The present invention relates generally to emissions sensing for engines. More specifically, the present invention pertains to the use of sensors in the feedback control of diesel engines.
Engine sensors are used in many conventional engines to indirectly detect the presence of emissions such as oxides of nitrogen (NOx) and/or particulate matter (PM) in the exhaust stream. In diesel engines, for example, such sensors are sometimes used to measure manifold air temperature (MAT), manifold air pressure (MAP), and manifold air flow (MAF) of air injected into the engine intake manifold ahead of the engine combustion and aftertreatment devices. These sensed parameters are then analyzed in conjunction with other engine properties to adjust the performance characteristics of the engine.
In some designs, the vehicle may be equipped with an electronic control unit (ECU) capable of sending commands to actuators in order to control the engine, aftertreatment devices, as well as other powertrain components in order to achieve a desired balance between engine power and emissions. To obtain an estimate of the emissions outputted by the engine, an engine map modeling the engine combustion may be constructed during calibration to infer the amount of NOx and PM produced and emitted from the engine. Depending on the particular time during the drive cycle, the ECU may adjust various actuators to control the engine in a desired manner to compensate for both engine performance and emissions constants. Typically, there is a trade off between engine performance and the amount of acceptable NOx and/or PM that can be emitted from the engine. At certain times during the drive cycle such as during cruising speeds, for example, it may be possible to control the engine in order to reduce the amount of NOx and/or PM emitted without significantly sacrificing engine performance. Conversely, at other times during the drive cycle such as during hard acceleration, it may be necessary to sacrifice emissions performance in order to increase engine power. At other times, an aftertreatment device may be actively regenerated, and requires different conditions achievable in part by changing the signals to the actuators.
The efficacy of the engine model and/or aftertreatment device is often dependent on the accuracy in which the model assumptions match the actual vehicle operating conditions. Conditions such as engine wear, fuel composition, and ambient air composition, for example, may change quickly as a result of changing ambient conditions or slowly over the life of the vehicle, in either case affecting the ability of the engine model to accurately predict actual vehicle operating conditions. Other factors such as changes in fuel type may also have an impact on the model assumptions used to estimate actual operating conditions. As a result, the engine model can become outdated and ineffective.
The present invention relates to the use of sensors in the feedback control of engines, including diesel and gasoline engines. An illustrative control system for controlling a diesel engine in accordance with an exemplary embodiment of the present invention may include one or more post-combustion sensors adapted to directly sense at least one constituent of exhaust gasses emitted from the exhaust manifold of the engine, and a state observer for estimating the state of a dynamic model based on feedback signals received from the post-combustion sensors. The post-combustion sensors can comprise any number of sensors adapted to measure constituents within the exhaust stream. In certain embodiments, for example, the post-combustion sensors may include a NOx sensor for measuring oxides of nitrogen within the exhaust stream and/or a PM sensor for measuring particulate matter or soot within the exhaust stream. In some embodiments, other sensors such as a torque load sensor, an in-cylinder pressure sensor, and/or a fluid composition sensor may also be provided to directly sense other engine-related parameters that can also be used by the state observer to estimate the dynamical state of a model. This state could then be used in a control strategy to control engine performance and emissions discharge. In some embodiments, the control strategy could be used to control other aspects of the engine such as aftertreatment.
The state observer algorithm can be implemented in software embedded in a controller (e.g. an electronic control unit). This algorithm may include a state space model representation of the engine system, including both the air and fuel sides of the engine. In some embodiments, for example, the state space model may include an engine model that receives various signals representing sensor and actuator positions. In some cases, a torque sensor may be used in conjunction with engine speed to augment a model of the rotational inertia. Using the signals provided by the various post-combustion sensors as well as from other sensors (e.g. torque load sensor, in-cylinder pressure sensor, fuel composition sensor, etc.), a state observer can be configured to monitor and, if necessary, adjust the internal state of the state space model, allowing the model to compensate for conditions such as engine wear, fuel composition, ambient air quality, etc. that can affect engine performance and/or emissions over the life of the vehicle.
An illustrative method of controlling a diesel engine system in accordance with an exemplary embodiment of the present invention may include the steps of directly measuring at least one constituent in the exhaust stream of the engine using one or more post-combustion sensors, providing a state observer that contains a state space model of the diesel engine system used to determine the internal state of the state space model based in part on signals received from the one or more post-combustion sensors and/or one or more other sensors, updating the estimated state in the event the true state of the model differs from an estimated state thereof, computing and predicting one or more engine and/or aftertreatment parameters using the updated values from the state space model, and using the estimated state in a control algorithm to adjust one or more actuator input signals based on the computed and predicted engine and/or aftertreatment parameters.
