The present disclosure relates to systems and methods for detecting a rotor position and a rotor speed of an alternating current (AC) electrical machine.
The statements in this section merely provide background information related to the present disclosure and may not constitute prior art.
AC electric machines provide electric power to various components and systems, such as a hybrid electric vehicle (HEV), an electric vehicle (EV), and the like. A controller communicatively coupled to the AC electric machine may obtain performance data from one or more sensors of the AC electric machine to evaluate various performance characteristics of the AC electric machine. As an example, the controller may obtain sensor data from a rotor position sensor (e.g., an encoder, an electromagnetic resolver, among others) to determine a position of a rotor of a permanent magnet synchronous motor (PMSM) and to perform field-oriented control routines. However, rotor position sensors may increase the size of the AC electric machine and the complexity of the controller logic needed to process the sensor data. Furthermore, low fault-tolerances of the rotor position sensors may render the position data unreliable for determining the position of the rotor.
To address the fault-tolerances of the rotor position sensors, the controller may additionally (or alternatively) include a position estimation system. The position estimation system may include a signal conditioner and a phase-locked loop (PLL) system. The operation of the signal conditioner may be defined based on the AC electrical machine topologies, operating speeds, and control routines.
For AC electrical machines that operate at low speeds, the signal conditioner may perform a heterodyning routine, which includes demodulating a response of an injected high-frequency carrier signal (e.g., pulse vectors, square waves, among others) to extract the rotor position. As an example, when injecting a pulse vector, the signal conditioner may determine the rotor position based on the current derivative response of the pulse vector. As another example, when injecting a square wave, the signal conditioner may determine the rotor position based on the current envelope or the quadrature-axis current response. However, modeling errors and phase errors introduced by digital filters make the heterodyning routine unsuitable for determining the rotor position at higher speeds.
For AC electrical machines that operate at high speeds, the signal conditioner may determine the rotor position by performing an arctangent routine or a quadrature PLL routine on the quadrature components of an extended back electromotive force (BEMF) model of the AC electrical machine. However, the arctangent routine and the quadrature PLL routine do not separate the rotor position information embedded with high-frequency current responses, thereby making these routines unsuitable for determining the rotor position at lower or idle speeds.
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 method for determining rotor characteristic of an alternating current (AC) electrical machine includes obtaining a reference voltage signal, one or more phase currents, and rotor data. The method includes determining orthogonal components of an extended back electromotive force (BEMF) model of the AC electrical machine based on the reference voltage signal, the one or more phase current characteristics, and the rotor data. The method includes determining a product of the orthogonal components of the extended BEMF model. The method includes determining a squared-magnitude of the orthogonal components of the extended BEMF mode. The method includes determining the rotor characteristic of the AC electrical machine based on the product of the orthogonal components and the squared-magnitude of the orthogonal components.
In some forms, the rotor characteristic is at least one of a rotor position and a rotor speed.
In some forms, determining orthogonal components of the extended BEMF model of the AC electrical machine further includes converting at least one of the reference voltage signal, the one or more phase currents, and the rotor data into a two axis rotating reference frame.
In some forms, determining the rotor characteristic of the AC electrical machine based on the product of the orthogonal components and the squared-magnitude of the orthogonal components further includes generating an angular position error signal.
In some forms, generating the angular position error signal further includes dividing the product of the orthogonal components by the squared-magnitude of the orthogonal components.
In some forms, determining the rotor characteristic of the AC electrical machine based on the product of the orthogonal components and the squared-magnitude of the orthogonal components further includes determining a rotor speed based on the angular position error signal.
In some forms, determining the rotor characteristic of the AC electrical machine based on the product of the orthogonal components and the squared-magnitude of the orthogonal components further includes determining a rotor speed based on the angular position error signal and determining a rotor position based on the rotor speed.
The present disclosure provides a method for determining rotor characteristic of an alternating current (AC) electrical machine. The method includes obtaining a reference voltage signal, one or more phase currents, and rotor data. The method includes determining orthogonal components of an extended back electromotive force (BEMF) model of the AC electrical machine based on the reference voltage signal, the one or more phase current characteristics, and the rotor data. The method includes determining a product of the orthogonal components of the extended BEMF model. The method includes determining a squared-magnitude of the orthogonal components of the extended BEMF model. The method includes determining a squared-difference of the orthogonal components of the extended BEMF model. The method includes determining the rotor characteristic of the AC electrical machine based on the product of the orthogonal components, the squared-magnitude of the orthogonal components, and the squared-difference of the orthogonal components.
