The present disclosure relates to wirelessly powered sensors.
Resistive transducers are widely utilized to convert environmental parameters, such as temperature, into electrical signals. Compared to capacitive or inductive transducers, resistive transducers are often easier to fabricate and more readily available. To quantify resistance changes inside a sensing platform, a common method is to compare voltage drops between the sensing resistor and a reference resistor in an electric bridge. This design, however, is most suitable for circuits with wired connections. For wireless sensors embedded inside enclosed cavities, voltage drops across the electric bridge are usually encoded onto a wireless carrier wave by a Voltage-to-Frequency converter or Analog-to-Digital converter, both of which require DC power to operate. As a result, additional circuit modules such as rectifiers and voltage regulators are required to convert RF power into DC power. Even though the voltage regulator, the RF transmitter and the temperature sensor can in principle be integrated into a single chip, commercial off-the-shelf (COT) integrated circuits are normally enclosed inside cm-scale packages. Such an IC chip is hard to fit inside confined body cavities, not to mention the additional power harvesting antenna and voltage biasing circuitry that are required to operate the IC.
Alternatively, passive LC resonators have been utilized to estimate resistance changes. By connecting the sensing resistor to the LC resonator, resistance changes can affect the line shape of the resonator's frequency response curve. However, direct measurement of the frequency response curve is effective only when the detection antenna is close enough to the resonator. When the distance separation between the resonator and the detection antenna is large, back-scattered signals from the resonator will be much smaller than the instrumental background, making the frequency response curve completely buried beneath the instrumental noise floor. Direct measurement is even more challenging when the resonator is designed to have reduced quality factor for improved responses to resistance variation.
This section provides background information related to the present disclosure which is not necessarily prior art.
This section provides a general summary of the disclosure, and is not a comprehensive disclosure of its full scope or all of its features.
A wirelessly powered resistive sensor is presented. The sensor includes: an antenna; a parametric resonator and a resistive loop circuit. The parametric resonator is configured to receive a pumping signal from the antenna and operable to oscillate at two frequencies. The resistive loop circuit is inductively coupled to the parametric resonator, such that oscillation frequency of the parametric resonator changes (e.g., linearly) with changes in resistance of the resistance loop circuit. When the resistance of the resistor in the resistive loop circuit approximately equals the impedance of the resistive loop circuit at one resonance frequency of the parametric resonator, the transducer has maximum linear response.
In one aspect, the resistive sensor further includes a resonator enhancer circuit arranged adjacent to the parametric resonator and operates to resonate at frequency of the pumping signal
Further areas of applicability will become apparent from the description provided herein. The description and specific examples in this summary are intended for purposes of illustration only and are not intended to limit the scope of the present disclosure.
The drawings described herein are for illustrative purposes only of selected embodiments and not all possible implementations, and are not intended to limit the scope of the present disclosure.
Corresponding reference numerals indicate corresponding parts throughout the several views of the drawings.
Example embodiments will now be described more fully with reference to the accompanying drawings.
The parametric resonator 12 is comprised of at least one electronic component having variable reactance. The parametric resonator 12 is configured to receive a pumping signal from the antenna 11 and operates to oscillate at two frequencies. i.e., a first resonant mode and a second resonant mode. In one embodiment, the parametric resonator is comprised of two loop circuits which share a common circuit path, where at last one loop circuit includes a varactor. In operation, the frequency of the pumping signal is set to sum of resonance frequency of the parametric resonator operating in the first resonant mode and resonance frequency of the parametric resonator operating in the second resonant mode.
The resistive loop circuit 13 is inductively coupled to the parametric resonator 12, such that oscillation frequency of the parametric resonator 12 changes with changes in resistance of the resistance loop circuit 13. More specifically, the oscillation frequency of the parametric resonator changes linearly with changes in resistance of the resistance loop circuit. When the resistance of the resistor in the resistive loop circuit approximately equals the impedance of the resistive loop circuit at one resonance frequency of the parametric resonator, the transducer has optimal response, where approximately equal means within ±20 percent of each other. In an example embodiment, the resistive loop circuit 13 includes a resistor although other implementations are contemplated by this disclosure.
In one implementation, the resistor of the resistive loop circuit is configured to sense temperature changes, such that oscillation frequency of the resistor changes linearly with temperature changes. It is readily understood that the resistive sensor 10 can be used for other applications, including but not limited to sensing humidity, bacteria infection, neuronal voltage, pH, pressure, and strain.
