simulation of combustion - Unibo

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SIMULATION OF COMBUSTION

OUTLINE SPARK IGNITION MODEL

COMBUSTION MODEL

KNOCK MODEL

ANALYSIS OF CYCLE BY CYCLE VARIABILITY

OUTLINE SPARK IGNITION MODEL

COMBUSTION MODEL

KNOCK MODEL

ANALYSIS OF CYCLE BY CYCLE VARIABILITY

Motivation FLAME KERNEL FORMATION IS A CRITICAL ISSUE IN ICE SINCE: ITS FEATURES AFFECT THE COMBUSTION DURATION CYCLE-TO-CYCLE VARIABILITY AFFECTS RIGHT EARLY BURNING RATE

THE 5%MFB TAKES 35-40% OF TOTAL COMBUSTION DURATION PHYSICAL PROCESS TO BE CONSIDERED PHYSICS OF SPARK DISCHARGE FLOW CONVECTIVE EFFECTS (ARC ELONGATION) TURBULENCE PHYSICAL CHARACTERISTICS OF THE MIXTURE (p, T, φ or pdf of φ)

Background CFD IGNITION MODELS ARE COMPLETELY RELIABLE ? NO IGNITION TIME AND LENGHT SCALES ARE TOO SMALL TO BE RESOLVED DURING PLASMA FORMATION ELECTRICAL CIRCUIT TOO COMPLEX TO BE MODELLED IN DETAIL COUPLING WITH MAIN COMBUSTION MODEL GRID DEPENDENCY

MANY 1D MODELS DECOUPLED FROM CFD SOLVER HAVE BEEN PRESENTED AND REFERENCED IN THE PAPER. THEY WOULD BE CONSIDERED ALL EULERIAN EXCEPT AKTIM AND DPKI.

Background LAGRANGIAN TRACKING REVIEW AKTIM MODEL - Duclos and Colin [COMODIA 2001] - The model includes a detailed description of the electrical system - Ignition kernels were modelled by a set of particles uniformly placed

DPIK - Fan et al. [SAE paper 1999-01-0175 ] - The flame kernel position is marked by particles

CURRENT MODEL EXPECTED CONTRIBUTION PROVIDE AN ALMOST GRID INDIPENDENT MODEL IMPROVE THE PHYSICAL GROUTH OF FLAME KERNEL EXPANSION RATE BASED ON MASS AND ENERGY CONSERVATION PROVIDE A DIRECT COUPLING METHOD WITH A FLAME SURFACE DENSITY MODEL

Spark Ignition Model ELECTRICAL SUB-MODEL FOR SPARK PLUG LUMP MODEL BASED ON THE MAIN AVAILABLE SPECIFICATIONS

LAGRANGIAN KERNEL SUBMODEL MASS AND ENERGY CONSERVATION SOLVED IN A VARIABLE CONTROL VOLUME DEFINED BY MEAN FLAME SURFACE COUPLING WITH MAIN SOLVER ENFORCED WITH PARTICULAR EMPHASIS ON FLAME SURFACE

Spark Ignition Model Lagrangian Ignition Model

Electrical submodel

LUMP/EASY MODELLING (NO WEAK POINT) PLASMA FORMATION NEGLECTED (ti (time and d llength th scales l ttoo short) h t)

Energy released during breakdown and glow phases:

Vbd2 Ebd = 2 Cbd ⋅ d ggapp

(Duclos and Colin, 2001)

E& glow = f ( Esp , t )

B Breakdown kd V Voltage lt evaluated l t d according di to t (Stone (St et. t Al, Al Sae S 2000): 2000)

P P + 324 Vbd = 4.3 + 13.6 d gap Tunb Tunb

Spark Ignition Model AFTER THE PLASMA PHASE: One flame kernel is deposited and initialized Flame Kernel is discretized by a set of triangular elements which expand radially

I-th cell

Each of these elements varies its area surface because of expansion and wrinkling by turbulence It contributes to reaction rate in its own reference fluid cells I-th

