Development and Experimental Validation of an Adaptive, Piston-Damage-Based Combustion Control System for SI Engines: Part 1—Evaluating Open-Loop Chain Performance
Abstract
:1. Introduction
- Lack of a robust relationship between values of knock intensity indexes and the associated damage on the combustion chamber components
- Knock stochastic nature.
- The definition of a threshold for statistical knock indexes that are defined independently from the consequences induced by knocking events
- The implementation of closed-loop controllers that have an output affected by a certain delay with respect to an open-loop-based strategy, especially when an engine runs under fast transient conditions.
- The target value of MAPO percentile derives from the admissible piston damage in a certain amount of time (i.e., a target piston damage speed), and this means it is defined according to the existing relationship between knock intensity and induced damage. Pmax and MFB50 models convert such value in a target combustion phase
- With the open-loop chain the target MFB50 can be achieved by calculating the required SA. The controller is thought to be cycle-resolved, which makes such an algorithm suitable to accurately manage the combustion phase cycle-by-cycle even under transient conditions.
2. Experimental Setup
3. Implemented Models
3.1. Damage Model
- Even if the heat transfer rate on both piston surfaces (the combustion chamber and the sump ones) changes by orders of magnitude during the combustion cycle, the skin piston temperature can be supposed to be almost constant during the cycle, due to the high conductivity and the specific heat of the material. The model is therefore computed once per cycle.
- The exchange condition between gas and piston crown is assumed to be uniform on the entire surface. The specific heat flux is imposed on the piston surface, which assumes that heat transfer is not dependent on surface temperature. Albeit inaccurate, this is deemed to be an acceptable simplification for calculation purposes because the piston temperature is lower than the gas space-averaged temperature.
- Oil jets cooling is assumed to be the only active path of piston heat rejection (it represents 60% of the total heat rejection, according to [31,32,33]), so that the heat exchange through the ring belt and the skirt is neglected. These contributions are acknowledged not to be negligible, but their calibration would require, for example, to conduct tests with different coolant temperatures (and to perform the resulting hardness measurements). Conductive heat transfer is very complex and difficult to investigate with specific experimental tests, and for this reason, it is simplified by supposing that the piston bottom inner surface is involved in the heat exchange process and most of such process takes place in the surface directly touched by the oil jets. Figure 6 shows the method for the estimation of the distance between different locations on the piston surface and the area touched by the oil jets.
- The ratio between gas-exposed (upper) and oil-impinged (lower) areas is unitary, which means that in stationary conditions the specific heat flux across the thickness is uniform, and the heat flux is mono-dimensional. Substantially, it is equivalent to a flat plate, but with differential thermal conductivity (because of the varying distance between the two sides in the real piston).
- imposed heat flux on the gas side (Neumann condition)
- conductive heat transfer on the oil side (Robbins condition)
- defines the method: 0, 1, 0.5 for explicit, implicit and Crank-Nicholson, respectively
- is the time-step
- is the temperature vector at the previous time-step t − 1
- is the capacity matrix
- is the specific heat flux at the gas-piston boundary at time ;
- is the specific heat flux at the gas-piston boundary at time −;
- is the oil temperature.
3.2. Analytical Knock Model
- is the MAPO percentile to be calculated
- a, b, c, and d are the four calibration parameters of the model that allow the definition of MAPO% for the reference conditions (reference lambda value and air temperature in the intake manifold)
- STAM is the stoichiometric trapped air mass, which is equal to the trapped air mass (TAM) per cycle per cylinder when the mixture is stoichiometric or rich, and the ratio between TAM and lambda when the mixture is lean
- is the current lambda value
- represents the reference lambda value, with which model coefficients (a, b, c, and d) are calibrated. In this case, is equal to 1
- is the lambda multiplier, a calibratable coefficient that converts the lambda numerical difference in ΔPmax
- is the current air temperature in the intake manifold
- is the reference temperature in the intake manifold. In this case it is equal to 40 °C
- is the intake air temperature multiplier, a calibratable coefficient that converts the temperature numerical difference in ΔPmax
- is the reference fuel RON value, used during tests which generated the database with which parameters a, b, c and d were calibrated
- is the RON number of the current fuel
- is the fuel RON multiplier, a calibratable coefficient that converts RON numerical difference into ΔPmax, as well as the .
- ESm is the engine speed multiplier, and it includes the effect of combustion noise as a function of engine speed.
3.3. Analytical Pmax Model
3.4. Analytical MFB50 Model
4. Open-Loop Combustion Controller Validation
5. Conclusions and Future Works
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
BMEP | Brake Mean Effective Pressure |
CAN | Controller Area Network |
ECU | Engine Control Unit |
FEM | Finite Element Method |
GDI | Gasoline Direct Injection |
HB | Brinell-Hardness |
HTT | Hardness-Time-Temperature curves |
IMEP | Indicating Mean Effective Pressure |
ION | Ionization Current |
MAPO | Maximum Amplitude of Pressure Oscillation |
MAPO98 | 98th percentile of MAPO |
MAPO99.5 | 99.5th percentile of MAPO |
MBT | Maximum Brake Torque |
MFB50 | The 50%-of-Mass-of-Fuel-Burned |
Probability Density Function | |
PF | Probability Function |
PID | Proportional Integral Derivative controller |
Pmax | Maximum in-cylinder pressure |
Pmax90 | 90th percentile of Pmax |
RCP | Rapid Control Prototyping |
RON | Research Octane Number |
RT | Real-Time |
RzD | Roughness Depth index |
SA | Spark Advance |
STAM | Stoichiometric Trapped Air Mass |
TAM | Trapped Air Mass |
TC | Turbo-Charged |
VVT | Variable Valve Timing |
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Displaced Volume | 3.9 L (8 Cylinder) |
---|---|
Stroke | 82 mm |
Bore | 86.5 mm |
Connecting rod | 143 mm |
Compression ratio | 9.45:1 |
Number of valves per cylinder | 4 |
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Brusa, A.; Cavina, N.; Rojo, N.; Mecagni, J.; Corti, E.; Ravaglioli, V.; Cucchi, M.; Silvestri, N. Development and Experimental Validation of an Adaptive, Piston-Damage-Based Combustion Control System for SI Engines: Part 1—Evaluating Open-Loop Chain Performance. Energies 2021, 14, 5367. https://doi.org/10.3390/en14175367
Brusa A, Cavina N, Rojo N, Mecagni J, Corti E, Ravaglioli V, Cucchi M, Silvestri N. Development and Experimental Validation of an Adaptive, Piston-Damage-Based Combustion Control System for SI Engines: Part 1—Evaluating Open-Loop Chain Performance. Energies. 2021; 14(17):5367. https://doi.org/10.3390/en14175367
Chicago/Turabian StyleBrusa, Alessandro, Nicolò Cavina, Nahuel Rojo, Jacopo Mecagni, Enrico Corti, Vittorio Ravaglioli, Matteo Cucchi, and Nicola Silvestri. 2021. "Development and Experimental Validation of an Adaptive, Piston-Damage-Based Combustion Control System for SI Engines: Part 1—Evaluating Open-Loop Chain Performance" Energies 14, no. 17: 5367. https://doi.org/10.3390/en14175367
APA StyleBrusa, A., Cavina, N., Rojo, N., Mecagni, J., Corti, E., Ravaglioli, V., Cucchi, M., & Silvestri, N. (2021). Development and Experimental Validation of an Adaptive, Piston-Damage-Based Combustion Control System for SI Engines: Part 1—Evaluating Open-Loop Chain Performance. Energies, 14(17), 5367. https://doi.org/10.3390/en14175367