Abstract

Digital avionic solutions enable advanced flight control systems to be available also on smaller aircraft. One of the safety-critical segments is the air data system. Innovative architectures allow the use of synthetic sensors that can introduce significant technological and safety advances. The application to aerodynamic angles seems the most promising towards certified applications. In this area, the best procedures concerning the design of synthetic sensors are still an open question within the field. An example is given by the MIDAS project funded in the frame of Clean Sky 2. This paper proposes two data-driven methods that allow to improve performance over the entire flight envelope with particular attention to steady state flight conditions. The training set obtained is considerably undersized with consequent reduction of computational costs. These methods are validated with a real case and they will be used as part of the MIDAS life cycle. The first method, called Data-Driven Identification and Generation of Quasi-Steady States (DIGS), is based on the (i) identification of the lift curve of the aircraft; (ii) augmentation of the training set with artificial flight data points. DIGS’s main aim is to reduce the issue of unbalanced training set. The second method, called Similar Flight Test Data Pruning (SFDP), deals with data reduction based on the isolation of quasi-unique points. Results give an evidence of the validity of the methods for the MIDAS project that can be easily adopted for generic synthetic sensor design for flight control system applications.

Highlights

  • The more electrical aircraft is one of the most challenging objectives of the aviation industry and its main stakeholders

  • The Smart-ADAHRS technological demonstrator was developed by Politecnico di Torino and it is able to record all the input signals needed by the multilayer perceptron (MLP)

  • 200 artificial steady state flight points from the Driven Identification and Generation of Quasi-Steady States (DIGS) method are added to the training in order to adequately increase the steady state population

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Summary

Introduction

The more electrical aircraft is one of the most challenging objectives of the aviation industry and its main stakeholders. A lot of researches are conducted in order to bring significant innovation on board with the main aim to increase performance and safety, to reduce fuel consumption and emissions [1,2]. Both industrial players and governments from all over the world are very active on latter topics, a lot of effort has been spent and many funds are and will be available in years to achieve well defined goals. The training stage, based on flight data, is crucial for the correct learning process of the synthetic sensors.

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