Spark Ignition Model Lagrangian Ignition Model

Thermodynamic model

Initial kernel conditions after plasma formation (Song and Sunwoo, Sunwoo 2000) :

⎡ ⎤ ⎢ ⎥ E − k 1 bd ⎥ ⋅ rk ,i = ⎢ ⎢ k ⎛ Tunb ⎞ ⎥ ⎟⎟π ⎥ p0 d gap ⎜⎜1 − ⎢ T ⎢⎣ i ⎠ ⎥ ⎝ ⎦

1/ 2

⎡ 1 ⎛ Tb ⎞ ⎤ ⎜ Ti = ⎢ ⎜ − 1⎟⎟ + 1⎥Tunb ⎠ ⎦ ⎣ k ⎝ Tunb

MASS CONSERVATION FOR A LAGRANGIAN SYSTEM

dm k = ρ unb ⋅ s lam , k ⋅ ( Ak ⋅ Ξ ) dt

Turbulence wrinkling

R Rearranged d -> >A An expression i for f th the mean kernel k l expansion i rate t

⎡ Vk drk ρ unb = slam ,k ⋅ Ξ − ⎢ dt ρk ⎣ Ak

⎛ 1 dTk 1 dp ⎞⎤ ⎜⎜ ⎟⎟⎥ − p dt ⎠⎦ ⎝ Tk dt

Spark Ignition Model Lagrangian Ignition Model

Thermodynamic model

If T≥3Tad heat conduction equation applies

⎛ ∂ 2Tpl 2 ∂Tpl ⎞ P − Q& w ⎟+ = α⎜ 2 + ⎜ ∂r ∂t r ∂r ⎠⎟ ρc pVk ⎝

∂Tpl

Energy Conservation if T Reasonable 2.00 R bl flow fl lenght l ht resolved l d in i RANS ((grid id size i 0.5 0 5 -> 1 mm))

Spark Ignition Model Lagrangian Ignition Model

Comparison with main Lagrangian models

Electrical Model AKTIM has a very sophisticated spark electrical model While in DPIK model is absent

Flame Kernel Deposition In present model, only one kernel is considered and its initial radius and temperature are evaluated depending on system characteristics and operating conditions. A “reasonble value” used in DPIK, while AKTIM adopts a different concept based on presumed multiple kernel ignition probability

Spark Ignition Model Lagrangian Ignition Model

Comparison with main Lagrangian models

Flame expansion velocity Derived from mass conservation according g to a lagrangian g g approach and accounting for wrinkling. In AKTIM each kernel is convected by gas flow. DPKI simply adds turbulence intensity to laminar flame velocity (questionable)

Coupling with Flame surface Models In AKTIM and DPKI is based on the density surface of burning partcile representing the kernel. In the present model Flame surface density is computed according to a spherical kernel expansion which is sensitive to mixture charactetistics and flow conditions. Therefore the ECFM models is inizialized with current Σ value in i-th cells

OUTLINE SPARK IGNITION MODEL

COMBUSTION MODEL

KNOCK MODEL

ANALYSIS OF CYCLE BY CYCLE VARIABILITY

Combustion model FLAMELET COMBUSTION MODEL (ECFM, (ECFM Colins et Al. Al 2003) ⎛ Σ ∂ ⎜ μ⎞ ρ ∂Σ ∂u%i Σ ∂ ⎜ ⎛ μt + = + ⎜ ⎟⋅ ∂t ∂xi ∂xi ⎜ ⎝ Sct Sc ⎠ ∂xi ⎜ ⎝

⎞ ⎟ ⎟ + ( P1 + P2 + P3 ) ⋅ Σ − D ⎟ ⎟ ⎠

FRESH GAS ENTHALPY TRANSPORT EQUATION

∂ρ hu ∂ρ u%i hu ∂ ⎛ ⎛ μt μ ⎞ ∂hu + = + ⎟⋅ ⎜⎜ ∂t ∂xi ∂xi ⎜⎝ ⎝ Sct Sc ⎠ ∂xi

⎞ ρ ∂p ε ⎟⎟ + ⋅ + ρ ⋅ k ⎠ ρ o ∂t

Better accuracy in estimating the evolution of unburned gases thermodynamic conditions during the combustion process

