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Article

Design Optimization of a Small-Scaled Vortex-Induced Vibration Bladeless Wind Turbine with Binary Resonance Controller

1
Graphene Square Inc., Pohang-si 37673, Gyeongsangbuk-do, Republic of Korea
2
School of Mechanical and Control Engineering, Handong Global University, Pohang-si 37554, Gyeongsangbuk-do, Republic of Korea
*
Author to whom correspondence should be addressed.
Appl. Sci. 2026, 16(1), 553; https://doi.org/10.3390/app16010553
Submission received: 6 November 2025 / Revised: 29 December 2025 / Accepted: 31 December 2025 / Published: 5 January 2026

Abstract

This study presents the design optimization and semi-active resonance control of a small-scale vortex-induced vibration (VIV) bladeless wind turbine (BWT) equipped with a power efficient binary resonance controller. The proposed system integrates a smart-material-based stiffness-tuning module that adaptively adjusts the structure frequency of the BWT to match varying wind speeds. A coupled mechanical–electromagnetic model for BWT was formulated to quantify the relationships among key design parameters, including mast geometry, pivot length, and rod dimensions, and the resulting induced voltage. Multi-parameter optimization was performed to maximize energy-harvesting efficiency under mass and geometric constraints. Experimental evaluation verified an 88.9 % resonance shift capability, broadening the operational lock-in wind speed range from 1.7 to 3.2 m/s. The results confirm the potential of the semi-active BWT control concept for compact, low-noise, and adaptive wind-energy harvesters.

1. Introduction

Within the family of wind energy technologies, bladed wind systems are generally more efficient in electricity generation than their bladeless counterparts [1]. However, they also present several drawbacks, including substantial costs of installation, large installation area requirements, and significant noise emissions [2,3]. These shortcomings restrict their applicability, particularly in densely populated urban environments with limited space and relatively low wind speeds [3]. Such limitations have motivated the exploration of alternative wind energy concepts, among which the bladeless wind turbine (BWT) offers a promising solution. BWTs can be further classified according to the underlying oscillation mechanisms of galloping, flutter, and vortex-induced vibration (VIV) [4].
A BWT typically employs a cylindrical mast that oscillates through vortex-induced vibration (VIV), converting aerodynamic vortex shedding into structural motion for power generation [5]. Because the BWT lacks rotating components, its structure is mechanically simple, compact, and suitable for low-to-moderate wind conditions [2,4,5,6].
The operating principle of a BWT relies on the Kármán vortex street that forms when airflow separates from a cylindrical body when R e > 3.5 × 10 6 [7]. Periodic lift forces arise perpendicular to the flow direction, and when the vortex-shedding frequency approaches the structural natural frequency, resonance occurs, resulting in large-amplitude oscillations [8,9]. The resonance-induced vibration can then be harvested through electromagnetic or piezoelectric transducers to generate electricity [5,10,11].
Because the vortex-shedding frequency varies linearly with wind velocity, any deviation in the ambient wind from the tuned resonance rapidly diminishes vibration amplitude and energy output. Hence, improving performance requires maintaining resonance across fluctuating wind conditions [10]. Since the structural natural frequency of the BWT is a static property, conventional designs lack the capability to adapt dynamically to a wide range of wind speeds.
Efforts to extend the lock-in range through aerodynamic and structural modifications include reshaping mast geometry, adding fin-type appendages, or altering surface roughness [12,13,14,15]. While these approaches can modestly extend the operating bandwidth, they remain passive and cannot dynamically respond to rapid wind variations.
There have been different strategies to enhance BWT efficiency, including modifying the structure’s stiffness to align the natural frequency with the incoming vortex frequency. Villarreal et al. [5] applied permanent-magnet-based magnetically actuated stiffness control based on the magnetic repulsion force that acts as a nonlinear compression spring. Zhang et al. [16] presented a magnetic repulsion-based tuning approach, where the relative displacement between two magnets is varied to shift the natural frequency. In contrast to these magnetically driven concepts, Sun et al. [17] developed a piezoelectric-based self-tuning system that changed the effective beam length. Another study used mechanisms that vary the length of the elastic rod [3], and tuned mass dampers [18]. These methods demonstrate potential, yet often increase mechanical complexity or power consumption.
A different strategy was introduced by Kang et al. [10], who proposed a discrete resonance shift module utilizing a magnetorheological elastomer (MRE). MREs are smart elastomers, the stiffness of which increases under an external magnetic field, and they have been widely investigated for semi-active vibration control applications [19,20]. The MRE-based BWT demonstrated a tunable structural frequency shift of over 60%, effectively broadening the usable wind speed range [10]. Although the discrete resonance-shift BWT showed promising adaptability, the study primarily focused on feasibility verification, relied on manual control adjustments, and did not include systematic design optimization. Furthermore, the study did not assess the power needed to adjust the MRE stiffness, since the tuning relied on manually placed permanent magnets.
Therefore, this study extends the semi-active VIV-based BWT in [10] to focus on structural optimization with integrated motorized resonance control. The research systematically identifies the key design parameters and clarifies the relationship between structural configuration and electrical voltage output. Based on this analysis, an optimal set of design parameters is derived to maximize power generation. Furthermore, a motorized resonance control module is introduced, employing a binary magnetic field controller that adjusts a variable-stiffness spring through discrete minimum and maximum magnetic fields. The energy used for resonance control is quantified to assess the net power output. By combining a motorized semi-active resonance control device with structural optimization, the proposed approach enhances both the energy conversion efficiency and the adaptability of small-scale VIV-BWTs under varying wind conditions.
The main contributions of this study are summarized as follows:
  • We propose a multi-parameter optimization using coupled mechanical–electromagnetic modeling to correlate geometry with the voltage generation output of a semi-active VIV-BWT. Based on this, we propose an optimized set of structural design parameters to maximize the power generation efficiency.
  • We design a power efficiency motorized-structure resonance control system that can automatically retune the BWT stiffness adaptively to the varying wind speed.
  • We provide experimental validation of the power efficiency of the broadened lock-in range compared to that of an uncontrolled system under different wind speeds.

