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Article

Series-Hybrid Powertrains: Advancing Mobility Control in Electric Tracked Vehicle Technology

FNSS Savunma Sistemleri A.Ş., 06830 Ankara, Turkey
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Author to whom correspondence should be addressed.
World Electr. Veh. J. 2024, 15(2), 47; https://doi.org/10.3390/wevj15020047
Submission received: 29 December 2023 / Revised: 24 January 2024 / Accepted: 31 January 2024 / Published: 2 February 2024

Abstract

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This work focuses on developing a mobility control system for high-speed series-hybrid electric tracked vehicles, which operate with independent traction motors for each track. The scope of this research includes modeling a series-hybrid powertrain specific to military tracked vehicles and conducting an in-depth analysis of its dynamic behavior. Subsequently, this study conducts a critical review of mobility control approaches sourced from the literature, identifying key techniques relevant to high-inertia vehicular applications. Building on foundational models, this study proposes a robust closed-loop mobility control system aimed at ensuring precise and stable off-road vehicle operations. The system’s resilience and adaptability to a variety of driving conditions are emphasized, with a particular focus on handling maneuvers such as steering and pivoting, which are challenging operations for tracked vehicle agility. The performance of the proposed mobility control system is tested through a series of simulations, covering a spectrum of operational scenarios. These tests are conducted in both offline simulation settings, which permit meticulous fine-tuning of system parameters, and real-time environments that replicate actual field conditions. The simulation results demonstrate the system’s capacity to improve the vehicular response and highlight its potential impact on future designs of mobility control systems for the heavy-duty vehicle sector, particularly in defense applications.

