首页> 外文期刊>Journal of the Royal Society Interface >Hybrid foraging in patchy environments using spatial memory
【24h】

Hybrid foraging in patchy environments using spatial memory

机译:使用空间记忆的杂物环境中的混合觅食

获取原文
获取原文并翻译 | 示例
       

摘要

Efficient random searches are essential to the survival of foragers searching for sparsely distributed targets. Levy walks have been found to optimize the search over a wide range of constraints. When targets are distributed within patches, generating a spatial memory over the detected targets can be beneficial towards optimizing the search efficiency. Because foragers have limited memory, storing each target location separately is unrealistic. Instead, we propose incrementally learning a spatial distribution in favour of memorizing target locations. We demonstrate that an ensemble of Gaussian mixture models is a suitable candidate for such a spatial distribution. Using this, a hybrid foraging strategy is proposed, which interchanges random searches with informed movement. Informed movement results in displacements towards target locations, and is more likely to occur if the learned spatial distribution is correct. We show that, depending on the strength of the memory effects, foragers optimize search efficiencies by continuous revisitation of non-destructive targets. However, this negatively affects both the target and patch diversity, indicating that memory does not necessarily optimize multi-objective searches. Hence, the benefits of memory depend on the specific goals of the forager. Furthermore, through analysis of the distribution over walking distances of the forager, we show that memory changes the underlying walk characteristics. Specifically, the forager resorts to Brownian motion instead of Levy walks, due to truncation of the long straight line displacements resulting from memory effects. This study provides a framework that opens up new avenues for investigating memory effects on foraging in sparse environments.
机译:有效的随机搜索对于寻找稀疏分布式目标的伪造者的生存至关重要。已发现征集散步可以优化搜索范围广泛的约束。当目标分布在补丁中时,在检测到的目标上产生空间存储器可以有利于优化搜索效率。由于伪造者的内存有限,因此单独存储每个目标位置是不现实的。相反,我们建议逐步学习空间分布,以支持纪念目标位置。我们证明高斯混合模型的集合是这种空间分布的合适候选者。使用这一点,提出了一种混合觅食策略,其互换随机搜索的方式。知情运动导致目标位置的流离失所,如果学习的空间分布是正确的,则更有可能发生。我们表明,根据记忆效应的强度,迫使制通过持续重新审视非破坏性目标来优化搜索效率。然而,这对目标和补丁分集产生负面影响,表明内存不一定优化多目标搜索。因此,记忆的好处取决于觅食者的特定目标。此外,通过分析Forager的步行距离的分布,我们表明内存会改变潜在的行走特性。具体而言,由于记忆效应产生的长直线位移截断,觅食者对布朗摩擦而不是征收步行。本研究提供了一个框架,为调查稀疏环境中的觅食的内存效果开辟了新的途径。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号