Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

26
Feature-scale to wafer-scale modelling and simulation of physical vapor deposition Peter O’Sullivan Funded by an NSF/DARPA VIP grant through the University of Illinois In collaboration with: I. Petrov, C.-S. Shin and T.-Y. Lee Materials Research Lab, U. of Illinois, Urbana-Champaign work done with: Frieder Baumann, George Gilmer & Jacques Dalla Torre, Bell Labs., Lucent Technologies, Murray Hill, NJ

description

Feature-scale to wafer-scale modelling and simulation of physical vapor deposition. Peter O’Sullivan. work done with: Frieder Baumann, George Gilmer & Jacques Dalla Torre, Bell Labs., Lucent Technologies, Murray Hill, NJ. In collaboration with: I. Petrov, C.-S. Shin and T.-Y. Lee - PowerPoint PPT Presentation

Transcript of Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Page 1: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Peter O’Sullivan

Funded by an NSF/DARPA VIP grant through the University of Illinois

In collaboration with: I. Petrov, C.-S. Shin and T.-Y. Lee

Materials Research Lab,U. of Illinois, Urbana-Champaign

work done with: Frieder Baumann, George Gilmer & Jacques Dalla Torre, Bell Labs., Lucent Technologies,

Murray Hill, NJ

Page 2: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Background

Page 3: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Multi-level interconnects / metallization for ICs

Tungsten (W) deposited incircular “vias” (plugs) usingCVD

Al lines (Cu electro-deposited in long trenches)

Page 4: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Thin Films for Metalization

Cu TaSiO2

Si

• WF6 + 3H2O W + 3O + 6 HF etches SiO2

during CVD fill of vias

• Cu diffuses into Si short circuit

Must use “barrier” layers of Ti, TiN, Ta, TaN to

to prevent diffusion or etch-damage

2m

Page 5: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Simulation of PVD into trench

Low bottomcoverage

Keyhole formation

Low side-wall coverage

Page 6: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Barrier failure

• Metallic films are polycrystalline

Micro-voids and grain boundaries

Columnar (rough) growth and pores more likely because of oblique incidence & lowsurface diffusivity

10nm

impinging atoms

~ 0.25m

( Monte Carlo simulations by Jacques Dalla Torre & George Gilmer )

Page 7: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Objectives: 1. Predict film coverage across wafer 2. Optimize deposition process

Page 8: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Talk Outline

• Physical model of low pressure PVD:• Feature-scale + reactor-scale (continuum) (atomistic)

• Axisymmetric vias:• Validation + analytic scaling with AR• Different angular distributions• Comparison with experiment (Ti and Ta)

• Summary & conclusions

• General 3D:• Across-wafer non-uniformity

• Modelling issues• Problems, challenges

• Numerics for moving interface:• Level sets

Page 9: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Low pressure PVD—DC magnetron sputtering

Rotating magnetic field “traps” electrons => non-uniform target erosion

sputter target

Ti, Ta, Al, Cu, ....

+V

S N SN

wafer

-V

Ar+

ArP ~ 1 - 20 mTorr

+V

plasma

30 cm

Page 10: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Target

Feature on wafer

Sputter

L Rn

• Need to know: Size and distance of target Target erosion pattern (relative sputter rate across target) Angular distribution of atoms from target, f()

• Must calculate flux at each surface point Target visibility/shadowing.................Ray tracing

• Current assumption / applicability: Sticking coeff. = 1 ..................... Ti, Ta

• More complex surface kinetics under development (reflection, resputtering etc.)

Physical Model of Sputter Deposition

Advance usinglevel sets

Page 11: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

• Objectives:

• Compute bottom / sidewall step coverage in high aspect ratio trenches, vias, etc.

• Predict across-wafer non-uniformity of coverage — Simulate feature-scale film profile evolution in 3D

• Study effects of macroscopic reactor variables on coverage — target erosion — angular distribution of different materials — gas pressure

• Incorporate important physical effects as determined from complementary Monte Carlo simulators and experimental data

• Develop efficient algorithms for O(N4—5) ray-tracing codes

Continuum Modeling

Page 12: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Low pressure PVD — Monte Carlo vapor transport code

S N SN

wafer

sputter target

Rotating magnetic field “traps” electrons

-V

Ar+

Ar

Ti, Ta, Al, Cu, ....