The following description should be read with reference to the drawings, in which like elements in different drawings are numbered in like fashion. The drawings, which are not necessarily to scale, depict selected embodiments and are not intended to limit the scope of the invention. Although examples of operational steps and parameters are illustrated in the various views, those skilled in the art will recognize that many of the examples provided have suitable alternatives that can be utilized.
As can be further seen in
The turbocharger 34 may be a variable nozzle turbine (VNT) turbocharger. However, it is contemplated that any suitable turbocharger may be used, including, for example, a waste gated turbocharger or a variable geometry inlet nozzle turbocharger (VGT) with an actuator to operate the waste gate or VGT vane set. The illustrative VNT turbocharger uses adjustable vanes inside an exhaust scroll to change the angle of attack of the incoming exhaust gasses as they strike the exhaust turbine 36. In the illustrative embodiment, the angle of attack of the vanes, and thus the amount of boost pressure (MAP) provided by the compressor 38, may be controlled by a VNT SET signal 44. In some cases, a VNT POS signal 46 can be provided to indicate the current vane position. A TURBO SPEED signal 48 may also be provided to indicate the current turbine speed, which in some cases can be utilized to limit the turbo speed to help prevent damage to the turbocharger 34.
To reduce turbo lag, the turbine 36 may include an electrical motor assist. Although not required in all embodiments, the electric motor assist may help increase the speed of the turbine 36 and thus the boost pressure provided by the compressor 38 to the intake manifold 22. This may be particularly useful when the engine 20 is at low engine speeds and when higher boost pressure is desired, such as under high acceleration conditions. Under these conditions, the exhaust gas flow may be insufficient to drive the turbocharger 34 to generate the desired boost pressure (MAP) at the intake manifold 22. In some embodiments, an ETURBO SET signal 50 may be provided to control the amount of electric motor assist that is provided.
The compressor 38 may comprise either a variable geometry or non-variable geometry compressor. In certain cases, for example, the compressed air that is provided by the compressor 38 may be only a function of the speed at which the turbine 36 rotates the compressor 38. In other cases, the compressor 38 may be a variable geometry compressor (VGC), wherein a VGC SET signal 52 can be used to set the vane position at the outlet of the compressor 38 to provide a controlled amount of compressed air to the intake manifold 22, as desired.
A charge air cooler 54 may be provided to help cool the compressed air before it is provided to the intake manifold 22. In some embodiments, one or more compressed air CHARGE COOLER SET signals 56 may be provided to the charge air cooler 54 to help control the temperature of the compressed air that is ultimately provided to the intake manifold 22.
In certain embodiments, and to reduce the emissions of some diesel engines such as NOx, an Exhaust Gas Recirculation (EGR) valve 58 may be inserted between the exhaust manifold 24 and the intake manifold 22, as shown. In the illustrative embodiment, the EGR valve 58 accepts an EGR SET signal 60, which can be used to set the desired amount of exhaust gas recirculation (EGR) by directly changing the position setpoint of the EGR valve 58. An EGR POS signal 62 indicating the current position of the EGR valve 58 may also be provided, if desired.
In some cases, an EGR cooler 64 may be provided either upstream or downstream of the EGR valve 58 to help cool the exhaust gas before it is provided to the intake manifold 22. In some embodiments, one or more EGR COOLER SET signals 66 may be provided to the EGR cooler 64 to help control the temperature of the recirculated exhaust gas by allowing some or all of the recirculated exhaust to bypass the cooler 64.
The engine system 10 may include a number of pre-combustion sensors that can be used for monitoring the operation of the engine 20 prior to combustion. In the illustrative embodiment of
The engine system 10 may further include a number of post-combustion sensors that can be used for monitoring the operation of the engine 20 subsequent to combustion. In some embodiments, for example, a number of in-cylinder pressure (ICP) sensors 74 can be used to sense the internal pressure within the engine cylinders 76 during the actuation cycle. A NOx sensor 78 operatively coupled to the exhaust manifold 24 may provide a measure of the NOx concentration in the exhaust gas discharged from the engine 20. In similar fashion, a Particular Matter (PM) sensor 80 operatively coupled to the exhaust manifold 24 may provide a measure of the particulate matter or soot concentration in the exhaust gas. One or more other post-combustion sensors 82 can be used to sense other parameters and/or characteristics of the exhaust gas downstream of the engine 20, if desired. Other types of emissions sensors may include carbon monoxide (CO) sensors, carbon dioxide (CO2) sensors, and hydrocarbon (HC) sensors, for example. In certain embodiments, a torque load sensor 84 may be provided to measure the torque load on the engine 20, which can be used in conjunction with or in lieu of the post-combustion sensors 78,80,82 to adjust engine performance and emissions constants during the actuation cycle.