1. Introduction

Tracked vehicles are essential for various sectors, including the automotive industry, defense, construction, and agriculture, due to their superior off-road capabilities. The recent shift towards hybrid electric drive systems, similar to those in wheeled vehicles, has gained momentum thanks to the advantages they offer. Sivakumar’s study states that the hybridization of military vehicles offers significant benefits, including improved fuel efficiency, enhanced drivability, and silent running, yet faces considerable development challenges due to the demand for robust and environment-resistant components [1]. Many studies agree that adding electric power to military vehicles could make them quieter and work better, while also providing extra electric power when needed, as summarized in a study that introduces a new hybrid power system for these vehicles that aims to cut down on weight and use less fuel without compromising on how well the vehicle performs [2]. Furthermore, the adaptation of series-hybrid drives to tracked vehicles implies a need for distinct controller requirements: a power management algorithm for effective power distribution among the power sources (battery and generator set) and a mobility control algorithm for independent motor operation to achieve the desired motion control variables, including sprocket velocity and track speed differential during maneuvers. It is also crucial to operate these systems within a region that ensures robustness and optimal performance.
FNSS, a global leader in the land systems sector, is at the forefront of this innovation, not only producing wheeled and tracked armored combat vehicles, turrets, and engineering vehicles, but also exploring hybrid powertrain technologies [3]. The focus of this study revolves around the hybridization of an armored tracked FNSS vehicle named KAPLAN HYBRID, as shown in Figure 1. This work was presented by Çeliksöz at the EVS36 symposium in Sacramento, USA, in June 2023, together with the publication of a conference paper in which the development of a control system for the vehicle is focused on [4]. This paper builds upon the conference paper, providing an extension that details the development of a mobility control system specifically tailored for FNSS’s series-hybrid tracked vehicles. The approach commences with the modeling of vehicle dynamics and a hybrid powertrain using MATLAB Simulink, followed by a review of existing mobility control strategies detailed in the literature. Subsequently, in a simulated environment, a robust closed-loop mobility control system is designed and tested, while the power management system is analyzed as a black-box model that sets instantaneous traction power limits to ensure clarity and maintain focus on mobility controller development. The system’s robustness is validated by simulating the vehicle model against diverse dynamic traction power constraints in various scenarios.
Before delving into the details of this work, it is essential to note that the current literature documents a range of control methodologies for hybrid systems. In terms of dual independent motor-driven tracked electric vehicles, Zhang et al. studied an improved steering control utilizing a model predictive control approach, leading to efficient adherence to specified speed and turn rates [5]. Their research demonstrates the potential to enhance vehicle stability under varied driving conditions through an intelligent application of predictive control algorithms. Zeyu et al. implemented a neural network combined with a PID algorithm to refine the vehicle’s steering control [6]. Even though the traction motor torques are initially defined by the neural network, the introduction of PID adjustments accommodates variable terrain coefficients. Hu et al. discussed a dual-motor drive strategy that inherently computes torques for a predetermined target turning radius, employing a PID controller to achieve the radius more rapidly [7]. Additionally, Pei et al. proposed a torque fuzzy compensation control strategy to enhance steering execution, where torque distribution is regulated by applying direct multipliers derived from fuzzy logic [8]. Summary of the corresponding study is presented in Figure 2.
In their review of electric tracked vehicle mobility, Kotiev et al. address the complexities of achieving balanced torque in high-speed scenarios, particularly through individual drives on each sprocket [9]. Traditional methodologies are determined insufficient for accurate analysis, causing the authors to incorporate neural networks and simulation tools to better predict the thrust requirements for various steering conditions. Their work emphasizes sophisticated design and testing protocols in the realm of advanced electric vehicle systems.
Alongside independent dual-motor drive studies, researchers in the tracked EV community have also suggested power coupling drive solutions, in which mobility is improved using a transmission between left and right traction units. Zhai et al. introduced a steering stability control methodology that significantly enhances handling stability and safety for high-speed tracked vehicles equipped with a four-motor distributed drive system [10]. This method utilizes a steering coupling system and a direct yaw torque control strategy to optimize torque distribution, ensuring improved steering performance under various conditions. In their subsequent work, Zhai and co-authors address a pivotal aspect of electric tracked vehicle design, focusing on handling behavior during dynamic steering of a dual motor drive system [11]. Their research articulates the requirements of dual motors for torque and power for effective maneuverability, leading to the conceptualization of a new steering system. An investigation by Huang et al. into the dynamics of dual-motor drive tracked vehicles during high-speed steering proposes a novel electromechanical coupling device coupled with an optimized torque distribution control approach, resulting in a significant improvement in power output and steering performance [12]. Zhai and his team, furthermore, have devised a power coupling steering system that effectively counters insufficiencies in motor torque and power during differentiated steering demands [13]. The system’s capability has been rigorously validated through simulations, demonstrating its effectiveness in maintaining vehicle stability and enhancing maneuverability, particularly in steering scenarios that historically placed substantial demands on engine torque and power.
Overall, a review of the literature indicates that steering ability could potentially be synthesized and augmented through the application of either advanced closed-loop control software or simpler software assisted by an optimized transmission mechanism. This work will focus on the development of control software using the former solution for dual independent electric drive.
Research extends the domain of knowledge by developing a special mobility control system for FNSS’s specific series-hybrid electric tracked vehicle. Emphasizing technological innovations in hybrid drive systems for armored combat vehicles, this work contributes insights that improve the understanding and application of these systems, setting a foundational model for further study and practical deployment in the sector. Our principal contributions and conclusions underscore technology’s progression in hybrid drive systems and exemplify their potential for robust, real-world functionality in military vehicle applications. Moreover, this study provides a comprehensive evaluation of the system’s performance under a variety of combat scenarios, ensuring that vehicles are equipped to handle diverse and challenging terrains. The discussions included are not limited to theoretical assessments; they also present insights from extensive field tests that enhance the practical feasibility and dominance of the hybrid system.

2. Materials and Methods

Plant and control system models are deliberately designed to further research initiatives and assess an algorithm’s performance with a variety of control inputs and driving cycles. Plant modeling incorporates power sources, the traction system, and the vehicle’s framework, whereas the control system is explored in terms of power management and mobility control systems. These modeling activities are carried out distinctly for plant and control systems, and this division is to enable the examination of diverse vehicle configurations and powertrain systems. After each section is individually shaped, they are then unified to construct an integrated model depicted in Figure 3. A more detailed explanation of each model is provided in the following sections, offering a deeper insight into how each component functions within the entire system.