In some embodiments, a resonator enhancer circuit 14 is arranged adjacent to the parametric resonator 12 and operates to resonate at frequency of the pumping signal. The operating principle of this sensor is further described.
With reference to
where R1 and L1 are the sensing resistance and the inductance in the resistive loop, Red and Led are the effective resistance and inductance of the parametric resonator (in its dipole mode), C2 is the effective capacitance of each varactor under zero voltage bias. The resonance frequency ω2 can be estimated by making the imaginary part of Eq. (1) equal to zero:
By correlating C2 with the self-resonance frequency ω20 of the parametric resonator in its stand-alone configuration, i.e., C2=2/(w202L2), Eq. (2) becomes
where κ2=M2/(L1L2) is the coupling coefficient that is determined by geometric proximity between the parametric resonator and resistive loop. Because the mutual inductance is normally much smaller than the self-inductance (i.e. κ<<1), 4κ2R12/(ω202L12)<<1 also holds true. Therefore, Eq. (3) can be approximated as:
Therefore, compared to the parametric resonator in its stand-alone configuration, the resistive loop will change its resonance frequency by a factor of:
because the fractional change in thermistor's resistance decreases proportionally with temperature change, i.e. dR1/R1=−βdT, the following relation can be obtained by taking the derivative of Eq. (5) with respect to temperature:
Eq. (6) becomes maximum when R1=L1ω20. At this time, the real part R2d of Eq. (1) is also approaching maximum when the resonance frequency of the coupled resonator ω2 is not too much deviated from that of the uncoupled resonator ω20. As a result, R2d in Eq. (1) can be considered as approximately constant when R1 is changing around its optimal value at L1ω2.
Although the resistance-dependent frequency shift can in principle be measured from the frequency response curve of the coupled resonator, such measurement can be challenging when the resonance frequency shift is much smaller than the bandwidth of the frequency response curve or when the resonator is remotely coupled to the external detection antenna. To improve the measurement accuracy of small frequency shift over large distance separations, the coupled parametric resonator needs to be activated by wireless pumping power, producing a sharp oscillation peak whose frequency shift can be sensitively detected over larger distance separations.
More specifically, the coupled resonator also has a second (butterfly) resonance mode at ω2b (
When the dipole mode resonance frequency ω2 slightly shifts due to temperature variation in the thermistor, ω2+ω2b will be slightly deviated from the pumping frequency ωp, making the oscillation frequency of each mode slightly deviated from its resonance frequency. The frequency deviation can be estimated by making the reactance-to-resistance ratio equal for both the dipole and butterfly modes:
where ωd and ωb are oscillation frequencies that are slightly deviated from the dipole and butterfly mode resonance frequencies. ω2 is the dipole mode resonance frequency that is linearly modulated by the thermistor, and ω2b is the resonance frequency of the butterfly mode that is unaffected by resistance change. L2d and L2b are effective inductance of the dipole and butterfly modes that are determined by circuit dimensions, R2 and R2b are effective resistance of the dipole and butterfly modes. By plugging ωp=ωd+ωb into Eq. (7), the oscillation frequency of the dipole mode can be expressed as:
In Eq. (8), ωd and ω2 will have an approximate linear relation, because R2d will remain approximately constant at its maximum value when R1˜ω2L1, as mentioned in the paragraph following Eq. (6). Therefore, the relationship between the oscillation frequency shift and the resonance frequency shift can be approximated as:
Meanwhile, the last term in Eq. (9) can be experimentally measured by holding ω2 constant and observing the oscillation frequency ωd as a function of the pumping frequency ωp.
In the example embodiment, the parametric resonator contains two varactor diodes, each of which has voltage-dependent junction capacitance of:
where Φ is the diode's junction potential and λ is a device constant describing the charge distribution abruptness across the junction. In Eq. (11), the first term is the constant capacitance that is responsible for reactive energy at the pumping frequency ωp, while the second term is the voltage-dependent capacitance that is responsible for energy conversion from the pumping frequency ωp into the dipole and butterfly mode resonance frequencies through parametric mixing process. To sustain circuit oscillation, the required pumping voltage Vp across the varactor can be estimated from:
|Vp|λ/ϕ≈1/√{square root over (QdQb)}≡1/Qeffect
Eq. (12) can also be understood as the equal relation between the fraction of energy converted from the pumping frequency and the fraction of energy dissipated at the dipole and butterfly resonance frequencies as explained in
I2p=jωpC20|Vp|≈jωpC20ϕ/(λ2√{square root over (QdQb)})
To induce I2p inside the parametric resonator, the electromotive force I2p to be generated by the activation antenna should be:
The last approximation in Eq. (14) is obtained by plugging in the relation L2d=2/(ω22C2) and by neglecting the much smaller contribution of circuit resistance R2 to total impedance at the pumping frequency ωp.
