Presentation File - Department of Physics, HKU

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Transcript Presentation File - Department of Physics, HKU

Introduction to Nano-Device
Research in HKUST
Mansun Chan
Professor, Dept. of ECE, HKUST
Major Projects
• Active Projects
– Nano-Transistor Fabrication and Modeling
– Multigate MOSFET modeling
– Nano-Biosensors for DNA detection and living cell
monitoring
– Phase-Change-Memory Design and Modeling
– Low temperature semiconductor devices (ZnO, AlZnO)
– Energy efficient CMOS image sensors
– Power Management Circuits
Nano-Transistor Fabrication
• Double-Gate MOSFETs Fabrication
TG poly-Si
S
Channel
D
BG poly-Si
Nano-Transistor Fabrication
• 3-D Stacked Transistors
Vout
Vin Vdd
Vss
SOI film
G
D
S
G
BOX
D
Silicon base
S
Silicon base
Cross-section of the 3-D Inverter
A
A’
A
Cap Oxide
NMOS Channel
Isolation Layer
PMOS Channel
Gate Oxide
A’
Gate
NMOS Drain
PMOS Drain
BOX
PMOS
NMOS
Nano-Transistor Fabrication
• Stacked Nano-Transistors
RF SF6 Plasma
high density CxF
isotropic etch
profile
(a) etch stage in first
cycle etch
anisotropic
etch profile
(b) passivation in first
cycle etch
high density CxF
silicon
dioxide
isotropic etch
profile
RF SF6 Plasma
SiNW
isotropic etch
profile
(d) second etch
(e) SiNW oxidation
anisotropic
etch profile
(c) passivation removal
Nano-Transistor Fabrication
• Nanowire Formation
10nm
10nm
Nano-Transistor Fabrication
• Transistor Characteristics
Diameter = 10-50nm
tox=6nm
Lg=250nm
# of nanowires: 3
SS = 62mV/dec
Ion = 1001mA/mm
Ion/Ioff > 108
Device Modeling
• BSIM3/BSIM4
– A member of the BSIM team at UC Berkeley
– The industrial standard and most widely used MOSFET
model implemented in all commercial simulators
– Poisson and drift/diffusion based Model
• BSIMSOI
– Was first developed at HKUST and later imported to UC
Berkeley’s platform
– The current industrial standard
Device Modeling
• Multi-gate MOSFET Modeling
– Initiated Multi-gate MOSFET modeling work at UC Berkeley
– Team up with Peking University to derive more exact solution to
the Poisson’s equations under more complicated boundary
conditions
– Team up with researchers in Asia (Japan, Korea, Mainland China,
HK) to develop a common modeling platform for advanced
devices (received a NEDO grant of JPY70,000,000)
Drain
I1
I1
I3
Source
Gate
I2
I2
I3
I4
Device Modeling
• Example
2R
tox
– Nanowire transistor with doping
1 d  d  d 2
1 
  v  2
r


1  e ch f 


2
2 
r dr  dr  dy
LD
I ds 
2 R eff Cox
 Leff
2
Source
eff  2 R  Cox
I ds 
Leff
2

qd
qs
Silicon
Body
dv
qin ch dqin
dqin
L
y
r
 f  qd   f  qs  
1
1
f  qin    qin 2  2qin  ln 1  H  qin 
2
H
Drain
axis
(b)
– SOI MOSFETs
2
2

Coxb b  0  Cox Vgf  s 

t
si
si


W
I ds     2
2
2
L
0 /Vt
 2Vt Cox Vgf  s   Coxb b  0    2Qb 0  2Vt e

qVgf
Ei
Vgf
EFp
qV
tsi
tox
0
Gate
tox
Vs
EFn
Source
toxb
x
0
y
tsi
x
Vd
 s , E s
 0 , E 0
toxb
Oxide
Body
Drain
Buried Oxide
 b , E b
Substrate
Vgb
drain