KIVA MODELS Ignition model

Lagrangian Ignition Model

Main Combustion model

ECFM – Flamelet (Colin 2003)

Mono-component Fuel

Shell Fuel/Isooctane

Laminar flame speed

Metchalghi & Keck

Turbulence model

k-ε+wall function

Wall heat transfer

Corrected Han and Reitz

Flame front chemistry

1-step 1 step chemistry

Post-flame chemistry

Meintjes and Morgan

Knock model

AnB (Lafossas 2003)

Validation 1.2 liters, 4 Cylinders Gasoline Engine

Configurations Examined Engine Speed [rpm]

2400

3000

IMEP [bar]

48 4.8

92 9.2

AFR [ ]

13.2

14.6

24.4° to 32.4°

21.1° to 34°

Spark Advance Sweep

Validation VALIDATION OF CFD MODELS •Ignition •Combustion velocity •Wall heat flux 580mbar@2400rpm AFR=13 580mbar@2400rpm, AFR 13.2 2 35

30

Comb Vel

SA=24.4 KIVA EXPERIMENTAL b

Pressurre [bar]

25

20

15

WHF

10

c 5

0 -60 60

a

INIT -40 40

-20 20

0 20 c.a. [deg ATDC]

40

60

80

580mbar@2400rpm, AFR=13.2, SA24.4 200

580mbar@2400rpm, AFR=13.2, SA24.4

100 0

200 -5

0

5

10

200 100 0

-5 5

0

5

10

200

15 20 MFB5

25

15 20 MFB25

25

30

35

40 150

30

35

40

100 0 200 100 0

-5

-5

0

0

5

5

10

10

15 20 MFB50

25

15 20 MFB90

25

30

35

Engine cycles

Engine cycle es Engine cycles En ngine cycles Engin ne cycles

Reference cycle definition

100 50

40 0 15

30

35

20 25 Pressure[bar] @ 19.2 crank angle ATDC

30

40

The reference cycle is used for the sake of CFD results validation: it must represent the ‘typical’ combustion that can be attained for the given operating condition Th reference The f cycle l is i nott necessarily il the th mean pressure cycle l on the th crankshaft domain The relationship between the combustion progress (released heat) and the incylinder pressure is non-linear, non linear thus a normal distribution in terms of pressure could imply a non-normal distribution in terms of pressure

580mbar@2400rpm, AFR=13.2, SA24.4 200

580mbar@2400rpm, AFR=13.2,SA=24.4

100 0

30 -5

0

5

10

15 20 MFB5

25

30

35

40

-5 5

0

5

10

15 20 MFB25

25

30

35

40

-5

0

5

10

15 20 MFB50

25

30

35

40

200 100 0 200 100 0 200 100 0

-5

0

5

10

15 20 MFB90

25

30

35

25 Pres ssure [bar]

Engine cycle es Engine cycles En ngine cycles Engin ne cycles

Reference cycle definition

40

The selection of the representative cycles is accomplished by filtering the combustion with MFBxx near the mean values. The mean cycle in terms of pressure is then evaluated on the basis of the representative cycles. l

20 Representative cycles Mean cycle Average cycle

15

10 -5

0

5

10 15 20 c.a. [deg ATDC]

25

30

35

Validation Well tuned combustion models should h ld b be able bl t to reproduce d experimental behavior when modifying input engine parameter

Pres ssure [bar]

580mbar@2400rpm, AFR=13.2 35

SA=24.4 KIVA

30

SA=26.4 KIVA SA=27.4 KIVA

25

SA=28.4 KIVA

20

SA=30.4 KIVA SA=32.4 KIVA

15

EXPERIMENTAL

SA=29.4 KIVA

10 5

The ignition model plays a key role in the reconstruction of combustion evolution with different spark advance

0

-50

0 50 c.a. [deg ATDC] 900mbar@3000rpm, AFR=14.6

The simulation is able to describe the variation in combustion velocity as a p advance without function of spark tuning parameters

SA=21.1 KIVA SA 23.2 SA=23 2 KIVA SA=25.1 KIVA

50 Press sure [bar]

Two different conditions have been simulated: different loads and different air to fuel ratio.