In some forms, the rotor characteristic is at least one of a rotor position and a rotor speed.
In some forms, determining orthogonal components of the extended BEMF model of the AC electrical machine further includes converting at least one of the reference voltage signal, the one or more phase currents, and the rotor data into a two axis stationary reference frame.
In some forms, determining the rotor characteristic of the AC electrical machine based on the product of the orthogonal components and the squared-magnitude of the orthogonal components further includes generating an angular position error signal.
In some forms, generating the angular position error signal further includes dividing the product of the orthogonal components by the squared-magnitude of the orthogonal components.
In some forms, determining the rotor characteristic of the AC electrical machine based on the product of the orthogonal components and the squared-magnitude of the orthogonal components further includes determining a rotor speed based on the angular position error signal.
In some forms, generating the angular position error signal further comprises converting a previous rotor position to the angular position error signal.
Further areas of applicability will become apparent from the description provided herein. It should be understood that the description and specific examples are intended for purposes of illustration only and are not intended to limit the scope of the present disclosure.
In order that the disclosure may be well understood, there will now be described various forms thereof, given by way of example, reference being made to the accompanying drawings, in which:
The drawings described herein are for illustration purposes only and are not intended to limit the scope of the present disclosure in any way.
The following description is merely exemplary in nature and is not intended to limit the present disclosure, application, or uses. It should be understood that throughout the drawings, corresponding reference numerals indicate like or corresponding parts and features.
The present disclosure provides a system that determines the rotor position and rotor speed of AC electric machines at idle, low, and high operating speeds. A motor controller is configured to execute a position signal conditioning routine that extracts the rotor position information from a product of the orthogonal components of the extended BEMF. At low operating speeds, the product of the orthogonal components of the extended BEMF separates the rotor position information from the high-frequency components. At high operating speeds, the product of the orthogonal components of the extended BEMF includes the rotor position information and does not include high-frequency components as a result of an absence of a high-frequency injection. A PLL module subsequently determines the rotor position and rotor speed.
With reference to
The power supply 10 is configured to provide electrical power to various components of the vehicle 5, such as the power converter 20 and the controller 30. As an example, the power supply 10 includes a direct current (DC) power source (e.g., one or more batteries) configured to provide DC electrical power. As another example, the power supply 10 includes an AC power source configured to provide the AC electrical power.
The power converter 20 includes one or more circuits configured to convert electrical power from the power supply 10 into a three-phase AC electrical signal and output the three-phase AC electrical signal to the electric motor 40. As an example, the power converter 20 may include an inverter circuit (e.g., a three-phase inverter circuit, a two-level voltage source inverter, a multilevel inverter, among others) that includes one or more switching devices, such as a bipolar junction transistor (BJT), an insulated gate bipolar transistor (IGBT), a metal-oxide semiconductor field-effect transistor (MOSFET), and/or the like. It should be understood that the power converter 20 may include various discrete and/or integrated circuits that output the three-phase AC electrical signal and is not limited to the examples described herein.
The controller 30 may include various hardware components, such as transceivers, routers, input/output ports, among others, to perform the functionality described herein. Furthermore, the rotor characteristic module 32 and the motor control module 34 of the controller 30 may be implemented by one or more processors configured to execute instructions stored in a nontransitory computer-readable medium, such as a random-access memory (RAM) and/or a read-only memory (ROM).
The rotor characteristic module 32 is configured to determine the speed of the rotor 42 based on sensor data generated by the rotor speed sensor 60. Furthermore, the rotor characteristic module 32 is configured to determine an angular position of the rotor 42 based on sensor data generated by the rotor position sensor 65. In some forms, the rotor characteristic module 32 is configured to determine the position and/or speed of the rotor 42 by performing a position signal conditioning routine, as described below in further detail with reference to
The motor control module 34 is configured to selectively control the operation of the power converter 20 by controlling the voltage magnitude and/or the frequency of the three-phase AC electrical signal output to the electric motor 40. As an example, the motor control module 34 may execute a pulse width modulation (PWM) control routine to selectively control the voltage magnitude of the three-phase AC electrical signal. To control the voltage magnitude of the three-phase AC electrical signal using the PWM control routine, the motor control module 34 is configured to selectively provide a biasing voltage to the switching devices of the power converter 20, thereby activating or deactivating the switching devices. As another example, the motor control module 34 may execute a direct actuation control routine to selectively control the voltage magnitude of the three-phase AC electrical signal. To control the voltage magnitude of the three-phase AC electrical signal using the direct actuation control routine, the motor control module 34 is configured to directly apply a voltage vector to the switching devices of the power converter 20 based on a predefined switching table stored in a memory of the controller 30.
