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© Copyright Remcom Inc. All rights reserved.
Wireless InSite
®
Simulation of MIMO
Antennas for 5G Telecommunications
© Copyright Remcom Inc. All rights reserved.
Overview
 To keep up with rising demand and new technologies, the wireless
industry is researching a wide array of solutions for 5G, the next
generation of wireless networking
 Technologies based on Multiple Input, Multiple Output (MIMO), including
Massive MIMO, are among key concepts
 As a leading provider of wireless simulation tools, Remcom is developing
an innovative and efficient MIMO simulation capability
 In this talk, we give an overview of 5G and MIMO concepts, and a
preview of our upcoming Wireless InSite MIMO simulation capability
© Copyright Remcom Inc. All rights reserved.
5G OBJECTIVES AND CHALLENGES
© Copyright Remcom Inc. All rights reserved.
Challenges For 5G
Massive Growth of
Connected Devices
5 Billion 50 Billion+
(2010) (2020)
Massive Growth
In Mobile Data Demand
Increasingly Diverse Use
Cases and Requirements
1000x Increase
 Traditional
 Cell Phones
 Tablets
 Laptops
 Emerging Technologies
 Connected Cars
 Machine-to-
Machine
 Internet of Things
© Copyright Remcom Inc. All rights reserved.
Challenges and Objectives of 5G
Massive Growth in
Mobile Data Demand
Massive Growth in
Connected Devices
Increasingly Diverse Use
Cases and Requirements
10-100x Data Rates (~10 Gbps)
1000x Capacity
10-100x Devices (50-500B)
5x Lower Latency
100x Energy Efficiency
10x Longer Battery Life for low-
power devices
Challenges Objectives
© Copyright Remcom Inc. All rights reserved.
Challenges and Scenarios for 5G[1]
[1] METIS: Mobile and wireless communications Enablers for Twenty-twenty (2020) Information Society
Very High Data Rate
Very Dense Crowds
of Users
Mobility
Very Low Latency
Many Devices
w/Low Energy Cost
Amazingly Fast
Great Service in a
Crowd
Best Experience
Follows You
Real-Time, Reliable
Connections
Ubiquitous Things
Communicating
Challenges Scenarios
© Copyright Remcom Inc. All rights reserved.
Some of the Key Solutions
 Some of the key solutions
 Increased spectrum, much of it at higher frequencies (e.g., mm
waves)
 Massive MIMO
 Ultra-Dense Networks
 Moving Networks
 Machine-to-machine/Device-to-device Communications
 Focus of this talk is on MIMO, including Massive
MIMO, with some reference to its use with millimeter
waves
© Copyright Remcom Inc. All rights reserved.
MIMO AND 5G
How MIMO Helps to Address 5G Challenges
© Copyright Remcom Inc. All rights reserved.
MIMO
 Multiple Input, Multiple Output
 Use techniques such as spatial multiplexing
and precoding
 Create multiple streams to increase data rate
 May use beamforming to increase SNR
 Techniques require varying levels of channel state info (CSI)
MIMO Multi-Streaming Concept
MIMO Techniques Requires CSI? Description of Technique
Precoding Both ends Split signal into multiple streams and use coding for beamforming
Spatial Multiplexing At transmitter  Split signal; transmit different streams from each antenna
 Works if channel characteristics (spatial signature) uncorrelated
 Can be combined with precoding if have channel state info (CSI)
Diversity Coding Not required Takes advantage of variation in fading for each antenna pair to provide diversity;
can use if no channel state information
© Copyright Remcom Inc. All rights reserved.
Multipath and Fading
Wireless InSite example showing multipath
between base station and user equipment
Distance (m)
ReceivedPower(dBm)
Small-scale fading from multipath
causes rapid fluctuations along route
Small-Scale Fading due to multipath interference
© Copyright Remcom Inc. All rights reserved.
Multi-User MIMO (MU-MIMO)
 MIMO transmission to multiple terminals at same time
 Exists in 4G LTE and LTE-A, but with small # antennas
 LTE-Advanced allows for up to just 8 antennas, and most systems have
far fewer
Key Advantages [2]:
Increased Data Rate More independent, simultaneous data streams
Improved Reliability More antennas means more distinct propagation paths
More Energy Efficient Can focus energy toward terminals
Reduced Interference Can avoid directions where interference harmful
© Copyright Remcom Inc. All rights reserved.
