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Prediction of fishing effort distributions using boosted regression trees

机译:使用增强回归树预测捕捞努力量分布

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摘要

Concerns about bycatch of protected species have become a dominant factor shaping fisheries management. However, efforts to mitigate bycatch are often hindered by a lack of data on the distributions of fishing effort and protected species. One approach to overcoming this problem has been to overlay the distribution of past fishing effort with known locations of protected species, often obtained through satellite telemetry and occurrence data, to identify potential bycatch hotspots. This approach, however, generates static bycatch risk maps, calling into question their ability to forecast into the future, particularly when dealing with spatiotemporally dynamic fisheries and highly migratory bycatch species. In this study, we use boosted regression trees to model the spatiotemporal distribution of fishing effort for two distinct fisheries in the North Pacific Ocean, the albacore (Thunnus alalunga) troll fishery and the California drift gillnet fishery that targets swordfish (Xiphias gladius). Our results suggest that it is possible to accurately predict fishing effort using <10 readily available predictor variables (cross-validated correlations between model predictions and observed data ~0.6). Although the two fisheries are quite different in their gears and fishing areas, their respective models had high predictive ability, even when input data sets were restricted to a fraction of the full time series. The implications for conservation and management are encouraging: Across a range of target species, fishing methods, and spatial scales, even a relatively short time series of fisheries data may suffice to accurately predict the location of fishing effort into the future. In combination with species distribution modeling of bycatch species, this approach holds promise as a mitigation tool when observer data are limited. Even in data-rich regions, modeling fishing effort and bycatch may provide more accurate estimates of bycatch risk than partial observer coverage for fisheries and bycatch species that are heavily influenced by dynamic oceanographic conditions.
机译:对兼捕受保护物种的担忧已成为影响渔业管理的主要因素。但是,由于缺乏有关捕捞努力和受保护物种分布的数据,常常阻碍了减轻兼捕的努力。解决该问题的一种方法是将过去的捕捞努力分布与已知的受保护物种位置(通常通过卫星遥测和发生数据获得)相重叠,以识别潜在的兼捕热点。但是,这种方法会生成静态的兼捕风险图,从而质疑它们对未来的预测能力,尤其是在处理时空动态渔业和高度迁徙的兼捕物种时。在这项研究中,我们使用增强回归树来模拟北太平洋两个截然不同的渔业,长鳍金枪鱼(Thunnus alalunga)巨魔渔业和针对剑鱼(Xiphias gladius)的加利福尼亚漂移刺网渔业的捕捞努力的时空分布。我们的结果表明,有可能使用<10个随时可用的预测变量(模型预测与观测数据之间的交叉验证相关性〜0.6)来准确预测捕捞努力。尽管两个渔场的渔具和渔区完全不同,但即使输入数据集仅限于整个时间序列的一小部分,它们各自的模型也具有较高的预测能力。保护和管理的意义令人鼓舞:在一系列目标物种,捕捞方法和空间尺度上,即使是相对较短时间序列的渔业数据也足以准确预测未来捕捞努力的位置。结合兼捕物种的物种分布模型,当观察者数据有限时,这种方法有望成为缓解手段。即使在数据丰富的地区,对捕捞努力和兼捕进行建模也比对观察者对受动态海洋条件严重影响的渔业和兼捕物种的部分覆盖范围更为准确地估算出兼捕风险。

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