SA=27.3 KIVA

40

SA=29.2 KIVA SA=33.1 KIVA SA=34.0 KIVA

30

EXPERIMENTAL

20 10 0 -50

0 c.a. [deg ATDC]

50

Validation 580mbar@2400, AFR=13.2 35 MFB05 EXP MFB25 EXP

30

The first Law oh Thermodynamics is used to extract combustion information from experimental data and from simulation

MFB50 EXP MFB90 EXP

25

MFB05 KIVA MFB25 KIVA

Combustion angles

20

γ

dV 1 dP + ROHR = P γ − 1 dϑc γ − 1 dϑc

MFB50 KIVA MFB90 KIVA

15 10 5 0 -5 -10 -15 24

25

26

27

28 29 Spark Advance

30

31

32

33

850mbar@3000rpm, AFR=13.2 40 30 Combust ion angles

The model is able to well represent all the main combustion angles with different operating conditions

20 10 0 -10 20

22

24

26 28 Spark Advance

30

32

34

Validation 580mbar@2400rpm, AFR=13.2

900mbar@3000rpm, AFR=14.6

30

50 0-5% MFB EXP

0-5% MFB EXP

5-90% MFB EXP 0-5% MFB KIVA

5-90% MFB EXP 0-5% MFB KIVA

45

5-90% MFB KIVA

5-90% MFB KIVA

25

Combustion duratio ons

Combustion duratiions

40

20

35

30

25

20

15 22

23

24

25

26

27 28 29 Spark Advance

30

31

32

33

15 20

22

24

26 28 Spark Advance

30

32

34

Combustion durations The start of combustion is well represented (MFB5 – SI): the high SA cause an increase in the early stages of combustion because of the different thermodynamics at ignition.

Ignition model - Conclusion A Lagrangian ignition model has been proposed and validated in real engine configurations The model accounts for: •Spark main electrical characteristics (Lump model) •Mixture Mi t thermophysical th h i l properties ti (thermodynamic (th d i lagrangian l i model) d l) The model is based on few, easy to provide, information on spark setup characteristics. The ignition, combustion and wall heat exchange models are validated against g experimental p data. New statistical observation of experimental results has taken to a new definition of representative cycles. The model proved to be accurate in different operating condition, with a good representation of combustion evolution with respect to different SA

OUTLINE SPARK IGNITION MODEL

COMBUSTION MODEL

KNOCK MODEL

ANALYSIS OF CYCLE BY CYCLE VARIABILITY

Knock Model CHEMKIN Solution of several chemical equilibrium reactions

Time consuming

REDUCED KINETICS Shell Model

No tuning parameters

EMPIRICAL MODEL AnB (autoignition)

Imposition autoignition delay Based on experimental evidence

AnB KNOCK MODEL (Lafossas et Al, 2002, IFP) The model uses a two step chemistry for the simulation of auto-ignition auto ignition In the first step a precursor of the auto-ignition is calculated and then, when it reaches a critical concentration, the knock combustion is forced. AUTO-IGNITION DELAY

⎛ IO ⎞ θ = A⎜ ⎟ 100 ⎝ ⎠

3.4017

B −n T

P e

A, n, B tuning parameters

FUEL CONSUMPTION RATE

dYFu = YFu Ak with Ak = 104 e dt

3500 Tg

AnB KNOCK MODEL (Lafossas et Al, 2002, IFP)

