首页> 外文学位 >Describing species-environment relations for macrobenthic and microphytobenthic community structure using constrained ordination and predicting environmental variables from species composition.
【24h】

Describing species-environment relations for macrobenthic and microphytobenthic community structure using constrained ordination and predicting environmental variables from species composition.

机译:使用约束排序并根据物种组成预测环境变量来描述大型底栖动物和微型植物底栖动物群落结构的物种-环境关系。

获取原文
获取原文并翻译 | 示例

摘要

The human potential to change the environment and the associated biological communities is well documented. Yet, it is difficult to identify species responses to a suite of environmental variables (acting additively or antagonistically), and additionally, identify anthropogenic impacts. Here, a new constrained ordination technique called Canonical Principal Component Analysis of Hypergeometric Probabilities (C-PCA-H) is described which uses both species and environmental variables to explain patterns of species variation based on the environment. In this method, the species data are transformed that the ordination diagram represents the main patterns of variation in the Chord Normalized Expected Species Shared (CNESS) distances among samples. CNESS is a family of dissimilarity metrics that can be made more or less sensitive to the rare or the dominant species of a community. C-PCA-H is applied to two benthic surveys. The first consists of estuarine benthic invertebrate data and environmental variables measured by the Environmental Monitoring and Assessment Program (EMAP-VP) in the Virginian Province. Salinity, temperature, and depth are the main variables governing species composition. C-PCA-H is used to distinguish natural from anthropogenic impacts and to identify pollution-tolerant and sensitive species. The second survey consists of estuarine benthic invertebrate data and environmental variables measured by the Massachusetts Water Resources Authority (MWRA) to assess the effects of the secondary treatment sewage outfall in Massachusetts Bay. C-PCA-H reveals that depth and grain size are the main variables governing species composition. Long-term changes in community structure are also shown. Three species are identified as pollution indicators. Additionally, past conditions in Boston Harbor are assessed by inferring past environmental variables from fossil diatoms using the Weighted Averaging method. Modern benthic diatoms were sampled from Massachusetts Bay, and analyzed using C-PCA-H. Depth, salinity, and nutrients are the main variables governing species composition and hence appropriate for paleoreconstructions. Fossil diatoms were extracted from a dated sediment-core. Past depth, salinity, and nutrient concentrations are reconstructed from the 1850s to the 1990s revealing key periods in the history of Boston Harbor. Such paleoreconstructions beyond the decadal time-frame offer a methodology to identify natural variability which is vital for the effective management of coastal systems.
机译:人类改变环境和相关生物群落的潜力已得到充分证明。然而,很难确定物种对一系列环境变量的反应(相加作用或拮抗作用),并且难以确定人为影响。在此,描述了一种新的受约束排序技术,称为超几何概率的规范主成分分析(C-PCA-H),该技术同时使用物种和环境变量来解释基于环境的物种变化模式。在这种方法中,对物种数据进行了转换,以使排序图表示样本之间的弦标准化期望物种共享(CNESS)距离的主要变化模式。 CNESS是一整套相异性指标,可以使它们对社区的稀有或优势物种或多或少敏感。 C-PCA-H适用于两次底栖调查。第一个由河口底栖无脊椎动物数据和由弗吉尼亚州环境监测与评估计划(EMAP-VP)测量的环境变量组成。盐度,温度和深度是控制物种组成的主要变量。 C-PCA-H用于区分自然和人为影响,并识别耐污染和敏感的物种。第二次调查由马萨诸塞州水资源管理局(MWRA)测量的河口底栖无脊椎动物数据和环境变量组成,以评估马萨诸塞州湾二级处理污水排污口的影响。 C-PCA-H表明,深度和粒度是控制物种组成的主要变量。还显示了社区结构的长期变化。确定了三种物种作为污染指标。此外,通过使用加权平均法从化石硅藻推断过去的环境变量来评估波士顿港的过去状况。现代底栖硅藻从马萨诸塞州湾采样,并使用C-PCA-H进行分析。深度,盐度和养分是控制物种组成的主要变量,因此适用于古构造。化石硅藻从陈旧的沉积岩芯中提取。从1850年代到1990年代重建了过去的深度,盐度和营养物浓度,揭示了波士顿港历史上的关键时期。这样的年代际构造超出了十年的时间框架,为确定自然变异提供了一种方法,这对于沿海系统的有效管理至关重要。

著录项

  • 作者

    Evgenidou, Angeliki.;

  • 作者单位

    University of Massachusetts Boston.;

  • 授予单位 University of Massachusetts Boston.;
  • 学科 Biology Ecology.;Environmental Sciences.;Paleoecology.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 457 p.
  • 总页数 457
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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