Massive MIMO
 Scales up current state-of-the-art by orders of magnitude
 Arrays with 100s of antennas serving 10s of users in same time-
frequency
 Enabler for future broadband, connecting people and things with
network infrastructure
 If used with mm wave, large arrays could be very compact
 MIMO antenna layouts
 Linear, rectangular, or cylindrical arrays
 Distributed antennas
 Core method: spatial multiplexing
 Relies on knowledge of propagation channel on uplink and downlink
Distributed Antennas
MIMO Array Concepts
© Copyright Remcom Inc. All rights reserved.
Beamforming Using Spatial Multiplexing
 Massive MIMO uses beamforming to send multiple data streams
 Offers way to share frequency in close proximity, increasing capacity / data rate
 Uses pilot signals to characterize channel
Typical Conceptualized
Wireless InSite showing how multipath
could influence beamforming to > one device
Each case
demonstrates
idea of
optimizing for
one user ( )
while
minimizing
interference to
others ( )
© Copyright Remcom Inc. All rights reserved.
Potential Benefits of Massive MIMO[2,3]
 Increase Capacity 10x+
 Aggressive spatial multiplexing with large numbers of antennas
 Improve radiated energy-efficiency 100x
 With large arrays, energy can also be focused with extreme sharpness
 Reduces both power consumption and potential interference
 Can use inexpensive, low-power components
 Conventional 50 Watt amplifiers replaced by hundreds of low-cost, milliWatt amplifiers
 Significantly reduces latency (eliminates impact of fading)
 Increases robustness to interference and jamming
 With large arrays, algorithms can reduce these effects
© Copyright Remcom Inc. All rights reserved.
Key Challenges for Massive MIMO[2,3]
 Reciprocity and uplink/downlink calibration
 Pilot signals used to get channel state information; larger arrays means much more channel data for mobile
devices to process and send
 Solution is generally to use pilots received at base station and assume reciprocity
 Propagation follows reciprocity, but hardware differences must be calibrated
 Pilot “contamination”
 Pilot signals typically used to characterize channel between MIMO elements
 With massive MIMO, easy to use up all available pilot sequences
 May get duplicate pilot sequences, contaminating processing for beam-forming
 Need for “favorable” propagation
 Channel responses from base station to terminals must be sufficiently different
 Evidence in research seems to suggest that conditions typically are valid for favorable propagation, so not
likely to be a significant issue
© Copyright Remcom Inc. All rights reserved.
Use of Simulations in MIMO R&D
 MIMO R&D: simulations can support active research areas
 Better channel characterization for R&D
 Good channel state information (CSI) is key to success of method; deterministic simulations can provide
more realistic prediction of multipath channels than statistical methods
 Predict potential for pilot contamination for typical scenarios
 Examples: study impact of antenna alignments, polarization, correlation between channels –
evaluate algorithms using predicted channel characteristics
 Virtual prototyping
 Industry and researchers are prototyping solutions and testing concepts
 While testbeds now exist with 32 or 64 element arrays [4, 5], some value to being able to test
in any arbitrary environment with any antenna array technology using simulation
 Virtual testbeds could evaluate alternatives before even reaching prototype stages
© Copyright Remcom Inc. All rights reserved.
WIRELESS INSITE’S MIMO CAPABILITY
MIMO in Wireless Insite with a demonstration
© Copyright Remcom Inc. All rights reserved.
Overview of Wireless InSite MIMO Capability
 New capability will target these key shortfalls in tools used in
industry:
 Most channel models in industry are statistical and cannot predict potential correlation
between channels
 Research suggests that correlation coefficient between channels is much larger than would be expected
using independent, identically distributed random variables [3] – typical assumption used in many
channel models
 With Massive MIMO, computational complexity for a deterministic ray-tracing model will rise
by orders of magnitude
 One base station becomes hundreds of transmitting elements!
 Details of antenna pattern, polarization, and phase will be critical to properly modeling effects
 Most models simply don’t have this level of detail
© Copyright Remcom Inc. All rights reserved.
