Kia Soul
Num MAP RPM CEL ATP
Min Max Min Max Min Max Min Max
1 21 99 648 5529 18 91 18 78
3 0 145 665 3692 18 91 18 82
4 0 106 657 3718 18 91 18 78
7 22 99 660 2829 18 91 18 42
10 20 100 663 3483 18 91 18 82
Considering the values of Table 6, the driving
style of each driver is characterized in Table 7. Even
though driver 3 has the highest MAP, load and
throttle values, fuel economy efficiency is second
best, as cruising status is vastly utilized. In this case,
the stressing upon the vehicle engine is limited,
contributing to the extension of the engine lifecycle.
Table 7: Driver aggression categorization.
Most aggressive driver from left to right
1 10 7 3 4
Similar pattern is followed in our own experiment
where the acceleration mode is characterized by
greater MAP, load, and ATP values. This results in
almost 50% higher fuel consumption than cruising,
up. This is aligned with analysis performed in our
previous work (Rimpas et al., 2020), where constant
acceleration has been associated with engine stressing
and decreased fuel efficiency.
5 CONCLUSIONS – FUTURE
WORK
The consideration of the OBD-II periodic readings as
timeseries measurements has allowed us to apply
relevant methodologies a) for driving event
identification and b) for parameter correlations. We
consider that such as consideration can open new
perspectives (in terms of methodologies and tools) in
engine operation monitoring and added value
services. The event identification rules have proved
to be robust, providing reliable results for different
drivers, driving modes and automatic / manual
transmission. The characterization of the driving style
has been verified through parallel calculation of fuel
consumption. Similarly, correlation of engine
operation parameters correlation per driving mode
has been coherent.
As future work we consider further elaboration
OBD-II readings. These can include the identification
of non-typical values, in the context of preventive
maintenance. Sensor operation can allow for prompt
vehicle and engine inspection and prevent future
malfunctions. The availability of readings, available
in the cloud or locally and offered in a trustworthy
manner can allow access to a complete and coherent
history of the vehicle (Voulkidis, 2022), interesting to
potential buyer and state agencies, revealing poor
maintenance or unhandled malfunctioning. From
another perspective, this work can be combined used
with more complex (and opaque) AI/deep learning
approaches for the creation of labelled timeseries and
to enhance the ‘explainability’ of the results.
ACKNOWLEDGEMENTS
The authors acknowledge financial support for the
dissemination of this work from the Special Account
for Research of ASPETE through the funding
program ‘Strengthening ASPETE’s research.
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