2.1. Modeling the Plant: Hybrid Electric Tracked Vehicle

In this section, attention is given to the modeling process for the plant of the hybrid electric tracked vehicle. The focus is on the representation of hybrid electric propulsion systems specific to tracked vehicles and on modeling techniques that capture the dynamic relationships between the traction system’s components and the vehicle’s overall architecture. Furthermore, power sources are briefly defined, even though the scope of this work is powertrain and mobility of the vehicle rather than energy management.

2.1.1. Electric Traction System

The electric traction system, which is presented in a simplified schematic in Figure 4, is modeled through a composite approach that brings together electric motors, gearboxes, and friction brakes connected to left and right sprockets. This configuration is carefully constructed to accurately reflect the system’s mechanical and electrical interactions, ensuring that the model provides a realistic representation of vehicle dynamics.
In this configuration, e-motors are modeled as a source of torque featuring a unity transfer function, which means an absence of delay in torque delivery upon request, as long as it does not exceed the motor’s torque reserve. To preserve this characteristic, the system utilizes the smallest value between the requested torque and the available torque at the current shaft speed, as illustrated in Equation (1). Subsequently, the torques generated by the motors are scaled by the gear ratio and modified for gearbox efficiency.
Tout,Motor = min{Tavail,Motor (w), TRequest}
In Equation (1); Tout,Motor, Tavail,Motor (w), and TRequest represent motor torque output, speed-dependent available motor torque, and requested torque via mobility control system, respectively. Speed-dependent available motor torque is obtained from the full load curve, which represents the speed–torque characteristics of the electric motor. Even though the full load curve is distinct in electric motors, it displays a standard trend: a constant torque at lower speeds transitioning to a constant power at higher speeds. This pattern is elaborated on in Aiso’s research [14], as exemplified in Figure 5.
Prior to transitioning to vehicle dynamics calculations, the torques from the friction brakes are added to those from the gearbox output, as shown in Equation (2). The resulting torque is then supplied to the subsystem governing the dynamics of the tracked vehicle.
TSprocket = iGB ηPT Tout,Motor − TBrake
In Equation (2), TSprocket, iGB, ηPT, and TBrake represent sprocket torque output, gear ratio, powertrain efficiency, and applied brake torque, respectively.

2.1.2. Dynamics of the Tracked Vehicle

The dynamics of the tracked vehicle are captured using a 3-DOF (degrees of freedom) vehicle model that considers the equations of motion along the longitudinal (x), lateral (y), and yaw (z) axes, which are detailed in Figure 6 for a left maneuver. These equations, detailed in Figure 6 for a left maneuver, are represented by (3), (4), and (5). They are derived for this maneuver assuming a center of gravity in the middle of the lateral axis, rather than the longitudinal axis.
mVhc ax = (FTraction,left − FResistance,left) + (FTraction,right − FResistance,right) = ΣFx,i
mVhc ay = (QLateral,left + QLateral,right) xcenter,rear − (QLateral,left + QLateral,right) xcenter,front = ΣFy,i
IVhc,zz Φ′ = ΣFx,i yResultant − ΣFy,i xResultant
In the above expressions, the terms mVhc, IVhc,zz, ax, ay, and Φ′ denote the mass of the vehicle, inertia about the vertical axis at the vehicle’s center of gravity, accelerations in the longitudinal and lateral directions, and the rate of yaw, respectively. The forces FTraction,left, FTraction,right, FResistance,left, and FResistance,right are indicative of the traction and longitudinal resistance forces acting on the vehicle for left and right tracks, respectively. While QLateral,left and QLateral,right characterize distributed side frictional forces per length interacting with the left and right tracks, lateral distance between the vehicle’s cog (center of gravity) and the vehicle’s front and rear end are denoted by xcenter,front and xcenter,rear. Furthermore, the net forces along the longitudinal and lateral axes are given by ΣFx,i and ΣFy,i, with the corresponding distances from these net forces to the vehicle’s center of gravity being represented by xResultant and yResultant, correspondingly.
Dynamic calculations are followed by integrations of computed accelerations to obtain speed components of the vehicle in the longitudinal, lateral, and yaw axes.