2. Semi-Active VIV-BWT System

2.1. Principle of VIV-BWT

The vortex-induced vibration bladeless wind turbine (VIV-BWT) is based on the principle of structure vibration resonance excited by a Kármán vortex street. When air flows past the cylindrical body, the BWT mast, alternating vortices are shed in its wake that form a periodic low-pressure region, which is known as the Kármán vortex street. This produces fluctuating pressure differences along the cylinder surface that exert a periodic lift force perpendicular to the wind flow.
The frequency of the vortex vibration ( f v ) can be derived by wind speed (v) and cylinder diameter ( Φ ) as
f v = S t · v Φ ,
where S t is the Strouhal number, which is approximately S t = 0.21 for a circular cylinder in the operation range [5].
When this vortex frequency ( f v ) approaches the structure frequency of the BWT ( f B W T ), a large-amplitude oscillation of resonance occurs. The corresponding wind velocity range in which the structure resonance occurs is known as the lock-in region [21]. However, if the wind speed is varied such that it goes out of the lock-in range, the oscillation of the BWT dramatically decreases.
Since the BWT extracts electrical energy from mechanical vibration, its structural design should ensure resonance under the representative wind speeds of the target site. Typically, the dynamics of the BWT can be described as a damped mass–spring system, the natural frequency of which is given by
f B W T = 1 2 π k m c 2 m 2 ,
where m is the effective mass of the mast, k is the structural stiffness, and c is the damping coefficient. Accordingly, the parameters of m, k, and c should be selected for a specified average wind speed v a v g and cylinder diameter Φ to satisfy the lock-in condition with the vortex frequency f v .

