1. Introduction
Nature has developed various strategies to enhance swimming efficiency while preserving swimming agility. For instance, there has been longstanding hypothesis and research regarding how fish adapt their body kinematics to achieve high swimming efficiency (Taylor, Nudds & Thomas Reference Taylor, Nudds and Thomas2003; Gazzola, Argentina & Mahadevan Reference Gazzola, Argentina and Mahadevan2014). In addition to optimising kinematic properties like the Strouhal number (defined as the ratio of the product of vortex shedding frequency and width of the wake to the swimming velocity) (Triantafyllou, Triantafyllou & Yue Reference Triantafyllou, Triantafyllou and Yue2000), recent research has unveiled that rhythmic perturbations, often considered as ‘noise’ and neglected, can indeed have a positive influence on the hydrodynamic performance of the tethered flapping swimmer (Lehn et al. Reference Lehn, Thornycroft, Lauder and Leftwich2017; Gao, Huang & Pan Reference Gao, Huang and Pan2021). Lehn et al. (Reference Lehn, Thornycroft, Lauder and Leftwich2017)'s study revealed that introducing high-frequency, low-amplitude rhythmic perturbations to a basic sinusoidal oscillation significantly improves thrust and efficiency compared with using a pure basic sinusoidal oscillation. A later study by Gao et al. (Reference Gao, Huang and Pan2021) using computational fluid dynamics (CFD) simulations with a rigid foil flapping in a flow confirmed the increase of thrust with superimposed rhythmic perturbations, but not of efficiency. This poses a question about the factors influencing efficiency since Quinn, Lauder & Smits (Reference Quinn, Lauder and Smits2014) show that the specific stiffness of a foil itself can significantly improve it. As a result, it remains uncertain whether the efficiency improvement observed by Lehn et al. (Reference Lehn, Thornycroft, Lauder and Leftwich2017) comes from the flexibility effect, the perturbations effect, or the combination of flexibility and perturbations effects. To resolve this uncertainty, a further study by Chao et al. (Reference Chao, Jia, Wang, Liberzon, Ravi, Couzin and Li2024) systematically investigated the impact of rhythmic perturbations on both thrust and efficiency through experiments on robotic fish, CFD simulations, and modelling. They identified the critical frequency and amplitude of perturbations, and highlighted the crucial role played by the necessary phase lag between the body motion and resulting fluid dynamics response in improving efficiency.
However, all the aforementioned studies (Lehn et al. Reference Lehn, Thornycroft, Lauder and Leftwich2017; Gao et al. Reference Gao, Huang and Pan2021; Chao et al. Reference Chao, Jia, Wang, Liberzon, Ravi, Couzin and Li2024) were conducted on the tethered flapping foil. While in nature, fish are self-propelled by balancing the propulsive force with drag from water. This results in a positive time-averaged swimming speed and net time-averaged thrust of zero (Carling, Williams & Bowtell Reference Carling, Williams and Bowtell1998). Recently, several investigations have been carried out in the field of self-propulsion, aimed at exploring the impact of various parameters, such as swimming kinematics (Lauder et al. Reference Lauder, Anderson, Tangorra and Madden2007), Reynolds number (Zhang et al. Reference Zhang, Pan, Chao and Zhang2018), foil thickness (Zhang et al. Reference Zhang, Pan, Chao and Zhang2018), foil geometry (Zhang et al. Reference Zhang, Ni, Wang and He2009) and foil flexibility (Zhu, He & Zhang Reference Zhu, He and Zhang2014), on the hydrodynamics of self-propelled bodies (Wang, He & Zhang Reference Wang, He and Zhang2016).
Superimposed rhythmic perturbations of high frequency and low amplitude have shown their capability to enhance both propulsive thrust and efficiency in tethered flapping motion. It is still unclear whether and, if so, how such rhythmic perturbations affect swimming performance during self-propulsion. To address this question, we conducted a comprehensive analysis of the hydrodynamic characteristics of self-propelled pitching and heaving foil using numerical and theoretical methods. The paper is structured as follows: § 2 provides an introduction to the definition of superimposed rhythmic perturbations and outlines the numerical method employed; § 3 presents the numerical results; § 4 gives the mathematical model for predicting the swimming performance; § 5 shows the wake structures generated by the self-propelled foil; and § 6 summarises the findings of our study and provides a conclusion.
2. Problem description and methodology
A two-dimensional tear-shaped rigid foil with a semicircular leading edge of diameter $D$ and chord length $L$ ($D/L = 0.2$) is positioned in a quiescent fluid. The foil is free to move horizontally from right to left, and the foil's swimming direction is the negative $x$-axis (figure 1a). In the self-propelled pitching mode, the foil rotates around the centre of its semicircular leading edge, exhibiting a time-dependent pitching angle $\theta (t)$ that varies during the oscillation (figure 1b). In the self-propelled heaving mode, the foil oscillates transversely to the swimming direction ($y$), where its vertical movement ($y$-direction) is controlled by $h(t)$ (figure 1c).