2.1.3. Power Sources

Power sources for the hybrid vehicle comprise a combination of a battery and a generator set involving a diesel engine and an electric generator. In this work, it is assumed that the available power and the summation of the power sources’ reserve remains constant for a clear investigation of the mobility control system.

2.2. Mobility Control Method

  • Control Theory and Big Picture
Based on the research and findings presented in previous sections, it is found that the vehicle in question, a high-speed off-road military vehicle, requires a strong and effective closed-loop control system to achieve the targeted maneuverability at high speeds across various terrains. It has been determined that while producing overall torque in response to the driver’s input is correlated with the accelerator pedal’s position, the distribution of torque should be adjusted based on feedback from the speed difference between the sprockets. This differential is related to the angle of the steering wheel set by the driver. In other words, a certain speed differential between the electric motors is decided, corresponding to the given steering wheel angle, through the employment of the closed-loop controller. The strategy for mobility control can be seen in Figure 7, demonstrated via block diagrams. There are four primary subsystems, each with special roles. The Driver block is designed to feed specific driver commands for varying test runs and is separate from the onboard vehicle control system. The Driver command preprocessor and the closed-loop controller blocks are critical to the control system, handling the computational side of mobility control and transforming driver instructions into specific torque demands for the left and right motors. Lastly, the traction system represents the plant, including mathematical models of the electric motor and gearbox. The outputs from the traction system are the torques delivered to the left and right sprockets, which are the main inputs of the vehicle’s dynamic model.
  • Preprocessing and Shaping Control Commands
Within the Driver Command Preprocessor section, throttle and steering inputs are preprocessed depending on the selected gear and current vehicle speed. The shaping of the inputs is performed by three main functions: steering shaping, pivot shaping, and throttle shaping.
The steering shaping function aims to transform steering commands into differences in motor velocities through a suitable shaping strategy. FNSS Savunma Sistemleri A.Ş., operating out of its Ankara, Turkey location, has compiled test records from standard tracked vehicles for calibration purposes. Upon analyzing the change in speed at maximum steering, a pattern is noted where the difference in speed across the motors at full steer changes with vehicle velocity. However, this increase is interrupted by sudden changes at certain velocities, making the pattern non-linear. A closer inspection shows that these dips coincide with the gear shifting points of traditional gearboxes. For consistent steering behavior, a smooth curve is mapped over the test data, excluding these dips. The normalized version of these test data together with the smoothing curve is depicted in Figure 8, ensuring confidentiality.
To further refine the effectiveness of the steering shaping function, FNSS has incorporated adaptive elements into the function to cater to a range of variables, such as terrain type, vehicle mode, and the selected gear. This adaptive approach ensures that steering inputs are not only translated into consistent motor velocity differences across the usual operational spectrum but also provides compensation for less predictable conditions that could affect handling, such as a scenario in which one of the tracks is in contact with a more slippery surface. By integrating a dynamic feedback loop, steering inputs result in real-time adjustments to motor outputs, thus delivering an enhanced and more responsive driving experience for operators.
The pivot maneuver is executed through a specifically designed shaping function. Initially, the maximum speed range is established. Subsequently, the position of the accelerator pedal is correlated to this range to achieve the required speed differential. In addition, the angle of the steering wheel is utilized to decide the pivot turn’s direction, allowing the driver to command a counterclockwise (CCW) or clockwise (CW) rotation by steering, regardless of the actual degree of the wheel’s turn. The plot for this pivot shaping strategy can be found in Figure 9, providing a visual representation of the maneuvering process.
Enhancing the pivot shaping function further, FNSS has considered vehicle load dynamics to ensure stability during pivot turns. The shaping strategy is thus calibrated to maintain the vehicle’s balance by investigating vehicle dynamics in offline simulation environments and real-time tests for different conditions. This calibration is particularly critical when operating with varying loads or executing pivots on steep gradients.
The throttle shaping function is developed to adjust the input received from the accelerator pedal based upon the selected vehicle mobility mode, with the objective of improving the driver’s experience. This is achieved by mapping the position of the pedal to specific throttle values, which correspond to a range of distinct operational modes, as depicted in Figure 10.
In scenarios where safety is significant, such as in the preliminary testing phase of the algorithm, a conservative throttle response is preferred. This scenario is optimally supported by a shaping function like option 1 in Figure 10, which is characterized by a more gradual and controlled acceleration curve. On the other hand, for circumstances that demand a more robust and dynamic performance, such as during an aggressive driving test, the shaping curve should approach option 3 in Figure 10. This latter option is fine-tuned to yield a sharper and more immediate increase in throttle response, reflecting the vehicle’s need for rapid acceleration. Throughout many testing protocols and simulation exercises, option 2, which represents linear throttle shaping, is the preferred choice. This option is beneficial because it provides a straightforward correlation between pedal input and throttle output. Such predictability enables the control engineer to isolate and evaluate the performance characteristics of each subsystem without the added complexity that non-linear shaping options might introduce.
By employing these shaping functions, total cumulative torque demand and desired speed difference variables are designated. Based on these desired inputs, a closed-loop motion controller is operated, and the torque demands of left and right traction motors are determined.