In some forms, the motor control module 34 may selectively control the operation of the power converter 20 in response to user commands received via the controller 30 and feedback signals indicating various operational characteristics of the electric motor 40. The user commands may include, but are not limited to, a reference voltage request, a speed request, a torque request, and/or electric power requests, among others. The feedback signals may include, but are not limited to, phase current information obtained from the phase current sensors 50, rotor speed information obtained from the rotor speed sensor 60 and/or the rotor characteristic module 32, and/or rotor position information obtained from the rotor position sensor 65 and/or the rotor characteristic module 32, among others.
The electric motor 40 is an AC electrical machine configured to produce a torque required to drive a load. Example AC electrical machines include a synchronous electrical machine (e.g., a PMSM), an asynchronous electrical machine, a salient electrical machine, a non-salient electrical machine, among others. It should be understood that the electric motor 40 may be various types of AC electrical machines and is not limited to the examples described herein. While the electric motor 40 is illustrated as including the rotor 42, it should be understood that the electric motor 40 may include various other components not illustrated herein.
The phase current sensors 50 are configured to generate information representing a current magnitude of the AC electrical signal output by the power converter 20. As an example, the phase current sensors 50 may be a Hall effect sensor, a transformer, a current clamp meter, a fiber optic current sensor, and/or the like. In some forms, the number of phase current sensors 50 may be equal to the number of phases of the electric motor 40.
As described above, the rotor speed sensor 60 is configured to generate information representing a speed of the rotor 42, and the rotor position sensor 65 is configured to generate information representing the angular position of the rotor 42. As an example, the rotor speed sensor 60 and the rotor position sensor 65 may be an encoder, an electromagnetic resolver, and/or the like.
Referring to
In some forms, the phase current determination module 70 determines the magnitude of the current provided to each phase of the electric motor 40 based on the sensor data obtained from the phase current sensors 50.
The reference voltage generator 80 injects a signal at a predefined frequency and voltage amplitude. That is, in one form, the frequency and amplitude of the injected signal are constant, and the frequency impedance is a function of the load current. In some variations, the injected signal may have a high frequency component generated by the high frequency signal generator 85, and the high frequency component may have a frequency range of, one-hundredth to one of the switching frequency, for example, 100 Hz to 10 kHz. The frequency and voltage amplitude of the injected signal may be defined by, for example, a user command provided to the controller 30 via an input device communicatively coupled thereto. As an example, the injected signal may be a sinusoidal signal or a square-wave signal having a 15V amplitude and a frequency of 500 Hz. It should be understood that the reference voltage generator 80 may inject other signal types (e.g., random signals, among others) having other frequencies and voltage amplitudes in other forms and is not limited to the examples described herein.
The RRFGM 100 converts the phase currents and the injected signal into a two axis rotating reference frame, such as the direct-quadrature-zero frame (hereinafter referred to as the dq-frame). The RRFGM 100 may convert the phase currents and the injected signal, which are each represented as vectors, into the dq-frame by performing a Clarke transform and a Park transform.
As an example, the RRFGM 100 may initially perform the Clarke transform to convert the vectors representing the phase currents and the injected voltages into a stationary quadrature axes representations (hereinafter referred to as the-αβ frame), as indicated by the following relations:
In relations (1), (2), and (3), lap is the stationary axis quadrature axes representation of the phase currents, Vαβ is the stationary axis quadrature axes representation of the injected voltage, and Tαβ is the transformation matrix. After performing the Clarke transform, the RRFGM 100 may convert the stationary quadrature axes representations into the dq-frame representations by performing the Park transform, as indicated by the following relations:
In relations (4), (5), and (6), Idq is the dq-frame representation of the phase currents, Vdq is the dq-frame representation of the injected voltage, Tdq is the transformation matrix, and θ is the rotational angle in which the dq-frame is rotated from the αβ-frame.
Subsequently, the RRFGM 100 may convert the rotating axis quadrature axes representations into the estimated rotor reference frame (hereinafter referred to as the δγ-frame) by performing the Park transform, as indicated by the following relations:
In relations (7), (8), and (9), Iδγ is the δγ-frame representation of the phase currents, Vδγ is the δγ-frame representation of the injected voltage, Tδγis the transformation matrix, and {tilde over (θ)} represents the rotational angle in which the δγ-frame is rotated from the dq-frame.
