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首页> 外文期刊>Ecology and Evolution >Taking movement data to new depths: Inferring prey availability and patch profitability from seabird foraging behavior
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Taking movement data to new depths: Inferring prey availability and patch profitability from seabird foraging behavior

机译:将运动数据带入新的深度:通过海鸟觅食行为推断猎物的可用性和补丁的获利能力

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Abstract Detailed information acquired using tracking technology has the potential to provide accurate pictures of the types of movements and behaviors performed by animals. To date, such data have not been widely exploited to provide inferred information about the foraging habitat. We collected data using multiple sensors (GPS, time depth recorders, and accelerometers) from two species of diving seabirds, razorbills ( Alca torda , N = 5, from Fair Isle, UK) and common guillemots ( Uria aalge , N = 2 from Fair Isle and N = 2 from Colonsay, UK). We used a clustering algorithm to identify pursuit and catching events and the time spent pursuing and catching underwater, which we then used as indicators for inferring prey encounters throughout the water column and responses to changes in prey availability of the areas visited at two levels: individual dives and groups of dives. For each individual dive ( N = 661 for guillemots, 6214 for razorbills), we modeled the number of pursuit and catching events, in relation to dive depth, duration, and type of dive performed (benthic vs. pelagic). For groups of dives ( N = 58 for guillemots, 156 for razorbills), we modeled the total time spent pursuing and catching in relation to time spent underwater. Razorbills performed only pelagic dives, most likely exploiting prey available at shallow depths as indicated by the vertical distribution of pursuit and catching events. In contrast, guillemots were more flexible in their behavior, switching between benthic and pelagic dives. Capture attempt rates indicated that they were exploiting deep prey aggregations. The study highlights how novel analysis of movement data can give new insights into how animals exploit food patches, offering a unique opportunity to comprehend the behavioral ecology behind different movement patterns and understand how animals might respond to changes in prey distributions.
机译:摘要使用跟踪技术获取的详细信息具有提供动物所进行的运动和行为类型的准确图片的潜力。迄今为止,尚未广泛利用此类数据来提供有关觅食栖息地的推断信息。我们使用多种传感器(GPS,时间深度记录器和加速度计)从两种潜水海鸟,剃刀(英国Fair Isle的Alca torda,N = 5)和普通海雀(Uria aalge,N = 2,Fair)中收集了数据Isle and N = 2(来自英国科隆赛)。我们使用聚类算法来识别追赶事件和捕获事件以及在水下进行捕获和捕获所花费的时间,然后将其用作推断整个水域中遇到的猎物的指标,以及在两个级别上对拜访区域猎物可用性变化的响应的指示:潜水和潜水组。对于每个单独的潜水(海雀科的N = 661,剃刀的N = 6214),我们针对潜水深度,持续时间和潜水类型(深水对中层)模拟了追击和追捕事件的数量。对于潜水组(海雀科的鸟为N = 58,剃须鱼为156),我们对潜水和追赶所花费的总时间与在水下花费的时间进行了建模。拉索尔比尔斯只进行浮潜潜水,极有可能利用追捕和捕获事件的垂直分布表明的浅水处的猎物。相比之下,海雀科的行为更加灵活,可以在底栖和浮游潜水之间切换。捕获尝试率表明他们正在利用深度猎物聚集。这项研究强调了对运动数据的新颖分析如何能够为动物如何利用食物补丁提供新见解,为了解不同运动模式背后的行为生态学以及了解动物如何对猎物分布变化做出反应提供了独特的机会。

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