A number of fuel composition sensors 86 may be provided in some embodiments to measure one or more constituents of the fuel delivered to the engine 20. The fuel composition sensors 86 may include, for example, a flexible fuel composition sensor for the detection of biodiesel composition in biodiesel/diesel fuel blends. Other sensors for use in detecting and measuring other constituents such as the presence of water or kerosene in the fuel may also be used, if desired. During operation, the fuel composition sensors 86 can be used to adjust the fuel injection timing and/or other injection parameters to alter engine performance and/or emissions output.
Referring now to
The state observer 90 can be configured to receive a number of sensor signals y(k) representing various sensor measurements taken from the engine 20 at time “k”. Illustrative sensor signals y(k) may include, for example, the MAF signal 68, the MAP signal 70, the MAT signal 72, the TURBO SPEED signal 48, the TORQUE LOAD signal 84, and/or the FUEL COMPOSITION signal 86, as shown and described above with respect to
As further shown in
It is contemplated that the various sensor and actuator model inputs y(k), u(k) may be interrogated constantly, intermittently, or periodically, or at any other time, as desired. Also, these model inputs y(k), u(k) are only illustrative, and it is contemplated that more or less input signals may be provided, depending on the application. In some cases, the state observer 90 can also be configured to receive one or more past values y(k−N), u(k−N), for each of the number of sensor and actuator model inputs, depending on the application.
The state observer 90 can be configured to compute an estimated state {circumflex over (x)}(k|k), which can then be provided to a separate state feedback controller 92 of the ECU 88 that computes the actuator inputs u(k) as a function of the internal state x(k) of the model. Examples of control feedback strategies that can be enabled by feeding back the internal state x(k) using the state feedback controller 92 may include, but are not limited to, H-infinity, H2, LQG, and MPC. In some embodiments, the state feedback controller 92 can be configured to compute new actuator inputs u(k) based on the generalized equation u(k)=F(x). A very common realization of this function is the affine form:
u(k)=F·x(k)+g (1)
An extension to the basic state feedback controller above is the following switched state feedback controller:
u(k)=Fi·x(k)+gi (2)
A switched feedback controller of the form designated above in Equation (2) can be used in the multiparametric control technology for the real time implementation of constrained optimal model predictive control, as discussed, for example, in U.S. patent application Ser. No. 11/024,531, entitled “Multivariable Control For An Engine”; U.S. patent application Ser. No. 11/025,221, entitled “Pedal Position And/Or Pedal Change Rate For Use In Control Of An Engine”; U.S. patent application Ser. No. 11/025,563, entitled “Method And System For Using A Measure Of Fueling Rate In The Air Side Control Of An Engine”, and U.S. patent application Ser. No. 11/094,350, entitled “Coordinated Multivariable Control Of Fuel And Air In Engines”; all of which are incorporated herein by reference. Hybrid multi-parametric algorithms are further described by F. Borrelli in “Constrained Optimal Control of Linear and Hybrid Systems”, volume 290 of Lecture Notes in Control and Information Sciences, Springer, 2003, which is also incorporated herein by reference.
Using the estimated state {circumflex over (x)}(k|k) from the state observer 90, the state feedback controller 92 then computes new actuator moves u(k) which are then presented to actuators or the like of the engine 20. The actuator moves u(k) outputted by the ECU 88 may be updated constantly, intermittently, or periodically, or at any other time, as desired. The engine 20 then operates using the new actuator inputs u(k) from the ECU 88, which can again be sensed and fed back to the state observer 90 and state feedback controller 92 for further correction, if necessary.