In response to converting the phase currents and the injected signal into the δγ-frame, the BEMF module 110 is configured to determine the orthogonal components of the extended BEMF model of the electric motor 40. The orthogonal components (eδ and eγ) may be represented using the following relation:
In relation (10), vδ* is the injected voltage in the δ-axis of the δγ-frame, vγ* is the injected voltage in the γ-axis of the δγ-frame, Rs is the stator resistance of the electric motor 40, p is a differential operator, Ld is the inductance of the d-axis of the dq-frame, Lq is the inductance of the q-axis of the dq-frame, and {circumflex over (ω)} is a previous iteration of the estimated rotor speed obtained from the PLL module 145. In the above relation, iδh is the high-frequency current response in the δ-axis of the δγ-frame caused by the injected signal, iγh is the high-frequency current response in the γ axis caused by the injected signal, and Zdh is the high-frequency impedance in the d-axis of the dq-frame.
The above relation of the orthogonal components (eδ and eγ) of the extended BEMF model (kbemf) may also be represented using the following relations:
In relations (11) and (12), id is the current magnitude of the d-axis of the dq-frame, iq is the current magnitude of the q-axis of the dq-frame, Zqh is the high-frequency impedance of the q-axis of the dq-frame, Zdh is the high-frequency impedance of the d-axis of the dq-frame, iqh is the high-frequency current response of the q-axis of the dq-frame, ψm is permanent magnet flux linkage, and {tilde over (θ)} is the angular position error. In some forms, the Zqh may be nonlinear and varies based on the frequency and amplitude of the injected signal and/or a load current of the electric motor 40.
When the BEMF module 110 determines the orthogonal components of the extended BEMF, the product module 120 is configured to obtain a product of the orthogonal components (eδ×eγ), as shown by the following relation:
Accordingly, when the rotor 42 of the electric motor 40 is operating at lower speeds and/or near idle, the extended BEMF (kbemf) may be represented using the following relation:
kbemf=−(Ld-Lq)piq+(Zqh-Zdh)iqh (14)
As such, the extended BEMF (kbemf) is a non-zero value when a fundamental saliency is present, a slot leakage saliency is present, or a high-frequency impedance saliency, along with transients in the q-axis of the dq-frame, is present.
When the rotor 42 of the electric motor 40 is operating at higher speeds, the extended BEMF (kbemf) may be represented using the following relation:
kbemf={(Ld-Lq)id+ψm}{circumflex over (ω)} (15)
Accordingly, the extended BEMF (kbemf) is a non-zero value when the rotor 42 is not idle, a fundamental saliency is present, or a slot leakage saliency, along with an excitation in the d-axis of the dq-frame, is present.
When the BEMF module 110 determines the orthogonal components of the extended BEMF, the squared-magnitude module 130 is configured to obtain a squared-magnitude of the orthogonal components (|eδγ|2), as shown by the following relation:
|eδγ|2=eδ2+eγ2 (16)
The divider module 140 may then divide the product of the orthogonal components (eδ×eγ) by the squared-magnitude of the orthogonal components (|eδγ|2) to obtain the angular position error signal, as shown by the following relation:
The PI module 150 of the PLL module 145 receives the angular position error signal and performs a proportional-integral routine on the position signal to obtain the estimated rotor speed. The PI module 150 then outputs the estimated rotor speed to the BEMF module 110, which utilizes the estimated rotor speed as a feedback parameter for determining the orthogonal components, as described above. Furthermore, the PI module 150 also outputs the estimated rotor speed to the motor control module 34, which selectively controls the operation of the power converter 20 based on the estimated rotor speed, as described above.
The integrator module 160 of the PLL module 145 receives the estimated rotor speed from the PI module 150 and performs an integration routine on the estimated rotor speed to obtain the estimated rotor position. The integrator module 160 then outputs the estimated rotor position to the motor control module 34, which selectively controls the operation of the power converter 20 based on the estimated rotor position, as described above.
