1. Introduction
Fuel cell-powered vehicles (FCVs) are an important part of the transition toward sustainable transportation, as they use hydrogen to generate electricity, emitting only water vapor as a byproduct. These vehicles are typically powered by proton exchange membrane fuel cells (PEMFCs), which convert hydrogen gas into electricity through an electrochemical process. FCEVs offer several key advantages, including zero emissions, as they produce only water vapor [
1]. They also provide fast refueling times (3–5 min), making them comparable to gasoline vehicles, and they typically offer longer driving ranges than battery electric vehicles (BEVs). FCEVs are more energy efficient than internal combustion engines, with fuel cells converting hydrogen into electricity at over 60% efficiency. They are well suited for heavy-duty applications, such as trucks and buses, where battery weight is prohibitive. Moreover, FCEVs can use renewable hydrogen, making them part of a sustainable energy system [
1,
2]. FCEVs are becoming increasingly popular in several sectors due to their advantages in terms of long range, quick refueling, and zero emissions. Hence, these vehicles are ideal for high-mileage operations, benefiting from the long range and rapid refueling capabilities of FCEVs. FCEVs are also being utilized in heavy-duty transport, including trucks [
3], automatic guided vehicles [
4], and freight vehicles [
5], where their ability to carry larger loads over long distances makes them a practical choice for short- or long-haul trucking. This is particularly relevant as battery electric vehicles (BEVs) face challenges with weight and range limitations in the heavy-duty sector [
6]. In industrial applications, hydrogen-powered forklifts and other equipment are being used in warehouses and manufacturing facilities, offering a sustainable solution with minimal downtime. Moreover, research is underway to explore the potential of hydrogen-powered aviation and marine transport, as well as military applications, where FCEVs’ efficiency and emissions-free operation align with the needs for clean and long-duration operations [
7].
PID control (Proportional–Integral–Derivative control) is a fast and simple-to-apply control used to maintain the desired output by minimizing the error between the reference and the actual value. It achieves this by calculating corrections based on the current error (proportional), the accumulation of past errors (integral), and the prediction of future error trends (derivative). It provides a highly sensitive, stable, and efficient solution for linear systems with small movements. PID control is simple to implement, making it a cost-effective solution in both hardware and software applications. It is widely used in many sectors, from automotive and robotics to manufacturing and aviation. Depending on the application, PID controllers can also be applied to systems in parts such as PD, P, and I. The PD controller is preferred in this study. The PD controller is generally preferred for systems that require fast and stable responses. While the proportional control addresses the current error, the derivative control estimates future error trends and helps reduce overshoot and oscillations. This makes PD controllers particularly effective in applications such as drone stabilization, where fast and smooth adjustments are important. Another advantage of PD controllers is that they are resistant to problems such as integral windup. Since these controllers do not contain integral components, they are easier to implement and perform better for systems with fast dynamics and small steady-state errors. This balance of stability, speed, and ease of use makes PD controllers a practical and efficient choice for many applications.
The DC/DC buck converter is a type of power converter that efficiently converts a higher DC voltage to a lower DC voltage. It works by rapidly turning a transistor on and off and uses an inductor, diode, and capacitor to convert the output to a lower voltage. These converters are widely used due to their efficiency and ability to maintain a constant output voltage despite changes in input or load. In electric vehicles, they help move energy from high-voltage batteries to different subsystems. In addition, due to their thermal performance, compact structure, and high robustness, they are also quite usable for transportation vehicles such as drones. Therefore, in this study, they were used to convert a DC output voltage from a fuel cell to the voltage required by the motors.