2.3. Power Management Method

The mobility control system serves a dual purpose within the vehicle’s control architecture. Primarily, it is responsible for directly actuating the traction motors. However, the scope of the mobility control system’s functionality extends to playing a key role in the vehicle’s overall power management by continuously monitoring the instantaneous power requirements of the traction system.
As the vehicle operates, the mobility control system calculates the immediate power demands needed for traction by multiplication of torque demand, measured speed, and corresponding traction efficiency. Once the power calculations are performed, the mobility control system communicates a traction power request to the power management algorithm, which is another significant system of the hybrid tracked vehicle in question, as explained in the work of Akar et al. [15]. This request for power is carefully evaluated to control how the power management system should regulate the generator set’s output. By providing this traction power request, the mobility control system ensures that the power management system can adjust the generator’s output dynamically, matching the generated power with the traction system’s demands. This synchronous operation is crucial for ensuring that the difference between generated and demanded power does not exceed the limits of electric battery.
Another aspect influenced by traction power is the sizing of the EV battery and configuration of the generator set, dictating the selection of an internal combustion engine and electric generator of optimal size. This choice becomes even more complex as power requirements directly impact other considerations for battery and generator selection. Choosing the appropriate battery for a specific application relies on assessing key battery properties and finding the right balance among them. For electric and hybrid vehicles, crucial factors include the necessary power and range, which dictate battery pack design within the constraints of available space. While lithium-ion (Li-ion) batteries are prevalent due to their high energy density, significant voltage output, and minimal maintenance, no single battery type is universally optimal for all uses. After the assessment of the environmental conditions, a Li-ion-type battery is used in this vehicle and the control parameters are tuned accordingly.

3. Simulations and Results

Using the modeling approach and equations mentioned previously, a mobility control system was developed and simulated using MATLAB Simulink 2021b. An overview of the Simulink model is illustrated in Figure 11.
Functional scenarios, including pivot maneuvers, steering actions, and forward and reverse movements, were studied by extensive simulations to analyze the vehicle’s behavior under various operational conditions. To analyze the results, a simulation postprocessing interface was developed, which permits the in-depth observation of the vehicle’s motion dynamics and the associated responses from the powertrain, including variables like sprocket torques and track speeds.
An example of this simulation platform can be seen in Figure 12, which specifically illustrates the interface during a scenario involving a forward steering motion at a predetermined longitudinal speed of the vehicle. In this simulation, it is observed that upon reaching the 50th second of the simulation time, the driver introduces a steering command, inputting a 40% steering angle into the system. Due to this action, the motor torques experience a substantial and rapid increase. After this initial jump in torque caused by the need to adjust the vehicle’s trajectory according to the steering input, the motor’s torque levels exhibit a stabilization, converging to a steady-state value. The steady-state torques involved in steering are now balanced, and the vehicle maintains the new desired directional path at a constant speed.
Additionally, Figure 13 indicates that the speed differential between the left and right electric motors reaches the preset target specified by the steering shaping function. An upward trajectory in speed difference is observed as the steering input rises, a response predicted from the closed-loop control system. The presence of noise in the actual speed differential originates from the characteristics of the electric motors’ encoders. It is assumed that the encoders are influenced by white noise to test the controller’s capability to cope with this type of disturbance.
Observations of the vehicle’s longitudinal response are demonstrated in Figure 14 as well. It is noted that there is a proportional increase in the vehicle’s total torque, correlating with the rise in the accelerator pedal position, regardless of the steering input. This effect is achieved by applying a linear throttle shaping function, as explained in the mobility control system section.
The simulations successfully confirmed the effectiveness of the control methods discussed earlier in shaping vehicle dynamics, ensuring that the system can fully manage both the total traction force and the vehicle’s turning radius based on driver commands. This controllability enables consistent maneuvering at fixed speeds in straight lines as well as during complex directional changes where high maneuverability is required. The ability to precisely adjust the speeds of individual sprockets strengthens the vehicle’s flexibility to cope with different terrain types and driving conditions while enhancing the system’s overall handling and dependability.

