PREDICTION MODEL OF PITCH ANGLE OF GREENHOUSE ELECTRIC TRACTORS BASED ON TIME SERIES ANALYSIS

IF 0.8 4区 工程技术 Q3 ENGINEERING, MULTIDISCIPLINARY Dyna Pub Date : 2023-11-01 DOI:10.6036/11052
Hangxu Yang, Jun Zhou, Zezhong Qi
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Abstract

The pitch angle of greenhouse tractors changes when operating 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 based 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 measurement 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 conditions have a high correlation with the measured values, with correlation 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 model of greenhouse electric tractors is verified. This study provides theoretical reference for designing the control law of tilling depth stability in subsequent greenhouse operation. Keywords: Time series, prediction, pitch angle,electric tractor
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基于时间序列分析的温室电动拖拉机俯仰角预测模型
大棚拖拉机在粗糙的路面上作业时,其俯仰角会发生变化。因此,反馈信号滞后于拖拉机运动姿态信号,从而影响犁耕深度的实时控制。本文提出了一种基于扩展卡尔曼滤波(EKF)和时间序列分析的温室电动拖拉机俯仰角预测模型,通过为提前控制提供预测信息,提高了耕深调节的动态响应速度。利用EKF对温室电动拖拉机耕作深度进行实时跟踪,并对获取的时间序列数据建立自回归移动平均模型(ARMA)。通过构建仿真模型,设计ARMA(2,1)作为温室电动拖拉机俯仰角预测模型。利用拖拉机惯性测量单元(IMU)建立了拖拉机俯仰角的扩展卡尔曼估计模型。在不同工况下进行了整车试验。结果表明,两种工况下的估计值与实测值具有较高的相关性,相关系数(R)分别为0.9504和0.9734,均方根误差(RMSE)分别为0.2355和0.2173,最大绝对误差(MAE)分别为0.1929和0.1703。两种情况下,ARMA(2,1)模型预测值和实测值的MAE和RMSE近似相同,R分别为0.9665和0.9755,RMSE分别为0.2002和0.1812,MAE分别为0.1578和0.1387。验证了ARMA(2,1)作为温室电动拖拉机俯仰角估计与预测模型的有效性。该研究为后续温室作业中耕深稳定性控制规律的设计提供了理论参考。关键词:时间序列,预测,俯仰角,电动拖拉机
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来源期刊
Dyna
Dyna 工程技术-工程:综合
CiteScore
1.00
自引率
10.00%
发文量
131
审稿时长
6-12 weeks
期刊介绍: Founded in 1926, DYNA is one of the journal of general engineering most influential and prestigious in the world, as it recognizes Clarivate Analytics. Included in Science Citation Index Expanded, its impact factor is published every year in Journal Citations Reports (JCR). It is the Official Body for Science and Technology of the Spanish Federation of Regional Associations of Engineers (FAIIE). Scientific journal agreed with AEIM (Spanish Association of Mechanical Engineering) In character Scientific-technical, it is the most appropriate way for communication between Multidisciplinary Engineers and for expressing their ideas and experience. DYNA publishes 6 issues per year: January, March, May, July, September and November.
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