Dynamic Modelling and Energy-efficient Trajectory Planning of an Electric Fixed-wing Aircraft
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Authors
Advisor
McPhee, John
Fischmeister, Sebastian
Fischmeister, Sebastian
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Volume Title
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University of Waterloo
Abstract
Electrification of air transportation is an emerging technology with the potential to sig-
nificantly reduce global greenhouse gas emissions. The Pipistrel Velis Electro, an all-electric
fixed-wing light aircraft, is the first battery-electric aircraft to receive type certification in
Canada. This technology represents an opportunity to eliminate aircraft exhaust emis-
sions and reduce the cost of operation. However, similar to other electric vehicles, electric
aircraft are subject to physically-limited energy density compared to liquid fuels, which
makes energy-efficient operation critical to maximize their benefits. Toward this goal, the
development of computational models based on system-specific performance can enable
more precise operational planning.
In this thesis, a series of models are developed that represent the aircraft’s subsystems
that contribute to energy flow and consumption. First, a set of physics-based models
was developed using established governing equations. Analogous black-box data-driven
models consisting of feedforward neural networks are then trained to approximate physical
relationships for aspects of the system. A neural network is also trained to approximate the
residual error of the physics-based system model compared to the measured observations,
then combined with the output of the physics-based model in a hybrid architecture to
improve accuracy and compensate for system-specific and environment-specific deviation.
The models are tuned and validated using real-world data collected from flight testing.
The best-performing model is then used to estimate the energy consumption of the
aircraft as a function of the change in state and exogenous variables. By mapping the
state trajectory to a directed graph, graph-based optimization methods can be utilized.
The projected energy consumption is mapped to the graph as edge costs, and a shortest-
path algorithm is applied to find the minimum energy path with respect to the decision
variables.