4.3 Article

A pound of prevention, plus a pound of cure: Early detection and eradication of invasive species in the Laurentian Great Lakes

期刊

JOURNAL OF GREAT LAKES RESEARCH
卷 36, 期 1, 页码 199-205

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.jglr.2009.11.002

关键词

Laurentian Great Lakes; Eradication; Monitoring; Early detection; Ballast water; Risk assessment

资金

  1. Wisconsin Department of Natural Resources
  2. Wisconsin Sea Grant Program

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Ballast water regulations implemented in the early 1990s appear not to have slowed the rate of new aquatic invasive species (AIS) establishment in the Great Lakes. With more invasive species on the horizon, we examine the question of whether eradication of AIS is a viable management strategy for the Laurentian Great Lakes, and what a coordinated AIS early detection and eradication program would entail. In-lake monitoring would be conducted to assess the effectiveness of regulations aimed at stopping new AIS, and to maximize the likelihood of early detection of new invaders. Monitoring would be focused on detecting the most probable invaders, the most invasion-prone habitats, and the species most conducive to eradication. When a new non-native species is discovered, an eradication assessment would be conducted and used to guide the management response. In light of high uncertainty, management decisions must be robust to a range of impact and control scenarios. Though prevention should continue to be the cornerstone of management efforts, we believe that a coordinated early detection and eradication program is warranted if the Great Lakes management community and stakeholders are serious about reducing undesired impacts stemming from new AIS in the Great Lakes. Development of such a program is an opportunity for the Laurentian Great Lakes resource management community to demonstrate global leadership in invasive species management. (C) 2009 Elsevier B.V. All rights reserved.

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