Institute of Agricultural Remote Sensing and Information Technology Application, College of Environmental and Resource Sciences, Zhejiang University, Hangzhou, 310058, China.
Zhejiang Ecological and Environmental Monitoring Center, Hangzhou, 310012, China.
Environ Res. 2023 Apr 1;222:115379. doi: 10.1016/j.envres.2023.115379. Epub 2023 Jan 27.
Understanding terrestrial ecosystem dynamics requires a comprehensive examination of vegetation changes. Remote sensing technology has been established as an effective approach to reconstructing vegetation change history, investigating change properties, and evaluating the ecological effects. However, current remote sensing techniques are primarily focused on break detection but ignore long-term trend analysis. In this study, we proposed a novel framework based on a change detection algorithm and a trend analysis method that could integrate both short-term disturbance detection and long-term trends to comprehensively assess vegetation change. With this framework, we characterized the vegetation changes in Zhejiang Province from 1990 to 2020 using Landsat and landcover data. Benefiting from combining break detection and long-term trend analysis, the framework showcased its capability of capturing a variety of dynamics and trends of vegetation. The results show that the vegetation was browning in the plains while greening in the mountains, and the overall vegetation was gradually greening during the study period. By comparison, detected vegetation disturbances covered 57.71% of the province's land areas (accounting for 66.92% of the vegetated region) which were mainly distributed around the built-up areas, and most disturbances (94%) occurred in forest and cropland. There were two peak timings in the frequency of vegetation disturbances: around 2003 and around 2014, and the proportions of more than twice disturbances in a single location were low. The results illustrate that this framework is promising for the characterization of regional vegetation growth, including long-term trends and short-term features. The proposed framework enlightens a new direction for the continuous monitoring of vegetation dynamics.
理解陆地生态系统动态需要全面考察植被变化。遥感技术已被确立为重建植被变化历史、调查变化特征和评估生态影响的有效方法。然而,当前的遥感技术主要侧重于断裂检测,但忽略了长期趋势分析。在本研究中,我们提出了一个基于变化检测算法和趋势分析方法的新框架,该框架可以将短期干扰检测和长期趋势相结合,从而全面评估植被变化。利用该框架,我们使用 Landsat 和土地覆盖数据描述了 1990 年至 2020 年期间浙江省的植被变化。受益于结合断裂检测和长期趋势分析,该框架展示了捕捉植被各种动态和趋势的能力。结果表明,平原地区的植被呈棕色化,而山区的植被呈绿化趋势,整个研究期间植被呈逐渐绿化趋势。相比之下,检测到的植被干扰覆盖了该省 57.71%的土地面积(占植被区域的 66.92%),主要分布在建成区周围,大多数干扰(94%)发生在森林和耕地中。植被干扰的频率有两个高峰时间:大约在 2003 年左右和大约在 2014 年左右,单个地点两次以上干扰的比例较低。结果表明,该框架有望对区域植被生长进行特征描述,包括长期趋势和短期特征。该框架为植被动态的连续监测开辟了新的方向。