We have established three modes: the basic mode (BM) characterised by a sinusoidal wave (figure 1d); the perturbation mode (PM) composed of high-frequency, low-amplitude oscillations (figure 1e); and the accumulated mode (AM), which combines the sinusoidal wave (BM) with perturbations (PM) to describe the rhythmic tailbeats of the foil (figure 1f). The definitions of these modes are as follows:
where $A_b(t)$ and $A_p(t)$ denote the time-dependent taibeat amplitude in BM and PM, $A_{b\_{max}}$ and $A_{p\_{max}}$ describe the maximal taibeat amplitude in BM and PM, $f_{b}$ and $f_{p}$ refer to the oscillating frequency in BM and PM, respectively, and $t$ is the time. In the rest of the paper, subscripts $b$ and $a$ refer to BM and AM, respectively. We describe the foil's motions as follows:
where $\theta _{b\_{max}}$ and $\theta _{p\_{max}}$ refer to the maximal pitching angle in BM and PM, respectively. Since the foil thickness is $D/L = 0.2$, we have $\sin (\theta _{b\_{max}}) = A_{b\_{max}} / (L - D/2) = A_{b\_{max}} / 0.9L$ and $\sin (\theta _{p\_{max}}) = A_{p\_{max}} / (L - D/2) = A_{p\_{max}} / 0.9L$ for the pitching mode, respectively. However, $h_{b\_{max}} = A_{b\_{max}}$ and $h_{p\_{max}} = A_{p\_{max}}$ are the maximal heaving distance for the heaving mode in BM and PM, respectively. Without loss of generality, both the self-propelled pitching and heaving modes employ $A_{b\_{max}} = 0.15L$ and $f_b = 1$ Hz in our simulations.
We have introduced non-dimensionalised flapping frequency and amplitude, denoted as
to control the superimposed perturbations. In the present study, we considered $\tilde {f} = 4- 10$ with an interval of $\Delta \tilde {f} = 1$ and $\tilde {A} = 0.01$, 0.02, 0.04, 0.05, 0.06, 0.08 and 0.10. We further defined the swimming number (Gazzola et al. Reference Gazzola, Argentina and Mahadevan2014) ratio as
where $\nu$ is the fluid kinematic viscosity. To describe the swimming efficiency of the self-propelled foil, we employed the energy consumption coefficient $C_E$, defined as $C_E = CoT/\rho \nu ^2$, where $CoT = \bar {P} /\bar {u}$ is the mechanical cost of transport (Bale et al. Reference Bale, Hao, Bhalla and Patankar2014; Zhang, Zhang & Huang Reference Zhang, Zhang and Huang2022), given by the ratio of time-averaged total power ($\bar {P}$) to time-averaged steady swimming speed ($\bar {u}$), and $\rho$ is the fluid (foil) density.
All swimming speeds observed in our simulations are normalised by the foil length $L$. The non-dimensionalised time-averaged swimming speed is defined as
to evaluate the effect of perturbations on the swimming speed generated by self-propelled foils. Furthermore, we defined
to assess whether AM incurs greater energy cost and enhances swimming efficiency, respectively. In (2.5) and (2.6), $\bar {u}_a$ ($\bar {u}_b$), $\bar {P}_a$ ($\bar {P}_b$) and $C_{E\_{a}}$ ($C_{E\_{b}}$) denote the time-averaged swimming speed, time-averaged power cost and swimming efficiency generated by the self-propelled flapping foil undergoing the AM (BM) when the swimming is steady, respectively. A larger $\tilde {u}$ and $\tilde {P}$ indicate AM enjoys a faster swimming speed and greater energy consumption than BM, respectively. For AM, $\tilde {C}_E < 1$ and $\tilde {C}_E > 1$ correspond to improvements and decreases in swimming efficiency compared with the non-perturbed conditions (BM), respectively.
The unsteady flow around the self-propelled foil was simulated using the immersed boundary (IB) method (Peskin Reference Peskin2002). The IB method (also referred to as ‘Cartesian grid methods’) employs a non-body conformal Cartesian grid, where the Cartesian grids are generated regardless of the body surface. As a result, the body surface cuts through this Cartesian grid. Because the grid does not conform to the body surface, imposing the boundary conditions will require modifying the governing equations in the vicinity of the solid boundary. With the precise modifications, the governing equations can be discretized without resorting to coordinate transformation or complex discretization operators. More details about the IB method and relevant mathematical formulation can be found from Mittal & Iaccarino (Reference Mittal and Iaccarino2005) and Griffith & Patankar (Reference Griffith and Patankar2020). We employed the open-source CFD software IBAMR to conduct the numerical investigations (IBAMR 2014). This software has been widely employed to gain insights into the hydrodynamics of fish-like swimming (Bhalla et al. Reference Bhalla, Bale, Griffith and Patankar2013a; Bhalla, Griffith & Patankar Reference Bhalla, Griffith and Patankar2013b; Tytell et al. Reference Tytell, Leftwich, Hsu, Griffith, Cohen, Smits, Hamlet and Fauci2016; Hoover et al. Reference Hoover, Cortez, Tytell and Fauci2018; Zhang et al. Reference Zhang, Pan, Chao and Zhang2018; Yang & Wu Reference Yang and Wu2022; Chao, Bhalla & Li Reference Chao, Bhalla and Li2023). In our research, we adopted a computational domain in the form of a rectangular box measuring $80 \times 20 L$, with periodic boundary conditions applied along the axial direction and no-slip boundary conditions imposed in the lateral direction (figure 1a). To ensure statistically steady swimming, all cases were simulated for twenty normalised swimming periods $t^{*} = tf_b$.