The chemical kinetics during auto-ignition delay are not linear

dYp dt

YP

= YTFu F (θ )

Yp = YTFu

∫ϑ

=1

= Precursor

where

δ θ + 4(1 − δθ ) 2

F (θ ) = KNOCKING CRITERIA

dt

2

θ

Yp YTFu

REFERENCE KNOCK INTENSITY DEFINITION

Similar considerations for the reference mean combustion cycle y can be applied to define the ‘typical’ knocking cycle, for the given operating condition. The same procedure described before leads to the definition of a representative cycle, but the high-frequency components are filtered out by averaging different engine cycles. cycles MAPO (Maximum Amplitude of Pressure Oscillations) and KO (K (Knock k Onset) O t) parameters t can be b used d to t validate lid t th the highhi h frequency content of the pressure signal

(

MAPO = max Php

TDC + 70° TDC

)

KO = ϑc ( Php > thresholds )

REFERENCE KNOCK INTENSITY DEFINITION

Due to the non-normal distribution, the average MAPO is not the most likely value: the validation is carried out by means of the median MAPO MAPO distribution, distribution 900mbar@4500 rpm rpm, AFR=13 AFR=13.2, 2 SA=37 SA=37.5 5° 35 30

Measured Distribution (MFB5 and MFB50 selection) Median Value (MFB5 and MFB50 selection) Mean Value (MFB5 and MFB50 selection)

Engine C Cycles

25 20 15 10 5 0 0

5

10 MAPO [bar]

15

20

Validation of knock model The local evolution of pressure at sensor location has been compared to experimental p signals g 80 Experimental Simulated

70

In-Cylinder In-Cylinder Pressure Pressure [[[bar] bar]

60 50 40 30 20

10 0 -100

0.1

-80

-60

-40 -20 0 20 40 60 Crankshaft Angle [°] 950 mbar@4500 rpm, AFR=13.2, SA=37.5°

80

100

Simulated Experimental

0.09 0.08

FFT FFT Amplit Amplittude ude [bar] [bar]

0.07 0.06 0 05 0.05 0.04 0.03 0.02 0.01 0 0.5

1

1.5 Frequency [Hz]

2 4

x 10

Knock model Knock causes high in-homogeneities in the chamber Exhaust side

Spark plug

Intakeside

Knock model Knock causes high in-homogeneities in the chamber Exhaust side MAPO 7.9 bar

Spark plug MAPO 9 9.4 4b bar Intake side MAPO 5.8 5 8 bar

In the reference case knock induces high velocities (charge motion) in the chamber, raising the convective fluxes

Knock model EVALUATION OF KNOCK SEVERITY PARAMETERS Autoignition delay has been artificially perturbed in order to cause different severity of knocking condition with a fix Spark Advance

The amount of fuel mass involved in autoignition varies form 9% to 15% The aim of the analysis is to find knock severity indexes based on damage risk The indexes must base on information available by analyzing local pressure trace

Knock model COMBUSTION VELOCITY EVALUATION Fuel consumption rate [g/s]

Local fuel consumption rate [g/(s*cm^3)]

Knocking g combustion involves small volumes with high g specific p combustion rates

Knock model DAMAGE RELATED PARAMETERS: WALL HEAT FLUX

In case of severe knocking condition the maximum heat flux at the wall is five times higher than that referring to normal combustions •Increase in combustion rate Increase in convective fluxes •Increase

Knock model DAMAGE RELATED PARAMETERS: WALL HEAT FLUX

The difference between the integral value at EVO in case of non-knocking combustion and that of the knocking one can be used as a damage related parameter for knock detection purpose Reference case (blue line) has an integral wall heat flux out of trend with respect to the amount of fuel involved i knock in k k

Knock model During knock the heat losses increase, the net heat release should decrease, being evaluated neglecting the heat exchanges

CHRNET

dPlp ⎞ ⎛ γ dV 1 Plp V = ∫⎜ + ⎟ γ − 1 d ϑ γ − 1 d ϑ c c ⎠ ⎝ KIVA simulation@4500rpm, AFR13.2, SA 41.5

