Improving Power and Resource Management in Heterogeneous Downlink OFDMA Networks
Abstract
:1. Introduction
- Design of a hybrid model that identifies interferences during which the switching off or sleeping mode of some small cells can enhance the capacity of the heterogeneous network.
- Formulation of an SLS mode-based RRS for providing an enhanced gain of reused resources.
- Presentation of a model that captures the interference received and the resultant performance of upper bounds accurately verifies the estimated gains.
2. Interference Map (IM) Approach
- z is referred to as the user served by x and its nearby BS y.
- β is referred to as the signal to interference (SIR) threshold.
- Fx,z is referred to as the power received from BS x to UE z,
- Fj,k is referred to as the interference power received from BS y to UE z.
3. The Proposed Method
3.1. Sleep Mode for Maximizing Capacity
- vπ(S) is referred to as the maximum rewards under the policy π over the present state S,
- gth is referred to as the targeted SINR, and
- λ is referred to as the discount factor
- gk(x) is referred to as the SINR of z user under cell x.
- h is referred to as the propagation coefficient,
- Ptx(x) is referred to as the transmit power of cell x,
- x is referred to as the attenuation coefficient, which is set between 2 and 5,
- dz(x) is referred to as the distance from user z to BS cell i,
- N0 is referred to as the AWGN function.
- χk,n = 1 when user z is allocated in n resource block, and vice versa.
- Ψk represents the total resources allocated to user z.
3.2. Iteration Algorithm
Algorithm 1. Iteration Algorithm. |
Step 1: Set the value for each state s(t) as v0π(S) = 0. Denote ε > 0 and σ is initialized to 0. |
Step 2: Compute vπσ+1(S) over each state, |
Step 3: If then go to 4; |
Step 4: Else, σ is increased by 1, then go to 2. where: σ is referred to as the infinitesimal gap and σ∈{0, 1,…}, which is the iteration index, and vπσ(S) is taken from Equation (6). |
Step 5: For each state, s(t)∈S, optimal policy π is computed. |
3.3. Femtocell Deactivation Condition
- Hx―handover ratio of BS x,
- Sx―total UEs linked to x
- Lx―total UEs served by x, which is located inside the region overlapped with nearby femtocells.
3.4. Deactivation Algorithm
- Prior to executing the tests for deactivation, the sum of resource blocks allocated to each user is determined and compared with the updated deactivated value after deactivation policy.
- The reuse efficiency is significantly affected by NoC, which is applied with Trial-1 to determine the maximum NoC in BSs:℘ = maximum (NoC)
- If ℘ = 1, BS is switched off, or else if ℘ > 2, then BS having maximum handover ratio is applied with Trial-2:℘ = maximum (H)
- If ℘ = 0, which means BS is not nominated in the handover region, the deactivation policy is selected based on Trial-4 for all BSs with equal users:℘ = minimum (P)Equation (18) is used to find whether ℘ possesses less received power than other BSs and whether it enhances the overall capacity. Otherwise, Trial-3 selects the BS with minimum users for reducing the UEs dropping:℘ = minimum (S)
- The dropping UEs are avoided by selecting the largest handover ratio on ℘, which is located between the other cells within the handover region. If ℘ > 1 and ℘ = H, and if users lie within the handover region of nearby cells, Trial-5 is used for selecting ℘, which is shown below:℘ = minimum (I)
- Finally, ℘ is deactivated and the nearby BSs in an active state with maximum power receive disconnected users. However, a user will be dropped if it lies outside the coverage range.
- ζ is updated and then the Ψtot is calculated.
- The Ψtot (updated state) is compared with the Ψ′tot (previous state) and ℘ = SL mode if Ψtot > Ψ′tot. The process continues to searching for the other users/BSs for deactivation.
3.5. Allocation of Resource
4. Performance Analysis
4.1. Signal to Interference Model
Conflict Analysis
4.2. Reuse Efficiency
Signaling Overhead
4.3. Computational Complexity
5. Performance Evaluation
Limitations, Practical Implications and Future Work
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
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Parameter | Value |
---|---|
Resource block | 30/50 |
Bandwidth | 7 MHz |
Carrier fc | 2.4 GHz |
Period of OFDMA symbol | 1.5 × 10−4 s |
Channel | Rayleigh |
Wall loss (wl) | 18 dB |
Pathloss (ϕ) | 3 |
Shadowing (X∈) | 8 dB |
Tx power in macro-cell | 46 dBm |
Tx power in femtocell | 20 dBm |
Macro-femto minimum separation | 75 m |
Macro-UE minimum separation | 35 m |
Macrocell radius | 289 m |
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Veerappan Kousik, N.G.; Natarajan, Y.; Suresh, K.; Patan, R.; Gandomi, A.H. Improving Power and Resource Management in Heterogeneous Downlink OFDMA Networks. Information 2020, 11, 203. https://doi.org/10.3390/info11040203
Veerappan Kousik NG, Natarajan Y, Suresh K, Patan R, Gandomi AH. Improving Power and Resource Management in Heterogeneous Downlink OFDMA Networks. Information. 2020; 11(4):203. https://doi.org/10.3390/info11040203
Chicago/Turabian StyleVeerappan Kousik, Nalliyanna Goundar, Yuvaraj Natarajan, Kallam Suresh, Rizwan Patan, and Amir H. Gandomi. 2020. "Improving Power and Resource Management in Heterogeneous Downlink OFDMA Networks" Information 11, no. 4: 203. https://doi.org/10.3390/info11040203
APA StyleVeerappan Kousik, N. G., Natarajan, Y., Suresh, K., Patan, R., & Gandomi, A. H. (2020). Improving Power and Resource Management in Heterogeneous Downlink OFDMA Networks. Information, 11(4), 203. https://doi.org/10.3390/info11040203