将精细尺度的行为与水力环境联系起来,显示了河流鱼类的行为反应。

IF 3.4 1区 生物学 Q2 ECOLOGY
J Elings, R Mawer, S Bruneel, I S Pauwels, E Pickholtz, R Pickholtz, J Coeck, M Schneider, P Goethals
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引用次数: 1

摘要

背景:鱼类洄游受到大坝建设的严重影响。由于鱼类洄游路线的中断,淡水鱼种群数量出现了惊人的下降。为缓解这一问题而建造的鱼道表现不佳。这在一定程度上是由于鱼类的导航在很大程度上仍然被误解。跟踪技术和建模的最新发展使得今天可以在非常精细的空间(小到一米)和时间(小到每秒)尺度上跟踪(水生)动物。隐马尔可夫模型是分析这些精细尺度上的行为状态的合适模型。在这项研究中,我们将barbarus (Barbus Barbus)和grayling (thyymallus Thymallus)的精细尺度跟踪数据与精细尺度水动力学模型联系起来。通过HMM,我们分析了鱼的行为转换,以了解它们在德国南部伊勒河障碍物和鱼道出口附近的运动和导航行为。方法:利用声波遥测技术,在鱼接近水电站设施时,对鱼进行跟踪。跟踪的结果是鱼的轨迹在随后的鱼位置之间具有可变的间隔。这种可变性源于标签发射和轨迹内缺失检测之间的可变间隔。经过轨道正则化后,用不同的参数拟合隐马尔可夫模型。测试参数是步长,在3分钟移动窗口计算的直线度指数,以及在10分钟窗口计算的直线度指数。然后通过允许流速和空间速度梯度影响行为状态之间的过渡矩阵来扩展表现最佳的模型(基于AIC选择)。结果:本研究发现,与使用直线度指数构建的模型相比,使用步长识别隐马尔可夫模型的行为状态表现不佳。在评估的两种不同的直线度指数中,在10分钟移动窗口内计算的指数表现更好。将行为状态与生态水力环境联系起来,表明空间速度梯度对行为开关的影响。相反,流速对行为转变矩阵没有影响。结论:鱼道吸引流引起的空间速度梯度影响了鱼的行为转换。深入了解鱼类导航和鱼类对生态水力环境的反应有助于鱼道的建设,提高鱼道的整体效率,从而有助于减轻迁徙障碍对水生生态系统的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Linking fine-scale behaviour to the hydraulic environment shows behavioural responses in riverine fish.

Linking fine-scale behaviour to the hydraulic environment shows behavioural responses in riverine fish.

Linking fine-scale behaviour to the hydraulic environment shows behavioural responses in riverine fish.

Linking fine-scale behaviour to the hydraulic environment shows behavioural responses in riverine fish.

Background: Fish migration has severely been impacted by dam construction. Through the disruption of fish migration routes, freshwater fish communities have seen an incredible decline. Fishways, which have been constructed to mitigate the problem, have been shown to underperform. This is in part due to fish navigation still being largely misunderstood. Recent developments in tracking technology and modelling make it possible today to track (aquatic) animals at very fine spatial (down to one meter) and temporal (down to every second) scales. Hidden Markov models are appropriate models to analyse behavioural states at these fine scales. In this study we link fine-scale tracking data of barbel (Barbus barbus) and grayling (Thymallus thymallus) to a fine-scale hydrodynamic model. With a HMM we analyse the fish's behavioural switches to understand their movement and navigation behaviour near a barrier and fishway outflow in the Iller river in Southern Germany.

Methods: Fish were tracked with acoustic telemetry as they approached a hydropower facility and were presented with a fishway. Tracking resulted in fish tracks with variable intervals between subsequent fish positions. This variability stems from both a variable interval between tag emissions and missing detections within a track. After track regularisation hidden Markov models were fitted using different parameters. The tested parameters are step length, straightness index calculated over a 3-min moving window, and straightness index calculated over a 10-min window. The best performing model (based on a selection by AIC) was then expanded by allowing flow velocity and spatial velocity gradient to affect the transition matrix between behavioural states.

Results: In this study it was found that using step length to identify behavioural states with hidden Markov models underperformed when compared to models constructed using straightness index. Of the two different straightness indices assessed, the index calculated over a 10-min moving window performed better. Linking behavioural states to the ecohydraulic environment showed an effect of the spatial velocity gradient on behavioural switches. On the contrary, flow velocity did not show an effect on the behavioural transition matrix.

Conclusions: We found that behavioural switches were affected by the spatial velocity gradient caused by the attraction flow coming from the fishway. Insight into fish navigation and fish reactions to the ecohydraulic environment can aid in the construction of fishways and improve overall fishway efficiencies, thereby helping to mitigate the effects migration barriers have on the aquatic ecosystem.

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来源期刊
Movement Ecology
Movement Ecology Agricultural and Biological Sciences-Ecology, Evolution, Behavior and Systematics
CiteScore
6.60
自引率
4.90%
发文量
47
审稿时长
23 weeks
期刊介绍: Movement Ecology is an open-access interdisciplinary journal publishing novel insights from empirical and theoretical approaches into the ecology of movement of the whole organism - either animals, plants or microorganisms - as the central theme. We welcome manuscripts on any taxa and any movement phenomena (e.g. foraging, dispersal and seasonal migration) addressing important research questions on the patterns, mechanisms, causes and consequences of organismal movement. Manuscripts will be rigorously peer-reviewed to ensure novelty and high quality.
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