For illustration purposes, the parametric resonator 12 described above was comprised of two loop circuits sharing a common circuit path (
To improve the pumping power efficiency, we can overlay the parametric resonator with a resonant enhancer circuit as seen in
where φ2p and φ3p are the electromotive forces induced in the parametric resonator and the resonant enhancer, ω2 and ω3 are their resonance frequencies in their stand-alone configuration, M23 is the mutual inductance between coupled resonators. According to Eqns. (15) and (16), the induced current in the parametric resonator is:
The last approximation in Eq. (17) is valid because the terms R3 in the numerator and R3R2d in the denominator have much smaller magnitude than other terms. Also, circuit resonance at the pumping frequency φp requires I2p to be real-valued, i.e.
M232ωp2−L3L2d(ωp2−ω32)(ωp2−ω22)ωp2=0
When the parametric resonator and the resonant enhancer have identical dimensions, their inductances should be identical:
L2d=L3
and the induced electromotive forces should also be identical:
φ2p=φ3p
By plugging Eqns. (18-20) into Eq. (17), the electromotive force φ2p to be provided by the activation antenna should be:
Eq. (21) describes the required e.m.f. when the activation field is enlarged by a resonant enhancer. On the other hand, Eq. (14) describes the required e.m.f. in the absence of resonant enhancer. By comparing these two equations, the enhancement factor of the activation field is:
For demonstration purposes, the sensor's temperature-dependent frequency response is simulated by S-parameters solver in the Advanced Design System (Agilent, CA). The parametric resonator is modelled as the symmetric circuit labelled by red lines in
The resonant enhancer (labelled in green) is modelled as two 13.35-nH inductors connected in series with two 2.7-pF capacitors. The resistive loop (labelled in blue) is modeled as two 13.35-nH inductors connected in series with a variable resistor R1 whose temperature-dependent resistance is represented as R0*(1−0.0236*(T−34)), corresponding to 2.36% decrease in resistance for every one degree of temperature rise. R0 is the reference resistance at 34 Celsius. To search for the optimal R0 with largest frequency response, multiple sets of simulation are performed when R0 is varied from 57.3 Ohm to 101.6 Ohm. For each R0 value, the circuit's resonance frequency is simulated as a function of temperature T.
The mutual coupling between the resistive loop (labelled in blue) and the parametric resonator (labelled in red) is defined by two Symbolically Defined Devices (pink boxes). In each of these two-node devices, the voltage induced in one node (_v1) is equal to mutual inductance multiplied by the time derivative of current in the other node M*(_i2). Symbolically Defined Devices are also used to describe the mutual coupling (orange box) between the resonant enhancer (green) and the parametric resonator (red), and to describe the mutual coupling (gray boxes) between the resonant enhancer (green) and the resistive loop (blue). The mutual inductance 2M, 2M2 and 2M3 are set to 6.64 nH, 3.14 nH and 1.66 nH, accounting for the effect of 2.6-mm, 5.1-mm and 7.7-mm substrate thicknesses between individual square conductors.
To estimate the required magnitude of pumping current in the parametric resonator for sustained circuit oscillation, harmonic balancing solver is utilized to simulate frequency mixing process. By empirically adjusting the pumping power applied on the resonant enhancer to −10 dBm, the current flow inside the parametric resonator reaches a maximum at 477.8 MHz. At this time, the induced pumping current inside the parametric resonator is 4 mA at 848 MHz, which is consistent with the required I2p value predicted by Eq. (13).
To induce 4 mA of pumping current inside the parametric resonator, the required e.m.f. can be estimated from Eq. (14) when there is no resonant enhancer. In the presence of the resonant enhancer, the required e.m.f. can be estimated from Eq. (21). For each case, the required e.m.f. value can be estimated from the Faraday's induction law
e.m.f.=−dϕdt=−jωp exp(jωpt)∫B({right arrow over (r)})
where the integration is performed over the area defined by the circuit loop. The magnetic flux intensity B(d) inside each voxel can be estimated by CST Microwave studio (Dassault Systèmes, France).
