Doc.: IEEE 802.11-10/0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Slide 1 Modeling the Dynamical Human Blockage for 60 GHz WLAN Channel.

Slides:



Advertisements
Similar presentations
Doc.: IEEE /0364r1 Submission March 11, 2009 JT Chen et al (Ralink Technology Corp.) Slide 1 Comments on AOA and AOD Selection for a Multi-User.
Advertisements

Doc.: IEEE /1252r0 Submission November 2009 Inter Cluster Parameters of Living Room Channel Model for 60 GHz WLAN Systems Date: Authors:
Doc.: IEEE /1387r0 Submission Nov Yan Zhang, et. Al.Slide 1 HEW channel modeling for system level simulation Date: Authors:
Submission doc.: IEEE /1214r1 September 2014 Leif Wilhelmsson, Ericsson ABSlide 1 Impact of correlated shadowing in ax system evaluations.
Doc.: IEEE /0604r1 Submission May 2014 Slide 1 Modeling and Evaluating Variable Bit rate Video Steaming for ax Date: Authors:
Doc.: IEEE /0709r2 Submission July 2009 Carlos Cordeiro, IntelSlide 1 Lightly Compressed Video Traffic Modeling Date: Authors: NameAffiliationsAddressPhone .
Doc.: IEEE /0116r1 SubmissionYakun Sun, et. al. (Marvell)Slide 1 Long-Term SINR Calibration for System Simulation Date: Authors: NameAffiliationsAddressPhone .
Doc.: IEEE /0630r0 Submission May 2015 Intel CorporationSlide 1 Verification of IEEE ad Channel Model for Enterprise Cubical Environment.
Doc.: IEEE /568r0 Submission Frequency Selective Scheduling (FSS) for TGax OFDMA May 2015 Slide 1 Date: Authors: Kome Oteri (InterDigital)
Impact of Different Mobility Models on Connectivity Probability of a Wireless Ad Hoc Network Tatiana K. Madsen, Frank H.P. Fitzek, Ramjee Prasad [tatiana.
Doc.: IEEE /0489r1 Submission May 2010 Alexander Maltsev, IntelSlide 1 PHY Performance Evaluation with 60 GHz WLAN Channel Models Date:
Doc.: IEEE /0116r0 SubmissionYakun Sun, et. Al.Slide 1 Long-Term SINR Calibration for System Simulation Date: Authors: NameAffiliationsAddressPhone .
Submission doc.: IEEE 11-14/0070r0 Jan 2014 Josiam et.al., SamsungSlide 1 Joint MAC/PHY Evaluation Methodology Date: Authors:
Doc.: IEEE /0323r1 Submission March 2009 Vinko Erceg, BroadcomSlide 1 TGad Channel Model Requirements Date: Authors:
Doc.: IEEE d_Intra-Device_Propagation_Measuremets Submission March 2015 Slide 1 Project: IEEE P Working Group for Wireless Personal.
Doc.: IEEE /0336r0 Submission March 2009 Alexander Maltsev, Intel CorporationSlide 1 Conference Room Channel Model for 60 GHz WLAN Systems - Summary.
Doc.: n-proposal-statistical-channel-error-model.ppt Submission Jan 2004 UCLA - STMicroelectronics, Inc.Slide 1 Proposal for Statistical.
Doc.: IEEE /1011r0 Submission September 2009 Alexander Maltsev, IntelSlide 1 Verification of Polarization Impact Model by Experimental Data Date:
Doc.: ax Submission July 2014 Slide 1 Proposed Calibration For MAC simulator Date: Authors:
Doc.: IEEE /0553r1 Submission May 2009 Alexander Maltsev, Intel Corp.Slide 1 Path Loss Model Development for TGad Channel Models Date:
Adaphed from Rappaport’s Chapter 5
Doc.: IEEE /0431r0 Submission April 2009 Alexander Maltsev, Intel CorporationSlide 1 Polarization Model for 60 GHz Date: Authors:
Doc.: d Stochastic Channel Model for Wireless Data Center Submission Match 2015 Bile Peng (TU Braunschweig). Slide 1 Project: IEEE P
November 2015 doc.: IEEE /XXXXr0 November 2015
Doc.: IEEE /1145r0 Submission September 2015 Intel CorporationSlide 1 SU-MIMO Configurations for IEEE ay Date: Authors:
Doc.: IEEE /0161r1 Submission doc.: IEEE /0087r0 January 2010 R. Kudo, K. Ishihara and Y. Takatori (NTT) Slide 1 Measured Channel Variation.
Doc.: IEEE /1044r0 Submission September 2008 Alexander Maltsev, IntelSlide 1 60 GHz WLAN Experimental Investigations Date: Authors:
Doc.: IEEE /0133r0 Submission January 2010 Alexander Maltsev, Intel TGad Channel Model Update Authors: Date:
Doc.: IEEE /1229r1 Submission November 2009 Alexander Maltsev, IntelSlide 1 Application of 60 GHz Channel Models for Comparison of TGad Proposals.
Submission doc.: IEEE /1028r0 September 2015 Shouxing Simon Qu, BlackBerry, Ltd..Slide 1 PDF of Spatial Angles Reflected from Ceiling in the Conference.
Doc.: IEEE /0632r0 Submission May 2015 Intel CorporationSlide 1 Experimental Measurements for Short Range LOS SU-MIMO Date: Authors:
Doc.: IEEE /0632r0 Submission May 2008 Vinko Erceg, BroadcomSlide 1 VHT 60 GHz Channel Model Recommendation Date: Authors:
Submission doc.: IEEE /1214r0 September 2014 Leif Wilhelmsson, Ericsson ABSlide 1 Impact of correlated shadowing in ax system evaluations.
Submission doc.: IEEE /1314r2 November 2015 Interdigital CommunicationsSlide 1 I/Q Imbalance Impact to TGax OFDMA Uplink Reception Date:
Doc.: IEEE /0818r1 Submission Further Analysis of Feedback and Frequency Selective Scheduling (FSS) for TGax OFDMA July 2015 Slide 1 Date:
Doc.: IEEE /0112r2 Submission January, 2010 Hirokazu Sawada, Tohoku UniversitySlide 1 [Intra-cluster response model and parameter for channel.
Doc.: IEEE /0811r1 Submission July 2008 Alexander Maltsev, IntelSlide 1 Channel Modeling for 60 GHz WLAN Systems Date: Authors:
Doc.: IEEE /1057r0 Submission Multiple Resource Unit Allocation for TGax OFDMA Sept 2015 Slide 1 Date: Authors: Kome Oteri (InterDigital)
Submission doc.: IEEE /0108r0 January 11 Slide 1 Evaluation of neighbors impact on channel allocation for dense environment and Video use cases.
Interdigital Communications Submission doc.: IEEE /1333r1 November 2015 Feasibility of SU-MIMO under Array Alignment Method Date: Slide.
Doc.: IEEE /0174r1 Submission February 2004 John Ketchum, et al, QualcommSlide 1 PHY Abstraction for System Simulation John Ketchum, Bjorn Bjerke,
WF on dynamic blockage Qualcomm, Intel, Samsung, Ericsson R GPP TSG RAN1 #85 Nanjing, China, May , 2016 Agenda Item:
CPH Dr. Charnigo Chap. 11 Notes Figure 11.2 provides a diagram which shows, at a glance, what a neural network does. Inputs X 1, X 2,.., X P are.
InterDigital, Inc. Submission doc.: IEEE /0911r1 July 2016 Link Level Performance Comparisons of Open Loop, Closed Loop and Antenna Selection.
Doc.: IEEE /0499r1 Submission May 2009 Eldad Perahia, Intel CorporationSlide 1 Simulation Scenario Floor Plans Date: Authors:
Doc.: IEEE /1209r0 Submission Hotel lobby SU-MIMO channel modeling: 2x2 golden set generation Date: September 2016 Alexander Maltsev,
Doc.: IEEE /0664r0 Submission May 2010 Alexander Maltsev, Intel TGad Channel Model Update Authors: Date:
Radio Coverage Prediction in Picocell Indoor Networks
TGad Channel Model Requirements
PHY Abstraction for MU-MIMO in TGac
TGad interference modeling for MAC simulations
Channel Estimation Field for EDMG OFDM PHY in 11ay
Proposal for TGad Evaluation Methodology
TGad March 2010 Closing Report
TGad Channel Model Update
Further Study of Time Varying Interference and PHY Abstraction
Simultaneous Beam Training
TGad September 2009 Closing Report
TGad November 2009 Closing Report
TGad January 2010 Closing Report
Enhanced Beam Tracking Against Blockage: Resolution to CID 145
Update on “Channel Models for 60 GHz WLAN Systems” Document
Channel Generation of aj (45GHz) Based on Channel Measurement
TGad May 2009 Closing Report
Proposed Addition to Evaluation Methodology
Simulation Scenario Floor Plans
TGad Task Group Document Open Items
Channel Generation of aj (45GHz) Based on Channel Measurement
Proposal for TGad Evaluation Methodology
PHY Performance Evaluation with 60 GHz WLAN Channel Models
Presentation transcript:

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Slide 1 Modeling the Dynamical Human Blockage for 60 GHz WLAN Channel Models Date: Authors:

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Slide 2 Abstract This presentation proposes an approach to develop a dynamical human blockage model for the 60 GHz channel model of [3]. It contains modeling approaches for PHY layer evaluation as well as MAC layer evaluation

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Slide 3 PHY layer evaluation model In an environment with stationary devices, nonstationarity of the 60 GHz channel mainly appears from moving people that may attenuate (or block) the communication link. Based on methods presented in [1-2] the dynamical channel model for PHY layer evaluation may be developed. This presentation describes an approach to develop a model of dynamical human blockage for the 60 GHz channel model [3] based on ray tracing in combination with a random walk model and a diffraction model, as presented in [1].

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Proposed Methodology for Modeling of Dynamical Blockage It is proposed to include dynamics in the channel model [3] by introducing the ray (cluster) blockage random events. Each cluster blockage event corresponds to substantial decreasing the given ray (cluster) power during some time period due to obstruction by one moving human body [1,2]. The attenuation coefficient has a specific profile in time domain which was investigated experimentally in details in [1]. The probabilities of blockage events for different number of clusters were estimated from ray- tracing/random walk simulations in [2]. Slide 4

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Main Assumptions for Modeling of Dynamical Channel Model For PHY layer performance evaluation we suggest to use the following assumptions/simplifications, because here no correlation between succesive generated impulse responses is needed: –Channel realizations are generated independently for some random time instances. –Blockage random events are independent for different channel clusters. Under these assumptions for complete development of the proposed dynamical model will require: –Defining the probability of cluster blockage event. –Defining the amplitude (or power) attenuation distribution function for cluster blockage event. These parameters of the dynamical channel model may be derived from the measurement and simulation data presented in [1-2]. Slide 5

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Probabilities of Clusters Blockage (STA-AP) Presentation [1] provides results for probabilities of clusters blockage obtained from ray-tracing simulations for STA-AP sub-scenario for Conference Room environment [3], [4]. (Please note that for the approach presented in this document more realistic person dimensions are assumed (0.45m x 0.4m x 1.70m)) In % of channel realizations the LOS link was not blocked. In case of 1 st order reflections from walls the simulation results show that the probability of multiple simultaneously blocked clusters is 0 %. The probability that no cluster is blocked is 87.4% and hence that one cluster is blocked is 12.6%. We propose with a probability of 12.6 % to block one cluster among the four available, whereas all clusters have equal probabilities to be chosen. Slide 6

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Probabilities of Clusters Blockage (STA-AP) (Cont’d) Probabilities of clusters blockage for the 2 nd order reflections from walls obtained by simulations and probabilities obtained from binomial distribution are summarized in table 2 below. The parameters of the binomial distribution are suggested to be p = Table 2: Second Order Reflections from Walls Number of blocked clusters Probabilities obtained from ray-tracing Binomial distribution % %33.7% 24.9 %8.9% 30 %1.3% 40 %<0.1% 50 %<0.1% 60 %<0.1% 70 %<0.1% 80 %<0.1% Slide 7

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Probabilities of Clusters Blockage (STA-STA) For the STA-STA sub-scenario for Conference Room environment [3], [4] the same methodology has been used to derive the probabilities of Cluster Blockage than for the STA-AP scenario. Due to the fact that both devices are positioned on the table the 1 st order reflections from the ceiling and the LOS link are not influenced by human movement and hence have a blockage probability of 0%. Like for the STA-AP scenario, in case of 1 st order reflections from walls the simulation results show that the probability of multiple simultaneously blocked clusters is 0 %. The probability that no cluster is blocked is 76.0% and hence that one cluster is blocked is 24.0 %. In case of 2 nd order reflections from walls and ceiling the simulation results also show that the probability of multiple simultaneously blocked clusters is 0 %. Here the probability that no cluster is blocked is 96.3% and hence that one cluster is blocked is 3.7 %. For both cases we propose with a probability of 24.0% and 3.7% to block one cluster among the 4 available, whereas all clusters have equal probabilities to be chosen. Slide 8