The grid and time step size convergence study is conducted for both the self-propelled pitching and heaving mode with the most strenuous parameter values of $(\,\tilde {f}, \tilde {A}) = (10, 0.10)$. For the grid convergence study, three different grids with uniform mesh spacings of $\Delta x/L = \Delta y/L = 0.008$ (M1), 0.005 (M2) and 0.002 (M3) are considered. The time step size is fixed at $\Delta t \times f_p = 0.001$. Figures 2(a) and 2(c) present the instantaneous swimming velocity $u_{pitching}$ (self-propelled pitching mode) and $u_{heaving}$ (self-propelled heaving mode) for the three grids, respectively. Table 1 lists the time-averaged steady swimming speeds derived from the self-propelled pitching ($\bar {u}_{pitching}$) and heaving ($\bar {u}_{heaving}$) mode. There is a relatively small difference between M2 and M3, i.e. $\Delta \bar {u}_{pitching} = 0.712\,\%$ and $\Delta \bar {u}_{heaving} = 1.270\,\%$. For the remainder of the simulations, mesh M2 is selected. Using M2, the time step size convergence study is performed by selecting three values of $\Delta t \times f_p$: $\Delta t \times f_p = 0.01$ ($\Delta t1$), 0.001 ($\Delta t2$) and 0.0005 ($\Delta t3$). The difference between the time-dependent swimming speed using $\Delta t2$ and $\Delta t3$ is negligible (figure 2b,d), where $\Delta \bar {u}_{pitching}$ and $\Delta \bar {u}_{heaving}$ is less than $1.0\,\%$ (table 2). Grid M2 and time step size $\Delta t2$ are selected based on accuracy and computational resources for the remainder of the simulations. More convergence studies related to the numerical method can be found in our previous study (Chao et al. Reference Chao, Bhalla and Li2023).
3. Results
3.1. Self-propelled pitching mode
Figures 3(a) and 3(b) illustrate the dependence of $\tilde {u}$ and $\tilde {P}$ on the $\tilde {f}$ and $\tilde {A}$ when the foil undergoes the self-propelled pitching motion, respectively. Both $\tilde {u}$ and $\tilde {P}$ increase as $\tilde {f}$ and/or $\tilde {A}$ increase. This indicates that stronger perturbations lead to increased energy consumption and faster swimming speeds. Furthermore, all non-dimensionalised $\tilde {u}$ values are greater than one (figure 3a), suggesting that perturbations consistently enhance the swimming speed of a self-propelled pitching foil. The non-dimensionalised swimming efficiency parameter, $\tilde {C}_E$, also exhibits a positive correlation with $\tilde {f}$ and $\tilde {A}$ (figure 3c). Notably, $\tilde {C}_E > 1$ indicates lower swimming efficiency for the self-propelled pitching foil, signifying that superimposed rhythmic perturbations reduce swimming efficiency.
We conducted further investigations to examine the impact of perturbations on the instantaneous swimming speed of the self-propelled pitching foil as it approaches a time-averaged steady swimming state in four representative scenarios: BM, $(\,\tilde {f}, \tilde {A}) = (5, 0.05)$, $(\,\tilde {f}, \tilde {A}) = (5, 0.10)$ and $(\,\tilde {f}, \tilde {A}) = (10, 0.10)$. As shown in figure 3(d,e), it becomes evident that stronger perturbations lead to more pronounced fluctuations in $u_{pitching}$. We introduced
to quantify these fluctuations and compare the fluctuations generated by the BM and AM, where $u_{pitching\_{max}\_{a}}$ is the maximal instantaneous swimming speed generated in AM, $u_{pitching\_{min}\_{a}}$ is the minimal instantaneous swimming speed generated in AM, $u_{pitching\_{max}\_{b}}$ is the maximal instantaneous swimming speed generated in BM and $u_{pitching\_{min}\_{b}}$ is the minimal instantaneous swimming speed generated in BM. As figure 3(f) illustrates, an increase in $\tilde {f}$ and/or $\tilde {A}$ results in higher values of $\Delta u^{*}_{pitching}$. However, it is noted that there is no direct relationship between the $\Delta u^{*}_{pitching}$, represented by the non-dimensionalised fluctuations of the $u_{pitching}$, and the $\tilde {u}$, described by the non-dimensionalised mean value of the $u_{pitching}$, as both $\Delta u^{*}_{pitching}$ and $\tilde {u}$ positively increase with increasing $\tilde {f}$ and/or $\tilde {A}$ (figure 3a,f).
