The present disclosure relates generally to fuel injection for internal combustion engines and more specifically to fuel injection rate shaping using a model-based closed-loop controller.
Various fuel injectors are known, including solenoid actuated fuel injectors and piezoelectrically actuated fuel injectors. Compared with solenoid actuated fuel injectors, piezoelectrically actuated injectors have a higher bandwidth, which allows for the delivery of more complex injection rate profiles, examples including tightly-spaced pulse trains and rate shaping. As is known in the art, injection rate shaping may reduce overall fuel consumption and improve the trade-off between NOx and particulate matter emissions.
A boot shape injection profile is depicted in
The present disclosure provides within-an-engine-cycle control of rate shaping. In one embodiment, the present disclosure provides a method, comprising monitoring a pressure of fuel supplied to a fuel injector of an engine, and providing a control input voltage to a piezostack of the fuel injector in response to the pressure to cause the injector to provide a fuel injection having a desired shape. In this embodiment, providing a control input voltage includes applying a model-based algorithm to the pressure to determine the control input voltage. In one aspect of this embodiment, providing a control input voltage includes causing the injector to provide a fuel injection having a boot shape with a shank wherein a needle valve of the fuel injector is fully opened and a toe wherein the needle valve is partially opened. In another aspect, providing a control input voltage includes applying a state space model having seven dynamic states to the pressure. In another aspect, providing a control input voltage includes applying a model-based algorithm having a hysteresis model of the piezostack to the voltage of the piezostack. In yet another aspect of this embodiment, the control input voltage is provided to the piezostack to cause an upper section of the needle valve to move to a desired position which is determined by applying the model-based algorithm, the desired position corresponding to a desired fuel flow rate through a needle valve of the fuel injector. In still another aspect, this embodiment further includes repeating monitoring the pressure, and providing the control signal a plurality of times during each cycle of operation of the engine.
According to another embodiment of the present disclosure, a system is provided, comprising a piezostack driver configured to provide a stack voltage to a piezostack of a fuel injector of an engine, a voltage sensor disposed in electrical communication with the stack voltage and configured to provide stack voltage measurement signals representing the stack voltage, a pressure sensor disposed in fluid communication with a fuel supply to the fuel injector and configured to provide line pressure measurement signals representing a fuel pressure of a body of the injector, and a controller coupled to the piezostack driver, the voltage sensor, and the pressure sensor, the controller including logic to apply the line pressure measurement signals to a model of the fuel injector to generate control input signals, the controller providing the control input signals to the piezostack driver to cause the piezostack driver to provide stack voltages such that the fuel injector provides a fuel injection having a desired shape. In one aspect of this embodiment, the model includes a state space model having seven dynamic states. In another aspect, the control input signals are generated to cause the piezostack driver to provide stack voltages such that the fuel injector provides a fuel injection having a boot shape with a shank wherein a needle valve of the fuel injector is fully opened and a toe wherein the needle valve is partially opened. In yet another aspect, the model includes a hysteresis model of the piezostack of the fuel injector. In another aspect, the controller logic applies the line pressure measurement signals to the model a plurality of times during each cycle of operation of the engine. In still another aspect of this embodiment, the controller is an FPGA based controller.
In another embodiment of the present disclosure, a controller is provided, comprising a feedback interface configured to receive line pressure measurement signals representing fuel pressures of a body of the fuel injector, a control interface configured to output control signals to a piezostack driver associated with the fuel injector, and an FPGA coupled to the feedback interface and the control interface, the FPGA being programmed to apply the line pressure measurement signals to a model-based algorithm and providing resulting control signals through the control interface to cause the injector to provide a fuel injection having a desired shape. In one aspect of this embodiment, the desired shape is a boot shape with a shank wherein a needle valve of the fuel injector is fully opened and a toe wherein the needle valve is partially opened. In another aspect, the model-based algorithm includes a state space model having seven dynamic states. In another aspect, the model-based algorithm includes a hysteresis model of the piezostack of the fuel injector. In another aspect, the FPGA generates the control signals to cause the injector to provide a fuel injection a plurality of times in a single engine cycle. In yet another aspect of the present disclosure, the FPGA generates the control signals to cause an upper section of a needle valve of the fuel injector to move to a desired position corresponding to a desired fuel flow rate through the needle valve. In another aspect, the FPGA is configured to generate a control signal in response to a line pressure measurement signal at least once every eight microseconds. In still another aspect, the feedback interface receives the line pressure measurement signals at a sampling rate of at least 500 kHz.
