Principles and Methods of Servomotor Control: Comparative Analysis and Applications
Abstract
:1. Introduction
2. Servomotors: Structure, Operating Method, Types, Main Characteristics
2.1. Structure and Operating Method
- 1.
- PWM generates pulses of varying width (duration) with different periods.
- 2.
- To control the speed of the servomotor, the width of the pulses is changed, allowing the regulation of the power supplied to the motor.
- 3.
- Control of the position of the servomotor is possible using feedback. To adjust the position, the voltage applied to the motor, after the PWM signal is converted, is compared to the desired voltage, resulting in a control signal.
- 4.
- PWM is also used to regulate a smooth trajectory of movement from one point to another for the servomotor.
- 5.
- In addition to PWM, PID controllers and microcontrollers are applied to enhance the efficiency of regulation and control.
2.2. Servomotor Types
2.3. Servomotor Characteristics
- Torque (shaft force).
- Operating voltage.
- Rotational speed.
- Maximum rotational angle.
- Dimensions and weight.
- The torque indicates the rate of acceleration of the output shaft and its ability to overcome the resistance to the rotation of the load. The ability to realize the full potential of the servomotor is directly proportional to the torque.
- The rotation speed of the servomotor indicates the time it takes for the output shaft to turn by 60°. For example, a rotation speed of 0.07 s means that the servomotor shaft will turn by 60° in 0.07 s. The working voltage of the servomotor power supply affects both the rotation speed and the torque.
- The maximum rotation angle indicates the angle to which the output shaft of the servomotor can turn. In modern production, servomotors with continuous rotation are used, meaning that the maximum rotation angle is 360°. However, in some mechanisms, motors with smaller rotation angles, such as 120°, 180°, 270°, etc., are used.
- The dimensions of the servomotor affect the choice of the motor used to produce the mechanical structures in which they will be installed. This parameter is important for devices where speed, lightness, and compactness are crucial, such as drone models.
- Of the technical characteristics mentioned above, only three directly influence the control of servomotors: torque, rotation speed, and rotation angle. Depending on the selected control mode, the control parameter of the servomotor will differ.
3. Basic Principles of Servomotor Control
3.1. Digital Signal Processing in Servomotors
- Precision control. Digital signal processing allows the use of advanced control algorithms that enhance control accuracy. This is achieved as digital controllers can receive, process, and respond to changes in input signals in real time, skipping many stages in tuning the control action.
- Adaptive control. Since servomotors operate in dynamic environments with changes in load and the occurrence of various errors, the principle of digital signal processing helps integrate adaptive control for servomotors. This type of control neutralizes disturbing influences in real time and adjusts control depending on new conditions, thus improving the performance and efficiency of servomotors.
- Noise filtering. In real production environments, servomotors are subject to interference and noise from other devices, production line structures, additional loads, etc. The principle of digital signal processing allows the identification and neutralization of noise to maintain the accuracy of the control signal at the required level.
- Network interaction and communication. The communication of servomotors within a unified system is facilitated by the principle of digital signal processing. Coordinating actions, adjusting control, and other networking capabilities enable synchronized control of servomotors in complex manufacturing processes, such as robotic technological lines.
- Computational power. Implementing digital signal processing algorithms requires significant computational resources. To ensure real-time signal processing, it is necessary to accurately calculate the processing time and controller signal responses to fully realize the potential of the entire control system.
- Integration with existing control systems. Integrating control based on digital signal processing with other systems may pose challenges due to compatibility issues and the need for proper design of the control interface.
3.2. Feedback Control Principle in Servomotors
- Sensor. In the case of servomotors, encoders or potentiometers are mainly used to continuously track the speed or position of the motor’s output shaft.
- Controller. This is the part responsible for processing feedback signals and generating control actions through an integrated controller to the motor. Most control systems use a PID controller for its speed and minimization of output error.
- Desired output signal. This is the target value that the motor control system aims to achieve. Any parameter can be taken as the desired value, forming the basis for the control system.
- Accuracy. Continuous control of the output value allows feedback systems to achieve high levels of maintaining the desired output signal.
- Dynamic response. Feedback control systems provide a quick response to changes in load, disturbances, or noise, allowing servomotors to be used in changing conditions.
- Reduction in static error. The controllers used in these systems minimize static error and reduce the transient process time.
- Stability. The closed-loop control increases the overall stability of the control system.
3.3. Vector Control Principle in Servomotors
- Coordinate transformation. Vector control relies on transforming currents into a coordinate system using Park and Clarke transformations, simplifying the control task and optimizing the motor’s operation.
- Current control. Precise control of currents is crucial. Independent torque control allows for minimizing losses and improving efficiency.
- Use of PI controllers. Using controllers of this type helps reduce control errors, enhance responsiveness, and provide continuous support for the desired motor performance.
- Improved dynamic response. Fast and accurate motor control enables instant dynamic response.
- Reduction of torque disturbances. This significantly reduces torque fluctuations, ensuring smooth motor operation.
- Increased efficiency. Optimization of motor currents and minimization of losses lead to improved overall motor efficiency.
- Increased power density. The design of more compact and lightweight servomotors with higher power can be achieved, making them suitable for use in limited spaces.