2.2. Need for Semi-Active VIV-BWT Resonance

For maximum energy extraction, the incoming wind must be maintained within the lock-in range, where the shedding frequency synchronizes with the natural frequency of the structure. However, due to varying external conditions, wind velocity often fluctuates beyond this lock-in range. When this occurs, the power conversion efficiency of the BWT is drastically reduced, or in some cases, vibration and energy generation may cease altogether.
When the wind speed is matched with the structural resonance frequency of the BWT ( f B W T , i n i t ), this results in strong oscillations and maximum energy generation. When the wind speed increases such that falls outside the initial lock-in range, this leads to a significantly diminished oscillation amplitude and reduced power output. For such a detuned state, the resonance can be recovered if the BWT is capable of adaptively tuning its resonance frequency from f B W T , i n i t to f B W T , i n i t + Δ f B W T to realign with the lock-in range at the new wind velocity.
Thus, this study proposes a semi-active resonance tuning system based on a smart elastomer, the stiffness of which can be dynamically controlled under the influence of an external magnetic field. This structure tuning mechanism enables the BWT to maintain resonance within a larger range of wind speeds.

2.3. Hardware Configuration

The designed BWT system is composed of a cylinder mast, a pivoted oscillating rod, a linear electromagnet generator, and a semi-active structure resonance control module using a stiffnes-variable smart rubber, as shown in Figure 1. This is a similar design to the BWT in [10], but the major difference is in the design optimization and the semi-active structure resonance control module.

2.3.1. Mast and Pivot

The mast of the bladeless wind turbine (BWT) is fabricated from a cylindrical polycarbonate tube with a wall thickness of 3 mm. It is supported by a slender stainless steel rod and mounted on a pin-joint with bearing, which permits free oscillation of the mast.
The geometric design parameters of the mast, including its diameter ( ϕ ), height ( L m a s t ) and the corresponding weight, are selected through the design optimization in the next section. However, to ensure portability, the overall height and total mass of the BWT are constrained to less than 1 m and 3 kg, respectively.

2.3.2. Electromagnet Generator

The induced voltage was generated by electromagnets positioned on either side of the load mass, as shown in Figure 2. Each coil consisted of 1500 turns of copper wire, with an inner loop diameter of 60 mm. Permanent magnets were affixed to the ends of a rigid rod connected to the load mass. As the load mass oscillated with the mast, the relative motion of the permanent magnets within the surrounding coil produced the induced voltage.

2.3.3. Semi-Active Resonance Control Module

The structural frequency of the BWT can be tuned by the proposed semi-active resonance control module, which employs magnetorheological elastomers (MREs). MREs are smart materials, the stiffness of which increases in response to an externally applied magnetic field. An MRE block was placed at the bottom of the load mass, as shown in Figure 2, to provide controllable shear stiffness to the BWT structure through a designed magnetic field generator.
The motorized magnetic field controller consists of permanent magnets actuated vertically by a stepper motor using a cam–shift mechanism, as illustrated in Figure 3. When the permanent magnet is in its lowest position, the magnetic field applied to the MRE is nearly negligible. Conversely, when the magnet is raised to its highest position, a maximum field of approximately 240 mT is applied to the MRE. This increases the MRE stiffness and enhances the effective stiffness of the overall BWT structure, consequently.
To reduce the power consumption of the stepper motor during magnet positioning, a discrete on–off control strategy was adopted for magnetic field generation. This resonance tuning approach enables adaptive control of the structural frequency, thereby improving the energy harvesting efficiency of the BWT across a broader range of wind speeds.

3. Optimization of BWT Design Parameters

The optimization of the bladeless wind turbines (BWTs) aims to maximize the electrical energy output through the optimal hardware design within given physical constraints. To achieve this, the coupled effects of structural dynamics and electromechanical energy conversion must be comprehensively considered. In this study, the governing equations for both the mechanical and electrical response of the BWT system were formulated. The primary design variables include the rod length, mast geometry, and pivot position. The overall optimization procedure is schematically illustrated in Figure 4.