One of the most important problems of UAVs is the power consumption problem. The power consumption of UAVs and unmanned aerial vehicles directly affects their flight duration, range, and performance. Most of them are powered by lithium-based batteries with limited energy density. High energy demands from motors, sensors, and other electronic components cause the onboard batteries to deplete rapidly, limiting the ability of UAVs to perform long-term or long-distance missions. Another important factor is the balance between weight and power. While larger batteries can extend the flight time, they also increase energy consumption by creating additional weight. Similarly, payloads such as cameras or delivery items increase weight and reduce efficiency, shortening the flight time. This balance between maintaining a lightweight design and meeting power demands is one of the main challenges in UAV design and implementation. In addition, efficient power management is also required for the increased performance of UAVs. Without proper energy distribution among components, unnecessary power consumption can occur, which can lead to the premature depletion of the energy source. Using batteries as energy also requires extra charging, and slow charging cycles further limit UAV usability. In order to solve these problems, the use of new or additional energy sources, developments in battery technology, the development of smart energy systems, and the use of lightweight materials are becoming very important. In line with all of these factors, the development of fuel cell-powered UAVs using hydrogen as an energy source has begun to be emphasized more in recent years. In this study, the integration of fuel cells into a quadrotor and power consumption analysis are emphasized. FCs are increasingly used in drones and aerial robotic applications due to their ability to deliver high energy density, longer operational times, and reduced emissions compared to conventional battery-powered systems. Hydrogen FCs enable drones to achieve significantly longer flight durations, making them ideal for missions that require extended periods in the air, such as surveillance, mapping, and environmental monitoring. This advantage addresses the primary limitations of battery-powered drones, such as limited energy capacity and long recharging times. The researchers generally worked on studies about fuel cell-powered drones or UAVs after 2020. Hence, the studies on fuel cell usage for aerial applications are limited in the literature, and it is shown that the studies on this topic are going to increase in the next two decades, depending on the development of fuel cell technologies.
The studies are mostly focused on the power systems of air vehicles and the energy management system. Huang et al. [
8] examined the feasibility of fuel cells for high-altitude long-duration drone missions, showing enhanced flight performance and energy efficiency compared to traditional power systems. Boukoberine et al. [
9] proposed an optimized hybrid energy management system using real-flight data to improve endurance and fuel efficiency in persistent drone missions. The energy management in PEM fuel cell–battery hybrids was focused on by Kim and Kang to enhance drone propulsion efficiency, ensuring extended operational time and reduced energy waste [
10]. Alzyod et al. [
11] introduced a multi-phase energy management system that adapts to various mission phases, optimizing power distribution and extending flight time. In another work, Gavrilovic et al. [
12] studied a thermal process during the flight of an FC-powered drone. The thermal regulation in UAVs for long-haul missions, ensuring the stable operation of hydrogen fuel cells, was investigated under challenging atmospheric conditions in this study.
Moreover, Marques et al. [
13] provided a systematic approach to designing hybrid power systems, highlighting their performance benefits in terms of energy density and operational range. Another study about the thermal management of FCs during aerial application was performed by Zakhvatkin et al. [
14]. They proposed an innovative edge cooling system to maintain optimal fuel cell temperatures, improving efficiency during aerial missions. Hassan et al. [
15] summarized the highlights of how fuel cell-powered drones contribute to renewable energy ecosystems, such as wind turbine inspections and solar panel monitoring. Belmonte et al. [
16] worked on a different application of fuel cell-powered drones. The hydrogen fuel cell-powered octocopter was designed for industrial applications, such as inspecting mobile cranes. The study highlighted cost-effectiveness, enhanced flight duration, and reduced environmental impact compared to conventional battery-powered systems. For other real applications, Zakhvatkin et al. [
17] explored techniques to recover the water produced as a byproduct of hydrogen fuel cells during aerial missions. The findings emphasize the potential for lightweight water management systems that improve drone efficiency and autonomy during extended flights. The use of machine learning to optimize power management in drones powered by fuel cells was also studied. The study performed by Sood et al. [
18] demonstrated significant improvements in energy efficiency, ensuring optimal fuel cell performance under dynamic operating conditions. Prajapati and Charulatha [
19] focused on the design and development of a quadcopter powered by PEM fuel cells, focusing on achieving lightweight construction and efficient energy use. The findings show that PEM fuel cells can significantly enhance flight duration and operational performance. A logistics system using hydrogen fuel cell-powered drones was modeled by Ren et al. [
20], and they analyzed how variable speeds and time constraints affect routing efficiency. The study highlighted the potential for integrating fuel cells into logistics to improve delivery reliability and reduce carbon footprints. In another application area, the dynamic response of PEM fuel cells in drones used for agricultural pesticide spraying was analyzed by Oh et al. [
21]. This work emphasized the importance of responsive power delivery and load management for achieving reliable and efficient operations in agricultural applications.