700

The CHRnet is not sensitive to sensor p position: a heat flux sensitive knock index can then be based on the evaluation of CHR

600

CHRnet [JJ]

500

Sensor spark location - knock Sensor exhaust side - knock Sensor intake side - knock Sensor spark location No Knock

400

300

200

100

0 -60

-40

-20

0

20 40 60 Crankshaft Angle [°]

80

100

120

14

Knock model The CHRNET, however, depends on other factors (e.g., combustion phasing, synthesized by MFB50): only cycles with a given value of MFB50 must be taken into account. MAPO values are randomly distributed in non-knocking conditions; as knock happens the correlation between MAPO MAPO-CHR CHRNET becomes high high. For a given SA only the cycles with average MFB50 are considered (cycles filt i ) filtering)

The correlation between MAPO and CHRNET is then introduced:

KNOCK SEVERITY INDEX

Knock model KNOCK SEVERITY INDEX The Cumulative Heat Release based index is sensitive to knock severity (increases with SA, after knock takes place) and is almost linearly related to the simulated heat losses

Conclusion - knock model A Lagrangian ignition model has been proposed and validated in real engine configurations The model accounts for: •Spark main electrical characteristics (Lump model) •Mixture Mi t thermophysical th h i l properties ti (thermodynamic (th d i lagrangian l i model) d l) The model is based on few, easy to provide, information on spark setup characteristics. The ignition, combustion and wall heat exchange models are validated against g experimental p data. New statistical observation of experimental results has taken to a new definition of representative cycles. The model proved to be accurate in different operating condition, with a good representation of combustion evolution with respect to different SA

Conclusion - knock model The choice of knock model has been driven by the needs of the research: a deeper insight in knocking combustion for better understanding experimental pressure signal The AnB empirical model has been developed and tuned against experimental data. The reconstruction of pressure evolution at spark location is good good. The analysis of results has allowed to create a knock severity index based on the Cumulative Net Heat Release in the chamber chamber. The index is based on both on the high and low frequency content of pressure signals and proved to be position in-sensitive.

OUTLINE SPARK IGNITION MODEL

COMBUSTION MODEL

KNOCK MODEL

ANALYSIS OF CYCLE BY CYCLE VARIABILITY

Cycle by Cycle Variation Reduction of consumption Î Leaner CombustionÎ Cyclic Variability Cycle by Cycle Variation defined as the non-repeatability of the combustion process on a cycle p y resolved basis CAUSES AND INFLUENCING FACTORS MIXTURE COMPOSITION CYLINDER CHARGING IGNITION FACTORS IN CYLINDER FLOW FACTORS

MIXTURE COMPOSITION

•Air to fuel ratio •Mixture non-homogeneity •Fuel type •Residual gas fraction

Evaluation Of Cyclic Variation Configurations Examined Regime

FIXED > 15000rpm

Spark Advance

Fixed

Load

WOT

Mean Lambda

> Lambda of Maximum Laminar Flame Speed

Chain Measurement Encoder Indicating System

AVL 365, 360 pulses per revolution AVL Indimodul 621 (14 bit max 800kHz) bit,

Pressure Sensor

Kistler

Charge g amplifier p

Kistler

Analog Filter

Bessel, 6 poles

The pressure traces of 200 consecutive cycles have been recorded end filtered with a lowpass analog filter The methodology for the measurement of cyclic variability of an internal combustion engine g strongly influences its evaluation

Pressure Related Parameters

Pmax and ϑPmax ⎛ ∂P ⎞ and ϑ⎛ ∂P ⎞ ⎜ ⎟ ⎜ ⎟ ⎝ ∂ϑ ⎠max ⎝ ∂ϑ ⎠max IMEP

Coefficient Of Variation of IMEP COVIMEP

Std ( IMEP) = ×100 × 100 mean( IMEP)

