...
首页> 外文期刊>Journal of Hydrology >Development of a socio-ecological environmental justice model for watershed-based management
【24h】

Development of a socio-ecological environmental justice model for watershed-based management

机译:开发基于分水岭的管理的社会生态环境正义模型

获取原文
获取原文并翻译 | 示例

摘要

The dynamics and relationships between society and nature are complex and difficult to predict. Anthropogenic activities affect the ecological integrity of our natural resources, specifically our streams. Further, it is well-established that the costs of these activities are born unequally by different human communities. This study considered the utility of integrating stream health metrics, based on stream health indicators, with socio-economic measures of communities, to better characterize these effects. This study used a spatial multi-factor model and bivariate mapping to produce a novel assessment for watershed management, identification of vulnerable areas, and allocation of resources. The study area is the Saginaw River watershed located in Michigan. In-stream hydrological and water quality data were used to predict fish and macroinvertebrate measures of stream health. These measures include the Index of Biological Integrity (IBI), Hilsenhoff Biotic Index (HBI), Family IBI, and total number of Ephemeroptera, Plecoptera, and Trichoptera (EPT) taxa. Stream health indicators were then compared to spatially coincident socioeconomic data, obtained from the United States Census Bureau (2010), including race, income, education, housing, and population size. Statistical analysis including spatial regression and cluster analysis were used to examine the correlation between vulnerable human populations and environmental conditions. Overall, limited correlation was observed between the socio-economic data and ecological measures of stream health, with the highest being a negative correlation of 0.18 between HBI and the social parameter household size. Clustering was observed in the datasets with urban areas representing a second order clustering effect over the watershed. Regions with the worst stream health and most vulnerable social populations were most commonly located nearby or down-stream to highly populated areas and agricultural lands.
机译:社会与自然之间的动力和关系是复杂且难以预测的。人为活动会影响我们自然资源(特别是河流)的生态完整性。此外,众所周知,这些活动的成本是由不同的人类社区不平等承担的。这项研究考虑了将基于河流健康指标的河流健康指标与社区的社会经济指标相结合以更好地表征这些影响的实用性。这项研究使用空间多因素模型和双变量映射为流域管理,脆弱区域识别和资源分配提供了新颖的评估方法。研究区域是位于密歇根州的萨吉诺河分水岭。河流中的水文和水质数据被用来预测鱼类和大型无脊椎动物对河流健康的测量。这些衡量标准包括生物完整性指数(IBI),希尔森霍夫生物指数(HBI),家庭IBI以及星翅目,鞘翅目和毛鳞翅目(EPT)类群的总数。然后将河流健康指标与从美国人口普查局(2010年)获得的空间一致的社会经济数据进行比较,包括种族,收入,教育,住房和人口规模。包括空间回归和聚类分析在内的统计分析被用来检验脆弱人群与环境状况之间的相关性。总体而言,在社会经济数据与河流健康的生态测量之间观察到的相关性有限,其中最高的是HBI与社会参数家庭规模之间的负相关性0.18。在数据集中观察到聚类,其中城市地区代表流域上的二阶聚类效果。河流健康状况最差,社会人口最脆弱的地区通常位于人口稠密地区和农田附近或下游。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号