The above-mentioned and other features of this disclosure and the manner of obtaining them will become more apparent and the disclosure itself will be better understood by reference to the following description of embodiments of the present disclosure taken in conjunction with the accompanying drawings, wherein:
Although the drawings represent embodiments of the various features and components according to the present disclosure, the drawings are not necessarily to scale and certain features may be exaggerated in order to better illustrate and explain the present disclosure. The exemplification set out herein illustrates embodiments of the disclosure, and such exemplifications are not to be construed as limiting the scope of the disclosure in any manner.
For the purpose of promoting an understanding of the principles of the disclosure, reference will now be made to the embodiments illustrated in the drawings, which are described below. It will nevertheless be understood that no limitation of the scope of the disclosure is thereby intended. The disclosure includes any alterations and further modifications in the illustrated device and described methods and further applications of the principles of the disclosure, which would normally occur to one skilled in the art to which the disclosure relates. Moreover, the embodiments were selected for description to enable one of ordinary skill in the art to practice the disclosure.
Referring again to
The present disclosure provides: i) model-based development of an algorithm for “within-an-engine-cycle” control of fuel injection rate shaping with a piezoelectric fuel injector, ii) model-based stability analysis, iii) validation in simulation, and iv) experimental validation via algorithm implementation with an FPGA. These aspects of the present disclosure incorporate a dynamic nonlinear model and a real-time injection flow rate estimation strategy. The controller is implemented on the NICompactRIO, although any of a variety of different controller structures with sufficient sampling rate may be used. The NICompactRIO sends a signal to a QorTek piezostack driver in one embodiment, and functions as a DAQ system, which receives measurements of line pressure, piezostack voltage, mean flow rate, and injection rate shape. In one embodiment, an analog 200 kHz anti-aliasing filter is placed before the DAQ, which samples at rate of 500 kHz. The driver, and therefore the control input is limited to an updating period of 10.24 microseconds. A piezoelectric pressure sensor is installed underneath the injector to measure pressure shape in experimental verification, and thus the shape of injection flow rate. Real-time injection flow rate is scaled from the rate shape to have its area under the curve equal to mean flow value, which is measured by a flow meter as is further described below.
The experimental setup is shown in
Referring now to
Regarding the dynamics of piezostack 302, shim 302, and plungers 306, together they are lumped into a mass M with spring constant k as in the dynamic equation of motion:
Mÿ=PLtot−(ktot+k)y−b1{dot over (y)}++AbvPbv+AobotPtv−f(Vs) (1)
where y, PLtot, Ktot, b1, Ptv, and f(Vs) are the displacement, total preload, total stiffness of the springs, damping ratio, areas of the injector parts, trapped volume pressure, and piezostack force, respectively (descriptions of all of the variables, subscripts, and parameters in this disclosure are summarized in Table A.2 below).
The dynamics of needle 308 are discussed below. When needle 308 is closed, the dynamic equation is:
When needle 308 is opened, the dynamic equation is:
where x1, x2 are the needle top and needle tip displacements, and the needle seat force is
Fns=Pbv(Antip−Asac)+PsacAsac (6)
The body volume pressure is modeled equal to line pressure, Pbv=Pline. Since line pressure is measurable, body volume pressure Pbv is considered as a measured disturbance in the control scheme. The variation of trapped volume over the course of an injection event is relatively small compared to the trapped volume at the initial condition. Therefore, in one embodiment of the disclosure, the trapped volume pressure dynamics is modeled to be linear based on the fluid capacitance relation:
where bulk modulus is β function of rail pressure Prail, and k1 is the leakage coefficient. During an injection event, Prail is considered constant.