In certain embodiments, the model used by the state observer 90 can be expressed in terms of its “state space” representation based on the following generalized formulas:
x(k+1)=f(u, x); and (3)
y(k)=h(u, x) (4)
In some embodiments, the above state space model representation may be a linear, time invariant (LTI) system, in which case the state space model in equations (3) and (4) above may be represented in terms of constant matrices:
x(k+1)=A·x(k)+B·u(k); and (5)
y(k)=C·x(k)+D·u(k). (6)
In many cases, the internal state of the state space model may not be available since the internal state “x” is unknown. In such cases, an estimated state vector {circumflex over (x)}(k) of the state space model must be computed and used instead of the true internal state variables x(k). To accomplish this, and as can be understood by reference to the following generalized equations, the state observer 90 may utilize a distinct model prediction component (see steps (7), (8) below) and a distinct measurement correction (see step (9) below) in its calculations:
{circumflex over (x)}pred(k|k)=A·{circumflex over (x)}corr(k−1|k−1)+B·u(k−1); (7)
ŷpred(k|k)=C·{circumflex over (x)}pred(k|k)+D·u(k); and (8)
{circumflex over (x)}(k|k)={circumflex over (x)}pred(k|k)+L└y(k)−ŷpred(k|k)┘. (9)
In the above equations (7), (8), and (9), the variable {circumflex over (x)}pred(k|k) includes the predicted state vector of the state model at time “k”, and ŷpred(k|k) includes the predicted input variables from the system at time “k”. The variable {circumflex over (x)}(k|k), in turn, represents the state vector for the state space model at time “k” corrected by a sensor measurement y(k) at time “k” that compensates for errors in the state space model as given by comparing the sensor signal y(k) to the predicted output ŷpred(k|k) and multiplying the error y(k)−ŷpred(k|k) by the observer gain matrix “L” as shown in correction equation 9. The sensor signal y(k) may include, for example, a vector obtained by multiplexing one or more of the sensor signals (e.g. MAF 68, MAP 70, MAT 72, NOx 78, PM 80, TORQUE LOAD 84, FUEL COMPOSITION 86, etc.) described above. The sensor signal y(k) may also contain other measured variables corresponding to other parameters or characteristics of the diesel engine system 10.
During operation, the state observer 90 may alternate between prediction and correction in order to generate an estimated state {circumflex over (x)}(k) of the state space model that approximates the true state of the model. For linear systems, techniques such as pole placement, Kalman filtering, and/or Luenberger observer design techniques may be employed to determine the values for the observer gain matrix L such that the observer dynamics are stable and sufficiently perform the intended application. For non-linear systems, other techniques may be required. The particular technique employed in designating and computing the correction matrix values will typically depend on the number and type of sensor and actuator inputs considered, the number and type of engine components modeled, performance requirements (e.g. speed and accuracy) as well as other considerations.
In use, the ability of the state observer 90 to reconcile and reset the internal state {circumflex over (x)}(k|k) of the state space model using information from one or more directly sensed engine parameters helps to ensure that the model prediction will not deteriorate over time, thus leading to poor engine performance and potential for increased emissions. For example, by directly sensing post-combustion parameters such as NOx and PM in the exhaust stream and then feeding such values to the state space model, the state observer 90 may be better able to compensate for the effects of any changes in fuel composition and/or engine wear over the life of the vehicle.
The emissions processes associated with the engine 20 (represented generally by reference number 104) can be further used by the ECU 88 to compute and predict various actuator parameters for controlling NOx, PM, or other emissions emitted from the engine 20 in addition to the air and fuel-side parameters 100,102. The exhaust emissions 104, for example, are well-known to be difficult to predict and may involve various unmeasured air and fuel composition parameters 106,108 indicating one or more constituents within the exhaust gas and/or fuel. The air composition signal 106 may represent, for example, a signal indicating the level of NOx, PM, and/or other constituent within the exhaust gas, as measured by the post-combustion sensors 78,80,82. The fuel composition signal 108 may represent, for example, a signal detecting the biodiesel composition level in biodiesel/diesel fuel blends, as measured by the fuel composition sensor 86. It should be understood, however, that the air and fuel composition parameters 106,108 may comprise other parameters, if desired.
Based on the parameters 100,102 used by the engine 20 as well as the air and fuel composition parameters 106,108, a number of emissions-related parameters can be sensed and then fed as inputs to the state observer 90 in the ECU 88. The emissions processes 104 may sense, for example, the level of NOx in the exhaust stream and output a NOx sensor signal 110 that can be provided as a sensor input to the state observer 90. In similar fashion, the emissions processes 104 may sense PM in the exhaust stream and output a particulate matter (PM) signal 112 that can also be provided as a sensor input to the state observer 90. If desired, and in some embodiments, the emissions processes 104 of the engine 20 may be further instrumented with additional sensors and output other emissions-related signals 114 that can be provided as additional sensor inputs to the state observer 90, if desired. In some cases, the signals 110,112,114 may represent additional hardware utilized to measure emissions 104 such as additional sensors.