By performing the signal conditioning routine described with reference to
Referring to
The SRFGM 170 converts the phase currents and the injected signal into a two axis stationary reference frame, such as the αβ-frame. The SRFGM 170 may convert the phase currents and the injected signal, which are each represented as vectors, into the αβ-frame by performing a Clarke transform. As an example, the SRFGM 170 may perform the Clarke transform to convert the vectors representing the phase currents and the injected voltages using the following relations as indicated by the following relations:
In relations (18), (19), and (20), Iαβ is the stationary axis quadrature axes representation of the phase currents, Vαβ is the stationary axis quadrature axes representation of the injected voltage, and Tαβ is the transformation matrix.
In response to converting the phase currents and the injected signal into the αβ-frame, the BEMF module 110 is configured to determine the orthogonal components of the extended BEMF model of the electric motor 40. The orthogonal components (eα and eβ) may be represented using the following relation:
In relation (21), vα* is the injected voltage in the α-axis of the αβ-frame, vβ* is the injected voltage in the β-axis of the αβ-frame, Rs is the stator resistance of the electric motor 40, p is a differential operator, Ld is the inductance of the d-axis of the dq-frame, Lq is the inductance of q-axis of the dq-frame, and {circumflex over (ω)} is a previous iteration of the estimated rotor speed obtained from the PLL module 145. In the above relation, iah is the high-frequency current response in the α-axis of the αβ-frame caused by the injected signal, iβh is the high-frequency current response in the β-axis caused by the injected signal, and Zdh is the high-frequency impedance in the d-axis of the dq-frame.
The above relation of the orthogonal components (eα and eβ) of the extended BEMF model (kbemf) may also be represented using the following relations:
In relations (22) and (23), iα is the current magnitude of the α-axis of the αβ-frame, iβ is the current magnitude of the β-axis of the αβ-frame, Zqh is the high-frequency impedance of the q-axis of the dq-frame, Zdh is the high-frequency impedance of the d-axis of the dq-frame, iβh is the high-frequency current response of the β-axis of the αβ-frame, ψm is permanent magnet flux linkage, and θ is the angular position of the rotor 42. In some forms, the Zqh may be nonlinear and varies based on the frequency and amplitude of the injected signal and/or a load current of the electric motor 40.
When the BEMF module 110 determines the orthogonal components of the extended BEMF, the product module 120 is configured to obtain a product of the orthogonal components (eα×eβ), as shown by the following relation:
When the BEMF module 110 determines the orthogonal components of the extended BEMF, the squared-magnitude module 130 is configured to obtain a squared-magnitude of the orthogonal components (|eαβ|2), as shown by the following relation:
|eαβ|2=eα2+eβ2 (25)
Likewise, when the BEMF module 110 determines the orthogonal components of the extended BEMF, the squared-difference module 180 is configured to obtain a squared-difference of the orthogonal components (|edifference|2), as shown by the following relation:
|edifference|2=eα2-eβ2 (26)
The divider module 140 may then divide the product of the orthogonal components (eα×eβ) by the squared-magnitude of the orthogonal components (|eαβ|2) to obtain a first angular position error signal (e1), as shown by the following relation:
Likewise, the divider module 190 may then divide the squared-magnitude of the orthogonal components (|eαβ|2) by the squared-difference of the orthogonal components (|edifference|2) to obtain a second angular position error signal (e2), as shown by the following relation:
The product module 220 is configured to obtain a product of the first angular position error signal output by the divider module 140 (e1) and the value output by the cosine module 200, which is configured to obtain a cosine value of double the previous estimated angular position output by the PLL module 145 (2{circumflex over (θ)}). The signal output by the product module 220 (e1*), is shown by the following relation:
e1*=e1×cos 2{circumflex over (θ)} (29)
The product module 230 is configured to obtain a product of the first angular position error signal output by the divider module 140 (e2) and the value output by the sine module 210, which is configured to obtain a sine value of double the previous estimated angular position output by the PLL module 145 (2{circumflex over (θ)}). The signal output by the product module 230 (e2*), is shown by the following relation:
e2*=e2×sin 2{circumflex over (θ)} (30)
The sum module 240 may then add the signal output by the product module 220 (e1*) and the signal output by the product module 230 (e2*) to obtain the angular position error signal, as shown by the following relation:
As described above, the PLL module 145 then outputs the estimated rotor speed and the estimated rotor position to the BEMF module 110 as a feedback parameter for determining the orthogonal components and to the motor control module 34 for controlling the operation of the power converter 20 based on the estimated rotor position. By performing the signal conditioning routine described with reference to
Referring to
Referring to
It should be understood that routines 300, 400 are merely example control routines and other control routines may be implemented.