4. Discussion and Conclusions

This paper investigates the mobility control system of a series-hybrid electric tracked vehicle. The objective of the system is to control electric motor torques to produce the entire torque demanded by the throttle, while achieving the necessary speed differential when steering inputs are made. Traditional testing methods on the electrified tracked vehicle helped establish the speed differential target.
Results from practical demonstrations indicate that the intended motion is achievable with the deployed mobility control system. The findings, thus, suggest that similar architectures can be applied generically across the domain of electric propulsion systems in heavy-duty vehicles. Moreover, the speed differential methodology enhances system adaptability across varying terrains. Even though different friction coefficients may necessitate varied sprocket torques for steering actions, the employment of a closed-loop speed differential strategy yields the correct sprocket torques. This validates the significance of torque management and its responsiveness to external conditions, which holds universality for other applications. Variations in radius due to changes in slip characteristics are compensated for by the driver’s input, effectively incorporating human interaction as part of the loop.
The integration of regenerative braking into the series-hybrid system enables transmission reversibility and further demonstrates the potential for increased efficiency and reduced wear on braking components. By converting kinetic energy into electrical energy during deceleration phases, energy is fed back into the battery, thus extending the operational range of the vehicle. Initial tests exhibit promising results, with noticeable energy recovery without compromising the stability or control of the vehicle. The ability to regenerate is critically important for hybrid systems since the vehicle in question is a high-weight off-road piece of machinery operating on inclines, where reversibility becomes crucial for boosting efficiency. In such challenging environments, the system’s ability to convert kinetic energy into electrical energy for storage in the battery significantly enhances the operational range and energy conservation, underscoring its value for vehicles navigating steep terrain. The interaction between regenerative braking and torque distribution algorithms is crucial; it maintains driving dynamics that are consistent with driver expectations. This addition to the mobility control system complements the existing architecture, presenting a beneficial approach to vehicle energy management and efficiency optimization.
Our mobility control system represents a significant advancement in the management of series-hybrid electric tracked vehicles, and future refinements could be made to fine-tune the relationship between driver inputs and vehicle performance, supporting the human–machine interface for optimal control. Furthermore, current studies show that the transition from engine-driven auxiliary systems to electric-powered ones is accelerating [16]. This transition not only streamlines the management of auxiliary systems but also reinforces the essential connection between vehicle efficiency and advanced control technologies, setting a benchmark for future EV system innovations. Illustrative of this trend is a study by Pugi et al. (2021), which highlights the significant enhancements made in electric directional drilling machines, marking them as exemplary cases of electrification in auxiliary elements and contributing to the sustainable progress of urban infrastructure development [17].
In conclusion, the findings presented herein emphasize the generic value of this research in shaping the future of vehicle control systems. Particularly, the control of electric motor torques within a high-inertia platform of armored tracked vehicles demonstrates the agility that can be attained through advanced engineering. This closed-loop speed differential control system offers a new paradigm in mobility, where precision and adaptability are improved together by promoting a high level of responsiveness relative to conventional tracked vehicles. Mobility control enhances vehicle management and performance, while efforts to electrify auxiliary systems contribute to the overall efficiency and evolution of electric vehicle technologies. Finally, the navigation strategies developed here could serve as a basis for autonomous or semi-autonomous control systems in similar military vehicles, significantly impacting the field of vehicle automation.

