This document summarizes a presentation on hierarchical radio resource management (hRRM) algorithms for 5G networks. It discusses using a distributed approach combining centralized and decentralized management to improve capacity, scalability, and stability. Key points include:
1) hRRM uses distributed radio resource management nodes and a centralized coordinator to allocate spectrum and resources across small cells in a dense 5G network.
2) This hierarchical approach improves capacity through small cells, scalability by distributing decision-making load, and stability using machine learning to adapt to changing conditions.
3) The distributed nodes use learning algorithms to estimate channel states, evaluate options, and select resources with minimal signaling. The centralized coordinator intervenes when needed to ensure
4. Spectrum and Radio Resource Management
in a 5G Context
4 Traditionally frequency allocation is decided centrally.
4 In a 5G architecture there are expected to be many small cells (up to the order of
hundreds) between the underlying macro cells.
4 Problem: Current schemes are not scalable to such an increased number of cells.
4 Solution: Decentralization is a solution; a distributed approach is proposed.
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5. Hierarchical Radio Resource
Management
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Centralized
management
Input:
• Users
• Traffic
• Radio
conditions
• Mobility
Output:
• Decisions on
frequency,
channels
used
(operation
framework
per cell)
Algorithms
Distributed
management
Distributed
management
4 Develop hierarchical (blending distributed and
centralised) management of ultra-dense multi-RAT
and multiband networks
It will enable:
4 Capacity à Through small cells and efficient
resource allocation
4 Scalability à Through distributed management, in
coordination with centralized schemes
4 Stability à Through machine learning
Problem: Centralised management can not
scale as much as networks will scale in 5G
era
6. Increased Capacity
and Scalability
4 The introduction of new small
cells and new bands will add more
capacity to the network
4 Improve scalability through
distributed management
➨ As more small cells per macro are
added, centralized decision making
would need more data from each
new cell (centralized management)
➨ Distributed management: Intelligent
nodes can handle decision making in
a more local basis, hence related
signaling will be limited (compared to
centralized)
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Signaling traffic decreases due to the use
of distributed management
(analytical simulation results)
7. Increased Stability
4 Traffic T fluctuates in time t
4 Traffic levels can be used for certain timeframes in order to
have more stable conditions
4 Machine-learning algorithms can be used
77
Trafficlevelsas
definedin
GreenTouch
A. Georgakopoulos, A. Margaris, K. Tsagkaris and P. Demestichas, "Resource Sharing in 5G Contexts: Achieving Sustainability with
Energy and Resource Efficiency," in IEEE Vehicular Technology Magazine, vol. 11, no. 1, pp. 40-49, March 2016
Learned conditions
T0 in t0 T1 in t1 T2 in t2 T3 in t3 T4 in t4
Time of the day
8. hRRM
Architecture Overview
4 Our architecture consists of entities for distributed spectrum and radio
resource management (dRRM), as well as the traditional centralized
mechanisms (cRRM).
4 The framework has the ability to switch between the centralized and
distributed operational modes or combine them in an hierarchical approach.
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cRRM
dRRM1 dRRM3dRRM2
Cell 1 Cell 2 Cell 3
hRRM
9. hRRM
Component Description
4 dRRMs: Use game theory and learning functionality to predict
next channel states and reach a decision on which channels to
use. Instances run independently on each cell and no
communication is required.
4 cRRM: Coordinates dRRMs, speed ups adaptation to acute
network or traffic changes and ensures fairness. It keeps track
of channel usage and intervenes in cases when it can preempt
conflicts.
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10. Spectrum Band Capability Learning
4 During cell operation, performance attributes are measured.
4 Each cell chooses which attributes to take into consideration and their respective
weights.
➨ One proposed configuration uses Bit Rate average value and variance, to access performance as
well as stability. For example, an eMBB use case would prioritize average BR, whereas a URLLC
use case would focus on avoiding instability.
4 A Channel Appropriateness Value (CAV) is calculated using the achieved values of
each attribute, as well as their expected best and worst values.
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11. Learning Algorithm Overview
81
Is
knowledge
sufficient?
Local channel
status
knowledge
Random
selection of
unknown
channel
Machine
Learning
Powered MADM
selection
Found
available
channel in
LTE band?
Update of
knowledge
YES
YES
NO
NO
4 Selection is based on previous knowledge regarding local channel status
and network capabilities, obtained through learning functionality.
4 When knowledge is not sufficient or recent enough an unknown channel is
randomly chosen.
4 Random selection is also invoked with a probability dependent on the
latest achieved channel appropriateness value (CAV).
Use different
technology
(e.g. Wi-Fi)
or
Invoke cRRM
12. Machine Learning Powered
Multi Attribute Decision Making (MADM)
4 Knowledge is formed by measuring chosen
attributes of the used channel.
4 Each time a channel is used, the probability
of acquiring a certain value for each attribute
is updated. Based on these probabilities, an
Estimation of the Channel State (ECS) is
produced.
4 Each possible decision is evaluated with the
Channel Appropriateness Value (CAV)
associated with the estimated attribute
values.
4 ECS and CAV are combined to calculate a
priority value for each channel.
4 The channel with the maximum priority is
selected.
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Collection of
measurements
Calculation of channel priorities
based on probabilities and
associated appropriateness value
Selection of channel with
maximum priority value
Update of probabilities
Calculation of
appropriateness value for
each channel
13. Indicative Results
4 The hRRM algorithm is being
tested in terms of convergence
capability, speed and adaptability
with varying parameters.
4 In the Fig. we can see the
progressive convergence of CAV to
1.0 after algorithm iterations,
assuming 30 cells simultaneously
initiated with zero knowledge.
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14. Indicative Results
4 The Fig. illustrates an
example of how a
specific cell produces
an estimation of the
spectrum channel
capabilities and the
corresponding Channel
Appropriateness Value,
based on knowledge
from prior selections.
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15. Conclusions
4 Capacity
➨ Introduction of new small cells and new bands
➨ Efficient spectrum and radio resource allocation
4 Scalability
➨ Intelligent nodes handling decision making in a local basis
➨ Distributed, learning-based selection
➨ Limited signaling
4 Stability
➨ Adaptation to network or traffic changes
➨ Inter-Cell fairness
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16. Thank you for your attention!
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Acknowledgment:
The research conducted by Speed-5G receives funding from the European Commission H2020 programme under
Grant Agreement N : 671705. The European Commission has no responsibility for the content of this
presentation.
Find us at www.speed-5g.eu