Key Benefits of Wireless InSite MIMO Capability
Key Benefits of Wireless InSite MIMO
1. Positions and moves MIMO Arrays
2. Predicts channel characteristics between each
MIMO element
 Magnitude, phase, time of arrival per path within channel
 Includes antenna and polarization effects
 Heterogeneous arrays (independent patterns and rotations)
3. Rapid frequency sweeps
 Gather information across one or more bands
4. Optimizes to minimize increase in Run-time from
significant increase in antennas
5. Preliminary Tests: 4x4 MIMO: just 1.3x increase
64x4 MIMO: just 4x increase
Complex Impulse Response
Time of Arrival (s)
ReceivedPower(dBm)
Propagation paths for channel between one pair of
elements from Tx/Rx MIMO arrays
© Copyright Remcom Inc. All rights reserved.
APG Optimizes for Mobile Devices
 Adjacent Path Generation (APG) further
reduces Run-time and memory footprint for
mobile devices
 Limits full ray-tracing to coarse spacing along route of
travel
 Uses Remcom proprietary techniques to find exact paths
to each mobile location
 Then finds exact paths to each MIMO array element on
each end of link (uplink/downlink)
 Run-time reduction may be order of magnitude
or more, depending on the spacing of points
along route
High-fidelity ray-tracing to coarse set
APG rapidly generates paths to precise points
© Copyright Remcom Inc. All rights reserved.
Value of Wireless InSite Capability
 Provides efficient simulation of MIMO antennas with ability to model
details of antennas and channel characteristics
 Ability to deterministically predict variation of paths across MIMO array elements
overcomes significant shortfall in statistical models commonly used today
 Efficient calculation of paths for large arrays overcomes shortfall of current brute-force
ray models
 Used to perform virtual assessment of systems, scenarios, and
performance in complex environments
 Offers tool for R&D, virtual testing and evaluation of concepts,
enabling 5G research of potential MIMO solutions
© Copyright Remcom Inc. All rights reserved.
Wireless InSite Demonstration
MIMO for Small Cell in Rosslyn, VA
© Copyright Remcom Inc. All rights reserved.
Small Cell Scenario
 Small cell base station
 At intersection of Wilson and Lynn
 Mounted on lamp post in median
on Lynn Street
 Predict signal received by
mobile device (red route)
 Travels along Wilson, turns onto
Lynn, then turns onto side street
 Moving at ~10m/s (22 mph)
 Start with single antennas
 Use dipoles, 3.55 GHz
Placement of Route and Base Station in Rosslyn
Base Station
on lamp post
on median
© Copyright Remcom Inc. All rights reserved.
Baseline SISO Scenario
 1 Dipole at Base Station and
Handset
 Field Map shows significant
urban multipath in area
 Much of route within LOS
 Still may have spatial diversity due
to multipath
 End of route is beyond LOS and has
significant shadowing
© Copyright Remcom Inc. All rights reserved.
Baseline SISO Scenario
 Plot showing received power
along route
 Wireless InSite results show:
 Shadowing at beginning of route
(hill and structures)
 Shadowing at end (turns corner)
 Small-scale fading along route
due to multipath
(Note: 10 points/second)
© Copyright Remcom Inc. All rights reserved.
4x4 MIMO Scenario
 Define 4-element MIMO
antenna
 4-element arrays (2x2)
 Frequency: 3.55 GHz
 ½ λ Spacing (4.225 cm)
 Assign to both base station
and mobile device
 Channel matrix: 4 x 4 (16
total pairs)
½ λ  4.225cm
½ λ
½ λ
½ λ
4-Element MIMO Antennas
(2x2 Dipole Arrays)
Base Station
Antenna
Mobile Device
Antenna
4 x 4
Channel
Matrix
© Copyright Remcom Inc. All rights reserved.
4x4 Channel Matrix Output
 Large-scale fading consistent across channels, but deep fades from
multipath vary significantly
 Simple diversity techniques (e.g., using max received power) can eliminate deep fades
 MIMO techniques can use this to transmit multiple streams over same frequency with “orthogonal” coding
Diversity (traditional MIMO)
can eliminate deep fades
© Copyright Remcom Inc. All rights reserved.
Channel Impulse Responses
 Wireless InSite multipath results can be used to generate MIMO channel
impulse responses for each element of channel matrix
 Could apply various MIMO techniques to evaluate how best to maximize capacity, data rate, etc.
for small cell
 Deterministic simulation results can be used to predict correlation between channels (key
requirement for MIMO spatial multiplexing gain)
Some key
differences in
impulse response
© Copyright Remcom Inc. All rights reserved.