3.2. Self-propelled heaving mode
In a manner similar to the self-propelled pitching mode, the introduction of perturbations enhances the swimming speed of the self-propelled heaving foil with an increase in $\tilde {f}$ and/or $\tilde {A}$ (figure 4a). Comparison between figures 3(a) and 4(a) reveals that the maximal difference in $\tilde {u}$ between the self-propelled pitching and heaving modes is only 3 % ($\tilde {u} = 154\,\%$ and 157 % for self-propelled pitching and heaving modes, respectively). This suggests that perturbations play a similar role in affecting the steady swimming speed of the self-propelled flapping foil in both modes. Figure 4(b) demonstrates a positive correlation between $\tilde {P}$ and $\tilde {f}$ as well as $\tilde {A}$. Particularly, $\tilde {P} < 1.0$ when $\tilde {f}\tilde {A} < 0.47$ (as indicated by the red dashed line in the figure), implying that the foil undergoing AM with $\tilde {f}\tilde {A} < 0.47$ consumes less energy compared with the BM. As the power exchange between the heaving foil and fluid in our study is analogous to that between a cylinder undergoing prescribed or flow-induced oscillations transversely to the free stream (Han et al. Reference Han, Huang, Qin, Wang and Zhao2023), we argue that the reduction in energy cost arises from a decrease in the phase lag $\phi$ between the body motion and the resulting fluid dynamics response. Further discussions are provided in the subsequent section. Given the emergence of energy savings, it is worthwhile to investigate whether the addition of perturbations improves the swimming efficiency of the self-propelled heaving foil. As illustrated in figure 4(c), $\tilde {C}_E < 1.0$ is observed when $\tilde {f}^2\tilde {A} < 1.53$, located at the bottom-left side of the $\tilde {f}-\tilde {A}$ map. This result demonstrates that superimposed rhythmic perturbations of high-frequency and low-amplitude can enhance both the swimming speed and efficiency of a self-propelled heaving foil, consistent with the findings in Lehn et al. (Reference Lehn, Thornycroft, Lauder and Leftwich2017)'s study on the tethered heaving foil.
Figure 4(d) displays the instantaneous swimming speed $u_{heaving}$. It becomes evident that perturbations enhance both $u_{heaving\_{max}\_a}$ and $u_{heaving\_{min}\_a}$ in the self-propelled heaving mode (figure 4e), whereas they do not significantly affect $u_{pitching\_{min}\_a}$ in the self-propelled pitching mode when $\tilde {f}$ is smaller (figure 3e). Interestingly, figure 4(f) reveals that the impact of perturbations on the fluctuation of $\Delta u^{*}_{heaving}$ (defined similarly to $\Delta u^{*}_{pitching}$) is not substantial, with $\Delta u^{*}_{heaving} < 2.0$ in all cases. This observation suggests that the self-propelled heaving mode with perturbations results in a more stable swimming performance compared with the self-propelled pitching mode. It is also noted that the $\Delta u^{*}_{heaving}$ approaches to 1.0 when $\tilde {f}\tilde {A} < 0.47$, suggesting the foil would not generate a more fluctuated swimming speed compared with BM at $\tilde {P} < 1.0$ even though the perturbations have been superimposed into the base flapping motion. Furthermore, we shown more numerical results corresponding to the two-freedom self-propelled motion (foil can freely move in both $x$- and $y$-directions) in Appendix A.
4. Scaling laws
4.1. Scaling for swimming speeds
To better understand how perturbations ($\,\tilde {f}$ and $\tilde {A}$) affect the non-dimensionalised swimming speed ($\tilde {u}$) of a self-propelled pitching/heaving foil, we derived scaling laws by balancing time-averaged inertial forces $\bar {F}_I = ({1}/{nt^*}) \int _{\alpha }^{\alpha +nt^*} F_I \,\textrm {d}t^*$ and viscous drag $\bar {F}_D = ({1}/{nt^*}) \int _{\alpha }^{\alpha +nt^*} F_D \,\textrm {d}t^*$ when the time-averaged swimming speed is steady, where $\alpha$ denotes arbitrary normalised time. For the per unit depth scales, we have $F_I \sim \rho V_{lateral}^2 L$ and $F_D \sim \mu ({u}/{\delta })L$, where $\mu = \rho \nu$ is the fluid viscosity, $\delta \sim L/\sqrt {Re}$ is the boundary layer thickness (Gazzola et al. Reference Gazzola, Argentina and Mahadevan2014), $Re = u L/ \nu$ is the Reynolds number, and $V_{lateral}$ denotes the foil's lateral velocity and can be derived from the foil's kinematic equations:
Considering a small $\theta _{b\_max}$ and even smaller $\theta _{p\_max}$ in pitching mode, we get $\cos [\theta _b(t)] \approx \cos [\theta _a(t)] \approx 1$. Equation (4.1) further suggests
By balancing $\bar {F}_I$ and $\bar {F}_D$, we obtain
resulting in
Recalling $Sw_p = {2{\rm \pi} L f_p A_{p\_{max}}}/{\nu }$ and $Sw_b = {2{\rm \pi} L f_b A_{b\_{max}}}/{\nu }$ (2.4), we naturally have
Equation (4.5) further reveals $Re_{b} \sim Sw_{b}^{4/3}$ for BM, conforming with the works of Gazzola et al. (Reference Gazzola, Argentina and Mahadevan2014), while $Re_{a} \sim (Sw_{b}^{2} + Sw_{p}^{2})^{2/3}$ for AM in the viscous flow.
Based on (2.5) and (4.5), we naturally obtain
where $\tilde {u}$ is always larger than 1 (4.6, figures 3a and 4a), suggesting that perturbations can constantly improve the time-averaged swimming speeds of the self-propelled foil.
