Multi-scale temporal characters mining for bird activities based on historical avian radar system datasets

Q. Xu, J. Liu, M. Su, W.S. Chen
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引用次数: 1

Abstract

Avian radar systems are effective for wide-area bird detection and tracking, but application significances need further exploration. Existing radar data mining methods provide long-term functionalities, but they are problematic for bird activity modelling especially in temporal domain. This paper complements this insufficiency by introducing a temporal bird activity extraction and interpretation method. The bird behaviour is quantified as the activity degree which integrates intensity and uncertainty characters with an entropy weighing algorithm. The method is applicable in multiple temporal scales. Historical radar dataset from a system deployed in an airport is adopted for verification. Temporal characters demonstrate good consistency with understandings from local observers and ornithologists. Daily commuting and roosting characters of local birds are well reflected, evening bat activities are also extracted. Night migration activities are demonstrated clearly. Results indicate the proposed method is effective in temporal bird activity modelling and interpretation. Its integration with bird strike risk models might be more useful for airport safety management with wildlife interference.
基于历史鸟类雷达系统数据的鸟类活动多尺度时间特征挖掘
鸟类雷达系统对广域鸟类的探测和跟踪是有效的,但其应用意义还有待进一步探索。现有的雷达数据挖掘方法提供了长期的功能,但它们在鸟类活动建模方面存在问题,特别是在时间域。本文引入了一种鸟类活动时序提取和解释方法,弥补了这一不足。利用熵权算法将鸟类行为量化为综合了强度和不确定性特征的活动度。该方法适用于多个时间尺度。采用某机场部署系统的历史雷达数据进行验证。时间特征与当地观察员和鸟类学家的理解一致。很好地反映了当地鸟类的日常通勤和栖息特征,提取了夜间蝙蝠的活动。夜间迁徙活动被清楚地展示出来。结果表明,该方法对鸟类活动的时间建模和解释是有效的。它与鸟击风险模型的结合可能对有野生动物干扰的机场安全管理更有用。
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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