Sample Signal Traces
 Signal Traces for two MIMO channels (same mobile device location)
 Shows just how much signal impacted by multipath with changes in
position of just a few cm on each end
© Copyright Remcom Inc. All rights reserved.
30 GHz Massive MIMO Scenario
 Define 128-element Massive
MIMO Base Station antenna
 64-element array (8x8)
 Dual Polarization (2x elements)
 Frequency: 30 GHz
 ½ λ Spacing (0.5 cm)
 Mobile devices still uses 4-
element array
 Channel matrix: 128 x 4
(512 total pairs)
2x2 Dipole Array
(4 elements)
Base Station
Antenna
½ λ  0.5cm
½ λ
8x8, dual pol array
(128 elements)
Mobile Device
Antenna
128 x 4
Channel
Matrix
½ λ
½ λ
© Copyright Remcom Inc. All rights reserved.
Baseline SISO Scenario
 SISO scenario simulated at
30 GHz
 Results similar to 3.55 GHz
 Similar shadowing and fading
 Received power is about
20dB lower
 Caused by higher path loss at mm
Wave frequencies (Note: 10 points/second)
© Copyright Remcom Inc. All rights reserved.
128x4 Channel Matrix Output
 Wireless InSite results are similar to 4x4 case, but even more variation
between channels and even deeper fading
 Simple diversity technique (e.g., max power) does even better at eliminating small-scale fading
 Likely much more spatial diversity allowing for multiple streams and beamforming
© Copyright Remcom Inc. All rights reserved.
Massive MIMO Scenario
 Plots show complex impulse response for 2 sample areas
where fading was significant
 At superficial level, appears to be even more variation for this case
© Copyright Remcom Inc. All rights reserved.
References
1. A. Osserian, et. al., “Scenarios for the 5G Mobile and Wireless Communications: the Vision of the METIS Project,“
IEEE Communications Magazine, Vol. 52, Issue 5, May 2014, pp. 26-35.
2. E. Larsson, O. Edfors, F. Tufvesson, T. Marzetta, “Massive MIMO for Next Generation Wireless Systems,“ IEEE
Communications Magazine, Volume 52, Issue 2, Pages 186-195, February 2014.
3. L. Lu, G. Ye Li, A. Swindlehurst, A. Ashikhmin, R. Zhange, “An Overview of Massive MIMO: Benefits and
Challenges,” IEEE Journal of Selected Topics in Signal Processing, Vol 8, Mo. 5, October 2014, pp. 742-758.
4. C. Shepard, H. Yu, N. Anand, L. E. Li, T. L. Marzetta, R. Yang, and L. Zhong, “Argos: Practical many-antenna base
stations,” in ACM International Conference Mobile Computing and Networking (MobiCom), Istanbul, Turkey, Aug.
2012.
5. H. Suzuki, R. Kendall, K. Anderson, A. Grancea, D. Humphrey, J. Pathikulangara, K. Bengston, J.Matthews, and C.
Russell, “Highly spectrally efficient Ngara rural wireless broadband access demonstrator,” in Proc. of IEEE
International Symposium on Communications and Information Technologies (ISCIT), Oct. 2012.
© Copyright Remcom Inc. All rights reserved.
SUMMARY
Wireless InSite’s MIMO Capability
© Copyright Remcom Inc. All rights reserved.
MIMO in Wireless InSite
 MIMO and Massive MIMO are key concepts for 5G
 Remcom’s Wireless InSite MIMO capability provides an efficient method to predict
channel characteristics for large-array MIMO antennas in complex multipath
environments
 Key benefits to the wireless industry
 Provides capability to perform R&D and assessment of MIMO solutions and algorithms
 Enables virtual testing of prototypes and design concepts in simulated environment that captures complex aspects
of realistic deployment scenarios
 Status of Development
 Beta versions of computational engine are in development and testing, and the graphical interface and planned
outputs are still being finalized
© Copyright Remcom Inc. All rights reserved.
