The development of an unsupervised hierarchical clustering analysis of dual-polarization weather surveillance radar observations to assess nocturnal insect abundance and diversity.
Maryna LukachThomas DallyWilliam EvansChristopher HassallElizabeth J DuncanLindsay BennettFreya I AddisonWilliam E KuninJason W ChapmanRyan R NeelyPublished in: Remote sensing in ecology and conservation (2022)
Contemporary analyses of insect population trends are based, for the most part, on a large body of heterogeneous and short-term datasets of diurnal species that are representative of limited spatial domains. This makes monitoring changes in insect biomass and biodiversity difficult. What is needed is a method for monitoring that provides a consistent, high-resolution picture of insect populations through time over large areas during day and night. Here, we explore the use of X-band weather surveillance radar (WSR) for the study of local insect populations using a high-quality, multi-week time series of nocturnal moth light trapping data. Specifically, we test the hypotheses that (i) unsupervised data-driven classification algorithms can differentiate meteorological and biological phenomena, (ii) the diversity of the classes of bioscatterers are quantitatively related to the diversity of insects as measured on the ground and (iii) insect abundance measured at ground level can be predicted quantitatively based on dual-polarization Doppler WSR variables. Adapting the quasi-vertical profile analysis method and data clustering techniques developed for the analysis of hydrometeors, we demonstrate that our bioscatterer classification algorithm successfully differentiates bioscatterers from hydrometeors over a large spatial scale and at high temporal resolutions. Furthermore, our results also show a clear relationship between biological and meteorological scatterers and a link between the abundance and diversity of radar-based bioscatterer clusters and that of nocturnal aerial insects. Thus, we demonstrate the potential utility of this approach for landscape scale monitoring of biodiversity.
Keyphrases
- machine learning
- aedes aegypti
- deep learning
- blood pressure
- high resolution
- big data
- public health
- sleep quality
- single cell
- air pollution
- artificial intelligence
- electronic health record
- rna seq
- zika virus
- randomized controlled trial
- clinical trial
- wastewater treatment
- risk assessment
- cross sectional
- microbial community
- data analysis
- neural network
- human health