 source
Device Modeling
• Boundary conditions
–
–
–
–
–
–
–
–
intermediate variables (charge, carrier, potential)
ultra-thin body
nanowire
double-gate (symmetric/asymmetric/independent gate)
doping
quantum effects
transport model (drift/diffusion versus scattering)
continuity between different regions
Device Modeling
• Our Publications (Journal)
1) J. He et. al., “A Surface Potential-Based Non-Charge-Sheet Core Model for Undoped Surrounding-Gate MOSFETs”, Journal of
Semiconductors, Vol.30, No.2, pp.024001-1-024001-4, February 2009
2) F. Liu et. al., “A charge-based compact model for predicting the current–voltage and capacitance–voltage characteristics of heavily doped
cylindrical surrounding-gate MOSFETs”, Solid-State Electronics, Vol. 53, Issue 1, pp. 49-53, January 2009
3) F. Liu, et. al., "A Non-Charge-Sheet Analytic Model for Symmetric Double-gate MOSEFTs with Smooth Transition Between Partially- and
Fully- Depleted Operation Modes", IEEE Trans. on Electron Devices, Vol. 55, No. 12, pp. 3494-3502, December 2008
4) J. Yang, et. al., "A Compact Model of Silicon-Based Nanowire MOSFETs for Circuit Simulation and Design", IEEE Trans. on Electron
Devices, Vol. 55, No. 11, pp. 2898-2906, November 2008
5) F. Liu, et. al., “A Charge-Based Model for Long-Channel Cylindrical Surrounding-Gate MOSFETs From Intrinsic Channel to Heavily Doped
Body”, IEEE Trans. on Electron Devices, Vol. 55, No. 8, pp. 2187-2194, August 2008
6) F. Liu, et. al., "Generic Carrier-Based Core Model for Undoped Four-Terminal Double Gate MOSFETs Valid for Symmetric, Asymmetric
and Independent Gate Operation Modes ", IEEE Transactions on Electron Devices, Vol. 55, No. 3, pp. 816-826, March 2008
7) J.-F. Gong et. al., "An Explicit Surface-Potential-Based Model for Undoped Double-Gate MOSFETs", Solid-State Electronics, Vol. 52,
Issue 2, pp. 282-288, February 2008
8) J. He, et. al., "An Explicit Carrier-Based Compact Model for Nanowirre Surrounding-Gate MOSFET Simulation", Molecular Simulation, Vol.
34, No. 1, pp. 81-87, January 2008
9) J. He, et. al., “A Unified Carrier-Based Model for Undoped Symmetric Double-Gate and Surrounding-Gate MOSFETs”, Semiconductor
Science and Technology, Vol. 22, pp. 1312-1316, October 2007.
10)J. He, et. al., “A Carrier- Based Approach for Compact Modeling of the Long-Channel Undoped Symmetric Double-Gate MOSFETs”, IEEE
Trans. on Electron Devices, Vol. 54, No. 5, pp. 1203-1209, May 2007
11)J. He, et. al., “An Explicit Current–Voltage Model for Undoped Double-Gate MOSFETs Based on Accurate Yet Analytic Approximation to
the Carrier Concentration”, Solid-State Electronics, Vol. 51, Issue 1, pp. 179-185, January 2007
12)J. He, et. al., "A Physics-Based Analytic Solution to the MOSFET Surface Potential From Accumulation to Strong-Inversion Region”, IEEE
Trans. on Electron Devices, Vol. 53, No. 9, pp. 2008-2016, September 2006
13)J. He, et. al., "An Analytic Model to Account for Quantum-Mechanical Effects of MOSFETs Using a Parabolic Potential Well
Approximation”, IEEE Trans. on Electron Devices, Vol. 53, No. 9, pp. 2082-2090, September 2006
14)J. He, et. al., "A Carrier-Based DCIV Model for Long Channel Undoped Cylindrical Surrounding-Gate MOSFETs", Solid-State Electronics,
Vol. 50, Issue 3, pp. 416-421, March 2006
15)J. He, et. al., "A continuous analytic I–V model for long-channel undoped ultra-thin-body silicon-on-insulator (UTB-SOI) MOSFETs from a
carrier-based approach", Semiconductor Science and Technology, Vol. 21, No. 1, pp. 261-266, January 2006
Phase-Change Memory
• Phase change material
– Ge2Sb2Te5 (GST), Sb2Te3 with N-doping (STN), Doped GeSb
– chalcogenide materials are alloys with a group VI element
(usually combined with IV and V group elements)
– certain alloys containing one or more group VI elements
(Chalcogenides) exhibit reversible transition between the
disordered and ordered atomic structure
1. Y.C.Chen et al, “Ultra-Thin Phase-Change Bridge Memory Device Using GeSb”, IEDM, 2006
2. Y.H.Ha et al, “An Edge Contact Type Cell for Phase Change RAM Featuring Very Low Power Consumption”, Symposium on VLSI Technology Digest of Technical Papers, 2003