Author Contributions

Conceptualization, D.Ç. and V.K.; methodology, D.Ç. and V.K.; software, D.Ç.; validation, D.Ç. and V.K.; formal analysis, D.Ç. and V.K.; investigation, D.Ç. and V.K.; resources, D.Ç. and V.K.; data curation, D.Ç. and V.K.; writing—original draft preparation, D.Ç.; writing—review and editing, D.Ç. and V.K.; visualization, D.Ç. and V.K.; supervision, D.Ç. and V.K.; project administration, D.Ç. and V.K.; funding acquisition, D.Ç. and V.K. All authors have read and agreed to the published version of the manuscript.

Funding

This work was carried out as part of the Hybrid Electric Tracked Vehicle Development project of FNSS Savunma Sistemleri A.Ş. and was fully funded by FNSS Savunma Sistemleri A.Ş.

Data Availability Statement

The data and software materials used in this study are owned by FNSS Savunma Sistemleri A.Ş. and cannot be shared due to confidentiality policies of the company.

Acknowledgments

Our thanks go to the R&D Team at FNSS Savunma Sistemleri A.Ş., whose assistance was crucial in completing this work.

Conflicts of Interest

Dersu Çeliksöz and Varlık Kılıç are employees of FNSS Savunma Sistemleri A.Ş. The paper reflects the views of the scientists, and not the company.

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Figure 1. KAPLAN HYBRID, developed by FNSS [3].
Figure 1. KAPLAN HYBRID, developed by FNSS [3].
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Figure 2. Summary of torque fuzzy compensation control strategy by Pei et al. [8].
Figure 2. Summary of torque fuzzy compensation control strategy by Pei et al. [8].
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Figure 3. Block diagram of the hybrid tracked vehicle model and controller.
Figure 3. Block diagram of the hybrid tracked vehicle model and controller.
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Figure 4. Schematic of electric traction system.
Figure 4. Schematic of electric traction system.
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Figure 5. Full load characteristic curve for an electric motor.
Figure 5. Full load characteristic curve for an electric motor.
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Figure 6. Loads on a tracked vehicle during left maneuver.
Figure 6. Loads on a tracked vehicle during left maneuver.
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Figure 7. Big picture of mobility control system.
Figure 7. Big picture of mobility control system.
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Figure 8. Steering shaping strategy in normalized form.
Figure 8. Steering shaping strategy in normalized form.
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Figure 9. Pivot shaping strategy in normalized form.
Figure 9. Pivot shaping strategy in normalized form.
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Figure 10. Throttle shaping options.
Figure 10. Throttle shaping options.
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Figure 11. Simulink model of the hybrid tracked vehicle.
Figure 11. Simulink model of the hybrid tracked vehicle.
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Figure 12. Simulation interface for a cornering maneuver.
Figure 12. Simulation interface for a cornering maneuver.
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Figure 13. Speed differential during cornering.
Figure 13. Speed differential during cornering.
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Figure 14. Total traction torque of the vehicle in response to accelerator pedal position.
Figure 14. Total traction torque of the vehicle in response to accelerator pedal position.
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Çeliksöz, D.; Kılıç, V. Series-Hybrid Powertrains: Advancing Mobility Control in Electric Tracked Vehicle Technology. World Electr. Veh. J. 2024, 15, 47. https://doi.org/10.3390/wevj15020047

AMA Style

Çeliksöz D, Kılıç V. Series-Hybrid Powertrains: Advancing Mobility Control in Electric Tracked Vehicle Technology. World Electric Vehicle Journal. 2024; 15(2):47. https://doi.org/10.3390/wevj15020047

Chicago/Turabian Style

Çeliksöz, Dersu, and Varlık Kılıç. 2024. "Series-Hybrid Powertrains: Advancing Mobility Control in Electric Tracked Vehicle Technology" World Electric Vehicle Journal 15, no. 2: 47. https://doi.org/10.3390/wevj15020047

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