For simplified computation, a human head is modeled as a spherical medium (εr=46, σ=0.75 S/m) surrounded by a 1 cm thick shell (εr=16.7, σ=0.23 S/m), that represent the brain tissue and skull respectively [16]. The half-wave dipole antenna is modeled as a 17.6-cm conductor wire that is 5-mm separated from the spherical surface to provide enough extra space for apparallel. To estimate the required voltage applied on the activation antenna, first simulate the e.m.f. induced by unit voltage applied on the antenna that is separated from the sensor by a series of distances. Subsequently, the antenna voltage is scaled to make the e.m.f. equal to 0.38 V and 0.033 V respectively, corresponding to the e.m.f. values estimated from Eq. (14) and (21) that are required to induce 4-mA pumping current I2p inside the parametric resonator. The resonant enhancer can reduce the required magnitude of e.m.f. by 11.5-fold for all detection distances, thus reducing pumping power by 21.2 dB. As a result, even when the sensor is displaced from the antenna by 11 cm, only 2.1 V of activation voltage is required on the antenna to oscillate the sensor in the presence of resonant enhancer. This level of voltage will lead to a maximum SAR of ˜180 mW/kg throughout the sample, which is well below the safety level recommended by IEC 60601-2-33.
As described above, the wireless resistive sensor consisted of a resonant enhancer, a parametric resonator and a resistive loop. The resistive loop was fabricated by etching a square conductor pattern on a copper-clad polyimide film. The conductor pattern had a dimension of 10×10-mm2 with a strip width of 0.75 mm, leading to an effective inductance of 26.7 nH. The conductor loop also had one single gap that was bridged by a thermistor (ERT-J1VA101H, Panasonic, Japan). This thermistor had 76.4 Ohm resistance at 34 deg, approximately equal to the effective impedance of the square inductor at 471.6 MHz (the dipole mode resonance frequency ω20 of the parametric resonator). The parametric resonator consisted of a 10×10-mm2 square conductor pattern with two split gaps, both of which were filled by varactor diodes (BBY53-02V, Infineon, Germany) connected in head-to-head configuration, leading to a dipole mode resonance at ω20=471.6 MHz. By bridging the virtual voltage grounds of the dipole mode with a horizontal conductor in the center, the resonator would have another butterfly mode at 370.2 MHz. When the parametric resonator was overlaid on top of the resistive loop through a 2.6-mm polyimide substrate, its butterfly mode was not affected due to geometric orthogonality, but the dipole mode resonance frequency was upshifted with concurrent increase in its effective circuit resistance. To match the quality factor reduction in the dipole mode, a 0.8-Ohm chip resistor was introduced into the resonator's center horizontal conductor to make the quality factor of the two modes approximately equal (Qd≈Qb≈22). Optionally, another resonant enhancer was overlaid on top of the parametric resonator to locally concentrate magnetic flux at the pumping frequency for improved power efficiency of the pumping field. The resonant enhancer had the same dimension as 10×10 mm2 but was serially connected to two 2.7-pF chip capacitors, leading to a resonance frequency at 838.3 MHz. When the substrate thickness between the parametric resonator and the resonant enhancer was adjusted to 5.1 mm, the entire circuit assembly would have a highest resonance frequency at ωp=848.0 MHz, which was the sum of the dipole and butterfly resonance frequencies at ω2=477.8 MHz and d)2b=370.2 MHz.