By performing the signal conditioning routine described herein, the rotor position and rotor speed of AC electric machines at idle, low, and high operating speeds can be calculated without the use of the rotor position sensors and rotor speed sensors, thereby reducing the size of the AC electric machine and the complexity of the controller logic needed to process the sensor data. Furthermore, the signal conditioning routine, when executed, can be utilized in conjunction with the rotor position sensor and/or the rotor speed sensor to identify faulty rotor position sensors and/or rotor speed sensors.
Unless otherwise expressly indicated herein, all numerical values indicating mechanical/thermal properties, compositional percentages, dimensions and/or tolerances, or other characteristics are to be understood as modified by the word “about” or “approximately” in describing the scope of the present disclosure. This modification is desired for various reasons including industrial practice, manufacturing technology, and testing capability.
As used herein, the phrase at least one of A, B, and C should be construed to mean a logical (A OR B OR C), using a non-exclusive logical OR, and should not be construed to mean “at least one of A, at least one of B, and at least one of C.”
The description of the disclosure is merely exemplary in nature and, thus, variations that do not depart from the substance of the disclosure are intended to be within the scope of the disclosure. Such variations are not to be regarded as a departure from the spirit and scope of the disclosure.
In the figures, the direction of an arrow, as indicated by the arrowhead, generally demonstrates the flow of information (such as data or instructions) that is of interest to the illustration. For example, when element A and element B exchange a variety of information, but information transmitted from element A to element B is relevant to the illustration, the arrow may point from element A to element B. This unidirectional arrow does not imply that no other information is transmitted from element B to element A. Further, for information sent from element A to element B, element B may send requests for, or receipt acknowledgements of, the information to element A.
In this application, the term “module” and/or “controller” may refer to, be part of, or include: an Application Specific Integrated Circuit (ASIC); a digital, analog, or mixed analog/digital discrete circuit; a digital, analog, or mixed analog/digital integrated circuit; a combinational logic circuit; a field programmable gate array (FPGA); a processor circuit (shared, dedicated, or group) that executes code; a memory circuit (shared, dedicated, or group) that stores code executed by the processor circuit; other suitable hardware components that provide the described functionality; or a combination of some or all of the above, such as in a system-on-chip.
The term memory is a subset of the term computer-readable medium. The term computer-readable medium, as used herein, does not encompass transitory electrical or electromagnetic signals propagating through a medium (such as on a carrier wave); the term computer-readable medium may therefore be considered tangible and nontransitory. Non-limiting examples of a nontransitory, tangible computer-readable medium are nonvolatile memory circuits (such as a flash memory circuit, an erasable programmable read-only memory circuit, or a mask read-only circuit), volatile memory circuits (such as a static random access memory circuit or a dynamic random access memory circuit), magnetic storage media (such as an analog or digital magnetic tape or a hard disk drive), and optical storage media (such as a CD, a DVD, or a Blu-ray Disc).
The apparatuses and methods described in this application may be partially or fully implemented by a special purpose computer created by configuring a general-purpose computer to execute one or more particular functions embodied in computer programs. The functional blocks, flowchart components, and other elements described above serve as software specifications, which can be translated into the computer programs by the routine work of a skilled technician or programmer.
This application claims the benefit of U.S. Provisional Application No. 63/014,819 filed Apr. 24, 2020, the disclosure of which is incorporated by reference as if fully set forth in detail herein.
Number | Name | Date | Kind |
---|---|---|---|
6724168 | Cheong | Apr 2004 | B2 |
8884566 | Cao et al. | Nov 2014 | B2 |
8896249 | Cao et al. | Nov 2014 | B2 |
9425725 | Melanson | Aug 2016 | B2 |
9831809 | Takai | Nov 2017 | B1 |
20010043048 | Tajima et al. | Nov 2001 | A1 |
20100109584 | Kwon et al. | May 2010 | A1 |
20100237817 | Liu et al. | Sep 2010 | A1 |
20100264861 | Basic et al. | Oct 2010 | A1 |
20100320763 | Li et al. | Dec 2010 | A1 |
20150365029 | Yang | Dec 2015 | A1 |
20160202296 | Costanzo et al. | Jul 2016 | A1 |
20170126153 | Lepka | May 2017 | A1 |
Number | Date | Country |
---|---|---|
107342713 | Nov 2017 | CN |
Number | Date | Country | |
---|---|---|---|
20210336572 A1 | Oct 2021 | US |
Number | Date | Country | |
---|---|---|---|
63014819 | Apr 2020 | US |