3.4. Integration with Industry 4.0 Principle in Servomotors
- Internet of Things (IoT) connectivity. Servomotors connected to Industry 4.0 are part of a unified Internet of Things network. This connection allows real-time monitoring of motor conditions, collecting a wealth of data such as operational parameters, temperature, vibration, etc.
- Data analysis and predictive maintenance. Modern methods of data analysis allow the collection of data streams from servomotors into a unified database. This systematic organization of data enables the prediction of motor behavior and planning maintenance and repairs, thus avoiding unjustified equipment downtime.
- Remote monitoring and control. Servomotors connected to Industry 4.0 can be remotely controlled. This is beneficial in large-scale manufacturing where engines are distributed over a large area, requiring remote control and monitoring of engine conditions for timely management adjustments without on-site intervention. Remote monitoring reduces delays and increases overall production efficiency.
- Standardization. The use of specific standards, such as Open Platform Communications Unfired Architecture (OPC UA), facilitates the integration of servomotors into a unified network with other production components.
- Adaptive control. Integration with Industry 4.0 allows the development and use of flexible servomotor control systems. Control systems can adapt promptly to changing conditions and respond to disturbances, thereby reducing setup time and downtime.
- Energy efficiency. By connecting servomotors to a unified network using Industry 4.0 protocols, it is possible to reduce the energy consumption of production and optimize processes to use a more logical distribution of energy resources.
4. Control Methods of Servomotors
4.1. Current Control
- High precision in regulating torque.
- Quick response to changes. Current control allows easy adaptation to external changes.
- Energy savings. Efficient energy use is due to the adaptive properties of current control.
- Impact on positioning accuracy. Strict control of torque allows controlling the position of the shaft in the final position.
4.2. Two-Loop Control
- Precision in positioning.
- Stability of the speed control system.
- Dynamic response. Interaction between both loops allows the servomotor control system to respond promptly to changes.
- Integration with other methods. A two-loop control-based system easily integrates with control systems based on other methods, such as field-oriented control.
4.3. Field-Oriented Control
- Precision control. This method allows for increased precision in controlling both the torque and speed of the servomotor.
- Low noise and vibration levels. FOC reduces mechanical and electrical noise in the operation of the servomotor.
- High energy efficiency. The method reduces losses and allows for increased energy utilization efficiency.
4.4. Fuzzy-Logic Control
- Identification of input conditions: In the case of a servomotor, the input variables are typically the position or speed of the output shaft.
- Definition of fuzzy rules: Creating fuzzy sets with different degrees of membership for each input variable and establishing rules that link the conditions into a unified system.
- Fuzzy logical inference: Applying the defined rules to each input value.
- Aggregation: Combining the applied rules to determine the control action.
- Defuzzification: Converting the overall control action rule into a specific value that is then applied to the servomotor.
4.5. Programmable Control
4.6. Other Modern Methods
5. Comparison of Servomotor Control Methods
- Speed is necessary to evaluate the responsiveness of the control system to incoming disturbances and changes in input parameters (1—low speed, 5—high speed).
- Accuracy is the primary parameter for systems based on positioning (1—low accuracy, 5—high accuracy).
- Adaptability is responsible for the degree of adaptability of the control system to changing conditions (1—low flexibility, 5—high flexibility).
- Energy efficiency indicates the amount and quality of consumed energy (1—increased energy consumption, 5—low energy consumption).
- Popularity not only indicates the degree of method dissemination in the industry but also access to reliable information on creating a control system based on a particular method (1—low popularity, 5—high popularity).
- Ease of implementation is important for assessing the complexity of developing and maintaining the created control system (1—easily implemented, 5—difficult to implement).
- Material resource costs influence the economic factor of developing a control system, its costliness, and payback period, considering efficiency and performance aspects (1—high costs, 5—low costs).
6. Fuzzy Logic Control of the Hirata Cartesian Robot Servomotor
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Characteristic | Value |
---|---|
Torque | 2.4 Nm |
Input (operating) voltage | 116 V AC |
Rotational speed | 3000 r/min |
Output power | 0.75 kW |
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Autsou, S.; Kudelina, K.; Vaimann, T.; Rassõlkin, A.; Kallaste, A. Principles and Methods of Servomotor Control: Comparative Analysis and Applications. Appl. Sci. 2024, 14, 2579. https://doi.org/10.3390/app14062579
Autsou S, Kudelina K, Vaimann T, Rassõlkin A, Kallaste A. Principles and Methods of Servomotor Control: Comparative Analysis and Applications. Applied Sciences. 2024; 14(6):2579. https://doi.org/10.3390/app14062579
Chicago/Turabian StyleAutsou, Siarhei, Karolina Kudelina, Toomas Vaimann, Anton Rassõlkin, and Ants Kallaste. 2024. "Principles and Methods of Servomotor Control: Comparative Analysis and Applications" Applied Sciences 14, no. 6: 2579. https://doi.org/10.3390/app14062579
APA StyleAutsou, S., Kudelina, K., Vaimann, T., Rassõlkin, A., & Kallaste, A. (2024). Principles and Methods of Servomotor Control: Comparative Analysis and Applications. Applied Sciences, 14(6), 2579. https://doi.org/10.3390/app14062579