Once the state observer 90 determines an estimate of the internal state of the state space model {circumflex over (x)}(k|k) reflecting the estimated state of the model, the state feedback controller 92 can then be configured to compute and predict future actuator moves for the actuators and/or states of the model of the engine 20. These computed and predicted actuator moves and/or states can then be used to control the engine 20, for example, so as to expel a reduced amount of emissions by adjusting fuel mixture, injection timing, percent EGR, valve control, and so forth. By incorporating emissions sensing that can be used by the state observer 90 to correct the internal state of the model based in part on the emissions processes 104 of the engine 20, the control system 94 may be better able to compensate for deteriorations in engine performance and/or aftertreatment device over the life of the engine 20.
An exemplary implementation of the control system 94 can be understood by reference to
Based on the input parameters 46,50,56,62,66 received from the ECU 88, one or more air-side signals 100 can be sensed from the engine 20, including a manifold air flow (MAF) signal 116, a manifold air pressure (MAP) signal 118, and one or more fuel-side parameters 102 such as a fuel profile set signal 120. Information from pre-combustion sensors 116,118,120 along with information from post-combustion sensors 110,112,114 can then be fed to the state observer 90, which as described above, can be utilized by the ECU 88 to compute and predict various actuator parameters for controlling NOx, PM, or other emissions emitted from the engine 20.
As indicated further by arrow 128, the load or torque (T) on the engine 20 along with the engine speed 126 can then be sensed and fed to the state observer 90, which can be configured to compute an estimate of the internal state of the rotational inertia model 124 that can then be used to predict a new value of the rotational speed (Ne).
The ECU 88 can be configured to receive the rotational speed (Ne) and torque signals 126,128 as model inputs to the state observer 90, which, in turn, outputs a state vector {circumflex over (x)}(k|k) that can be used by the state feedback controller 92 to adjust the fuel profile setpoint 28 used by the fuel injectors 26 to control the speed and load of the engine 20. If desired, the state feedback controller 92 may also output other parameters not explicitly shown that can be used to compensate one or more other parameters relating to the fuel-side control of the engine 20 and/or to the air-side control of the engine 20. In addition, other parameters such as that described above with respect to
To determine whether to regenerate the DPF 132, an ECU 144 equipped with a state observer 146 and regeneration logic 148 can be tasked to perform regeneration calculations to determine whether regeneration is desired. The ECU 144 may comprise, for example, a Model Predictive Controller (MPC) or other suitable controller capable of providing predictive control signals to the DPF 132 subject to constraints in control variables and measured output variables. The regeneration decision 150 calculated and outputted by the regeneration logic 148 may represent a signal that can be used to trigger the injection of fuel into the DPF 132 to burn-off the undesired particulate matter. Other techniques may be used for regeneration, however, depending on the application.
The state observer 146 can be configured to receive a number of sensor signals representing various sensor measurements taken from the DPF 132 at time “k”. In the illustrative embodiment of
Using the various sensor inputs, the state observer 146 can be configured to compute an estimate of the internal state {circumflex over (x)}(k|k) of the DPF 132, which can then be provided to the regeneration logic 148 to determine whether to regenerate the DPF 132. Such regeneration can occur, for example, when the state observer predicts performance degradation of the DPF 132 based on the sensed signals from the PM and/or CO2 sensors 150,152,154,156. Alternatively, or in addition, regeneration of the DPF 132 may occur when the state observer 146 estimates backpressure from the DPF 132 based on sensor signals received from the differential pressure sensor 138. The decision 150 on whether to regenerate the DPF 132 is thus based on the estimate {circumflex over (x)}(k|k) of the internal state of the DPF 132 at time “k”.
While the illustrative aftertreatment system 130 depicted in
Having thus described the several embodiments of the present invention, those of skill in the art will readily appreciate that other embodiments may be made and used which fall within the scope of the claims attached hereto. Numerous advantages of the invention covered by this document have been set forth in the foregoing description. It will be understood that this disclosure is, in many respects, only illustrative. Changes can be made with respect to various elements described herein without exceeding the scope of the invention.
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