IMEP ↓ ⇔ COV(IMEP) ↑ λREF

+0.04

+0.08 +0.10

Work output variations strongly influence engine driveability and performance and it has been demonstrated that they are well related to combustion instability

pdf

pdf

Frequency distribution of IMEP

IMEP

IMEP

pd df

pd df

Asymmetric

IMEP

IMEP

Care must be taken when using the COV of IMEP for the identification of the variability y of an engine, g because samples for leaner combustions are not compatible with a gaussian distribution

Analysis of exp. pressure traces The higher differences in pressure variability occur during the expansion phase where the positive phase, work output is generated. This well correlates with the differences in the variability of IMEP

Inlet Valve Closing Noise

Combustion Start

Analysis y of heat release Minimum in COV(P) on a crank angle b i can b basis be used d as th the ““starting t ti point of combustion”

Heat Release extracted from pressure by using the First Law of Thermodynamics HYPOTHESES: •No heat transfer to wall (adiabatic chamber) •Fixed Fixed Specific Heat Capacity Ratio k=1 k=1.3 3 •Theoretical (Rigid) Piston Displacement

Combustion angles g of MFB •Moving towards leaner mixture, the combustion durations increase affecting g all the combustion angles •Differences are mainly formed in the early stages of combustion (0-5%) and are not sensitively incremented for later angles •The laminar flame speed’s dependence on air to fuel ratio cannot justify this tendency because it should have been amplified p the different trends •Increase in the variability of combustion duration as the mixture air index is increased •This variability maintains nearly constant during the evolution of the first half of combustion

The A/F ratio influences the combustion duration and cyclic variability of the early stages of combustion b ti

Experimental analysis: conclusion The statistical investigation of the experimental in-cylinder pressure d t recorded data d d for f the th different diff t mean lambda l bd shows h that: th t •The cycle-by-cycle variation increases when leaner mixture are considered with respect to the optimum value for the highest flame speed •The reduction of IMEP well correlates with the increase of COV of IMEP •The The variability of work output is closely related to the instability of the early stages of combustion •The The IMEP distribution can not be described in terms of a gaussian function when the COV increases with leaner conbustion •The statistical analysis of combustion angles shows that the cyclic variation affects mainly the initial flame development i.e, 0-5% MFB duration thus suggesting that the cyclic variation is closely related to mixture tu e qua quality ty a around ou d spark spa

Simulation of combustion: λ uniform Initial Flow condition mapped from results of the simulation of intake process (AVL (AVLFIRE v8.4)

KIVA

Good reconstruction of the mean pressure curve tendencies t d i No information on Cyclic Variation

Slam = f ( λ , P, T ) Laminar Flame Speed Velocità Laminare 0.6

EXP

0.55 0.5 04 0.45 0.4 0.35 0.7 0.75 0.8 0.85 0.9 0.95 0.7

1

1.05 1.1 1.15 1.2

LambdaX

1.2

Mixture quality at ignition The analysis of the experimental pressure traces clearly indicated the early l stages t off combustion b ti as th the kkey processes iin th the onsett off cycle l by cycle variation. It is necessary to characterize the local mixture quality at the ignition with respect to: 1. The local cycle by cycle variability of the mixture composition 2 The fuel distribution at the spark plug location and its 2. homogeneity in the combustion chamber Any attempt A tt t to t reconstruct t t the th combustion b ti iinstability t bilit trends t d with ith leaner l mixture composition must concern with the imposition of these two information: a RANS methodology is presented for a preliminary parametric assessment of cycle by cycle variation in SI engine

Local A/F variability and mixture homogeneity

Local Lambda variability, (Baritaud et Al., Combustion And Diagnostics 2006)

Mixture homogeneity Length Scale



λ ( s )ds

Sphere ( Lu )

4π L

2 u

= λmean

Lu

Description of RANS methodlogy λmean = REF Laminar Flame Speed Velocità Laminare

0.7 0.7

Lu

0.75

0.8

0.85

0.9

0.95 LambdaX

1

1.05

1.1

1.15

1.2 1.2

The variability of the local value of lambda at ignition is forced in the simulations of combustion The combustion process is initialized by forcing a local lambda different from the mean one one. As the flame kernel grows up, the chemical and physical proprieties tend to those of the mean mixture with a linear interpolation based on the ratio between the flame radius and Lu.