3. Y.F.Lai et al, “Stacked Chalcogenide Layers Used as Multi-State Storage Medium for Phase Change Memory”, Appl. Phys. A 84, 21-25, 2006
Phase-Change Memory
• I-V Characteristics
• Switch between two
phases
– Crystalline phase
(low resistance)
– Amorphous phase
(high resistance)
• Programming:
– Joule heating
• Reading:
– Resistance of two states
1.Young-Tae Kim, Keun-Ho Lee, etc, ”Study on Cell Characteristics of PRAM using the Phase-Change Simulation Company”, SISPAD, pp. 211-214, Sept., 2001
Phase-Change Memory
• Structure
1.Young-Tae Kim, Keun-Ho Lee, etc, ”Study on Cell Characteristics of PRAM using the Phase-Change Simulation Company”, SISPAD, pp. 211-214, Sept., 2001
Phase-Change Memory
• RESET Pulse
– Crystalline to
Amorphous
– High temperature and
short duration
• SET pulse
– Amorphous to
Crystalline
– Lower temperature for
longer duration
Phase-Change Memory
• SET Programming
– modeled as a Continuous process following
the Johnson-Mehl-Avrami (JMA) equation
[  Kt n ]
Cx  1  e
K  K0e
(
 Ea
)
K BT
Cx
n
t
K
K0
Ea
KB
T
= Crystalline fraction
= Avrami exponent
= Time
= Effective rate constant
= Constant
= Activation energy
= Boltzmann’s constant
= Temperature (Tg<T<Tm)
Phase-Change Memory
• RESET depends on
– the magnitude of the
current pulse
– the trailing edge of the
current pulse
– the quenching time of
the pc material
IRESET
tQ
Phase-Change Memory
• Current
Status
- SMIC will run its PCM process in its new fab. in SZ
- a 863 project is launched to support PCM research
Phase-Change Memory
• SPICE Macro-Model
Vtemp
Vtime
Ron
Ix
Vfraction
IV
Ccry
Camo
Rcry
Ramo
Vx
– implemented in Verilog-A
Vth
Phase-Change Memory
• References
[1] Dae-Hwang Kim, Florian Merget, Michael Forst, and Heinrich Kurz, “Three-dimensional simulation model of switching dynamics in phase
change random access memory cells,” Journal of Applied Physics, 2007.
[2] Ugo Russo, Daniele Ielmini, Andrea Redaelli, and Andrea L. Lacaita, “Modeling of programming and read performance in phase-change
memories---Part I: cell optimization and scaling,” IEEE Transactions on Electron Devices, Vol.55, No.2, Feb. 2008.
[3] F. Pellizzer, A. Benvenuti, D. Ielmini, F. Pellizzer, A. Pirovano, A. Benvenuti, and R. Bez, “Electrothermal and phase-change dynamics in
chalcogenide-based memories,” IEDM Tech. Dig., 2004.
[4] Young-Tae Kim, et.al., “Study on cell Characteristics of PRAM using the Phase-Change Simulation,” Simulation of Semiconductor
Processes and Devices, 2003.
[5] Young-Tae Kim, et.al., “Programming characteristics of phase change random access memory using phase change simulations,”
Japanese Journal of Applied Physics, 2005.
[6] GONG Yue-Feng, LING Yun, SONG Zhitang, and FENG Songlin, “Simulation of phase-change access memory with ring-type contactor
for low reset current by finite element modeling,” Chinese Physics Letter, Vol.25, No.9, 2008.
[7] A. Itri, D. Ielmini, A. L. Lacaita, A. Pirovano, F. Pellizzer, and R. Bez, “Analysis of phase-transformation dynamics and estimation of
amorphous-chalcogenide fraction in phase-change memories,” Proc. IRPS, 2004.
[8] D. Ielmini, A. L. Lacaita, A. Pirovano, F. Pellizzer and R. Bez, “Analysis of phase distribution in phase-change nonvolatile memories,”
IEEE Electron Device Letters, 2004.
[9] J. I. Lee, et.al., “Highly scalable phase change memory with CVD GeSbTe for Sub 50nm Generation,” Symposium on VLSI Technology
digest of Technical Papers, 2007.
[10] Stefan Lai, “Phase change memory: a memory technology for all applications,” PPT.
[11] R. Bez, “Chalcogenide PCM: a memory technology for next decade,” IEEE IEDM, 2009.
[12] A. Pirovano, A. L. Lacaita, A. Benvenuti, F. Pellizzer, and R. Bez, “Electronic switching in phase-change memories,” IEEE Trans. on
Elect. Dev., 2004.
[13] B. Schmithusen et.al., “Phase-change memory using an analytical phase space model,” SISPAD, 2008.
[14] Ugo Russo, Daniele Ielmini, Andrea Redaelli, and Andrea L. Lacaita, “Modeling of programming and read performance in phasechange memories---Part II: program disturb and mixed-scaling approach,” IEEE Trans. on Elect. Dev., Vol.55, No.2, Feb. 2008.
[15] F. Pellizzer, et.al., “A 90nm phase change memory technology for standalone non-volatile memory applications,” VLSI Symp. Tech.
Dig., 2006.