Not applicable.
(1) Field of the Invention
The present invention relates to transducers, and more specifically to an acoustic wave transducer that functions based on the same transduction principles found in cicadas, designed by means of efficient computation of the higher order (i.e., nonlinear) kernels in a Volterra or Wiener expansion used to validate the transducer model.
(2) Description of the Prior Art
Cicadas emit one of the loudest sounds in all of the insect population despite their relatively small size. A cicada's sound production system allows for propagation distances of approximately one quarter of a mile for the periodic cicada and beyond a mile for some annual cicadas. The sound level for some species is over 120 dB relative to (the intensity of a plane wave of) pressure equal to 20 micro-Pascals. This represents an exceptional transmission distance for the size of the sound production system. The cicada's highly effective sound-production system occupies a physical space typically less than 3 cubic centimeters. Males create sound by flexing a pair of ridged abdominal membranes called tymbals. The cicada uses its tymbal muscle to pull the tymbal, which causes the tymbal ribs to buckle releasing sound impulses. The sounds made by these tymbals are amplified by the hollow abdomen functioning as a tuned resonator. The cicada song has been classically modeled using linear mathematical methods. Unfortunately, these linear methods are insufficient for a true model of the system because the non-elastic (i.e., nonlinear) buckling tymbals of the cicada sound production system are essential to the acoustic level and propagation of the sound. The present invention is a method and apparatus that emulates the cicada sound production system. This bio-inspired method and apparatus potentially provides a precision method for improved detection, classification and generation of acoustic signals in air and in water.
Most acoustic signal processing methods in use today are based on a first order (linear) kernel estimation. Whenever higher order kernels exist in physical systems, these kernels will masquerade as noise in a first order approximation. By uncovering the higher order kernels in physical systems, new possibilities exist for achieving significant computational gains in receiver signal-to-background interference levels not possible using linear methods. Moreover, the signal content of these higher order kernels, once detected, can provide new and useful information about an acoustic signal source.
Previous work in acoustic signal processing has demonstrated a utility in the application of the Volterra series expansion and other nonlinear methods for the exploitation of signals via application of a Volterra and/or Wiener signal processing procedure to measure and quantify higher-order non-linearities. The present invention teaches a signal processing breakthrough that significantly alleviates the “Curse of Dimensionality” (COD) in the characterization of nonlinear physical systems; namely, the reduction in the number of coefficients used to describe the higher order (i.e., nonlinear) kernels in the Volterra series expansion used to validate the finite element (FE) model that is instrumental in the development of the transducer model. The latter technique provides the means to evaluate simultaneously from a wide band excitation, all the inter-modulation products up to a specified order by greatly reducing the number of coefficients in the higher order kernel estimation to a manageable set that can be easily manipulated by current personal computers.
It is a general purpose and object of the present invention to provide a method and apparatus that emulates the cicada sound production system.
It is also an object to uncover the higher order kernels in acoustic signal processing methods.
This object is accomplished by a signal processing breakthrough that significantly alleviates the “Curse of Dimensionality” (COD) in the characterization of nonlinear physical systems; namely, the reduction in the number of coefficients used to describe the higher order (i.e., nonlinear) kernels in the Volterra series expansion. The latter technique provides the means to evaluate simultaneously from a wide band excitation, all the inter-modulation products up to a specified order by greatly reducing the number of coefficients in the higher order kernel estimation to a manageable set that can be easily manipulated by current personal computers used to validate the finite element (FE) model that is instrumental in the development of the transducer model.
A more complete understanding of the invention and many of the attendant advantages thereto will be readily appreciated and understood by referencing the following detailed description when considered in conjunction with the accompanying drawings wherein:
To generate an accurate description of the acoustics of cicada sound production system, the physical dimensions and anatomical features of the cicada must be understood through a Finite Element (FE) model. The general functionality of the cicada's anatomy is accurately described in the scientific literature; although, the explicit details of the functionality are not known. Previous apparatus that has been based upon the cicada tymbal buckling does not accurately represent the structural acoustics produced by the insect as the present invention does. In a preferred embodiment, the core anatomy cicada sound production system is executed in a Finite Element (FE) computer model. The acoustical sounds are created by invoking an appropriate forcing function applied to the tymbal in order to simulate muscle motion (i.e., contraction and expansion) and tymbal rib buckling. In order to produce the acoustics, these anatomical structures are placed in a surrounding fluid of air and the forcing function loads are applied to the appropriate elements in the model to generate the sound. Alternatively, this finite element model is simulated in water in which hydrodynamic effects are compensated for as well.
