Quantitative Assessment and Analysis of Fish Behavior in Closed Systems Using Information Entropy

IF 2.1 3区 农林科学 Q2 FISHERIES Fishes Pub Date : 2024-06-12 DOI:10.3390/fishes9060224
Minoru Kadota, S. Torisawa, Tsutomu Takagi
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Abstract

This study introduces a method for quantitatively assessing the complexity and predictability of fish behavior in closed systems through the application of information entropy, offering a novel lens through which to understand how fish adapt to environmental changes. Utilizing simulations rooted in a random walk model for fish movement, we delve into entropy fluctuations under varying environmental conditions, including responses to feeding and external stimuli. Our findings underscore the utility of information entropy in capturing the intricacies of fish behavior, particularly highlighting the synchrony in collective actions and adaptations to environmental shifts. This research not only broadens our comprehension of fish behavior but also paves the way for its application in fields like aquaculture and resource management. Through our analysis, we discovered that smaller grid sizes in simulations capture detailed local fluctuations, while larger grids elucidate general trends, pinpointing a 2.5 grid as optimal for our study. Moreover, changes in swimming speeds and behavioral adaptations during feeding were quantitatively analyzed, with results illustrating significant behavior modifications. Additionally, employing a Gaussian mixture model helped to clarify the nuanced changes in fish behavior in response to altered light conditions, demonstrating the layered complexity of fish responses to environmental stimuli. This investigation confirms the efficacy of information entropy as a robust metric for evaluating fish shoal behavior, offering a fresh methodology for ecological and environmental studies, with promising implications for sustainable management practices.
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利用信息熵对封闭系统中的鱼类行为进行定量评估和分析
本研究介绍了一种通过应用信息熵来定量评估封闭系统中鱼类行为的复杂性和可预测性的方法,为了解鱼类如何适应环境变化提供了一个新的视角。利用鱼类运动的随机行走模型模拟,我们深入研究了不同环境条件下的熵波动,包括对摄食和外部刺激的反应。我们的研究结果强调了信息熵在捕捉鱼类复杂行为方面的作用,尤其突出了集体行动和适应环境变化的同步性。这项研究不仅拓宽了我们对鱼类行为的理解,还为其在水产养殖和资源管理等领域的应用铺平了道路。通过分析,我们发现模拟中较小的网格尺寸可以捕捉到详细的局部波动,而较大的网格尺寸则可以阐明总体趋势,因此我们将 2.5 的网格尺寸确定为研究的最佳尺寸。此外,我们还定量分析了摄食过程中游泳速度和行为适应性的变化,结果表明行为发生了显著变化。此外,采用高斯混合物模型有助于阐明鱼类在光照条件改变时行为的细微变化,展示了鱼类对环境刺激反应的多层次复杂性。这项研究证实了信息熵作为评估鱼群行为的可靠指标的有效性,为生态和环境研究提供了一种全新的方法,并对可持续管理实践产生了积极影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Fishes
Fishes Multiple-
CiteScore
1.90
自引率
8.70%
发文量
311
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