3.1. Mechanical Modeling

3.1.1. Moment of Inertia and Mass

As the BWT oscillates about its pivot, the total moment of inertia, J B W T , is obtained by summing the individual moments of inertia of all moving components, as shown in Figure 5.
J B W T = J m a s t + J d i s k + J l o a d + J r o d
From the total moment of inertia, the equivalent oscillating mass of the BWT can be derived as
m J = J B W T L r o d L p i v o t 2

3.1.2. Calculation of the BWT Tuning Stiffness

In the BWT system, the MRE contributes the variable stiffness ( k m r e ) and damping ( c m r e ) to the overall dynamics of the BWT system. The variable stiffness of the MRE, k m r e , is a function of its initial stiffness and an increment stiffness, which is caused by the applied magnetic field (B):
k m r e ( B ) = k m r e , 0 + Δ k m r e ( B ) .
The nominal structural stiffness of the BWT must be designed such that the structural resonance frequency aligns with the nominal operating wind speed that generates the vortex shedding frequency of ω v i v , which is a function of the wind speed, mast diameter, and Strouhal number:
ω v i v = 2 π · S t · v v i v D m a s t
Since the BWT is designed to resonate at the targeted wind speed, the desired structural frequency, ω v i v , should be matched to the vortex shedding frequency as
ω v i v ω B W T = ω B W T , n 1 2 ζ 2
where ω B W T , n is the damped structural frequency,
Using the variable stiffness property of the MRE in Equation (5) and the formula for the natural frequency and damping ratio, the natural resonance of BWT can be expressed as
ω B W T , n = k m r e / m J , ζ = c m r e 2 m J k m r e
Thus, the condition in which the vortex shedding frequency triggers the resonances in the BWT of Equation (7) becomes
ω v i v ω B W T = k m r e , 0 + Δ k m r e ( B ) m J c m r e ( B ) 2 m J 2
Consequently, the stiffness of the BWT, which must be adjusted to maintain resonance with the vortex shedding frequency ω VIV , is defined as
Δ k m r e ( B ) = 2 m J ω v i v 2 + 2 c m r e ( B ) 2 4 m J k m r e , 0

3.1.3. BWT Vibration Dynamics

The electric voltage is induced by the vibration of the BWT, which causes the permanent magnets attached to the load mass to oscillate relative to the surrounding electric coils. As the vibration amplitude of the load mass increases, the induced voltage also increases proportionally. Therefore, the BWT vibration x ( t ) , representing the displacement of the load mass, serves as the primary dynamic response to be maximized through design optimization.
Given the small amplitude of vibration displacement, the motion of x ( t ) can be approximated as linear and modeled as a single-degree-of-freedom (SDOF) mass–spring–damper system with the expression of
m l o a d x ¨ t + c m r e ( B ) x ˙ t + k m r e ( B ) x t = F e x t t
where x ( t ) is the horizontal displacement, c MRE ( B ) is the magnetic-field-dependent damping coefficient, k MRE ( B ) is the effective stiffness, and F ext ( t ) is the external excitation force.
The external force arises from the lift generated by vortex shedding around the mast, acting through an effective lever arm distance L L from the pivot. Thus, the effective force transmitted to the load mass can be expressed in terms of the effective arm length of the force ( L L ) and the mass load ( L C W )
F e x t ( t ) = L L L c w F L ( t )
where F L ( t ) is the lift force defined by
F L ( t ) = 1 2 ρ C L v 2 A f r o n t = 1 2 ρ C L v ( t ) 2 D m a s t L m a s t
with C L being the lift coefficient, ρ the air density, and A front the frontal projected area of the mast. At steady state, the lift force excitation generated by the vortex shedding can be approximated as a sinusoidal input, expressed as
F ext ( t ) = F 0 e j ω t ,
where F 0 is the amplitude of the external excitation and ω is the excitation frequency. Accordingly, under a constant wind speed, the oscillating external force can be expressed in terms of the lift force as
F e x t ( t ) = π ρ C L D m a s t L L L m a s t 4 L c w v 2 e ω t = α v 2 e ω t
In the frequency domain, the vibration amplitude x ( ω ) can be expressed as a function of the excitation frequency ω and the wind velocity, based on the dynamic equation given in Equation (9). The frequency response of the system is thus obtained as
X ( ω ) = α A f o n t v 2 k m r e ( B ) 1 m J k m r e ( B ) ω 2 2 + c m r e k m r e ( B ) ω 2 .
The maximum vibration amplitude at a steady wind velocity, denoted as x max , occurs when the excitation frequency matches the natural frequency of the BWT system, i.e., ω = ω BWT . At this resonance condition, the vibration magnitude can be expressed as
X max = α v 2 c m r e ( B ) ω r k m r e , 0 + Δ k m r e ( B ) m J c m r e ( B ) 2 m J 2

