Prediction model of pitch angle of greenhouse electric tractors based on time series analysis
DOI:
https://doi.org/10.6036/11052Abstract
The pitch angle of greenhouse tractors changes when ope
rating on rough soil pavement. As a result, the feedback signal
lags behind the tractor motion attitude signal, thereby affecting
the real-time control of tilling depth. In this study, a pitch angle
prediction model of greenhouse electric tractor was proposed ba
sed on extended Kalman filter (EKF) and time series analysis to
improve the dynamic response speed of tilling depth regulation
by providing predictive information for advance control. EKF was
used to track the tilling depth of greenhouse electric tractor in
real time, and an auto-regressive moving average model (ARMA)
was established for the obtained time series data. ARMA (2, 1)
was designed as the pitch angle prediction model of greenhouse
electric tractors by constructing a simulation model. Inertia mea
surement unit (IMU) of tractor was used to construct the extended
Kalman estimation model of the pitch angle. Actual vehicle tests
were carried out under different working conditions. Results show
that the estimated values obtained under two operating condi
tions have a high correlation with the measured values, with co
rrelation coefficients(R) of 0.9504 and 0.9734, root mean square
error (RMSE) of 0.2355 and 0.2173, and maximum absolute error
(MAE) of 0.1929 and 0.1703, respectively. And ,the MAE and the
RMSE of the predicted and measured values of ARMA (2,1) model
approximately have the same value under the two conditions, with
with the R of 0.9665 and 0.9755, the RMSE of 0.2002 and 0.1812,
and the MAE of 0.1578 and 0.1387, respectively. The effectiveness
of ARMA (2, 1) as the pitch angle estimation and prediction mo
del of greenhouse electric tractors is verified. This study provides
theoretical reference for designing the control law of tilling depth
stability in subsequent greenhouse operation.
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