P ~ 1 - 20 mTorr

+V

plasma +VBinary collision MC code gives resultant angular distribution, f(), just above wafer

f() then used in level set code

“virtual” target

Page 13: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Computation of geometric 3D material flux

0

0.2

0.4

0.6

0.8

1

1.2

0 10 20 30 40 50 60 70 80 90

(deg)

3D MD data for Al

Nonlinear curve fit

Equivalent 2D flux

Cos

f(

A

r

discrete surfaceelement on target

discrete surfaceelement on substrate

n

Deposition rate given by:

w() f() cos r 2dA

visibleregion

F3D(substrate) =

w() = weight function from target erosion profile

f(cos((isotropic emission from target)

f(

f(

cosA kk

k ......from molecular dynamics calculations

Can use differentangular distibutions:

......Monte Carlo vapor transport code

Page 14: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Code / model validation

Page 15: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Via Geometry

• 3D flux• finite target

• 3D line-of-

sight model

• Axisymmetric, but with 3D shadowing

AR = h / w Q = Z / R

2R

h

w

Zwafer

Page 16: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Step coverage vs. AR : Circular Via

Side-wall coverage

Analytic

Bottom coverage

22

AR41Q1

100)BC(

0t

AR = h / wQ = Z / R

Analytic

Field = 250 Å }

} Field = 1250 Å

bs

t

BC = 100 b / tSWB = 100 s / t

~AR–3

~AR–2

Page 17: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Ti deposition into vias (which angular distribution?)

0.0

0.2

0.4

0.6

0.8

1.0

1.2

0 20 40 60 80 (deg)

Polar plot:cosine

Subcosine (ellipse) *

Ti at 2mTorr (Varian M2000)MC vapor transport code

dNd—

* suggested by Malaurie & Bessaudou (Thin Solid Films v. 286, 1996)

Page 18: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Deposition

Start End

HRSEM

Ti into vias

cosine

f() from gas transport code

Experimental data

Subcosine (ellipse)

BC vs AR for several angular distributions

• Subcosine shows best agreement subcosine + scattering

Page 19: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Full 3D — Across-wafer non-uniformity

Page 20: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

20cm wafer; 30cm target; depth = 0.8m; AR = 2;deposited 0.4m

cut-away side view

cut-away viewfrom below

Complex 3D features

Page 21: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Off-axis circular via, depth = 0.85m, aspect ratio, AR = 2.0,deposited 0.3m

z (

m)

m

yx

Plan view

x

y

Target

wafer

xoff

z

LHS: Sees less of target

RHS: Shadowed by overhang

LHS

Asymmetry in minimum step coverage ~ 10%

Off-Axis Deposition

Page 22: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

More experimental validation — long-throw deposition (similar to ionized PVD)

Page 23: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

0.0

0.2

0.4

0.6

0.8

1.0

1.2

0.0 0.5 1.0 1.5 2.0 2.5 3.0

w()

(cm)

Low pressure Ta PVD (circular via)

• Simulation takes angular distribution from vapor transport code

• Measured target erosion profile modelled by w()

ZT = 10 cm

R 3 cm

P=1mTorr

1.0

0.0

dN —d

20 40 60 80

cosine

Page 24: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Low pressure Ta PVD (circular via)

Cosine (no erosion) Experimental Erosion + scattering

ZT = 10 cm

R 3 cm

P = 1mTorr

Page 25: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Columnar growth / roughness

ZT = 10 cm

R 3 cm

P = 1mTorr

Amplitude = 8 Amplitude = 4

m (400 X 400)

Page 26: Feature-scale to wafer-scale modelling and simulation of physical vapor deposition

Conclusions

• Level set code fast, accurate, predictive model for PVD of refractory metals

• Validated LS code using analytic formulae — Step coverage ~ AR–2 (trench)

— Step coverage ~ AR–3 (via)

• LS code coupled to MC code through f() and “virtual” target

• Full 3D code• Strong non-uniformity in coverage across wafer

• Quantitative comparison w/ experiment

• Ti data: Subcosine distribution improves agreement — Need more data for ang. dist. + vapor transport

• Ta data: Can predict bottom coverage— Need to incorporate more physics to predict closing of feature (breadloafing)