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使用机器学习算法预测抹香鲸的季节性活动和分布。

Predicting seasonal movements and distribution of the sperm whale using machine learning algorithms.

作者信息

Chambault Philippine, Fossette Sabrina, Heide-Jørgensen Mads Peter, Jouannet Daniel, Vély Michel

机构信息

Greenland Institute of Natural Resources Copenhagen Denmark.

Megaptera Paris France.

出版信息

Ecol Evol. 2021 Jan 12;11(3):1432-1445. doi: 10.1002/ece3.7154. eCollection 2021 Feb.

Abstract

Implementation of effective conservation planning relies on a robust understanding of the spatiotemporal distribution of the target species. In the marine realm, this is even more challenging for species rarely seen at the sea surface due to their extreme diving behavior like the sperm whales. Our study aims at (a) investigating the seasonal movements, (b) predicting the potential distribution, and (c) assessing the diel vertical behavior of this species in the Mascarene Archipelago in the south-west Indian Ocean. Using 21 satellite tracks of sperm whales and eight environmental predictors, 14 supervised machine learning algorithms were tested and compared to predict the whales' potential distribution during the wet and dry season, separately. Fourteen of the whales remained in close proximity to Mauritius, while a migratory pattern was evidenced with a synchronized departure for eight females that headed towards Rodrigues Island. The best performing algorithm was the random forest, showing a strong affinity of the whales for sea surface height during the wet season and for bottom temperature during the dry season. A more dispersed distribution was predicted during the wet season, whereas a more restricted distribution to Mauritius and Reunion waters was found during the dry season, probably related to the breeding period. A diel pattern was observed in the diving behavior, likely following the vertical migration of squids. The results of our study fill a knowledge gap regarding seasonal movements and habitat affinities of this vulnerable species, for which a regional IUCN assessment is still missing in the Indian Ocean. Our findings also confirm the great potential of machine learning algorithms in conservation planning and provide highly reproductible tools to support dynamic ocean management.

摘要

有效的保护规划实施依赖于对目标物种时空分布的深入了解。在海洋领域,对于像抹香鲸这样因极端潜水行为而很少在海面被看到的物种,这一挑战更为艰巨。我们的研究旨在:(a)调查该物种的季节性移动;(b)预测其潜在分布;(c)评估该物种在印度洋西南部马斯克林群岛的昼夜垂直行为。利用21条抹香鲸的卫星追踪轨迹和8个环境预测因子,分别测试并比较了14种监督式机器学习算法,以预测抹香鲸在雨季和旱季的潜在分布。14头抹香鲸一直靠近毛里求斯,同时有8头雌性抹香鲸同步前往罗德里格斯岛,呈现出一种洄游模式。表现最佳的算法是随机森林算法,结果显示,抹香鲸在雨季对海面高度、在旱季对底层温度具有强烈的偏好。预测显示,雨季的分布更为分散,而旱季的分布更多地局限于毛里求斯和留尼汪水域,这可能与繁殖期有关。在潜水行为中观察到一种昼夜模式,可能与鱿鱼的垂直洄游有关。我们的研究结果填补了关于这种脆弱物种季节性移动和栖息地偏好的知识空白,印度洋区域自然保护联盟(IUCN)仍缺乏对该物种的评估。我们的研究结果还证实了机器学习算法在保护规划中的巨大潜力,并提供了高度可重复的工具来支持动态海洋管理。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b5a7/7863674/90edda679621/ECE3-11-1432-g001.jpg

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