2023
DOI: 10.1111/ecog.06772
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When can local bird detection radars best complement broad‐scale early‐warning forecasts of risk potential for bird–aircraft strikes as part of an integrated approach to strike mitigation?

Abstract: Worldwide, wildlife–aircraft strikes cost more than US$1.2 billion in aircraft damage and downtime and jeopardize the safety of aircrews, passengers, and animals. Radar has long been used to monitor flying animal movements and can be a useful tool for strike mitigation. In the USA, the Avian Hazard Advisory System (AHAS) is an early‐warning system that integrates data from next‐generation weather radar (NEXRAD) weather surveillance radars (WSRs) with historic bird occurrence data to quantify avian activity and… Show more

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Cited by 2 publications
(1 citation statement)
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“…Module I can be implemented based on a priori knowledge and improves the data to allow for reliable exploratory analysis and summary overviews. This module can be readily applied to other bird radar systems and could be used in near-real time applications such as air traffic safety warnings(Colón & Long, 2023;van Gasteren et al, 2019). Additionally, the data reduction in Module I reduces the computational demand for in-depth analysis and is therefore crit-ical to making the data workable.…”
mentioning
confidence: 99%
“…Module I can be implemented based on a priori knowledge and improves the data to allow for reliable exploratory analysis and summary overviews. This module can be readily applied to other bird radar systems and could be used in near-real time applications such as air traffic safety warnings(Colón & Long, 2023;van Gasteren et al, 2019). Additionally, the data reduction in Module I reduces the computational demand for in-depth analysis and is therefore crit-ical to making the data workable.…”
mentioning
confidence: 99%