Contact us:
Toll Free: 1-888-773-6266 (US/Canada)
Tel: 1-814-861-1299
Email: sales@remcom.com
www.remcom.com
Free Trial: www.remcom.com/free-trial-request-form
Pricing: www.remcom.com/pricing
Information Request: www.remcom.com/information-request-form
Google+: https://plus.google.com/+Remcom/posts Facebook: www.facebook.com/remcomsoftware
Twitter: twitter.com/remcomsoftware LinkedIn: www.linkedin.com/company/remcom-inc

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Remcom_Predictive_Simulation_of_MIMO_for_5G

  • 1. © Copyright Remcom Inc. All rights reserved. Wireless InSite ® Simulation of MIMO Antennas for 5G Telecommunications
  • 2. © Copyright Remcom Inc. All rights reserved. Overview  To keep up with rising demand and new technologies, the wireless industry is researching a wide array of solutions for 5G, the next generation of wireless networking  Technologies based on Multiple Input, Multiple Output (MIMO), including Massive MIMO, are among key concepts  As a leading provider of wireless simulation tools, Remcom is developing an innovative and efficient MIMO simulation capability  In this talk, we give an overview of 5G and MIMO concepts, and a preview of our upcoming Wireless InSite MIMO simulation capability
  • 3. © Copyright Remcom Inc. All rights reserved. 5G OBJECTIVES AND CHALLENGES
  • 4. © Copyright Remcom Inc. All rights reserved. Challenges For 5G Massive Growth of Connected Devices 5 Billion 50 Billion+ (2010) (2020) Massive Growth In Mobile Data Demand Increasingly Diverse Use Cases and Requirements 1000x Increase  Traditional  Cell Phones  Tablets  Laptops  Emerging Technologies  Connected Cars  Machine-to- Machine  Internet of Things
  • 5. © Copyright Remcom Inc. All rights reserved. Challenges and Objectives of 5G Massive Growth in Mobile Data Demand Massive Growth in Connected Devices Increasingly Diverse Use Cases and Requirements 10-100x Data Rates (~10 Gbps) 1000x Capacity 10-100x Devices (50-500B) 5x Lower Latency 100x Energy Efficiency 10x Longer Battery Life for low- power devices Challenges Objectives
  • 6. © Copyright Remcom Inc. All rights reserved. Challenges and Scenarios for 5G[1] [1] METIS: Mobile and wireless communications Enablers for Twenty-twenty (2020) Information Society Very High Data Rate Very Dense Crowds of Users Mobility Very Low Latency Many Devices w/Low Energy Cost Amazingly Fast Great Service in a Crowd Best Experience Follows You Real-Time, Reliable Connections Ubiquitous Things Communicating Challenges Scenarios
  • 7. © Copyright Remcom Inc. All rights reserved. Some of the Key Solutions  Some of the key solutions  Increased spectrum, much of it at higher frequencies (e.g., mm waves)  Massive MIMO  Ultra-Dense Networks  Moving Networks  Machine-to-machine/Device-to-device Communications  Focus of this talk is on MIMO, including Massive MIMO, with some reference to its use with millimeter waves
  • 8. © Copyright Remcom Inc. All rights reserved. MIMO AND 5G How MIMO Helps to Address 5G Challenges
  • 9. © Copyright Remcom Inc. All rights reserved. MIMO  Multiple Input, Multiple Output  Use techniques such as spatial multiplexing and precoding  Create multiple streams to increase data rate  May use beamforming to increase SNR  Techniques require varying levels of channel state info (CSI) MIMO Multi-Streaming Concept MIMO Techniques Requires CSI? Description of Technique Precoding Both ends Split signal into multiple streams and use coding for beamforming Spatial Multiplexing At transmitter  Split signal; transmit different streams from each antenna  Works if channel characteristics (spatial signature) uncorrelated  Can be combined with precoding if have channel state info (CSI) Diversity Coding Not required Takes advantage of variation in fading for each antenna pair to provide diversity; can use if no channel state information
  • 10. © Copyright Remcom Inc. All rights reserved. Multipath and Fading Wireless InSite example showing multipath between base station and user equipment Distance (m) ReceivedPower(dBm) Small-scale fading from multipath causes rapid fluctuations along route Small-Scale Fading due to multipath interference
  • 11. © Copyright Remcom Inc. All rights reserved. Multi-User MIMO (MU-MIMO)  MIMO transmission to multiple terminals at same time  Exists in 4G LTE and LTE-A, but with small # antennas  LTE-Advanced allows for up to just 8 antennas, and most systems have far fewer Key Advantages [2]: Increased Data Rate More independent, simultaneous data streams Improved Reliability More antennas means more distinct propagation paths More Energy Efficient Can focus energy toward terminals Reduced Interference Can avoid directions where interference harmful