Description of RANS methodlogy λmean = REF Laminar Velocità Flame LaminareSpeed

0.7 0.7

Lu

0.75

0.8

0.85

0.9

0.95 LambdaX

1

1.05

1.1

1.15

1.2 1.2

Description of RANS methodlogy λmean = REF + 0.04 Laminar Velocità Flame LaminareSpeed

0.7 0.7

Lu

0.75

0.8

0.85

0.9

0.95 LambdaX

1

1.05

1.1

1.15

1.2 1.2

Description of RANS methodlogy λmean = REF + 0.08 Laminar Flame Speed Velocità Laminare

0.7 0.7

Lu

0.75

0.8

0.85

0.9

0.95 LambdaX

1

1.05

1.1

1.15

1.2 1.2

Description of RANS methodlogy λmean = REF + 0.10 Laminar Flame Speed Velocità Laminare

0.7 0.7

Lu

0.75

0.8

0.85

0.9

0.95 LambdaX

1

1.05

1.1

1.15

1.2 1.2

Statistical analysis y of results Velocità Laminare

The stochastic variability of the local lambda at the ignition is represented by four different perturbations from the mean value 0.7 0.7

0.75

0.8

0.85

0.9

0.95 LambdaX

1

1.05

1.1

1.15

1.2 1.2

A statistical analysis of the results of the RANS simulations is possible by imposing the cumulative probability of each sample as a weighting factor

Pressure variation analysis y EXP

The numerical methodology gy p performance in predicting the influence of the AFR on cyclic variability are aligned to experimental evidence The mixture non homogeneity together with the variation on the local value of lambda cause higher variation of pressure traces with leaner combustion

KIVA

This variation is located in the expansion phase, where the IMEP is mainly created

Variation of MFB angles g EXP

KIVA

Variation of IMEP

IM MEP

IMEP

STD L Locall L Lambda bd 0 0.02 02 STD Local Lambda 0.08 STD Local Lambda 0.12

Mean Lambda

COV of IMEP STD Local Lambda 0.02

COV V of IMEP

The combustion simulations clearly reveal a decrease in IMEP when increasing Air to Fuel ratio

STD Local Lambda 0.08 STD Local Lambda 0.12

Mean Lambda

The imposition of the variability of local lambda at the ignition has resulted in the identification of an increase in the variation of IMEP for leaner mixture An increase A i i the in th variability i bilit off the th initial local lambda causes not only an increase of COV of IMEP, but also a decrease of IMEP, IMEP because of the non-symmetrically distribution of IMEP over the mean value

STD ⇒ PMI

Variation of IMEP – lambda REF+0.1

The numerical methodology has well reconstructed the predominant non-symmetric behaviour of the system, though excite with a symmetric one

CCV - Conclusion A combined experimental and numerical methodology for the evaluation of the dependence of Cycle by Cycle Variation on mixture composition has been presented The estimation of the cyclic variation was based on the evaluation of the COV of IMEP, but for leanest combustion it has been demonstrated that the distribution of the IMEP is far from being well represented by a gauss-distribution The analysis of pressure data for different air to fuel ratios has revealed the close relation between the early stages of combustion and the cyclic variability A numerical methodology has been developed to analyze the influence of the air to fuel composition on the combustion process. The non-homogeneity of the mixture proved to influence much more the leaner combustions. The cyclic variability has been described by means of RANS simulation, by imposing a given local lambda variability on the combustion models. The results well reconstruct the increase in the cyclic variability of the leaner combustion in terms of IMEP statistic distributions and allow a better understanding of the root causes of cyclic variability of internal combustion engines

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