Abstract

Aircraft ground de-icing operations play a critical role in flight safety. However, to handle the aircraft de-icing, a considerable quantity of de-icing fluids is commonly employed. Moreover, some pre-flight inspections are carried out with engines running; thus, a large amount of fuel is wasted, and CO2 is emitted. This implies substantial economic and environmental impacts. In this context, the European project (reference call: MANUNET III 2018, project code: MNET18/ICT-3438) called SEI (Spectral Evidence of Ice) aims to provide innovative tools to identify the ice on aircraft and improve the efficiency of the de-icing process. The project includes the design of a low-cost UAV (uncrewed aerial vehicle) platform and the development of a quasi-real-time ice detection methodology to ensure a faster and semi-automatic activity with a reduction of applied operating time and de-icing fluids. The purpose of this work, developed within the activities of the project, is defining and testing the most suitable sensor using a radiometric approach and machine learning algorithms. The adopted methodology consists of classifying ice through spectral imagery collected by two different sensors: multispectral and hyperspectral camera. Since the UAV prototype is under construction, the experimental analysis was performed with a simulation dataset acquired on the ground. The comparison among the two approaches, and their related algorithms (random forest and support vector machine) for image processing, was presented: practical results show that it is possible to identify the ice in both cases. Nonetheless, the hyperspectral camera guarantees a more reliable solution reaching a higher level of accuracy of classified iced surfaces.

Highlights

  • Human safety is one of the main concerns at airports and aircraft icing represents a significant hazard in aviation [1]

  • Since the UAV prototype is under construction, the experimental analysis was performed with a simulation dataset acquired on the ground

  • To reduce the hyperspectral data dimensionality, principal component analysis (PCA) was carried out using the “Principal components tools” of ArcGIS Pro 2.5.0 [48]

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Summary

Introduction

Human safety is one of the main concerns at airports and aircraft icing represents a significant hazard in aviation [1]. Ice accumulation can occur due to the supercooled droplets colliding with a hard surface forming an ice film [4] with an air temperature between 0 and −20 ◦ C [5]. Aviation Administration), structural or in-flight ice and ground ice can be identified [6,7]. The former occurs when the aircraft is flying through visible water such as rain or cloud droplets. The latter, instead, may accumulate on parked aircraft due to precipitation and atmospheric conditions

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