4.2. Scaling for power costs
As mentioned in § 3.2, the phase lag between the foil motion and the resulting fluid dynamics response plays an important role in affecting the power cost of a self-propelled flapping foil. Therefore, we first introduce the definitions of the phase lag in the self-propelled pitching and heaving mode before the derivation of the power cost scaling. Figure 5(a) reveals that the flow-induced torque $M_f(t)$ provided by BM remains at the same frequency with foil pitching acceleration $\ddot {\theta }(t)$, while the perturbation dominates the $M_f(t)$ profile in AM. Particularly, a phase lag $\phi$ exists between $M_f(t)$ and $\ddot {\theta }(t)$. Similarly, we can also observe a phase lag between flow-induced lift $L_f(t)$ and foil heaving acceleration $\ddot {h}(t)$ in the self-propelled heaving mode (figure 5d). As the state of a vibrating curve can be modelled as a point in a Hilbert space, we use the Hilbert transform to calculate $\phi _{b}$ and $\phi _{a}$ (Williamson & Govardhan Reference Williamson and Govardhan2004) referred to as the BM-based and AM-based phase lag, respectively. Figure 5(b,e) reveals that $\sin (\phi _{a})/\sin (\phi _{b})$ decreases with an increase of $\tilde {f}$ and/or $\tilde {A}$. This tendency is attributed to the high-frequency components introduced by superimposed perturbations, which induce rapid transitions in flapping velocity and thus accelerate the response of the fluid dynamics to the flapping motion. Particularly, the minimal $\sin (\phi _{a})/\sin (\phi _{b})$ values at the specific $\tilde {f}$ agree well with the data-driven $\tilde {P} = 1$ line in self-propelled heaving mode (figure 5e), suggesting this phase lag is a critical parameter in affecting the power cost. Naturally, $\sin (\phi _{a})/\sin (\phi _{b})$ is a function of $\tilde {f}$ and $\tilde {A}$, and these functions corresponding to self-propelled pitching and heaving mode are fitted as
Figure 5(c,f) demonstrates a good match between the numerical results and the fitted equation. However, the fitted equations also indicate that the relationship between phase difference and superimposed perturbation is highly complex.
We now go back to the power cost scaling. For the pitching foil, the time-averaged power cost is considered as the product of the net torque $M(t^*) = M_{i}(t^*) - M_{f}(t^*)$ and $\dot {\theta }(t^*)$, i.e.
where inertial torque $M_i(t^*) = J\ddot {\theta }(t^*)$ with the mass moment of inertia of the foil $J$ and flow-induced torque $M_{f}(t^*) = - c_{1}\ddot {\epsilon }(t^*) - c_{2}u \dot {\epsilon } (t^*)$ with two positive coefficients $c_1 \sim L^{4}$ and $c_2 \sim L^{3}$. Here, $\ddot {\epsilon }(t^*) = \ddot {\theta }(t^* + \phi )$ and $u\dot {\epsilon }(t^*) = u\dot {\theta }(t^* + \phi )$ are sourced from the Euler angular acceleration and Coriolis acceleration of the fluid around the foil (Alam & Muhammad Reference Alam and Muhammad2020), respectively. This phase lag $\phi$, driven by diffusion-convection of the vorticity layer generated on the foil surface, corresponding to the flow retardation effect (Granger & Païdoussis Reference Granger and Païdoussis1996; Chao et al. Reference Chao, Jia, Wang, Liberzon, Ravi, Couzin and Li2024), is crucial in transferring power between the body and fluid (Han et al. Reference Han, Huang, Qin, Wang and Zhao2023).
Note $\int _{\alpha }^{\alpha +nt^*} M_i(t^*)\dot {\theta }(t^*) \,\textrm {d}t^* = \int _{\alpha }^{\alpha +nt^*} J\ddot {\theta }(t^*)\dot {\theta }(t^*) \,\textrm {d}t^* = 0$, and the power cost is actually the integral of the product of $M_f (t^*)$ and $\dot {\theta }(t^*)$. We first calculate the flow-induced torque, as
where $\phi _b$ and $\phi _a$ refer to the phase lag in BM and AM, respectively. The $\dot {\theta }(t)$ can be directly obtained from the kinematics, as
Therefore, time-averaged power costs read as
with the positive coefficient $c_3$. Then, we have the $\tilde {P}$ scaling for the pitching foil as
where $c_4$ is a positive coefficient. For the low-amplitude pitching, we have $\tilde {\theta } = \theta _{p\_max} / \theta _{b\_max} = A_{p\_max}/ A_{b\_max} = \tilde {A}$ and $\theta _{p\_max} \approx 0$, and therefore
Similar to the pitching motion, we have the time-averaged power cost of the heaving foil as
where $L_i(t^*)$ and $L_{f}(t^*)$ refer to the inertial and flow-induced lift, respectively, and $L_i(t^*) \sim \ddot {h}(t^*)$. Different from the condition in self-propelled pitching mode, we have $L_{f}(t^*) = -c_{5}\ddot {\epsilon }(t^*)$ with a coefficient $c_5$. Therefore, we have
where $\tilde {A} = \tilde {h} = h_{p\_max} / h_{b\_max}$.
Overall, the scaling for power costs is
Equation (4.16) suggests that the power costs increase in AM is not only dependent on the input perturbations ($\,\tilde {f}$ and $\tilde {A}$), but also affected by the phase lag between the foil motion and the resulting fluid dynamic response. Even with the same input perturbations, the different flapping kinematics may generate different phase lags (figure 5b,e), therefore resulting in different power costs (figures 3b,4b).
