从环境特征预测休伦湖 Dreissena spp.的空间分布模式

IF 2.4 3区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES Journal of Great Lakes Research Pub Date : 2024-07-06 DOI:10.1016/j.jglr.2024.102369
Jennifer M. Morris , Peter C. Esselman , Catherine M. Riseng , Ashley K. Elgin , Mark D. Rowe
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引用次数: 0

摘要

入侵的裸裂贻贝(Dreissena polymorpha 和 Dreissena rostriformis bugensis)通过对底栖生物栖息地、食物网结构和营养循环的多种影响,改变了五大湖的生态系统。本研究探讨了环境因素的空间连续地理数据是否可用于预测全湖范围内的 Dreissena spp.同时还评估了分类变量与 Dreissena spp.生物量之间的重要关系。利用合作科学与监测计划(CSMI)下的 2017 年休伦湖底栖生物调查中的点观测数据,对休伦湖全湖 119 个地点的竹刀鱼存在情况和生物量进行了现场测量。研究发现,流域、水深区和支流影响与竹节虫生物量有显著的统计学关系。根据六个环境解释变量,建立了一个增强回归树(BRT)模型(ROC 得分为 0.707),从空间上预测休伦湖中出现竹节虫的概率:四月、五月和十月的叶绿素、六月的溶解有机碳、一月的湖底温度和五月的湖底温度。食物供应和湖底温度的重要性揭示了裸贻贝与春季和秋季底栖-深海混合时期之间的关系。未来的模型可通过调查技术的进步加以改进,以改善贻贝栖息地特征和环境制约因素的地理特征。
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Predicting Lake Huron Dreissena spp. Spatial distribution patterns from environmental characteristics

Invasive dreissenid mussels (Dreissena polymorpha and Dreissena rostriformis bugensis) have altered Great Lakes ecosystems through a multitude of effects on benthic habitats, food web structure, and nutrient cycling. This study explores whether spatially continuous geographic data of environmental factors can be utilized to predict Dreissena spp. spatial distributions on a lake-wide scale. Categorical variables were also assessed for significant relationships with Dreissena spp. biomass. Point observations from the 2017 Lake Huron benthic survey under the Cooperative Science and Monitoring Initiative (CSMI) were utilized for in situ measurements of dreissenid presence and biomass at 119 sites across Lake Huron. Basin, bathymetric zone, and tributary influence were found to have statistically significant relationships to dreissenid biomass. A boosted regression tree (BRT) model (ROC score 0.707) was developed to spatially predict dreissenid presence probability across Lake Huron from six environmental explanatory variables: April, May, and October chlorophyll, June dissolved organic carbon, January bottom temperature, and May bottom temperature. The importance of food availability and bottom temperature illuminated relationships between dreissenid mussels and periods of benthic-pelagic mixing in the spring and fall seasons. Future models could be improved through advancements in survey technology for improved geographic characterization of mussel habitat characteristics and environmental constraints.

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来源期刊
Journal of Great Lakes Research
Journal of Great Lakes Research 生物-海洋与淡水生物学
CiteScore
5.10
自引率
13.60%
发文量
178
审稿时长
6 months
期刊介绍: Published six times per year, the Journal of Great Lakes Research is multidisciplinary in its coverage, publishing manuscripts on a wide range of theoretical and applied topics in the natural science fields of biology, chemistry, physics, geology, as well as social sciences of the large lakes of the world and their watersheds. Large lakes generally are considered as those lakes which have a mean surface area of >500 km2 (see Herdendorf, C.E. 1982. Large lakes of the world. J. Great Lakes Res. 8:379-412, for examples), although smaller lakes may be considered, especially if they are very deep. We also welcome contributions on saline lakes and research on estuarine waters where the results have application to large lakes.
期刊最新文献
Editorial Board Revisiting zooplankton as indicators in the Great Lakes: Which indicators detect temporal changes in the zooplankton community composition? Vertical distribution of Lake Superior cisco (Coregonus artedi) spawning aggregations and implications for population monitoring Cyanobacteria in cold waters: A study of nearshore cyanobacteria assemblages in Lake Superior Lake Superior fish community and fisheries, 2001–2022: An era of stability
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