Radar Research Lab, School of Information and Electronics, Beijing Institute of Technology, Beijing, 100081, China.
Key Laboratory of Electronic and Information Technology in Satellite Navigation (Beijing Institute of Technology), Ministry of Education, Beijing, 100081, China.
Sci Rep. 2018 Apr 3;8(1):5449. doi: 10.1038/s41598-018-23825-1.
Migration is a key process in the population dynamics of numerous insect species, including many that are pests or vectors of disease. Identification of insect migrants is critically important to studies of insect migration. Radar is an effective means of monitoring nocturnal insect migrants. However, species identification of migrating insects is often unachievable with current radar technology. Special-purpose entomological radar can measure radar cross-sections (RCSs) from which the insect mass, wingbeat frequency and body length-to-width ratio (a measure of morphological form) can be estimated. These features may be valuable for species identification. This paper explores the identification of insect migrants based on the mass, wingbeat frequency and length-to-width ratio, and body length is also introduced to assess the benefit of adding another variable. A total of 23 species of migratory insects captured by a searchlight trap are used to develop a classification model based on decision-tree support vector machine method. The results reveal that the identification accuracy exceeds 80% for all species if the mass, wingbeat frequency and length-to-width ratio are utilized, and the addition of body length is shown to further increase accuracy. It is also shown that improving the precision of the measurements leads to increased identification accuracy.
迁移是许多昆虫物种种群动态的关键过程,包括许多害虫或疾病的载体。识别昆虫迁徙者对于昆虫迁移研究至关重要。雷达是监测夜间昆虫迁徙者的有效手段。然而,目前的雷达技术通常无法对迁徙昆虫进行物种识别。专用昆虫雷达可以测量雷达截面(RCS),从中可以估计昆虫的质量、振翅频率和体长与体宽比(一种形态特征的衡量标准)。这些特征对于物种识别可能很有价值。本文探讨了基于质量、振翅频率和体长与体宽比来识别昆虫迁徙者的方法,并引入体长来评估增加另一个变量的益处。总共使用了 23 种通过探照灯陷阱捕获的迁徙昆虫,基于决策树支持向量机方法开发了一种分类模型。结果表明,如果利用质量、振翅频率和体长与体宽比,所有物种的识别准确率都超过 80%,并且添加体长被证明可以进一步提高准确性。还表明,提高测量精度可以提高识别准确性。