3.2. Induced Electrical Energy from Vibration

Electrical energy harvesting is achieved through electromagnetic induction, which occurs due to the oscillatory motion of the permanent magnet relative to the stationary coils. According to Faraday’s law, the induced electromotive force can be estimated as
V emf ( t ) = N A d B d t ,
where N is the number of coil turns, A is the effective area through which the magnetic flux passes, and B ( x ) represents the magnetic field strength as a function of magnet displacement x.
A permanent magnet can be approximated as a magnetic dipole with moment m. On the axis of the magnet, the magnetic field B ( x ) can be expressed as an inverse-cube function of the distance x from the magnet [22] as
B ( x ) = μ 0 m 2 π x 3 ,
where m is the magnetic dipole moment and μ 0 is the magnetic permeability of free space.
By substituting Equations (17) and (18), the induced voltage generated by the vibration of a permanent magnet can be expressed as a nonlinear function of the magnet distance as
V emf ( t ) = N A μ 0 m 2 π x ( t ) 4 d x ( t ) d t .
In the proposed system, the permanent magnet undergoes sinusoidal motion at the vortex-induced vibration frequency with a small amplitude, modeled as x ( t ) = X 0 sin ( ω viv t + θ ) . Experiments showed that, within the frequency range of interest, the induced voltage can be approximated as a harmonic signal at the vortex frequency:
V emf ( t ) k 1 N A ω viv X 0 X 0 + k 2 4 sin ω viv t + θ emf ,
where the model parameters were identified from experiments as k 1 = 3.75 × 10 5 and k 2 = 0.0718 . The voltage predicted by the derived model is compared with the experimental measurements in Figure 6, confirming that the model adequately captures the dependence of the induced voltage on the vibration displacement and excitation frequency.

3.3. Design Optimization Simulation

The design variables for the optimization process are the rod length ( L rod ), pivot position ( L pivot ), mast length ( L mast ), and mast diameter ( D mast ). Since the total mass m J of the BWT is proportional to the total volume of its structural components, it can be expressed as m J L mast D mast . Conversely, the same geometric parameters increase the projected frontal area of the mast, which determines the aerodynamic lift force, as A front = π D mast L mast 2 .
From Equation (15), the maximum vibration displacement of the BWT is directly proportional to the frontal projected area and inversely proportional to the total mass as
| X ( ω ) | A front , | X ( ω ) | 1 m J .
As L mast and D mast increase, the total mass of the BWT increases, which tends to reduce the vibration amplitude under a given lift force. However, larger values of L mast and D mast also increase the frontal surface area, thereby enhancing the lift force and producing greater vibration amplitude. These competing effects reveal a strong coupling between aerodynamic excitation and structural dynamics, underscoring the need for optimization to achieve the best compromise in BWT performance.
To quantitatively evaluate these interactions, simulations were performed within constrained design ranges. The maximum rod length L rod was limited to 1 m, the mast diameter D mast was restricted to less than 0.3 m, and the total mass was constrained to remain below 2 kg, considering the overall size and portability of the prototype.
Simulation results revealed that larger values of both L rod and D mast tend to yield higher induced voltage levels, as illustrated in Figure 7. Among the feasible configurations satisfying the mass constraint, the optimal pair was determined to be L rod = 1.0 m and D mast = 0.3 m. Furthermore, among various combinations of L mast and L pivot in Figure 7, the configuration of L mast = L pivot = 0.45 m produced the maximum voltage output.
The final optimal design parameters and corresponding calculated variables are summarized in Table 1.