4.3. Scaling for swimming efficiencies
Based on (4.6) and (4.16), the non-dimensionalised swimming efficiency $\tilde {C}_E$ can be scaled as
Equation (4.17) suggests that the efficiency improvement sourced from adding perturbations is affected by the non-dimensionalised amplitude, non-dimensionalised swimming number and phase lag. Referring to the research conducted by Floryan, Van Buren & Smits (Reference Floryan, Van Buren and Smits2018), the authors noted that the efficiency of a flapping foil is governed by both the flapping amplitude and the Strouhal number, a pattern akin to our (4.17). In particular, we demonstrated that the efficiency of a self-propelled foil can be enhanced by reducing the phase lag between the foil motion and the resulting fluid dynamics response.
To assess the compatibility of the scaling laws mentioned above with the simulated data of the self-propelled flapping foil, we created plots of $\tilde {u}$, $\tilde {P}$ and $\tilde {C}_E$ against the parameters associated with perturbations: $(1+\widetilde {Sw}^{2})^{2/3}$, $1 + \tilde {A}^{-1}Sw^{3}$ and $(1 + \tilde{A}^{-1}Sw^{3})/(1+\widetilde {Sw}^{2})^{2/3}$. These are presented in figure 6(a–c) for the self-propelled pitching mode and in figure 6(d–f) for the self-propelled heaving mode. The numerical data align remarkably well on a single linear curve, suggesting that the current scaling laws can accurately predict the hydrodynamic performance of self-propelled foils undergoing flapping with superimposed perturbations.
5. Wake structures
Several distinguished wake structures generated by the self-propelled pitching foil are identified: reverse Kármán vortex (RKV) wake, symmetric wake (SW) I, symmetric wake (SW) II-A, symmetric wake (SW) II-B, asymmetric wake (AsW) I, asymmetric wake (AsW) II and 2P wake (Williamson & Roshko Reference Williamson and Roshko1988). The representative flow structures and their presence in the $\tilde {f} - \tilde {A}$ domain are shown in figure 7. The classical RKV wake is observed when the pitching foil employs BM, where the vortices from a side of the foil take the opposite side of the wake (figure 7b). When $\tilde {f}$ is an odd number ($\,\tilde {f} = 5,\ 7,\ 9$), the symmetric wake, including SW I, SW II-A and SW II-B, emerges behind the foil depending on both $\tilde {f}$ and $\tilde {A}$. The SW I forming as the RKV wake is observed at $\tilde {f} = 5$ and $(\,\tilde {f}, \tilde {A}) = (7, 0.01)$ (figure 7c). The emergence of the SW I is found at $(\,\tilde {f}, \tilde {A}) = (7, 0.02)$ and ($\,\tilde {f} = 9$, $\tilde {A} \leq 0.05$), where the wake involves the primary vortex (PV) and secondary vortex (SV) (figure 7d). The PV consists of a stronger main vortex pair occupied the position behind the foil's symmetric line, and weaker negative/positive vorticity located at the upper and bottom sides of the main vortex pair, respectively, while the SV forms the RKV wake. With a little increase in $\tilde {f}$ and /or $\tilde {A}$, the SW II-A transmutes to SW II-B (figure 7e), where the SV transits from the reverse Kármán vortex wake to the Kármán vortex (KV) wake. The asymmetric wake (AsW I and II) and 2P wake are observed when $\tilde {f}$ is an even number ($\,\tilde {f} = 4,\ 6,\ 8,\ 10$). The AsW I dominates the majority of the $\tilde {f} - \tilde {A}$ domain, manifesting as a downward deflection of the RKV wake (figure 7f). When $(\,\tilde {f}, \tilde {A}) = (8, 0.10)$, the vortices close to the foil's trailing edge fail to rapidly coalesce into a stronger vortex core, giving rise to the PV resembling 2P wake. Conversely, vortices farther from the foil's trailing edge evolve and experience viscous effects, forming a deflected RKV wake (figure 7g). The 2P wake is observed at $(\,\tilde {f}, \tilde {A}) = (10, 0.10)$. It is noted that the deflection of wake structure is influenced by whether $\tilde {f}$ is an odd or even number. When $\tilde {f}$ is an odd number, PM and BM are in phase, meaning that perturbations amplify the maximum flapping amplitude at $t/T_b = 0.25$. However, the flapping amplitude under AM is equal to that under BM when $\tilde {f}$ is an even number and $t/T_b = 0.25$, while the emergency of the maximum flapping amplitude is advanced (figure 8).
Compared with the wake structures generated by the self-propelled pitching foil, the relationship between flow patterns provided by the self-propelled heaving foil and superimposed perturbations ($\,\tilde {f}$, $\tilde {A}$) is intricate (figure 9a). When the heaving foil undergoes the BM, it generates a symmetric wake composed of the PV, SV and tertiary vortex (TV): the PV takes shape as a 2P wake, the SV incorporates a main KV wake positioned behind the foil's symmetry line, with weaker positive/negative vorticity located on the upper and lower sides of the main KV wake, respectively, and the TV manifests as the RKV wake (figure 9b). As the flow patterns generated by the self-propelled heaving foil are complicated, we considered the symmetry of wake structures only from the PV. Only PV and SV are considered when the wake structures produced by the AM are identified. When the self-propelled heaving foil generates the symmetric wake (SW I, II and III), the PV constantly forms as the 2P wake, while the SV can be the deflected RKV wake (SW I, figure 9c), the main RKV wake positioned behind the foil's symmetry line (SW II, figure 9d), and the chaotic wake (SW III, figure 9e). The AsW describes the bifurcation flow deflected upwards or downwards (figure 9f). The CW (chaotic wake) is obscure, and we cannot identify meaningful $m$P$+ n$S vortex structures (Williamson & Roshko Reference Williamson and Roshko1988) from this flow field. Furthermore, The influence of the odd or even nature of $\tilde {f}$ on the flow structures is only significant when $\tilde {A} = 0.01$.