  • 12. © Copyright Remcom Inc. All rights reserved. Massive MIMO  Scales up current state-of-the-art by orders of magnitude  Arrays with 100s of antennas serving 10s of users in same time- frequency  Enabler for future broadband, connecting people and things with network infrastructure  If used with mm wave, large arrays could be very compact  MIMO antenna layouts  Linear, rectangular, or cylindrical arrays  Distributed antennas  Core method: spatial multiplexing  Relies on knowledge of propagation channel on uplink and downlink Distributed Antennas MIMO Array Concepts
  • 13. © Copyright Remcom Inc. All rights reserved. Beamforming Using Spatial Multiplexing  Massive MIMO uses beamforming to send multiple data streams  Offers way to share frequency in close proximity, increasing capacity / data rate  Uses pilot signals to characterize channel Typical Conceptualized Wireless InSite showing how multipath could influence beamforming to > one device Each case demonstrates idea of optimizing for one user ( ) while minimizing interference to others ( )
  • 14. © Copyright Remcom Inc. All rights reserved. Potential Benefits of Massive MIMO[2,3]  Increase Capacity 10x+  Aggressive spatial multiplexing with large numbers of antennas  Improve radiated energy-efficiency 100x  With large arrays, energy can also be focused with extreme sharpness  Reduces both power consumption and potential interference  Can use inexpensive, low-power components  Conventional 50 Watt amplifiers replaced by hundreds of low-cost, milliWatt amplifiers  Significantly reduces latency (eliminates impact of fading)  Increases robustness to interference and jamming  With large arrays, algorithms can reduce these effects
  • 15. © Copyright Remcom Inc. All rights reserved. Key Challenges for Massive MIMO[2,3]  Reciprocity and uplink/downlink calibration  Pilot signals used to get channel state information; larger arrays means much more channel data for mobile devices to process and send  Solution is generally to use pilots received at base station and assume reciprocity  Propagation follows reciprocity, but hardware differences must be calibrated  Pilot “contamination”  Pilot signals typically used to characterize channel between MIMO elements  With massive MIMO, easy to use up all available pilot sequences  May get duplicate pilot sequences, contaminating processing for beam-forming  Need for “favorable” propagation  Channel responses from base station to terminals must be sufficiently different  Evidence in research seems to suggest that conditions typically are valid for favorable propagation, so not likely to be a significant issue
  • 16. © Copyright Remcom Inc. All rights reserved. Use of Simulations in MIMO R&D  MIMO R&D: simulations can support active research areas  Better channel characterization for R&D  Good channel state information (CSI) is key to success of method; deterministic simulations can provide more realistic prediction of multipath channels than statistical methods  Predict potential for pilot contamination for typical scenarios  Examples: study impact of antenna alignments, polarization, correlation between channels – evaluate algorithms using predicted channel characteristics  Virtual prototyping  Industry and researchers are prototyping solutions and testing concepts  While testbeds now exist with 32 or 64 element arrays [4, 5], some value to being able to test in any arbitrary environment with any antenna array technology using simulation  Virtual testbeds could evaluate alternatives before even reaching prototype stages
  • 17. © Copyright Remcom Inc. All rights reserved. WIRELESS INSITE’S MIMO CAPABILITY MIMO in Wireless Insite with a demonstration
  • 18. © Copyright Remcom Inc. All rights reserved. Overview of Wireless InSite MIMO Capability  New capability will target these key shortfalls in tools used in industry:  Most channel models in industry are statistical and cannot predict potential correlation between channels  Research suggests that correlation coefficient between channels is much larger than would be expected using independent, identically distributed random variables [3] – typical assumption used in many channel models  With Massive MIMO, computational complexity for a deterministic ray-tracing model will rise by orders of magnitude  One base station becomes hundreds of transmitting elements!  Details of antenna pattern, polarization, and phase will be critical to properly modeling effects  Most models simply don’t have this level of detail