There are several steps in the translation of the FE model to a working device. The material properties designed by the FE model are translated into a transducer device as illustrated in
The input force provided by the muscle contraction and expansion and subsequent inner and outer buckling of the tymbal ribs is represented by the force FT(t). The subscripts (T and A) stand for tymbal and abdomen, respectively. The tymbal vibrational system is represented by the equivalent stiffness KT(xT), moving mass MT(xT), and loss element RT. The tymbal displacement is given by xT. The lumped elements of the spring mass damper system 19 of
The wiring model 19 in
Equation (1) is a nonlinear system of ordinary differential equations representing the models in
The results of the dynamic analyses were done with slightly different values of the dynamic stiffness, once the ribs start to buckle, the stiffness of the ribs were set to zero, and the only remaining stiffness was the dorsal pad.
Referring now to
The Volterra-Wiener model assesses the higher-order dynamics present in both the cicada and transducer 100 acoustic wave forms. Then, the FE-based model provides the material properties used in the design of the transducer model. Using the experimental data obtained from live insect vocalizations, the Volterra-Wiener expansion model authenticates the emulated sound outputs. The nonlinear sound production system apparatus creates the high-order structural acoustics found in actual cicada vocalizations.
Nonlinear system excitation x(t) is sampled at frequency fs Hz, resulting in time-sampling increment Δ=1/fs seconds and sampled sequence {x(nΔ)}. For simplicity of notation, the Δ symbol will be suppressed in equation (2) and is comparable to the xT in equation (1) and the excitation sequence will be denoted simply by {x(n)}. Later in equation (2), Δ will be kept in order to stress the time dependence. Moreover, the excitation input sequence {x(n)}, the actual sampled output sequence {z(n)} and model sampled output sequence {y(n)} in equation (2) and is equivalent to the y solution in equation (1), which is referred to as waveforms.
Consider a time-invariant nonlinear system with actual sampled input sequence {x(n)} and actual sampled output sequence {z(n)}, both of which are sampled at the same rate fs and recorded simultaneously. The causal time-invariant Volterra model sampled output sequence {y(n)} is then given, to third order, by:
where h0, h1, h2, h3 are the zeroth-order through third-order (time-invariant) time-domain kernels of the Volterra expansion. It is assumed that the Volterra kernels h0, h1, h2, h3 are represented with the same time-sampling increment as used for the nonlinear system input and output waveforms x(n) and z(n). It is also assumed for simplicity that the same “memory length” K in equation (2) is appropriate for all three orders of these kernels. Different sizes K1, K2, K3 of the summations may be considered in an alternative form of equation (2).
The unknowns in the Volterra expansion in equation (2) are the four kernels h0, h1, h2, h3 which appear linearly in the model output y(n). A least squares approach is used to fit model output y(n) to the actual measured nonlinear system output z(n); See
The present invention describes a method devised of partitioning the various kernels so that meaningful useful estimates are obtainable at higher orders and can be obtained by a modern computer. Referring to
As illustrated in
Referring to
The equations for this illustrated second-order kernel are as follows:
y2(nΔ)=Δ2∫∫df1df2exp[i2π(f1+f2)nΔ]H2(f2)X(f1)X(f2). (3)
Note that this is not a double Fourier transform; there is only one time variable on the right-hand side, namely, nΔ, where Δ is the sampling interval. Note also that the only place that time variable nΔ appears on the right-hand side of equation (3) is with the frequency combination f1+f2. If second-order Volterra output y2(nΔ) is to have frequency content only in the band (fa,fb) for purposes of fitting to a corresponding filtered version of z(nΔ) and if X(f) is broadband, then second-order frequency-domain kernel H2(f1,f2) must be restricted to be nonzero only for
fa<f1+f2<fb (4)
(and the corresponding negative frequencies). This condition allows complex exponential in equation (3) to take on frequency variation only in the band (fa,fb). The region in equation (4) is definitely not square in f1,f2 space. Rather, see the shaded regions in
Equation (4) describes an infinite strip at angle −45° in the f1,f2 plane, with perpendicular width (fb−fa)/√{square root over (2)}=W/√{square root over (2)}. However, the fundamental region is limited to be below the +45° line in the f1,f2 plane. In addition, frequency fb cannot exceed the limit F. The shape of this finite confined strip in the f1,f2 plane is similar to the shape of the state of Nevada. This is the restricted region of f1,f2 space in which H2(f1,f2) is allowed to be nonzero if y2(nΔ) in equation (3) is to contain frequency content limited to the frequency range (fa,fb).
One of the advantage of the present invention over the prior art is the alleviation of the COD at second and higher orders. This break through provides new possibilities for characterization of nonlinear physical systems. There are a number of applications including acoustic transmission and reception devices in water (e.g., sonar) and in air (e.g., sound systems). Another advantage of the present invention is the ability to quantify nonlinear systems obtained from Volterra-Wiener methods, which extends to analyzing nonlinear channels. Utilizing the cicada's efficient sound propagation technique broadens the knowledge of constructive and deconstructive interference, which may extend to higher frequencies applications.
In light of the above, it is therefore understood that within the scope of the appended claims, the invention may be practiced otherwise than as specifically described.
The invention described herein may be manufactured and used by or for the Government of the United States of America for governmental purposes without the payment of any royalties thereon or therefore.
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