In previous studies, researchers reported a smooth increase in propulsive force with an increase in flapping frequency and/or amplitude, accompanied by a smooth transition of the flow structures provided by the tethered flapping foil (KV $\rightarrow$ RKV $\rightarrow$ deflected RKV wake) (Godoy-Diana, Aider & Wesfreid Reference Godoy-Diana, Aider and Wesfreid2008; Andersen et al. Reference Andersen, Bohr, Schnipper and Walther2017; Chao, Alam & Ji Reference Chao, Alam and Ji2021). However, we found that the swimming speed produced by the self-propelled pitching/heaving foil with perturbations smoothly increases with the increment of $\tilde {f}$ and $\tilde {A}$, while the transition of the wake structures is not smooth. This observation raises a question: Could swimmers’ wake structures be reliable for predicting swimming performance? In the studies on the tethered flapping foil, some researchers suggested that the wake structures can be the footprints of a flapping foil and be used to predict the force generation (Zhang Reference Zhang2017), while others suggested that the swimmers’ wake structures are not reliable indicators of swimming performance (Floryan, Van Buren & Smits Reference Floryan, Van Buren and Smits2020). Due to our results indicating that the speed generation of self-propelled flapping foil largely aligns with the predictions of linear theory (Garrick Reference Garrick1936), we argue that the mode of the vortex wakes behind a self-propelled flapping foil with perturbations seems to be a remnant of speed generation, rather than a driver (Mackowski & Williamson Reference Mackowski and Williamson2015). Wake structures generated by the self-propelled flapping foil are shown in Appendix B (figures 12 and 13) and supplementary movie 1 available at https://doi.org/10.1017/jfm.2024.262.
6. Conclusions
In this study, we conducted a systematic investigation into the influence of superimposed rhythmic perturbations characterised by high-frequency and low-amplitude on the performance of a self-propelled flapping foil. Our results showed a notable enhancement in time-averaged swimming speeds with the introduction of these perturbations. Stronger perturbations lead to faster swimming speeds. Particularly, we also observed that appropriate perturbation inputs can significantly improve the swimming efficiency of the self-propelled heaving foil. To explain these phenomena, we established scaling laws to elucidate how these perturbations influence swimming speed and efficiency in self-propelled bodies, focusing particularly on the importance of phase lag between the foil motion and the resulting fluid dynamics response in modulating power exchange. Overall, our results upend the standard belief that categorises high-frequency and low-amplitude perturbations as insignificant ‘noise.’ Our data suggest that these perturbations may actually be ‘auspiciousness’, positively affecting swimming performance.
The effect of low-amplitude and high-frequency flapping on the flyer's performance has also been studied in previous works (Cleaver Reference Cleaver2011; Cleaver et al. Reference Cleaver, Wang, Gursul and Visbal2011). For instance, Bomphrey et al. (Reference Bomphrey, Nakatai, Phillips and Walker2017) revealed that mosquitoes can capture the power of shedding vortex through low-amplitude and high-frequency flapping motion. For swimming organisms, the coupling between perturbations and fundamental pitching/heaving movements can be considered as the passive/active response of the organisms’ muscles. On the one hand, perturbations may be regarded as passive vibrations of muscles in response to the coupling between fish motion and the surrounding flow field (Fish & Lauder Reference Fish and Lauder2006), essentially representing the dynamic response of organisms to their environment. On the other hand, organisms may actively generate these perturbations to alter the flow field around them, adapting to different motion requirements or environmental conditions. However, it is difficult to observe significant muscle motions sourced from perturbations. We speculate that these perturbations may exist at the microscopic level, and they may be more pronounced during the early stages of fish development since the larval fish exhibit more random body waves while adults exhibit clearer stereotypical sinusoidal tailbeat kinematics (Muller & Van Leeuwen Reference Muller and Van Leeuwen2004).
Examining the effects of high-frequency, low-amplitude superimposed perturbations provides a promising path for future research (such as the flapping motion combined with both pitching and heaving motions, Appendix C). These perturbations more closely mimic the complex environmental challenges faced by organisms in their natural habitats, such as the turbulent eddies accompanying aquatic locomotion. Our findings lay the groundwork for practical applications, suggesting that careful use of these perturbations can bring substantial benefits. Specifically, we foresee potential improvements in thrust and efficiency across a wide range of underwater robotic technologies and propulsion systems.
Supplementary movie
Supplementary movie is available at https://doi.org/10.1017/jfm.2024.262.
Acknowledgements
We thank the five anonymous reviewers for their constructive comments and suggestions.
Funding
L.-M.C. and L.L. acknowledge funding support from the Max-Planck Society, the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) under Germany's Excellence Strategy – EXC 2117-422037984, the Sino-German Centre in Beijing for generous funding of the Sino-German mobility grant M-0541 and Messmer Foundation Research Award.
Declaration of interests
The authors report no conflict of interest.