  • 19. © Copyright Remcom Inc. All rights reserved. Key Benefits of Wireless InSite MIMO Capability Key Benefits of Wireless InSite MIMO 1. Positions and moves MIMO Arrays 2. Predicts channel characteristics between each MIMO element  Magnitude, phase, time of arrival per path within channel  Includes antenna and polarization effects  Heterogeneous arrays (independent patterns and rotations) 3. Rapid frequency sweeps  Gather information across one or more bands 4. Optimizes to minimize increase in Run-time from significant increase in antennas 5. Preliminary Tests: 4x4 MIMO: just 1.3x increase 64x4 MIMO: just 4x increase Complex Impulse Response Time of Arrival (s) ReceivedPower(dBm) Propagation paths for channel between one pair of elements from Tx/Rx MIMO arrays
  • 20. © Copyright Remcom Inc. All rights reserved. APG Optimizes for Mobile Devices  Adjacent Path Generation (APG) further reduces Run-time and memory footprint for mobile devices  Limits full ray-tracing to coarse spacing along route of travel  Uses Remcom proprietary techniques to find exact paths to each mobile location  Then finds exact paths to each MIMO array element on each end of link (uplink/downlink)  Run-time reduction may be order of magnitude or more, depending on the spacing of points along route High-fidelity ray-tracing to coarse set APG rapidly generates paths to precise points
  • 21. © Copyright Remcom Inc. All rights reserved. Value of Wireless InSite Capability  Provides efficient simulation of MIMO antennas with ability to model details of antennas and channel characteristics  Ability to deterministically predict variation of paths across MIMO array elements overcomes significant shortfall in statistical models commonly used today  Efficient calculation of paths for large arrays overcomes shortfall of current brute-force ray models  Used to perform virtual assessment of systems, scenarios, and performance in complex environments  Offers tool for R&D, virtual testing and evaluation of concepts, enabling 5G research of potential MIMO solutions
  • 22. © Copyright Remcom Inc. All rights reserved. Wireless InSite Demonstration MIMO for Small Cell in Rosslyn, VA
  • 23. © Copyright Remcom Inc. All rights reserved. Small Cell Scenario  Small cell base station  At intersection of Wilson and Lynn  Mounted on lamp post in median on Lynn Street  Predict signal received by mobile device (red route)  Travels along Wilson, turns onto Lynn, then turns onto side street  Moving at ~10m/s (22 mph)  Start with single antennas  Use dipoles, 3.55 GHz Placement of Route and Base Station in Rosslyn Base Station on lamp post on median
  • 24. © Copyright Remcom Inc. All rights reserved. Baseline SISO Scenario  1 Dipole at Base Station and Handset  Field Map shows significant urban multipath in area  Much of route within LOS  Still may have spatial diversity due to multipath  End of route is beyond LOS and has significant shadowing
  • 25. © Copyright Remcom Inc. All rights reserved. Baseline SISO Scenario  Plot showing received power along route  Wireless InSite results show:  Shadowing at beginning of route (hill and structures)  Shadowing at end (turns corner)  Small-scale fading along route due to multipath (Note: 10 points/second)
  • 26. © Copyright Remcom Inc. All rights reserved. 4x4 MIMO Scenario  Define 4-element MIMO antenna  4-element arrays (2x2)  Frequency: 3.55 GHz  ½ λ Spacing (4.225 cm)  Assign to both base station and mobile device  Channel matrix: 4 x 4 (16 total pairs) ½ λ  4.225cm ½ λ ½ λ ½ λ 4-Element MIMO Antennas (2x2 Dipole Arrays) Base Station Antenna Mobile Device Antenna 4 x 4 Channel Matrix
  • 27. © Copyright Remcom Inc. All rights reserved. 4x4 Channel Matrix Output  Large-scale fading consistent across channels, but deep fades from multipath vary significantly  Simple diversity techniques (e.g., using max received power) can eliminate deep fades  MIMO techniques can use this to transmit multiple streams over same frequency with “orthogonal” coding Diversity (traditional MIMO) can eliminate deep fades
