斯腾湖)冻结日呈现提前趋势。高纬度(除艾比湖)消融提前趋势显著,提前率在0.27~0.48 d·(10a)-1之间;高海拔湖泊消融提前趋势较缓,提前率在0.12~0.27 d·(10a)-1之间。(4)西北干旱区大型湖泊冻融受气象要素(风速、积雪覆盖、降雨量、近地面温度)与水情要素(湖泊面积、透明度)共同影响。其中,近地面温度直接影响湖冰的冻结与消融,而湖泊面积和透明度则通过调节水体热容量和太阳辐射吸收间接影响湖冰物候过程。

关键词: 湖冰物候, 时空差异, 贝叶斯集合变化检测, 影响因素, 中国西北干旱区

Abstract:

Based on a Bayesian ensemble change detection algorithm, this study integrates passive microwave data, MODIS products, and meteorological and hydrological variables to comprehensively analyze lake ice phenology and its driving factors for seven large lakes in the arid region of northwest China over the period 1978—2022. The results are summarized as follows: (1) Cross-validation between passive microwave remote sensing data and Landsat observations yields a mean coefficient of determination of 0.86, with a mean absolute error of 1.56 days and a root mean square error of 2.52 days. These results indicate that passive microwave data provide a feasible and reliable approach for extracting lake ice phenology, despite minor local discrepancies. (2) Across the seven lakes in the arid region of northwest China, the average onset of ice formation occurred between November 17 and January 19 of the following year, while complete ice-off dates ranged from July 11 to October 25. The mean ice-covered duration was 143 days. All lakes exhibited a shortening trend in ice duration, with Bosten Lake showing the smallest reduction rate (0.24 days per decade) and Sayram Lake the largest (0.55 days per decade). (3) Lake freeze-onset dates displayed both advancing and delaying trends, whereas ice-off dates predominantly advanced in the arid region of northwest China from 1978 to 2022. For most lakes, the onset and complete freeze dates were delayed at rates of 0.09-0.38 days per decade and 0.24-0.29 days per decade, respectively. In contrast, a few lakes, including Jili Lake and Bosten Lake, exhibited advancing freeze-onset trends. In high-latitude regions (excluding Ebinur Lake), ice-off dates advanced significantly at rates of 0.27-0.48 days per decade, whereas high-altitude lakes exhibited weaker trends ranging from 0.12 to 0.27 days per decade. (4) Lake ice freeze-thaw cycles in the arid region of northwest China are jointly controlled by meteorological factors (wind speed, snow cover, precipitation, and near-surface air temperature) and hydrological characteristics (lake area and water transparency). Near-surface air temperature directly governs the timing of lake ice freezing and melting, whereas lake area and transparency indirectly influence ice phenology by regulating water heat capacity and solar radiation absorption.

Key words: lake ice phenology, spatiotemporal differences, Bayesian ensemble change detection, influencing factors, arid region of northwest China