4. Experimental Results

4.1. Structure Resonance Tuning Analysis

Vibration experiments were performed to evaluate the structural resonance characteristics of the BWT and its tunability under varying magnetic field conditions. Modal vibration tests were conducted to identify the resonance frequencies by analyzing the frequency response functions (FRFs). The BWT was excited using a modal shaker with a sinusoidal frequency sweep between 0 and 20 Hz, and each test was repeated ten times to obtain averaged FRF responses.
Figure 8 presents the FRF, which is the magnitude of the acceleration by the applied input force in the frequency domain. The experiments were carried out under two magnetic field settings, denoted as B = LOW and B = HIGH. The resonance tuning capability of the BWT was evaluated by comparing the resonance frequency shifts observed between these two field conditions.
The initial resonance frequency of the BWT under the B = LOW condition was measured at 1.8 Hz. When the magnetic field intensity was increased to the B = HIGH setting, the resonance peak shifted to 3.4 Hz, representing an 88.9% increase, as illustrated in Figure 8 and summarized in Table 2. In terms of equivalent wind speed, this frequency tuning corresponds to an adjustable range from 1.7 m/s to 3.2 m/s, thereby expanding the effective lock-in region by approximately 88.9%.

4.2. Voltage Generation Efficiency

The normalized voltage generated by the BWT across the tested wind speed range is presented in Figure 9. The voltage responses were compared under two magnetic field conditions. The results show that, for the B = LOW state, the maximum induced voltage occurs at a wind speed of approximately 1.7 m/s, whereas for the B = HIGH state, the voltage peak shifts to around 3.2 m/s. The intersection point at which the voltage outputs under the two magnetic field conditions become equivalent is observed near a wind speed of 2.6 m/s.
The vibration acceleration and corresponding induced voltage were examined under input force excitation at the resonance frequencies of 1.8 Hz and 3.4 Hz to evaluate the power generation efficiency, as summarized in Table 3. When the lift force at 1.8 Hz, corresponding to a wind speed of 1.7 m/s, was applied, the normalized induced voltage relative to the input force was measured as 16.5 mV/N under the B = LOW condition. When the magnetic field controller was switched to the B = HIGH state, both the vibration acceleration and induced voltage amplitudes decreased, with the normalized voltage reduced to 1.4 mV/N, as shown in Figure 10a.
When the wind speed increased to 3.2 m/s, corresponding to a lift force frequency of 3.4 Hz, both the acceleration and voltage generation were significantly reduced under the B = LOW condition, as shown in Figure 10b. Under this condition, activating the B = HIGH state resulted in a marked improvement, increasing the normalized voltage from 7.4 mV/N to 17.6 mV/N, representing an enhancement factor of approximately 2.4.
The results indicate that the BWT achieves optimal performance under the B = LOW condition when the wind speed is below 2.6 m/s. For wind speeds exceeding 2.6 m/s, switching the magnetic field controller to the B = HIGH state is recommended to maximize energy harvesting efficiency.

4.3. Resonance Control of BWT Vibration

Based on the control strategy illustrated in Figure 9, the dynamic response of the BWT was examined to evaluate the adaptive resonance tuning capability of the proposed magnetic field control system, as shown in Figure 11. Initially, the BWT was tuned for a higher wind speed operation at 3.2 m/s, where the system maintained resonance and produced a stable, high-amplitude voltage output under the B = HIGH condition. When the wind speed was decreased to 1.7 m/s, the structure became detuned, resulting in a significant reduction in the induced voltage amplitude due to the mismatch between the vortex-shedding frequency and the structural natural frequency. Upon activation of the controller (B = LOW), the BWT was re-tuned to restore structural resonance under the new wind condition. As shown in the latter portion of the response, the voltage generation recovered to a level comparable to the initial tuned state, confirming the effectiveness of the semi-active resonance control in sustaining optimal energy harvesting performance across varying wind speeds.

