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Traffic forecasts models for the transport network

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Presentation on theme: "Traffic forecasts models for the transport network"— Presentation transcript:

1 Traffic forecasts models for the transport network
Borgar Tørre Olsen Kjell Stordahl, Kjell O Kalhagen, Jørgen Lydersen, Bjørn Olufsen, Nils K Elnegaard Telenor

2 TONIC project (IST ) Full name: Techno-Economics of IP optimised networks and services Duration: 1/2001 – 12/2002 Consortium Nokia Corporation (co-ordinator), FIN Telenor AS, N France Telecom S.A., F University of Athens, GR Atlantide Grenat Logiciel, F Swisscom AG, CH Universidade de Aveiro, P T-Systems Nova GmbH, D Website:

3 Outline Network platforms and services Residential market
ADSL forecasting model Business market Total traffic forecasting model Conclusions

4 Network platforms and services
Twisted pair copper (Voice /Internet /broadband services on ISDN or XDSL) Fixed Wireless LMDS/ LAN (Voice/ Internet/ broadband services) Cable networks (Voice/ Internet /broadband services on Cable modems/ HFC) Mobile networks ( Voice/ Data on GSM, GPRS or UMTS) PSDN Frame relay/ATM Various IP networks Leased lines (SDH, WDM or dark fibre)

5 Network platforms (fixed broadband)

6 Traffic - residential market
Voice traffic (POTS/ISDN) Dialled internet traffic (POTS/ISDN) ADSL traffic VDSL traffic Fixed wireless broadband traffic (FWBB) Cable modem traffic

7 POTS/ISDN traffic => Broadband
The voice traffic is flattening out The Internet traffic has increased significantly the last years There is migration effects between dialled Internet traffic and DSL traffic The heavy users are leaving dialled Internet and order broadband accesses

8 Drivers for ADSL traffic evolution
Growth of ADSL subscriptions Application evolution Increased traffic per subscriber Migration from low access capacity to higher Increased symmetric communication

9 Drivers for ADSL traffic evolution

10 ADSL traffic forecasting model
ADSL access forecasts Application evolution Migration to higher access capacities Busy hour and traffic in the busy hour Packet concentration factor

11 Access capacity evolution
Migration from narrowband to broadband Internet Migration from asymmetric communication to symmetric communication Increased use of entertainment applications Examples: Video on demand, video streaming, virtual reality, music on demand, games, simulators, video exchanges, home office, large file transfers, video conferences etc

12 Market share evolution between ADSL products (European average)

13 Evolution of ADSL downstream capacity (Mbit/s) per subscriber

14 Broadband penetration forecasts (% of households) Mean European figures

15 Market share distribution between ADSL, VDSL, FWBB and HFC, European average

16 Residential market: Traffic forecasting model
Traffic indicator: VR(t) = Nt i bit uit Ait Cit Mit pit Nt : Number of households in year t bit : Busy hour concentration factor for technology i Ait: Packet switching concentration factor for technology i uit : Access capacity utilisation for technology i Cit: Mean downstream access capacity for technology i Mit: Incumbent’s access market share for technology i pit: Access penetration forecasts (%) for technology i i=1: voice traffic i=2: dialled Internet traffic i=3: ADSL traffic i=4: VDSL traffic i=5: Fixed wireless broadband traffic

17 Traffic - business market
1 Voice traffic (POTS/ISDN) 2 Dialled internet traffic (POTS/ISDN) 3 PSDN traffic 4 Frame relay/ATM traffic 5 ADSL traffic 6 VDSL traffic 7 Fixed wireless broadband traffic (FWBB) 8 Fast Ethernet traffic 9 Gigabit Ethernet traffic 10 Leased lines

18 Broadband business forecasts ADSL and VDSL

19 Business market: Traffic forecasting model
Traffic indicator: VB(t) = Nt i bit uit Ait Cit Mit pit Nt : Number of households in year t bit : Busy hour concentration factor for technology i Ait: Packet switching concentration factor for technology i uit : Access capacity utilisation for technology i Cit: Mean downstream access capacity for technology i Mit: Incumbent’s access market share for technology i pit: Access penetration forecasts (%) for technology i i=1,2,

20 Traffic forecasts mobile operators

21 Total traffic forecasts model
The total traffic at year t: V(t) = VR(t) + VB(t) + VM(t) + VO(t) Where: VR(t) : Traffic forecast residential market VB(t) : Traffic forecasts business market VM(t) : Traffic forecasts mobile market VO(t) : Traffic forecasts operator market Adjusted busy hour traffic: V*(t) = VR(t) + VBP(t) + VBL(t) + VM(t) + VO(t) Where VBP(t) is the packet switched business traffic and  the proportion of the switched business traffic, which is carried in the residential busy hour

22 Capacity forecasts The traffic forecasts are transformed to capacity forecasts by increasing the capacity according to: Applying Lindberger’s approximation for busy hour dimensioning Adding additional capacity for packet overhead Adding additional capacity because of stepwise upgrading of capacity

23 Conclusions A traffic volume indicator has been developed to estimate the yearly traffic increase in the transport network The traffic volume indicator doe’s not include redundancy and protection in the core network The traffic volume indicator is used to as input for: - transport network planning process - evaluation of new network structures - expansion of the network - introduction of new core network technology as Fast Ethernet and Gigabit Ethernet.

24 Time for Questions & Answers


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