Applying spatiotemporal models to monitoring data to quantify fish population responses to the Deepwater Horizon oil spill in the Gulf of Mexico

被引:0
作者
Eric J. Ward
Kiva L. Oken
Kenneth A. Rose
Shaye Sable
Katherine Watkins
Elizabeth E. Holmes
Mark D. Scheuerell
机构
[1] National Oceanic and Atmospheric Administration,Conservation Biology Division, Northwest Fisheries Science Center, National Marine Fisheries Service
[2] Rutgers University,Department of Marine and Coastal Sciences
[3] University of Maryland Center for Environmental Science,Horn Point Laboratory
[4] Dynamic Solutions,Fish Ecology Division, Northwest Fisheries Science Center, National Marine Fisheries Service
[5] National Oceanic and Atmospheric Administration,undefined
来源
Environmental Monitoring and Assessment | 2018年 / 190卷
关键词
Deepwater Horizon oil spill; Gulf of Mexico; Louisiana; Spatiotemporal modeling; Delta—generalized linear mixed models; Fisheries modeling; Time series anomalies; Long-term monitoring;
D O I
暂无
中图分类号
学科分类号
摘要
Quantifying the impacts of disturbances such as oil spills on marine species can be challenging. Natural environmental variability, human responses to the disturbance (e.g., fisheries closures), the complex life histories of the species being monitored, and limited pre-spill data can make detection of effects of oil spills difficult. Using long-term monitoring data from the state of Louisiana (USA), we applied novel spatiotemporal approaches to identify anomalies in species occurrence and catch rates. We included covariates (salinity, temperature, turbidity) to help isolate unusual events. While some species showed evidence of unlikely temporal anomalies in occurrence or catch rates, we found that the majority of the observed anomalies were also before the Deepwater Horizon event. Several species-gear combinations suggested upticks in the spatial variability immediately following the spill, but most species indicated no trend. Across species-gear combinations, there was no clear evidence for synchronous or asynchronous responses in occurrence or catch rates across sites following the spill. Our results are in general agreement to other analyses of monitoring data that detected small impacts, but in contrast to recent results from ecological modeling that showed much larger effects of the oil spill on fish and shellfish.
引用
收藏
相关论文
共 239 条
[1]  
Able KW(2015)Fish assemblages in Louisiana salt marshes: effects of the Macondo oil spill Estuaries and Coasts 38 1385-1398
[2]  
López-Duarte PC(2018)Impacts of the Deepwater Horizon oil spill evaluated using an end-to-end ecosystem model PLoS One 13 e0190840-547
[3]  
Fodrie FJ(2002)Integrating mark–recapture–recovery and census data to estimate animal abundance and demographic parameters Biometrics 58 540-51
[4]  
Jensen OP(2016)Environmental effects of the Deepwater Horizon oil spill: a review Marine Pollution Bulletin 110 28-181
[5]  
Martin CW(2016)Impact of oil spills on marine Llife in the Gulf of Mexico: effects on plankton, nekton, and deep-sea benthos Oceanography 29 174-366
[6]  
Roberts BJ(2000)Louisiana estuarine and coastal fisheries and habitats: perspectives from a fish’s eye view Ecological Applications 10 350-1504
[7]  
Valenti J(2005)Effect of dispersant on the composition of the water-accommodated fraction of crude oil and its toxicity to larval marine fish Environmental Toxicology and Chemistry 24 1496-26
[8]  
O’Connor K(2017)Using ecosystem modeling to evaluate trade-offs in coastal management: effects of large-scale river diversions on fish and fisheries Ecological Modelling 360 14-2884
[9]  
Halbert SC(2009)Improving the performance of predictive process modeling for large datasets Computational Statistics & Data Analysis 53 2873-788
[10]  
Ainsworth CH(2011)Response of coastal fishes to the Gulf of Mexico oil disaster PLoS One 6 e21609-511