5. Conclusions

This study presented the design optimization and experimental validation of a small-scale vortex-induced vibration (VIV) bladeless wind turbine (BWT) integrated with a semi-active resonance control module based on magnetorheological elastomers (MREs). The mechanical–electromagnetic coupling model was developed to establish the relationship between the structural design parameters and induced voltage, and an optimization procedure was conducted to maximize energy harvesting efficiency within the given size and mass constraints, which were not conducted in previous related studies.
Experimental results demonstrated that the proposed binary magnetic field controller effectively tuned the structural resonance frequency of the BWT, achieving a frequency shift of 88.9% and extending the lock-in wind speed range from 1.7 m/s to 3.2 m/s. The adaptive control enabled stable voltage generation and sustained high vibration amplitudes under fluctuating wind conditions.
The findings confirm that combining structural optimization with semi-active resonance tuning significantly enhances the adaptability and energy conversion efficiency of small-scale BWT systems. The proposed concept provides a promising framework for compact, low-noise, and maintenance-free wind energy harvesters suitable for urban and distributed power applications. Future work will focus on real-time feedback control strategies and scaling up the prototype for practical deployment in variable outdoor environments.

Author Contributions

Conceptualization, H.K. and S.H.; methodology, H.K., S.H. and Y.-K.K.; writing—original draft, H.K. and Y.-K.K.; writing—review and editing, Y.-K.K.; project administration, Y.-K.K. All authors have read and agreed to the published version of the manuscript.

Funding

This study was supported by National Research Foundation of Korea (NRF) grant funded by the Ministry of Education (No. 2020R1I1A3074036), and partly supported by the Korea Institute of Energy Technology Evaluation and Planning (KETEP) grant funded by the Ministry of Climate, Energy and Environment (MCEE) of the Republic of Korea (No. 20214000000010).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data presented in this study are available upon request from the corresponding author.

Conflicts of Interest

Author Heeyun Kang was employed by the company Graphene Square Inc. The remaining authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