Another paper examines the impact of key design parameters, such as weight distribution and power density, on the performance of multirotor drones powered by fuel cells [
22]. Apeland et al. provided insights into optimizing drone designs for better endurance and payload capacities in this study. Hyun et al. [
23,
24] worked on creating a model for hybrid-powered sustainable drones and designing power management strategies for improving the flight performance of the drones. In their first study, an analytical model was presented to demonstrate the system’s ability to enhance flight duration, reduce emissions, and support a wide range of operational scenarios. In the second paper, advanced power management algorithms for hybrid fuel cell drones to optimize flight performance were investigated, and the findings show that these algorithms significantly improve energy efficiency, extend flight times, and enhance reliability during diverse mission profiles. Apeland et al. [
25] analyzed the feasibility of integrating hydrogen fuel cells into multirotor drones. The results showed the potential for increased payload capacity, extended flight durations, and improved energy sustainability while addressing design and operational challenges. Chia et al. [
26] focused on the development of a heavy-lift multirotor drone powered by hydrogen fuel cells, designed for industrial applications. The results emphasized the drone’s ability to carry substantial payloads with extended flight endurance, showcasing the scalability of fuel cell technology. On the other hand, Kim et al. [
27] suggested innovative methods for active current sharing and source management in hybrid systems. It has been shown that improved performance and power density in drones can be achieved by ensuring efficient energy distribution between fuel cells and batteries during high-demand operations. Boukoberine et al. [
28] designed advanced energy management strategies for hybrid fuel cell drones, emphasizing hydrogen savings. Real-flight data validate the strategies’ effectiveness in enhancing flight endurance and operational efficiency. Wang et al. [
29] studied the performance evaluation of a hybrid-powered small drone during specific missions under some constraints, and their results showed the FCs’ advantages in extending operational range and overcoming battery limitations.
Shen et al. [
30] reviewed technological advancements in hydrogen fuel cell drones, emphasizing their advantages in flight time and environmental impact. Also, the readers are referred to another review paper, which was written by Day and Poumohave [
31], about the latest development in PEMFCs for aerial applications. This paper is a comprehensive review of PEM fuel cell advancements, focusing on their application in hydrogen-powered drones. It discusses breakthroughs in efficiency, durability, and integration, positioning fuel cells as a key enabler of sustainable UAV technologies.
In addition, one of the methods that affects power consumption in UAVs and ensures the most efficient selection of power management parameters is using optimization techniques. Determining both controller and design parameters with optimization techniques helps minimize energy consumption while maintaining and improving system performance. These estimation and determination methods, which are also important for operating the power management system at peak performance, have become an important requirement for increasing energy efficiency since power consumption directly affects performance and availability. They also provide smarter resource usage by dynamically adjusting how and when components use power. In addition to efficiency, minimizing power consumption through optimization helps increase overall system reliability and life by reducing heat and stress on components. For energy-constrained platforms such as UAVs, this means longer operating times, lower maintenance costs, and safer, more effective missions. Therefore, optimization is an important factor in creating sustainable, high-performance systems. In the literature, there are studies on reducing energy consumption and increasing performance with hardware-based optimization, software- and algorithm-based optimization, system-level optimization, and application-specific optimization methods. Hardware optimization is provided by methods such as using less power-consuming hardware or cutting off the power of unused equipment to reduce energy leakage [
32]. In software and algorithm optimization, optimization is aimed at by considering task distribution, energy management-based route creation, and load balancing [
33,
34]. Further optimization can be performed on the system level. In this, Model Predictive Control, heuristic and metaheuristic algorithms, and Machine Learning-Based Optimization are used to ensure that the system makes decisions and, thus, energy efficiency-increasing decisions are made in line with all the factors [
35,
36]. Finally, power efficiency can be increased with application-specific techniques. Flight planning can be performed according to the weather conditions, flight altitude, types of sensors used, and operating status [
37]. In this study, a system-level-based optimization algorithm was developed to reduce energy consumption. System-level optimization attempts to minimize energy and power consumption by taking a holistic view of how a system operates. Unlike hardware- or software-specific techniques, system-level methods coordinate the behavior of the entire system to make energy-efficient decisions. Advanced approaches include heuristic and metaheuristic algorithms such as Grey Wolf Optimization (GWO), Genetic Algorithms (GAs), Particle Swarm Optimization (PSO), and Simulated Annealing. These are highly effective methods for solving complex, nonlinear energy optimization problems that may involve multiple variables and constraints. In addition, machine learning-based techniques enable systems to make correct decisions by leveraging previous operations and adapting to new conditions over time for better energy management. System-level optimization is of great importance in dynamic and energy-constrained environments such as drones, smart grids, and autonomous systems. These techniques not only reduce overall power consumption but also increase system stability and improve performance.