Referring now to
where A1(x2), A2 are the effective areas of the needle seat and spray holes (
A driver model block diagram of one embodiment of the present disclosure is shown in
{umlaut over (V)}s+2ζdωd{dot over (V)}s+ωd2Vs=ωd2Vin (10)
where ωd and ζd are the natural frequency and damping coefficient of the driver model, respectively. The validation of the driver model shows a match between simulation and experimental stack voltages.
The model employed by the present disclosure may be represented by seven model states. The model states are defined as:
X1=y−y(0)
X2={dot over (y)}
X3=x1−x1(0)
X4={dot over (x)}1
X5=Prail−Ptv
X6=Vs
X7={dot over (V)}s (11)-(17)
where Ptv(0)=Prail, and y(0), x1(0), which depend on Prail, are the initial values of plunger and needle top displacements (when injector 202 is at rest). When the needle is closed, Pbv ripples slightly due to the motion of plungers 306 and the needle top. If
The dynamic state space equations are written as:
and output equations for injection rate ωstc are
The hysteresis of piezostack 302 is modeled using the technique described Bashash, S., and Jalili, N., 2008, “A polynomial-based linear mapping strategy for feedforward compensation of hysteresis in piezoelectric actuators,” ASME Journal of Dynamic Systems, Measurement, and Control, 130(3). In this model, the piezostack force f(X6) depends on the stack voltage X6, turning points [X61, f(X61)], and [X62, f(X62)](X61≦X6≦X62):
where at each discrete time step k, as in
The ascending and descending polynomials fa(X6), fd(X6) are third order:
fa(X6)=a0+a1X6+a2X62+a3X63
fd(X6)=d0+d1X6+d2X62+d3X63 (30)-(31)
A turning point is defined as the point at which stack voltage changes from increasing to decreasing and vice versa. Piezostack force is continuous (C0) but not continuously differentiable (C1) since its derivative does not exist at turning points. The estimated piezostack force derivatives are calculated as:
where at each discrete time step k:
The state space model of injector 202 contains seven states as described above and some nonlinearities, including the unsmoothness in the needle dynamics (equations (21) and (25)).
The output of DSC 802 is the control voltage Vin. DSC is a backstepping-based strategy that uses first-order low-pass filters to avoid the repeated differentiations of modeled nonlinearities that traditional backstepping requires. Due to the high relative degree of the injector model (six), DSC is utilized to simplify the control development. In addition, DSC allows for the limitation of the rate of change of the control voltage, and avoids high order differentiations of the measured disturbance Pbv that would exist in a backstepping scheme.
Trajectory generator 800 determines the displacement of the top of the needle of injector 202. The desired injection rate ωd provided to trajectory generator 800 as shown in
is utilized as in Hagglund, T., 2012, “Signal filtering in PID control,” IFAC Conference on Advances in PID Control, Brescia, Italy. The desired needle tip displacement x2d is calculated from ωd based on equations (26) and (27):
Referring now to
A second-order low-pass filter is used to generate the desired needle top displacement fed to the controller
{umlaut over (X)}3d+2ζω{dot over (X)}3d+ω2X3d=ω2
The model described in equations (18)-(24) may be rewritten in a shorter form as follows:
{dot over (X)}1=X2
{dot over (X)}2=−a1X1−a2X2−a3
{dot over (X)}3=X4
{dot over (X)}4−−a6X5−a7X4+a8
{dot over (X)}5=a9X4+a10X2+a11(
{dot over (X)}6=X7
{dot over (X)}7=−a12X6−a13X7+a14Vin (40)-(46)
where a1-a14 are constants, and f(X6) and f1(X3, Pb) are C0 but not C1.
The needle top displacement error is defined as: e=X3−X3d. The DSC is derived as in the following steps.
