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Describing growth based on landscape characteristics and stocking strategies for rainbow trout

机译:基于景观特征的增长及彩虹鳟鱼的放养策略

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The achievement of target growth rates of stocked fish in a particular environment is an important component of recreational fisheries management; if stocked fish do not achieve a desired size structure, then angling effort and satisfaction may be lower than anticipated. We developed a growth model for rainbow trout (Oncorhynchus mykiss) based on a Bayesian hierarchical analysis of growth data from 142 gillnet assessments across the province of British Columbia. The growth equation was defined as a von Bertalanffy function with environmental and stocking covariates applied to the function's asymptotic length (L-infinity) and metabolic rate (K) parameters. Key factors defining growth for the best performing model were the time spent in lake based on accumulated growing degree days, the life-stage at stocking, stocking density, and the stocked strain. Calculating time in-lake in terms of growing degree days experienced by fish instead of calendar days in-lake improved the prediction of growth. We explore examples of how to use this information, such as identifying stocking rates needed to achieve particular size thresholds given size-structure objectives for a stocked lake fishery. This analysis helps managers determine how to efficiently distribute hatchery-reared fish across the landscape and recognize limits to growth given particular environmental constraints while also tailoring to the diversity of angler preferences and expectations of the fishery.
机译:在特定环境中取得储量鱼类的目标增长率是娱乐渔业管理的重要组成部分;如果没有库存的鱼不达到所需的尺寸结构,则倾斜努力和满足可能低于预期。根据英国哥伦比亚省全省142个Gillnet评估的增长数据,我们开发了彩虹鳟鱼(Oncorhynchus Mykiss)的增长模型。增长方程被定义为von Bertalanffy功能,其具有适用于函数的渐近长度(L-Infinity)和代谢率(K)参数的环境和放养协变量。定义最佳表演模型增长的关键因素是基于累积的生长度日,袜子,放养密度和储存菌株的生命阶段所花费的时间。在湖中经历的日历日经验丰富的日历,在湖泊中计算时间,改善了对生长的预测。我们探讨如何使用此信息的示例,例如识别实现特定尺寸阈值所需的库存率给定库存渔业的大小结构目标。该分析有助于管理人员确定如何在景观中有效地分配孵化场饲养的鱼类,并识别给予特定环境限制的增长的限制,同时也定制了钓鱼者偏好和渔业期望的多样性。

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