These studies collectively highlight the progress in fuel cell technologies for drones, focusing on energy management, hydrogen efficiency, and application-specific performance improvements. They underline the role of fuel cells in extending drone capabilities for various industrial, agricultural, and environmental missions. This paper extends the other studies by using an optimization algorithm for DC/DC converter and flight controller designs to maximize the route-tracking performance while minimizing the energy consumption of the PEMFC-powered quadrotor.
In this study, previous studies are extended by investigating the fuel cell-powered quadrotor while considering and designing the voltage flow from the fuel cell to the quadrotor rotors. The design of the DC/DC converters and controllers uses two optimizers, which have objective functions depending on the route/voltage-tracking errors and power consumption of the system. These optimizers work simultaneously in the system, and PSO- and GWO-based metaheuristic algorithms are used to optimize the controllers’ parameters and the values of the converters’ components, such as R, L, and C. This paper extends the other studies by using PSO and GWO algorithms for controller and converter designs for PEMFC-powered quadrotors. Moreover, it consists of the design of the DC/DC buck converters, which are used to manage energy transfer between the fuel cell and the quadrotor system. The two-optimizers-based system design for the PEMFC-powered quadrotor system is new in the literature. These two optimizers minimize power losses while maintaining stable flight dynamics, and the optimization algorithms ensure that the quadrotor operates within optimal energy efficiency ranges under varying mission profiles and environmental conditions. For this reason, the parameters are determined by using two metaheuristic methods depending on the route/voltage-tracking errors and power consumption. The PSO and GWO algorithms-based optimizers are used in this study because they are nature-inspired metaheuristic algorithms known for their simplicity, requiring minimal parameter tuning, better performances for complex systems, and their ability to effectively balance exploration and exploitation. They demonstrate strong optimization performance, often outperforming traditional methods like the GA (Genetic Algorithm) and ACO (Ant Colony Optimization) in terms of accuracy and convergence speed.
The mathematical models of each part of the full FCQuadrotor system are described in
Section 2. In
Section 3, the developed proposed methodology, which consists of GWO-based PD for path tracking, the I control for the voltage tracking of converters, and the selection of components of converters, is described. The optimized parameters for controllers and converters and the observed performance results are given in
Section 4. Moreover, the discussions of these results are carried out in the same section. Finally, the key results, the importance of these results, and future studies are given in
Section 5.
4. Simulation Results and Discussion
In this study, the system dynamics for trajectory control is considered as the control of translational, rotational, and angular velocities. The altitude (z) and roll, pitch, and yaw motions (
,
) are controlled by the thrust force (
) and the torques (
), respectively. Therefore, the parameters of the four PID controllers, one for the control of the motion at Z axes, three for the control of the roll/pitch/yaw rotations, are adjusted to ensure minimum error and minimum energy consumption by using the GWO and PSO algorithms. The model parameters and their values for the quadrotor are shown in
Table 8.
Firstly, the optimal values for the controllers and DC/DC converters are determined for different paths. The optimizers are tested for different combinations of x, y, and z trajectories and the average values of the PD parameters and the DC/DC converter parameters are used for other test scenarios. By using this test procedure, the optimal values for the PD controllers by using GWO and PSO algorithms are shown in
Table 9 and
Table 10, respectively.
After applying these algorithms, the values in the table were obtained for the minimum trajectory tracking error and minimum energy consumption. Similarly, the obtained DC/DC converter design and controller parameters are given in
Table 11 and
Table 12 for GWO- and PSO-based Optimizer II. Especially for electronic equipment, since it is difficult to find resistance, inductance, and capacitance at the values determined, equipment close to these values should be selected in order to minimize the trajectory tracking error, voltage-tracking error, and power consumption. For example, when the table is examined, the circuit design can be made by selecting 60
as the resistance closest to the 58.5593
value given for the first converter. In addition, the equipment can be used in series and parallel connection circumstances to find elements close to these values. These circumstances are valid for R, L, and C equipment.