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Probabilities of Clusters Blockage (STA-STA) (Cont’d) Probabilities of clusters blockage for the 2 nd order reflections from walls obtained from ray tracing and probabilities obtained from binomial distribution are summarized in table 5 below. The parameters of the binomial distribution are suggested to be p = Table 5: Second Order Reflections from Walls Number of blocked clusters Probabilities obtained from ray-tracing Binomial distribution %21.5 % %36.4 % %27.0% 31.5 %11.5% 40 %3.0% 50 %0.5% 60 %<0.1% 70 %<0.1% 80 %<0.1% Slide 9

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Attenuation Distribution Functions for Cluster Blockage Effect Regarding the attenuation characteristics the ray tracing/ random walk simulations have shown that two types of clusters have to be distinguished: clusters without a reflection at the ceiling and clusters with a reflection at the ceiling The simulations have also shown that the attenuation distribution functions are equal for both sub-scenarios (STA-STA and STA-AP) Please note that 1 st order reflections from the ceiling have a blockage probability of 0% and thus an attenuation distribution function is not needed in this case Slide 10

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Attenuation Distribution Functions for Cluster Blockage Effect (Cont’d) In case of clusters without a reflection at the ceiling we propose to use a truncated 2nd order Gaussian mixture model (GMM) in log-scale. The parameters of this distribution are suggested to be    dB,    dB,      dB,    dB,    In case of clusters without a reflection at the ceiling we propose to use a truncated Gaussian distribution function in log-scale to approximate the attenuation distribution function. The parameters of the Gaussian distribution are suggested to be  dB and  dB In both cases the truncation level is proposed to be equal to 0 dB. Slide 11

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 MAC layer evaluation model The dynamical human blockage model so far uses the assumption that channel realizations are generated independently for random time instances, meaning the temporal characteristics of shadowing events are not included. In case of PHY level simulations these assumptions are valid, because no correlation between successive generated impulse responses is required, since PHY level simulations assume averaging over a large number of channel realizations. In order to cover the influence of human induced channel dynamics, we propose to consider both temporal characteristics and signal level/SNR degradation in system level simulations that include MAC protocols. Slide 12

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 This part of the presentation describes an approach to develop a model of dynamical human blockage for the 60 GHz channel based on measurement campaigns investigating the influence of moving humans on the 60 GHz channel [1]. This will be the base for guidelines how to include channel dynamics due to human movement in system level simulations that include MAC protocols. These guidelines could be included in the channel model document [3]. Statistics about important parameters to model the temporal characteristics of such shadowing events (duration, decay time, rising time, fading depth) will be summarized in the form approximated probability distributions, validated by Kolmogorov–Smirnov test. MAC layer evaluation model (Cont’d) Slide 13

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 MAC layer evaluation model (Cont’d) Definitions –Decay time t decay (for a given threshold ) –Rising time t rise (for a given threshold ) –Duration t D –Mean Attenuation A mean for the window (t d /3<t<2/3 t d ) The figure illustrates modelling approach for a shadowing event. In the figure, exemplary experimental data (solid line) as well as the corresponding shape of the model (dashed line) are shown. Four parameters have been chosen to describe the event. The shadowing event is modelled by a series consisting of a linearly decaying period, a period with a constant signal level and a period with a linearly increasing signal level. The decay rate as well as the rate of increase can be calculated from the parameters t decay and t rise. Slide 14

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Model Parameters Decay time Rising time [s] Duration Mean Attenuation Slide 15

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 Conclusion This presentation proposes an dynamics approach for the 60 GHz channel model of [3] using the data from [1-2]. For PHY layer evaluation the interception of the channel clusters by moving people is proposed to be modeled by cluster blockage events. Appearance of a cluster blockage event is simulated for different clusters of the channel realization with independent probabilities. For a given cluster blockage event, attenuation distribution functions were proposed. In addition a MAC layer evaluation model is proposed, temporal characteristics and signal level/SNR degradation due to human movement are estimated. Slide 16

doc.: IEEE /0090r0 SubmissionMartin Jacob, TU Braunschweig January 2010 References 1.IEEE doc /1169r0. Human Body Blockage - Guidelines for TGad MAC development. M. Jacob, C. Mbianke, and T. Kurner, Nov IEEE /1170r0. Modeling the human induced 60 GHz channel dynamics. M. Jacob, S. Priebe, and T. Kurner, Nov IEEE doc /0334r4. Channel models for 60 GHz WLAN systems, A. Maltsev et al, Nov IEEE doc /0296r12. TGad Evaluation Methodology, Eldad Perahia, Nov Slide 17