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Local ecological knowledge concurs with fishing statistics: An example from the abalone fishery in Baja California, Mexico

机译:当地的生态知识与捕鱼统计数据一致:以墨西哥下加利福尼亚州的鲍鱼渔业为例

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The use of local ecological knowledge (LEK) to assess species status has been controversial among marine scientists. While some consider this to be one of the few historical tools available to understand the extent of change that has occurred in marine animal populations and ecosystems with a long-term historical perspective, others believe fishers tend to exaggerate catches and that their memories cannot be considered a reliable source of information to assess species at risk of extinction. This study compares long-term fishery data on catches with fishers' memories in the abalone (Haliotis spp) fishery from Baja California, Mexico. Results show that historical landings and fishers' memories strongly concur in the history of how this fishery has collapsed over the last 60 years. Pearson correlation analysis between both sets of data reports a value of 0.75, showing a high correlation (p < 0.0001), adding evidence to the increasing literature on the importance of local ecological knowledge to understand species' trends in marine ecosystems. As with any other proxy of population abundance, fishers' ecological knowledge gives an imperfect but informed trend on the status of marine species that should not be discarded by our own bias that ecological data always produces accurate estimations. (C) 2016 Elsevier Ltd. All rights reserved.
机译:在海洋科学家中,使用当地生态知识(LEK)评估物种状况一直存在争议。尽管有些人认为这是可用于以长期历史角度了解海洋动物种群和生态系统变化程度的少数历史工具之一,但另一些人则认为渔民倾向于夸大渔获量,因此无法考虑他们的记忆评估濒临灭绝物种的可靠信息来源。这项研究将渔获的长期渔业数据与墨西哥下加利福尼亚州鲍鱼(Haliotis spp)渔业中渔民的记忆进行了比较。结果表明,在过去60年中,这种渔业如何崩溃的历史上,历史上的登陆和渔民的记忆非常一致。两组数据之间的Pearson相关性分析报告的值为0.75,显示出很高的相关性(p <0.0001),这为有关本地生态知识对于理解海洋生态系统物种趋势的重要性的日益增加的文献提供了证据。如同其他任何其他有关人口丰度的指标一样,渔民的生态知识为海洋物种的状况提供了不完善但知情的趋势,不应因我们自己的偏见而将其丢弃,因为生态数据总能产生准确的估计值。 (C)2016 Elsevier Ltd.保留所有权利。

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