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Service Differentiation for Improved Cell Capacity in LTE Networks WoWMoM 2015 – 10-13 June 2015, Boston - USA Presenter: Mattia Carpin

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Presentation on theme: "Service Differentiation for Improved Cell Capacity in LTE Networks WoWMoM 2015 – 10-13 June 2015, Boston - USA Presenter: Mattia Carpin"— Presentation transcript:

1 Service Differentiation for Improved Cell Capacity in LTE Networks WoWMoM 2015 – 10-13 June 2015, Boston - USA Presenter: Mattia Carpin (carpin@dei.unipd.it)carpin@dei.unipd.it Authors: Mattia Carpin, Andrea Zanella, Jawad Rasool, Kashif Mahmood, Ole Grondalen, Olav Osterbo University of Padova (Italy) – Telenor Research (Norway)

2 LTE High Level 2 Radio Access Network Core Network MME SGW HSS PGW SGi-LAN S11 S5 IP network eNodeB eNodeB, responsible for resource allocation both in downlink and uplink.

3 OFDMA allocation

4 Scheduling problem Opportunistic scheduling, for high cell spectral efficiency Fair scheduling, to provide similar service to all users

5 Schedulers’ metrics CQI Suitable constant for each user that depends on the average channel conditions Hybrid Opportunistic Fair Achievable bit-rate, computed according to the CQI

6 Previous work  In a previous work we simulated the behaviour of a Fair Throughput Guarantee Scheduler (FTGS)  α i is computed s.t. each UE gets in the long term the same throughput guarantee B What is the impact of cell edge users?  Keep the same average cell SINR μ, position UEs so that Δ increases Avg. SINR i-th user

7 Cell edge users’ impact

8 Class Based Scheduler

9 CBS assumptions  Assumptions: optimization interval  Constant population (N users) over the optimization interval  Rayleigh fading channel  Average user SINR known at the eNodeB  Classification according to the average SINR  Same G (bit/s) to users belonging to same class  We guarantee G i >G min using call-admission control mechanism  G b = G min G s > h G min G g = k G s  Under those assumptions we solve a system of 4N-1 equations that gives α for each user (if such α exists!) 9

10 Solving equations

11 Adaptation mechanism 11 Call admission control

12 Simulations  Circular cell of radius r meters, s.t. γ ( d = r ) = 2 dB  N users distributed over the cell area with uniform probability  Results obtained comparing CBS against  MTS, upper bound on spectral efficiency  PFS, simple hybrid scheduling policy  FTGS, equal guarantee to all users  Different G min = {50, 100, 150} Kbit/s

13 Results Admission control

14 Short term analysis But what in the short term?  Channel-dependent nature → short term behaviour influenced by the fading process ↔ Doppler spread  Single-class of users, target throughput η  We introduce the average achieved throughput ϑ over a time window of leght τ seconds Normalized gap

15 Short term gap PDF Long > ShortLong < Short

16 Variance of the PDF

17 K-factor for fitting

18 Excess probability  Suppose we have an application that needs to transmit L bits in T seconds  We define the excess delay probability as  This is the probability of not fullfilling the request of the application  Example: L/WT=0.2bit/s/Hz 18

19 Excess probability 19

20 Conclusions and future developments  Addressed Issues:  Dynamic algorithm for efficient resources allocation in LTE  Short term behaviour of the algorithm, PDF and relation with the channel conditions  Excess delay probability  A look into the future  Full implementation of the scheduler in NS3 Impact of the scheduler decision on the E2E delay Pre-compute and store the optimal parameters  Dynamic and real time estimation of the SINR  … 20

21 Service Differentiation for Improved Cell Capacity in LTE Networks Presenter: Mattia Carpin (carpin@dei.unipd.it)carpin@dei.unipd.it University of Padova (Italy) – Telenor Research (Norway) Any questions?


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