One of the test trajectories used to obtain the data determined by Optimizer I and Optimizer II using the GWO and PSO algorithms is given in
Figure 8a. Step reference inputs were applied for the X and Z axes at certain amplitudes in a 15 s simulation. The results show that our quadrotor reaches the desired X and Z values at the end of 15 s successfully. The PSO-based algorithm reaches the desired value later than the GWO-based algorithm. On the other hand, the PSO-based algorithm has a smaller overshoot than the other one. The time domain criteria of the used algorithms during this motion are given in
Table 13. It can be observed that the rise time, settling time, and peak time are shorter for GWO-based optimization for both X and Z axis motion. The results show that the values of the parameters do not allow the overshoot at the Z-axis motion, but they lead to overshoot at the X-axis. The GWO algorithm has 24.707% more overshoot than the PSO algorithm. In addition, the total power consumption obtained for this movement is given in
Figure 8b. The total power consumptions by motors for this motion at the X and Z axes are 150.4600 W/s and 168.8411 W/s for GWO and PSO, respectively. It can be seen that the power consumption of the motors is smaller when the parameters of the controllers and converters are determined by the GWO algorithm. The GWO algorithm shows 10.8866% less energy consumption than the PSO algorithm for this motion. This means that the algorithms affect the energy and power consumptions of the motors significantly.
The mean total power consumptions by the motors for this basic motion in
Figure 9 are 217.1902 W/s and 264.8288 W/s for GWO and PSO algorithms, respectively. It can be seen that the power consumption of the motors is smaller for the GWO algorithm-based design and control for this motion. This shows that energy saving is approximately 18% for the controller and design values obtained with GWO. It can be seen from both routes that the energy saving performances of these optimization techniques-based controller and converter designs vary depending on the route.
Testing Scenario
The performance of the quadrotor was observed for a new test scenario. As a result of this scenario, the tracking performance of the quadcopter is shown after the performance of the controllers and the DC/DC converters by optimizing with Optimizer I and Optimizer II for different trajectories. The energy consumption performances of the fuel cell and the voltage-tracking performances of the DC/DC converters were analyzed during this motion. The new testing scenario is shown in
Figure 10.
The drone starts to motion at 2.5th seconds, and it tries to reach point A, firstly. Then, it changes its z direction and goes to point B. The drone is at point B approximately 25 s after starting the motion. Then, similar to the previous motion, the drone reaches point C at the end of the motion. The duration of the total motion is 39 s, and the quadrotor moves from A to C during this period. During this scenario, the quadrotor changes its position on the
and
axes, and the
axis motion is always zero. Firstly, the movements of the quadrotor at the
,
, and
axes are analyzed. The tracking performances at these coordinates are shown in
Figure 11. Before analyzing the results, it can be mentioned that the quadrotor starts its motion at a 1 m altitude in the
direction. The motion in
Figure 11c shows that the variation at the
axis is positive. This means that the positive
motion of the quadrotor is denoted by its downward movement of it.
It can be seen that the designed optimization-based control strategy shows very successful performances in both frames. The intelligent controller with optimized control coefficients shows better performance in the direction than the direction because it is observed that reaching the reference value in the direction needs more time, and it has an overshoot. We need to allow this overshoot because the other important point for us is energy consumption performance. By using these values, the drone has some overshoots in the x direction, but the energy consumption of the drones is minimized. The total power consumptions during this motion are calculated as 168.0015 W/s and 179.9070 W/s for the GWO and PSO algorithms, respectively. It can be seen that the system with the GWO algorithm-based Optimizer I and Optimizer II shows better energy efficiency and route-tracking performances. The energy consumption of the system becomes 7.0865% less for the GWO-based optimized system than the PSO-based optimized system. This means that a more efficient and stable system is obtained when the GWO algorithm is used.
In addition, the angular movements of the quadrotor, such as yaw, pitch, and roll, are of great importance during the movement made. For this route, the quadrotor was given a reference to keep all the angular movement angles at zero. In the quadrotor system, where the altitude, yaw, pitch, and roll angles are generally tried to be kept constant, it is also very important for the system to follow these inputs throughout its movement. The yaw, pitch, and roll movements of the quadrotor are shown in
Figure 12.
As seen in the figure, the variations are observed in the angular rates when the quadrotor changes direction in the
and
directions along its route between different points.