Appendix A. Two-freedom self-propelled motion
We have also simulated the self-propulsion of the flapping foil where the foil can freely move in both the horizontal ($x$) and lateral ($y$) directions simultaneously (two-freedom self-propelled motion). The $\tilde {f}$ ranges from 5 to 10 with an interval of 1, and $\tilde {A} = 0.02- 0.10$ with an interval of 0.02. Figure 10(a–c) illustrates the dependence of the $\tilde {u}$, $\tilde {P}$ and $\tilde {C}_E$ on the $\tilde {f}$ and $\tilde {A}$ when the foil undergoes two-freedom self-propelled pitching motion. Similar to the results of one-freedom motion, $\tilde {u}$, $\tilde {P}$ and $\tilde {C}_E$ increase with an increase in $\tilde {f}$ and/or $\tilde {A}$, suggesting the superimposed perturbations can improve the swimming speed but cannot improve the swimming efficiency in the self-propelled pitching mode. Particularly, we found that the two-freedom motion with perturbations needs more power to generate the forward swimming since the $\tilde {P}$ in figure 10(b) is larger than that in figure 3(b) with the specific ($\,\tilde {f}$, $\tilde {A}$). We further considered the feasibility of our scaling laws when the foil undergoes two-freedom self-propelled motion. As shown in figures 10(d)–10(f), the $\tilde {u}$, $\tilde {P}$ and $\tilde {C}_E$ linearly relate to the $(1 + \widetilde {Sw}^2)^{2/3}$, $1 + \tilde {A}^{-1}\widetilde {Sw}^3$ and $(1 + \tilde {A}^{-1}\widetilde {Sw}^3)/(1 + \widetilde {Sw}^2)^{2/3}$, respectively, where the slope of $\tilde {P}$ and $\tilde {C}_E$ scaling lines in two-freedom self-propelled motion is larger than that in one-freedom self-propelled motion. However, we found that the fitting performance at $(\,\tilde {f}, \tilde {A}) = (10, 0.10)$ is unsatisfactory, suggesting that our scaling law has some limitations in describing two-freedom self-propelled motion with greater superimposed perturbations.
However, the self-propelled heaving foil cannot generate effective swimming speed when it moves freely in both $x$- and $y$-directions. As shown in figure 11, both BM and AM provide the time-mean horizontal and lateral swimming speeds approaching zero after long-term simulations ($t^{*} = t/T_b = 100$). Considering that the self-propulsion arises from the balance between the inertia and viscous forces, we argue the present symmetric heaving motion with a smaller amplitude and zero angle of attack cannot generate effective thrust. Furthermore, we also noted that the previous works on the self-propelled heaving body were mainly conducted on the one-freedom motion (Zhang et al. Reference Zhang, Ni, Wang and He2009; Becker et al. Reference Becker, Masoud, Newbolt, Shelley and Ristroph2015; Marquet et al. Reference Marquet, Ramosand, Bergmann and Iollo2021).
Appendix C. Self-propelled pitching $+$ heaving motion
We further simulated the swimming performance of the self-propelled foil undergoing the combined pitching and heaving motion (figure 14a). The kinematics of the BM is defined as
where $\psi$ is the phase angle by which pitching motion leads to heaving motion. For BM, we considered $\sin (\theta _{b\_{max}}) = 0.15/0.9$, $h_{b\_{max}}/L = 0.15$, $\psi = 0$ and $f_b = 1$ Hz.
Since the perturbations can be superimposed into pitching motion:
heaving motion:
or both pitching and heaving motion:
three scenarios, including pitching with perturbations $+$ heaving motion, pitching $+$ heaving with perturbations motion, and pitching with perturbations $+$ heaving with perturbations motion, are considered. In each scenario, we considered $\tilde {A} = 0.06$ and varied $\tilde {f} = 5 - 10$ with an interval of $\Delta \tilde {f} = 1$ to study how different perturbations frequencies affect the swimming performance, and we fixed $\tilde {f} = 7$ and varied $\tilde {A} = 0.02- 0.10$ with an interval of $\Delta \tilde {A} = 0.02$ to study the effects of perturbations amplitude.
As shown in figure 14(b–d), $\tilde {u}$ increases with an increase in $\tilde {f}$, while $\tilde {P}$ and $\tilde {C}_E$ first increase and then decrease when $\tilde {f}$ increases, with the minimal $\tilde {P}$ and $\tilde {C}_E$ obtained at $\tilde {f} = 6$. Figure 14(e–g) reveals that $\tilde {u}$, $\tilde {P}$ and $\tilde {C}_E$ increase with an increase in $\tilde {A}$. Particularly, figure 14(b–g) suggests that the kinematics combined pitching motion with perturbations and heaving motion with perturbations consume larger power and generate faster swimming speed, while the kinematics combined pitching motion with perturbations and heaving motion consume less power and generate slower swimming speed compared with other scenarios. Although we have not found energy saving in the present cases, we cannot reject the hypothesis that the self-propelled pitching + heaving motion would improve both swimming speed and efficiency generation since the interactions between pitching + heaving motion and relative perturbations are complicated. In future work, we will consider more conditions, such as refining the effect of the perturbation in the $\tilde {f} - \tilde {A}$ domain, superimposing the same/different perturbations into the pitching and heaving motion, and studying the effects of $\psi$ values (or the maximal angle of attack).