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A Roadmap to Evolution of Self-Organising LTE- Advanced Cellular Networks Dr. Hafiz Yasar Lateef Research Scientist.

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Presentation on theme: "A Roadmap to Evolution of Self-Organising LTE- Advanced Cellular Networks Dr. Hafiz Yasar Lateef Research Scientist."— Presentation transcript:

1 A Roadmap to Evolution of Self-Organising LTE- Advanced Cellular Networks Dr. Hafiz Yasar Lateef Research Scientist

2 Outline The Transition From Conventional Network Operation to Self- Organising Networks (SON) Self-Organising Networks Use Cases and Functional Scope Self-Organising Functions Interdependencies & Conflicts Self-Coordination Framework Trigger-Condition-Action Policy for MRO & MLB Future Work

3 Conventional Cellular Networks Fig. 1. Manual Network operation of Cellular Networks Manual Network Operation

4 Next Generation Cellular Networks Fig. 2. Network Management with Closed-Loop Automation

5 Cellular Networks Planning Cycle Fig. 3. Network Planning, Optimisation & Operation Cycle

6 NGMN Recommendations for SON Fig. 4. Overview of the NGMN Top Operational Efficiency Recommendations for SON

7 SON Standardisation in 3GPP Fig. 5. Roadmap for SON Standardisation in 3GPP (Courtesy of [7])

8 Fig. 6. RAN2 & RAN3 activities (Courtesy of [7]) SON Standardisation in 3GPP

9 Fig. 7. SA5 activities (Courtesy of [7])

10 High Level Operational Life Cycle without SON Co-ordination Fig. 8. High Level Operational Life Cycle of Cellular Networks (Courtesy of [7])

11 High Level Operational Life Cycle with SON Co-ordination Fig. 9. High Level Operational Life Cycle of Cellular Networks with SON Co-ordination (Courtesy of [7])

12 SON Use Cases Fig. 10. Self-configuration, Self-Optimisation & Self-healing Use Cases

13 Super KPI & Business Impact Qualitatively, the overall performance of the network can be described by a ‘Super KPI’ like P = x. “Coverage” + y. “Capacity” + z. “Quality” where the weights x, y, and z depend on the business targets of the operator as well as on specific area, maturity of the network layer, time of day, and so on.

14 Autonomous Networks & SON Fig. 11. Autonomous networks & SON

15 Role of SON Functions in Operation & Maintenance of Cellular Networks Fig. 12. Location of SON Functions in 3GPP OAM Architecture

16 SON Functional Scope Fig. 13. SON Functional Spatial Scope Vs SON Function Spatial Execution

17 Self-Organising Functions Inter-Dependencies SO functions may have complex relations and parameter/logical inter-dependencies which can induce conflicts among SO functions and eventually undermine the network operation. Fig. 14. Shared Configuration Parameters between different SON Functions

18 Therefore, coordination among SO functions is essential for not only to avoid objective/parameter conflicts but also to ensure the stable operation of wireless networks. It is also vital to figure out the optimum way of designing Self optimization algorithms in conjunction with self co- ordination for efficient radio resource management and reduced operational expenditures (OPEX). SON Conflicts Classification

19 Self-Organising Function Conflicts Fig. 15. Conflict between CCO & ICIC SO functions.

20 SO functions conflicts are categorised into the following five primary categories: (A) Key Performance Indicator Conflict; (B) Parameter Conflict; (C) Network Topology Mutation Conflict; (D) Logical Dependency Conflict; (E) Measurement Conflict. SON Conflicts Classification

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23 NTM: Network Topology Mutation

24 SON Conflicts Classification Network topology mutation conflict occurs due to the change in network conditions by addition/ removal of eNB/ HeNB/ Relay. HeNBs are frequently switched on/off or relocated which will continuously disturb the optimum configuration of SO functions. Similarly, mobile relays can effect coverage area in a random pattern and will cause a NTM conflict for CCO function.

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26 Mobility Load Balancing Fig. 16. Mobility Load Balancing-Traffic Steering Decisions

27 Mobility Load Balancing Fig. 17. Negotiation of Handover Parameters (Courtesy of [7])

28 SON Conflict Resolution Fig. 18. Conflict between Mobility Load Balancing & Mobility Robustness Optimisation (Courtesy of [7])

29 Trigger-Condition-Action (TCA) based policy is quite useful in designing conflict free SO functions as it provides a holistic picture of all the possible triggers, SO functions conflicts, necessary conditions to be checked and the corresponding actions to be executed. TCA policies are the keys to design conflict free “decision tree logic” or “joint optimisation algorithms” for SO functions such as MRO, MLB, CCO and EE. Trigger-Condition-Action Policy

30 MLB Trigger Condition-Action Policy

31 MRO Trigger Condition-Action Policy

32 Most of the previous research work has focused on intra-frequency connected mode handover condition for MRO. However, MRO function for inter-frequency, inter- RAT handover conditions in both connected and idle mode has been unrevealed. More specifically, optimum configuration of CIO, TTT, filter co-efficient, cell reselection thresholds and priorities for inter-frequency, inter-RAT handover conditions in both connected and idle mode needs to be identified. Future Research Challenges

33 It must be mentioned here that most of the previous research work has focused on intra- frequency connected mode mobility load balancing. However, MLB function for inter-frequency, inter- RAT cases in connected, idle and transition mode has been unrevealed. More specifically, optimum configuration of CIO, TTT, filter co-efficient, BB thresholds and absolute priorities for inter-frequency, inter-RAT mobility load conditions in connected, idle and transition mode needs to be identified. Future Research Challenges

34 If self optimisation and self co-ordination functions are executed independently, then the algorithm part of self optimisation functions will always be executed irrespective of the subsequent acknowledgment or rejection of the action request by the Self Co-ordination function. Moreover, based upon the rejected action requests, numerous self optimisation algorithms might have been executed without any performance gains. The above mentioned facts drive for finding optimum interactions between self optimisation and self co- ordination functions. Optimum Interactions Between Self Optimisation & Self Co-ordination Functions

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36 References 1.Hafiz Yasar Lateef, Ali Imran, Adna Abu-dayya, “A Framework for Classification of Self-Organising Network Conflicts & Coordination Algorithms,” submitted to PIMRC’ Osianoh Glenn Aliu, Ali Imran, Muhammad Ali Imran and Barry Evans. " A Survey of Self Organisation in Future Cellular Networks", Accepted in IEEE Journal of Survey and Tutorials on Communications. 3.3GPP TS , "Telecommunication management; Self-Organizing Networks (SON); Concepts and requirements," v , June NGMN, "Recommendation on SON and O&M Requirements," Requirement Specification, version 1.23, Dec NGMN, "Use cases related to Self Organising Network, Overall Description," White Paper, version 2.02, Dec GPP, "TR Self-configuring and self-optimizing network (son) use cases and solutions,". Technical Specification, Seppo Hämäläinen Cinzia Sartori, Henning Sanneck. "LTE Self-Organising Networks (SON): Network Management Automation for Operational Efficiency". WILEY, 2011.

37 Thank You!


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