School of Prospecting and Surveying, Changchun Institute of Technology, Changchun, 130022, China.
Graduate School, Changchun Institute of Technology, Changchun, 130022, China.
Environ Sci Pollut Res Int. 2021 Dec;28(48):68174-68187. doi: 10.1007/s11356-021-15262-x. Epub 2021 Jul 15.
As the global ecosystem has been severely disturbed by an increasing number of human activities at different scales, remote sensing technology, as an effective quantitative measure of environmental quality, has been widely used. The remote sensing ecological index (RSEI) is one of the most popular and comprehensive ecological quality assessment indices based on the remote sensing data. However, the RSEI model exhibits that the ecological environment under natural conditions is not limited by the spatial scales. In addition, the model has major shortcomings in index selection and eigenvector, which greatly limit the application of RSEI. In this paper, the RSEI model is improved and a remote sensing ecological index optimized by the regional scale (RO-RSEI) is proposed. The result of the study, conducted in Shuangyang District, Changchun City, Jilin Province, shows that the RO-RSEI model has regional ecological significance after the introduction of the scale theory of landscape ecology; the index is preferred to solve problems like the RSEI model applied mechanization and baseless index selection. Meanwhile, due to the optimization of the eigenvector contribution of the optimal index, it solves the problems like non-unique model calculation result caused by principal component analysis or even antipodal calculation result. Compared with the RSEI model, the monitoring result of RO-RSEI model can better reflect the regional ecological changes. The improved model offers the possibility of monitoring ecological environment quality with remote sensing big data and provides a scientific basis for future scholars' batch computing.
随着越来越多的人类活动在不同尺度上严重干扰全球生态系统,遥感技术作为环境质量的有效定量测量手段得到了广泛应用。遥感生态指数(RSEI)是基于遥感数据的最受欢迎和最全面的生态质量评估指数之一。然而,RSEI 模型表现出自然条件下的生态环境不受空间尺度限制。此外,该模型在指标选择和特征向量方面存在重大缺陷,这极大地限制了 RSEI 的应用。本文对 RSEI 模型进行了改进,并提出了一种基于区域尺度的遥感生态指数优化模型(RO-RSEI)。在吉林省长春市双阳区的研究结果表明,在引入景观生态学尺度理论后,RO-RSEI 模型具有区域生态意义;该指数更倾向于解决 RSEI 模型应用机械化和无根据的指标选择等问题。同时,由于优化了最佳指标的特征向量贡献,解决了主成分分析甚至对极计算结果导致的模型计算结果非唯一性问题。与 RSEI 模型相比,RO-RSEI 模型的监测结果能更好地反映区域生态变化。改进后的模型为遥感大数据监测生态环境质量提供了可能性,并为未来学者的批量计算提供了科学依据。