4 is defined to drive S1 to 0:
A first-order low-pass filter is used to obtain desired trajectory for X4:
τ2{dot over (X)}4d+X4d=
A first-order low-pass filter is used to obtain desired trajectory for X5:
τ3{dot over (X)}5d+X5d=
A first-order low-pass filter is used to obtain the desired trajectory for X2:
τ4{dot over (X)}2d+X2d=
A first-order low-pass filter is used to obtain desired trajectory for f(X6):
τ5{dot over (f)}(X6)3+f(X6)d=
A first-order low-pass filter is used to obtain desired trajectory for X7:
τ6{dot over (X)}7d+X7d=
As indicated above, an NI CompactRIO system (designated controller 206) may be used with LabVIEW FPGA for rapid control prototyping. Since the control strategy has a high order and requires a high sampling rate, hardware resource and timing limitations are considerations for implementation. Accordingly, the present disclosure implements several processing strategies.
One processing strategy is parallel execution. In one embodiment, fast calculation is implemented using FPGA parallelism for different tasks. An example estimation and control scheme is illustrated in
Another processing strategy is serial execution. Besides sampling rate maximization, it is desirable to minimize the required FPGA computational resources. In one embodiment, FPGA programming with LabVIEW is utilized to optimize Estimator 1008. In short, to reduce FPGA logic resource consumption, block memory may be used along with matrix calculations to reduce the number of math operations. The Estimator 1008 implementation is arranged into matrix equations. The strategy is performed per each matrix equation as follows:
or Y=AX+Bu. The one-dimensional matrices Y, Ā, X, and B are each stored in block memory, where
Ā=[A11 . . . A1n . . . An1 . . . Ann] (70)
Equation (69) becomes
Serializing the math operations in equation (69) using block memory, a shift register, and for loops is illustrated in
Yet another processing strategy is bandwidth limitation. The above-described estimation and control scheme experiences a limitation in closed-loop bandwidth due to the delay of algorithm calculation and phase lag of the filters in trajectory generator 800, resulting in a delay in the response. In addition, the closed-loop bandwidth is limited to avoid high frequency control effort. Therefore, the control gains K1, K2, . . . , K6 (equations (48), (52), (56), (60), (64), and (68)) and the time constants τ2, τ3, . . . , τ6 of the DSC filters (equations (49), (53), (57), (61), (65)) must be tuned low and high enough, respectively. Since the desired injection flow rate is scheduled ahead of time, a pure delay compensator esT is utilized as the reference shaper of the desired input. The block diagram of the implemented control system (refer to
Using MATLAB, simulation results for the normalized desired boot shape profiles, and control voltages of 70 bar cylinder pressure, 500 bar, and 600 bar rail pressures are shown in
Experimental results for the normalized desired boot shape profiles, and control voltages at 70 bar cylinder pressure, 500 bar, and 600 bar rail pressures are shown in
Table 1 shows indices used to evaluate control performance:
where ωd is desired volumetric injection flow rate, and e=ωstc−ωd.
(3) Start of Injection (SOI) is the time at which the fuel starts being injected: eSOI=SOIstc−SOId. As shown in Table 1, the errors in the total injected fuel and fuel injected during shank are less than 3%.
As described previously, injection flow rate control is particularly challenging during the “toe,” at which point the needle is “hovering” between fully opened and fully closed. The control strategy is also effective during this challenging condition, as illustrated in Table 1 showing errors in injected fuel amount during the toe of no more than 6.4%.
The results show that with the DSC, the closed-loop system is capable of tracking desired fuel injection rate profiles. The DSC 802 uses states estimated from a reduced-order state estimator and measurement of line pressure. While the embodiments have been described as having exemplary designs, the present disclosure may be further modified within the spirit and scope of this disclosure. This application is therefore intended to cover any variations, uses, or adaptations of the disclosure using its general principles. Further, this application is intended to cover such departures from the present disclosure as come within known or customary practice in the art to which this invention pertains.
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