论文标题
动物运动科学的数字生态系统:使动物运动数据集,数据链接技术,方法和环境层更易于查找,解释和分析
A Digital Ecosystem for Animal Movement Science: Making animal movement datasets, data-linkage techniques, methods, and environmental layers easier to find, interpret, and analyze
论文作者
论文摘要
运动是动物生活的一个基本方面,在确定人口动态,社区,生态系统和多样性的结构中起着至关重要的作用。近年来,通过GP项圈,相机陷阱,声学传感器和公民科学记录动物运动,以及研究人员用来使这些运动与这些运动相关化的大量环境和其他辅助数据,已达到数量,速度和多样性的水平。该数据增长产生了越来越复杂的运动分析方法。因此,动物生态学家需要对统计,地理信息系统(GIS),遥感和编码等技术技能有更多了解。因此,由于研究需要领域知识和技术专长,因此协作变得越来越重要。动物运动和环境数据的数据集通常在由政府机构,大学和非政府组织(NGO)运营的存储库中,并采用科学期刊中描述的方法提供。但是,这些实体之间几乎没有连接。目前,用于动物运动科学的数字生态系统的建设至关重要。数字生态系统代表一个设置,可以发现运动数据,环境层和分析方法,可用于有效的存储,操纵和分析。我们认为,这样的系统将通过实现协作,促进复制,扩大潜在分析的时空范围以及限制方法开发中的冗余性,从而有助于发展运动生态领域。我们描述了数字生态系统的关键组成部分,需要解决的关键挑战以及针对这些挑战的潜在解决方案。
Movement is a fundamental aspect of animal life and plays a crucial role in determining the structure of population dynamics, communities, ecosystems, and diversity. In recent years, the recording of animal movements via GPS collars, camera traps, acoustic sensors, and citizen science, along with the abundance of environmental and other ancillary data used by researchers to contextualize those movements, has reached a level of volume, velocity, and variety that puts movement ecology research in the realm of big data science. That data growth has spawned increasingly complex methods for movement analysis. Consequently, animal ecologists need a greater understanding of technical skills such as statistics, geographic information systems (GIS), remote sensing, and coding. Therefore, collaboration has become increasingly crucial, as research requires both domain knowledge and technical expertise. Datasets of animal movement and environmental data are typically available in repositories run by government agencies, universities, and non-governmental organizations (NGOs) with methods described in scientific journals. However, there is little connectivity between these entities. The construction of a digital ecosystem for animal movement science is critically important right now. The digital ecosystem represents a setting where movement data, environmental layers, and analysis methods are discoverable and available for efficient storage, manipulation, and analysis. We argue that such a system which will help mature the field of movement ecology by engendering collaboration, facilitating replication, expanding the spatiotemporal range of potential analyses, and limiting redundancy in method development. We describe the key components of the digital ecosystem, the critical challenges that would need addressing, as well as potential solutions to those challenges.