Figure 12a shows the yaw motion of the quadrotor, and the reference value of the yaw angle is 0° during this motion. The results show that the yaw angle,
, varies at very small angles. Its value changes between
rad and
rad. This means that the system shows very good performance for controlling the yaw motion. The reference values of the pitch and yaw angle are determined depending on the motion at the
and
axes. The variation in the pitch angle is shown in
Figure 12b. The pitch motion shows a similarly good tracking performance, but the magnitude of the motion along the
axis is greater than the other angular motions of the quadrotor. The pitch angle varies between −0.12 rad and 0.06 rad during the motion. The results of the GWO-based optimized system show very good performance for tracking the desired pitch angle. It is seen that the PSO algorithm has difficulty in tracking the reference signal after the decrease in the angle, and the settling time becomes longer in comparison with the GWO algorithm. However, a similar performance was obtained in tracking the roll angle compared to the yaw angle. The overshoot for the PSO algorithm was higher than for GWO. This shows that PSO is more successful in reducing the oscillation along the
axis. The sufficient tracking performances between the desired and actual values in both the translational and rotational motion of the quadrotor show the success of the developed optimization-based design of the PEMFC-powered quadrotor system.
Figure 13 shows the desired thrust force and torques during the motion of the quadrotor. The GWO- and PSO-based optimizers are compared depending on the desired force and torque because these forces and torques ensure that the quadrotor makes the right movements along the specified path. The trust force, which controls the take-off and landing movements along the Z axis, is analyzed in
Figure 13a. The results show that the thrust forces are very close to each other for both techniques. However, the GWO-based optimized system has more oscillation after each pick in the total thrust, and PSO shows more stable behavior for the thrust force.
Figure 13b shows the variation in the roll torque,
, as a function of time for this route for GWO- and PSO-based optimized systems. The comparison shows that the roll torque for the GWO-based optimized system is greater than the PSO-based optimized system.
changes between −0.04 Nm and 0.04 Nm for the GWO-based system, but it varies between
and
for the PSO-based system. This means that the necessary torque is very small in comparison with the first system, and the roll motion is performed with less energy by using the PSO-based optimized system. Similarly, the variation in the pitch torque,
, is presented in
Figure 13c. It changes between −1.2 Nm and 0.2 Nm during the motion. Similarly to thrust force variation, the picks are observed at certain times, when changes in direction start to begin. The results show that the pitch torques are very close to each other for both optimization techniques.
After calculating the required force and torque to obtain the desired movements, the voltages that will create these forces and torques must be fed to the motors. These forces and torques are converted into voltage and fed to the DC/DC buck converters as a reference input by the PD controller. The DC voltage fed from the fuel cell is reduced to the desired voltages by the DC/DC buck converters and fed to the motors to create the necessary thrust force and torques. As mentioned in the above sections, the switching process is performed in the DC/DC buck converter. In this study, the switching frequency is selected as 10,000 Hz (10 KHz). As a result of this switching process, a signal with high oscillation is formed at the converter output, which causes oscillations in the relevant forces and torques. For this reason, it is of great importance to reduce the voltage coming from the fuel cell and reduce it correctly to the level required by the motors. If the required voltages are fed to the motors, then the motors create the required control inputs such as total thrust and other rotational forces.
Figure 14 shows the tracking performance between applied desired and actual thrust forces on the quadrotor for the GWO-based optimized system. The results show that the error is less than 1%, and it shows that the GWO-based optimized system shows great performance for tracking the voltage and thrust force. The thrust force required by the motors for the quadrotor is successfully applied with this satisfactory tracking performance.
Figure 15 and
Figure 16 show the variations in the desired/actual roll and pitch torques as a function of time, respectively. When the tracking performances in both figures are compared, it is seen that the roll and pitch torques are also successfully tracked for the GWO-based optimized system. Similar performance is observed for the yaw torque, but it is not given graphically because its change over time is similar to the roll torque. Accordingly, the GWO-based optimized system exhibits good performance in terms of calculating the necessary forces and torques for maximum route-tracking performance with minimum energy and applying these torques to the quadrotor. The GWO technique has made a very successful determination, while the Optimizer I PD controller calculates the necessary forces and torques, and the Optimizer II DC/DC converters calculate the voltages that will create the necessary forces and torques after determining the I controller and component values.
After that, the thrust force- and torque-tracking performances are investigated for the PSO-based optimized system.
Figure 17 and
Figure 18 show the thrust force variation and pitch torque variation for the desired and actual values. Only thrust force and pitch torque graphs are given for the PSO-based optimized system because similar tracking performance was achieved with the GWO-based optimized systems. This shows that Optimizer I and Optimizer II in the PSO-based optimized system successfully tuned the controller parameters and the DC/DC converter component values, such as in the GWO-based optimized system. With this successful determination process, maximum route tracking was achieved with minimum energy consumption by the PSO algorithm-based optimizers.