Robust Switched Tracking Control for Wheeled Mobile Robots Considering the Actuators and Drivers
Abstract
:1. Introduction
1.1. Control Algorithms Based on the Kinematic Model
1.1.1. Only Kinematics of the Mechanical Structure
1.1.2. Kinematics of the Mechanical Structure + Dynamics of the Actuators
1.1.3. Kinematics of the Mechanical Structure + Dynamics of the Actuators + Dynamics of the Power Stage
1.2. Control Algorithms Based on the Dynamic Model
1.2.1. Only Dynamics of the Mechanical Structure
1.2.2. Dynamics of the Mechanical Structure + Dynamics of the Actuators
1.3. Discussion of Related Work, Motivation, and Contribution
2. Robust Hierarchical Switched Tracking Controller That Considers the Dynamics of All Subsystems Associated with a DDWMR
- (1)
- In the high hierarchy level, a kinematic control, and , expressed in terms of and is proposed for the mechanical structure. This control allows the DDWMR to track a desired trajectory, i.e., , and also corresponds to the desired angular velocity profiles that the shafts of the DC motors have to track.
- (2)
- In the medium hierarchy level, two controls based on differential flatness, and , are designed so as to ensure that the shafts of the DC motors execute the angular velocity trajectory tracking task, i.e., . These controls also impose the desired voltage profiles that must be tracked by the output voltages of the DC/DC Buck power converters.
- (3)
- In the low hierarchy level, via two cascade switched controls based on SMC and PI control, and , it is assured that the output voltages of the DC/DC Buck power converters will track the desired voltage profiles imposed by the medium level, i.e., .
- (4)
- By following the hierarchical controller approach, the controls described in previous items (1), (2), and (3) are interconnected so as to carry out the trajectory tracking task for the DDWMR.
2.1. High-Level Control
2.2. Medium-Level Control
2.3. Low-Level Control
2.4. Hierarchical Switched Tracking Controller Design
3. Experimental Results
3.1. Controllers to be Experimentally Implemented
- Hierarchical switched controller (developed in Section 2). This controller is composed by the following three stages.High level: Mechanical structureMedium level: ActuatorsLow level: Power stage
- Hierarchical average controller (reported in [7]). This controller also comprises three levels of control: high level for the mechanical structure, medium level for the actuators, and low level for the power stage. The controls associated with the high level and the medium level correspond to Equations (37)–(40), respectively. On the other hand, the control related to the low level is given by
3.2. Experimental Prototype
- Trajectory tracking controllers. The synthesis and programming of the hierarchical switched controller, Equations (37)–(42), and the hierarchical average controller, Equations (37)–(40), (43), and (44), were carried out as described here via MATLAB-Simulink. In this block, the following six sub-blocks can be observed:(1) Kinematic control. This control corresponds to the high level of both hierarchical controllers. It is given by Equations (37) and (38) and requires the following information associated with the DDWMR:(2) Differential flatness control. This is related to the medium-level control of both hierarchical controllers. It is defined by Equations (39) and (40) and requires the parameters given by (15) and (16). That is,(3) Sliding mode control + PI control. This control is associated with the low level of the hierarchical switched controller, Equations (41) and (42), and considers some parameters of the DC/DC Buck power converters. Such parameters are(4) Differential flatness average control. Corresponds to the low level of the hierarchical average controller reported in [7], Equations (43) and (44), and uses all parameters of the DC/DC Buck power converters. Those parameters areIt is worth noting that the hierarchical average controller, composed of the previous items (1), (2), and (4), was designed on the basis of the average model associated with the power stage (DC/DC Buck power converters). Because of this, a modulator is required for its appropriate experimental implementation. In this direction, the sigma-delta modulator (-modulator) was used in order to make a fair comparison between both controllers, i.e., the switched one and the average one.(5) Gains of the hierarchical switched controller. Here, the gains associated with the controls of the high, medium, and low levels are specified. For the high level, the gains were chosen asMeanwhile, the gains linked to the medium level, i.e., , were obtained by choosing their parameters as follows:Lastly, the gains of the low level were proposed as(6) Gains of the hierarchical average controller. In this block, the gains of the three levels of control (high, medium, and low) are defined. For the high level, the gains were selected asOn the other hand, the gains , related to the medium level, were found by choosing the following parameters:Lastly, the gains of the low level, i.e., , were determined by selecting their parameters,
- Desired trajectory. The results presented in this paper are applied using the following Bézier polynomials to obtain the reference velocities and :Through Equations (45) and (46), the reference velocities and were generated according to Table 1. Thus, by using Equation (3), the trajectory to be tracked by the DDWMR in the plane, i.e., , is found. On the other hand, after substituting and in (2), and after some algebraic manipulation, and are found.
- DDWMR, data acquisition, and signal conditioning. This block shows the connections between the DS1104 board and the DDWMR. The voltages , currents , and angular velocities are acquired via two Tektronix P5200A voltage probes, two Tektronix A622 current probes, and two Omron E6B2-CWZ6C incremental encoders, respectively. As can be observed, signal conditioning (SC) is performed in each signal.
3.3. Experimental Results Related to the Controllers
3.3.1. Experiment 1: Results Associated with Abrupt Changes in Loads
3.3.2. Experiment 2: Results Associated with Abrupt Changes in Power Supplies
4. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
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García-Sánchez, J.R.; Tavera-Mosqueda, S.; Silva-Ortigoza, R.; Hernández-Guzmán, V.M.; Sandoval-Gutiérrez, J.; Marcelino-Aranda, M.; Taud, H.; Marciano-Melchor, M. Robust Switched Tracking Control for Wheeled Mobile Robots Considering the Actuators and Drivers. Sensors 2018, 18, 4316. https://doi.org/10.3390/s18124316
García-Sánchez JR, Tavera-Mosqueda S, Silva-Ortigoza R, Hernández-Guzmán VM, Sandoval-Gutiérrez J, Marcelino-Aranda M, Taud H, Marciano-Melchor M. Robust Switched Tracking Control for Wheeled Mobile Robots Considering the Actuators and Drivers. Sensors. 2018; 18(12):4316. https://doi.org/10.3390/s18124316
Chicago/Turabian StyleGarcía-Sánchez, José Rafael, Salvador Tavera-Mosqueda, Ramón Silva-Ortigoza, Victor Manuel Hernández-Guzmán, Jacobo Sandoval-Gutiérrez, Mariana Marcelino-Aranda, Hind Taud, and Magdalena Marciano-Melchor. 2018. "Robust Switched Tracking Control for Wheeled Mobile Robots Considering the Actuators and Drivers" Sensors 18, no. 12: 4316. https://doi.org/10.3390/s18124316
APA StyleGarcía-Sánchez, J. R., Tavera-Mosqueda, S., Silva-Ortigoza, R., Hernández-Guzmán, V. M., Sandoval-Gutiérrez, J., Marcelino-Aranda, M., Taud, H., & Marciano-Melchor, M. (2018). Robust Switched Tracking Control for Wheeled Mobile Robots Considering the Actuators and Drivers. Sensors, 18(12), 4316. https://doi.org/10.3390/s18124316