持续性
激励
水母
业务
过度开采
渔业
执行
订单(交换)
资源(消歧)
渔业管理
自然资源经济学
经济
政治学
垂钓
财务
生态学
市场经济
生物
计算机科学
计算机网络
法学
作者
Lucas Brotz,Andrés M. Cisneros-Montemayor,Miguel A. Cisneros-Mata
出处
期刊:Marine Policy
[Elsevier]
日期:2021-12-01
卷期号:134: 104775-104775
被引量:1
标识
DOI:10.1016/j.marpol.2021.104775
摘要
The trajectory of the cannonball jellyfish (Stomolophus sp. 2) fishery in the central portion of Mexico’s Gulf of California is an all too familiar one, consisting of exploration, rapid development, and, as of now, subsequent collapse. As all of the product is exported to markets overseas, buyers have little incentive to conserve local stocks, with jellyfish now exhibiting a global-scale sequential exploitation experienced by many other marine resources. While historical data gaps are often used as excuses for overexploitation after the fact, the emergence of this modern fishery was accompanied by relatively broad research interest; however, recommendations based on sound science were not followed. The resultant paucity of policy goals, regulation, cooperation, compliance, and enforcement has resulted in the mismanagement of a potentially lucrative fishery for future generations. There are always myriad challenges when attempting to manage a nascent fishery with high uncertainty, particularly in a developing country, and this case further highlights the importance of taking a precautionary approach to emerging resource extraction. Multiple prior experiences with similar outcomes should behoove regulators and managers to exhibit extra caution, and yet, sustainability and forethought still appear to be secondary to short-term profits and employment support. Nonetheless, it is perhaps not too late for cannonball jellyfish fisheries in the Gulf of California, and there are opportunities to implement management strategies that promote collaboration, research, and sustainability. This fishery requires a new management regime that embraces adaptive co-management in order to provide benefits to locals, both now and in the future.
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