To demonstrate the sensor's remote detectability, the sensor inside a rectangular plastic box contained a solution with 146% sucrose and 3.6% NaCl to mimic the brain tissue. Because the sensor was coated by a layer of water-proof epoxy, its resonance frequency remained virtually unchanged when the sensor was soaked inside the tissue-mimicking solution. The solution temperature was controlled by a heating blanket to within 0.1° C. resolution. The activation antenna (17.6-cm length) was horizontally displaced from the sensor by a range of distance separations. The gap between the sensor and the antenna was filled by several solution-containing flasks to emulate the effect of dissipative tissues with varied thickness. When constant pumping power was applied on the activation antenna, the height of oscillation peak was measured as a function of the distance separation between the sensor and the detection loop. This distance separation was varied by changing the number of the plastic flasks overlaying on top of each other. Each flask had a thickness of 2.5 cm. As shown in
To evaluate the sensor's activation efficiency, a detection antenna was placed at a location that was about 20-cm above the sensor and varied the distance separation between the activation antenna and the sensor. For each distance separation, the required pumping power was gradually increased until the sensor's oscillation signal was clearly observable by the detection antenna, showing up as a sharp peak that was 6-dB above the noise floor of the spectrum analyzer. For comparison purpose, the required level of pumping power was also measured on the same sensor but with the resonant enhancer removed. As shown by the short curve in
At 34° C., when ˜23 dBm of pumping power was applied on the activation antenna that was separated from the sensor by 12.5 cm, strong oscillation peak (red curve in
To establish the relationship between the oscillation frequency and the resonance frequency, the temperature constant was held at 34° C. and observed the oscillation frequency as a function of the pumping frequency. As shown in
In this disclosure, a compact wireless sensor was demonstrated that can directly convert temperature-induced resistance changes into oscillation frequency shifts for easy detection over large distance separations. This sensor consists of a nonresonant resistive loop that is coaxially overlaid with a parametric resonator. Through inductive coupling, the resistance change in the thermistor is converted into reactance change in the parametric resonator. To maximize the sensor's frequency response, the dimension of the coupling inductor is adjusted to make its reactive impedance approximately equal to the resistive impedance of the thermistor. As a result, resistance change of the thermistor is converted into linear frequency shift of the parametric resonator, but without changing the effective resistance of the parametric resonator. Unlike previous designs of wireless sensors where the sensing resistor was directly connected to an LC resonator to modulate its quality factor, the thermistor-coupled parametric resonator does not require line-shape analysis of its frequency response curve, thus greatly simplifying the measurement procedure.
Besides the sensor's capability for resistance-to-frequency conversion, the parametric resonator can also utilize its nonlinear capacitance to convert wireless power provided at the sum frequency into sustained oscillation currents supported by the circuit's resonance modes. When the environmental temperature changes, the resonance frequency of the parametric resonator will also shift due to resistance change in the coupler, leading to proportional frequency shift of the resonator's strong oscillation signal. This self-oscillation feature of the wireless sensor can significantly improve the sensor's remote detectability, even when the detection distance is as large as 20-fold the sensor's own dimension. Of course, the oscillation frequency shift is somewhat scaled with respect to resonant frequency shift. To estimate this scaling factor, we can subtract one by the ratio between the oscillation frequency shift and pumping frequency shift, based on the relation described by Eqn. (9-10). In real-day applications, one can experimentally calibrate the sensor's temperature dependent oscillation frequency and directly utilize this calibration curve to estimate temperature change from oscillation frequency shift, without measuring the resonance frequency shift as an intermediate variable.
In the prototype demonstration for resistance-to-frequency conversion, a thermistor with a temperature coefficient of −2.36%/deg can increase the oscillation frequency by 8 kHz for every 0.1° C. of temperature rise. This frequency shift is 3-fold larger than the 3-dB linewidth of the sensor's oscillation peak. Compared to other types of wireless resistive sensors, this wireless resistance-to-frequency converter doesn't require DC voltage to operate, thus obviating the need for extra circuitry and greatly simplifying circuit design. Using a very compact design that requires only a few off-the-shelf components, this wireless resistive sensor can be easily miniaturized, for example to fit inside confined body cavities. When the parametric resonator is overlaid with another resonant enhancer that can locally concentrate magnetic flux at the sum frequency of its resonance modes, the power consumption of the wireless sensor is further reduced by ˜21 dB. As a result, the wireless sensor only requires less than −10 dBm of internal power, which can be provided by an external dipole antenna over a large distance separation. For example, when the activation antenna is separated from the sensor by 12.5 cm (a distance that is more than enough to reach the center of adult brain), the pumping power required on the activation antenna is only ˜23 dBm, making the Specific Absorption Rate well below the safety limit for most regions surrounding the antenna.
The foregoing description of the embodiments has been provided for purposes of illustration and description. It is not intended to be exhaustive or to limit the disclosure. Individual elements or features of a particular embodiment are generally not limited to that particular embodiment, but, where applicable, are interchangeable and can be used in a selected embodiment, even if not specifically shown or described. The same may also be varied in many ways. Such variations are not to be regarded as a departure from the disclosure, and all such modifications are intended to be included within the scope of the disclosure.
This application claims the benefit of U.S. Provisional Application No. 63/161,097, filed on Mar. 15, 2021. The entire disclosure of the above application is incorporated herein by reference.
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20140266482 | Ishii | Sep 2014 | A1 |
20150128707 | Viikari | May 2015 | A1 |
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20220291054 A1 | Sep 2022 | US |
Number | Date | Country | |
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63161097 | Mar 2021 | US |