  • 28. © Copyright Remcom Inc. All rights reserved. Channel Impulse Responses  Wireless InSite multipath results can be used to generate MIMO channel impulse responses for each element of channel matrix  Could apply various MIMO techniques to evaluate how best to maximize capacity, data rate, etc. for small cell  Deterministic simulation results can be used to predict correlation between channels (key requirement for MIMO spatial multiplexing gain) Some key differences in impulse response
  • 29. © Copyright Remcom Inc. All rights reserved. Sample Signal Traces  Signal Traces for two MIMO channels (same mobile device location)  Shows just how much signal impacted by multipath with changes in position of just a few cm on each end
  • 30. © Copyright Remcom Inc. All rights reserved. 30 GHz Massive MIMO Scenario  Define 128-element Massive MIMO Base Station antenna  64-element array (8x8)  Dual Polarization (2x elements)  Frequency: 30 GHz  ½ λ Spacing (0.5 cm)  Mobile devices still uses 4- element array  Channel matrix: 128 x 4 (512 total pairs) 2x2 Dipole Array (4 elements) Base Station Antenna ½ λ  0.5cm ½ λ 8x8, dual pol array (128 elements) Mobile Device Antenna 128 x 4 Channel Matrix ½ λ ½ λ
  • 31. © Copyright Remcom Inc. All rights reserved. Baseline SISO Scenario  SISO scenario simulated at 30 GHz  Results similar to 3.55 GHz  Similar shadowing and fading  Received power is about 20dB lower  Caused by higher path loss at mm Wave frequencies (Note: 10 points/second)
  • 32. © Copyright Remcom Inc. All rights reserved. 128x4 Channel Matrix Output  Wireless InSite results are similar to 4x4 case, but even more variation between channels and even deeper fading  Simple diversity technique (e.g., max power) does even better at eliminating small-scale fading  Likely much more spatial diversity allowing for multiple streams and beamforming
  • 33. © Copyright Remcom Inc. All rights reserved. Massive MIMO Scenario  Plots show complex impulse response for 2 sample areas where fading was significant  At superficial level, appears to be even more variation for this case
  • 34. © Copyright Remcom Inc. All rights reserved. References 1. A. Osserian, et. al., “Scenarios for the 5G Mobile and Wireless Communications: the Vision of the METIS Project,“ IEEE Communications Magazine, Vol. 52, Issue 5, May 2014, pp. 26-35. 2. E. Larsson, O. Edfors, F. Tufvesson, T. Marzetta, “Massive MIMO for Next Generation Wireless Systems,“ IEEE Communications Magazine, Volume 52, Issue 2, Pages 186-195, February 2014. 3. L. Lu, G. Ye Li, A. Swindlehurst, A. Ashikhmin, R. Zhange, “An Overview of Massive MIMO: Benefits and Challenges,” IEEE Journal of Selected Topics in Signal Processing, Vol 8, Mo. 5, October 2014, pp. 742-758. 4. C. Shepard, H. Yu, N. Anand, L. E. Li, T. L. Marzetta, R. Yang, and L. Zhong, “Argos: Practical many-antenna base stations,” in ACM International Conference Mobile Computing and Networking (MobiCom), Istanbul, Turkey, Aug. 2012. 5. H. Suzuki, R. Kendall, K. Anderson, A. Grancea, D. Humphrey, J. Pathikulangara, K. Bengston, J.Matthews, and C. Russell, “Highly spectrally efficient Ngara rural wireless broadband access demonstrator,” in Proc. of IEEE International Symposium on Communications and Information Technologies (ISCIT), Oct. 2012.
  • 35. © Copyright Remcom Inc. All rights reserved. SUMMARY Wireless InSite’s MIMO Capability
  • 36. © Copyright Remcom Inc. All rights reserved. MIMO in Wireless InSite  MIMO and Massive MIMO are key concepts for 5G  Remcom’s Wireless InSite MIMO capability provides an efficient method to predict channel characteristics for large-array MIMO antennas in complex multipath environments  Key benefits to the wireless industry  Provides capability to perform R&D and assessment of MIMO solutions and algorithms  Enables virtual testing of prototypes and design concepts in simulated environment that captures complex aspects of realistic deployment scenarios  Status of Development  Beta versions of computational engine are in development and testing, and the graphical interface and planned outputs are still being finalized
  • 37. © Copyright Remcom Inc. All rights reserved. Contact us: Toll Free: 1-888-773-6266 (US/Canada) Tel: 1-814-861-1299 Email: sales@remcom.com www.remcom.com Free Trial: www.remcom.com/free-trial-request-form Pricing: www.remcom.com/pricing Information Request: www.remcom.com/information-request-form Google+: https://plus.google.com/+Remcom/posts Facebook: www.facebook.com/remcomsoftware Twitter: twitter.com/remcomsoftware LinkedIn: www.linkedin.com/company/remcom-inc