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Figure 1. Overview of hardware design of BWT prototype.
Figure 1. Overview of hardware design of BWT prototype.
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Figure 2. Permanent magnets are attached to the load mass that oscillates against electromagnet coils to generate voltage. The stiffness variable material provides shear stiffness.
Figure 2. Permanent magnets are attached to the load mass that oscillates against electromagnet coils to generate voltage. The stiffness variable material provides shear stiffness.
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Figure 3. Motorized magnetic field controller consisting of permanent magnets actuated vertically by a stepper motor using a cam–shift mechanism that generates B = LOW and B = HIGH.
Figure 3. Motorized magnetic field controller consisting of permanent magnets actuated vertically by a stepper motor using a cam–shift mechanism that generates B = LOW and B = HIGH.
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Figure 4. Overview of BWT hardware optimization for maximum energy harvesting.
Figure 4. Overview of BWT hardware optimization for maximum energy harvesting.
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Figure 5. System modeling and voltage generation for BWT.
Figure 5. System modeling and voltage generation for BWT.
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Figure 6. Comparison between the induced voltage predicted by the derived model and the measured voltage under the harmonic excitation of the permanent magnet attached to the BWT load.
Figure 6. Comparison between the induced voltage predicted by the derived model and the measured voltage under the harmonic excitation of the permanent magnet attached to the BWT load.
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Figure 7. Simulation results for design optimization indicate how each design variables affect the voltage output.
Figure 7. Simulation results for design optimization indicate how each design variables affect the voltage output.
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Figure 8. Frequency response function (FRF) of the BWT illustrating a resonance frequency shift from 1.8 Hz to 3.4 Hz (an 89 % increase) as the magnetic field controller transitioned from the LOW to HIGH state.
Figure 8. Frequency response function (FRF) of the BWT illustrating a resonance frequency shift from 1.8 Hz to 3.4 Hz (an 89 % increase) as the magnetic field controller transitioned from the LOW to HIGH state.
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Figure 9. Comparison of BWT voltage generation against a range of wind speeds. For a wind speed higher than 2.6 m/s, applying a higher magnetic field (B = HIGH) is more efficient.
Figure 9. Comparison of BWT voltage generation against a range of wind speeds. For a wind speed higher than 2.6 m/s, applying a higher magnetic field (B = HIGH) is more efficient.
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Figure 10. Comparison of normalized acceleration, and normalized voltage-to-force ratio of the BWT at wind speeds (frequencies) of (a) 1.7 m/s (1.8 Hz) and (b) 3.2 m/s (3.4 Hz). Experiments were repeated under magnetic field conditions of B = LOW and B = HIGH, respectively.
Figure 10. Comparison of normalized acceleration, and normalized voltage-to-force ratio of the BWT at wind speeds (frequencies) of (a) 1.7 m/s (1.8 Hz) and (b) 3.2 m/s (3.4 Hz). Experiments were repeated under magnetic field conditions of B = LOW and B = HIGH, respectively.
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Figure 11. The BWT was initially tuned for higher wind speed operation. As the wind speed was decreased to 1.7 m/s, the system became detuned; activation of the controller compensated for this shift and restored the voltage generation efficiency.
Figure 11. The BWT was initially tuned for higher wind speed operation. As the wind speed was decreased to 1.7 m/s, the system became detuned; activation of the controller compensated for this shift and restored the voltage generation efficiency.
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Table 1. An optimal design’s parameter values and their symbols.
Table 1. An optimal design’s parameter values and their symbols.
Design VariablesSymbolValue
length of rod L r o d 1000 mm
length of pivot L p i v o t 450 mm
length of mast L m a s t 450 mm
diameter of mast D m a s t 200 mm
rotation inertiaJ0.538 kgm2
equivalent mass of BWT m J 1.915 kg
mass of counter-balance weight m c w 1 kg
range of variable stiffness K m r e ( B ) 375.3 N/m 946.2 N/m
damping coefficient C m r e ( B ) 6 Ns/m
range of structure resonance f B W T 2.2∼3.5 Hz
resonance wind speedv2.0∼3.2 m/s
Table 2. The structure frequency and the corresponding lock-in wind of the BWT by the magnetic field conditions.
Table 2. The structure frequency and the corresponding lock-in wind of the BWT by the magnetic field conditions.
B = LOWB = HIGHIncrement (%)
Structure resonance ( f B W T )1.8 Hz3.4 Hz88.9%
Lock-in wind speed (v)1.7 m/s3.2 m/s88.9%
Table 3. Comparison of induced voltage at different wind velocities and corresponding tuned resonance frequencies.
Table 3. Comparison of induced voltage at different wind velocities and corresponding tuned resonance frequencies.
Induced Voltage (Power) RMS Normalized to Input Force
Excitation Frequency
(Velocity)
Wind DescriptionMagnetic Field Control (B)
B = LOWB = HIGH
1.7 m/s (1.8 Hz)Light breeze16.5 mV/N (8.5 μ W/N)1.4 mV/N (0.06 μ W/N)
3.2 m/s (3.4 Hz)Gentle breeze7.4 mV/N (1.7 μ W/N)17.6 mV/N (9.7 μ W/N)
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MDPI and ACS Style

Kang, H.; Han, S.; Kim, Y.-K. Design Optimization of a Small-Scaled Vortex-Induced Vibration Bladeless Wind Turbine with Binary Resonance Controller. Appl. Sci. 2026, 16, 553. https://doi.org/10.3390/app16010553

AMA Style

Kang H, Han S, Kim Y-K. Design Optimization of a Small-Scaled Vortex-Induced Vibration Bladeless Wind Turbine with Binary Resonance Controller. Applied Sciences. 2026; 16(1):553. https://doi.org/10.3390/app16010553

Chicago/Turabian Style

Kang, Heeyun, Susung Han, and Young-Keun Kim. 2026. "Design Optimization of a Small-Scaled Vortex-Induced Vibration Bladeless Wind Turbine with Binary Resonance Controller" Applied Sciences 16, no. 1: 553. https://doi.org/10.3390/app16010553

APA Style

Kang, H., Han, S., & Kim, Y.-K. (2026). Design Optimization of a Small-Scaled Vortex-Induced Vibration Bladeless Wind Turbine with Binary Resonance Controller. Applied Sciences, 16(1), 553. https://doi.org/10.3390/app16010553

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