Roll Angle Estimation of a Motorcycle through Inertial Measurements

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http://hdl.handle.net/2183/29404
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Coleccións
- Investigación (EPEF) [590]
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Roll Angle Estimation of a Motorcycle through Inertial MeasurementsAutor(es)
Data
2021-10Cita bibliográfica
Maceira, D.; Luaces, A.; Lugrís, U.; Naya, M.Á.; Sanjurjo, E. Roll Angle Estimation of a Motorcycle through Inertial Measurements. Sensors 2021, 21, 6626. https://doi.org/10.3390/s21196626
Resumo
[Abstract] Currently, the interest in creating autonomous driving vehicles and progressively more sophisticated active safety systems is growing enormously, being a prevailing importance factor for the end user when choosing between either one or another commercial vehicle model. While fourwheelers are ahead in the adoption of these systems, the development for two-wheelers is beginning to gain importance within the sector. This makes sense, since the vulnerability for the driver is much higher in these vehicles compared to traditional four-wheelers. The particular dynamics and stability that govern the behavior of single-track vehicles (STVs) make the task of designing active control systems, such as Anti-lock Braking System (ABS) systems or active or semi-active suspension systems,
particularly challenging. The roll angle can achieve high values, which greatly affects the general behavior of the vehicle. Therefore, it is a magnitude of the utmost importance; however, its accurate measurement or estimation is far from trivial. This work is based on a previous paper, in which a roll angle estimator based on the Kalman filter was presented and tested on an instrumented bicycle.
In this work, a further refinement of the method is proposed, and it is tested in more challenging situations using the multibody model of a motorcycle. Moreover, an extension of the method is also presented to improve the way noise is modeled within this Kalman filter.
Palabras chave
Roll angle estimator
Kalman filter
LQR controller
Inertial sensors
Motorcycle lean angle
Kalman filter
LQR controller
Inertial sensors
Motorcycle lean angle
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Dereitos
Atribución 4.0 Internacional
ISSN
1424-8220