| Literature DB >> 35890758 |
Fawad Ahmad1, Ayaz Ahmad1, Irshad Hussain2, Ghulam Muhammad3,4, Zahoor Uddin1, Salman A AlQahtani3,4.
Abstract
Cache-enabled networks suffer hugely from the challenge of content caching and content delivery. In this regard, cache-enabled device-to-device (D2D) assisted multitier cellular networks are expected to relieve the network data pressure and effectively solve the problem of content placement and content delivery. Consequently, the user can have a better opportunity to get their favored contents from nearby cache-enabled transmitters (CETs) through reliable and good-quality links; however, as expected, designing an effective caching policy is a challenging task due to the limited cache memory of CETs and uncertainty in user preferences. In this article, we introduce a joint content placement and content delivery technique for D2D assisted multitier cellular networks (D2DMCN). A support vector machine (SVM) is employed to predict the content popularity to determine which content is to be cached and where it is to be cached, thereby increasing the overall cache hit ratio (CHR). The content request is satisfied either by the neighboring node through the D2D link or by the cache-enabled base stations (BSs) of the multitier cellular networks (MCNs). Similarly, to solve the problem of optimal content delivery, the Hungarian algorithm is employed aiming to improve the quality of satisfaction. The simulation results indicate that the proposed content placement strategy effectively optimizes the overall cache hit ratio of the system. Similarly, an effective content delivery approach reduces the request content delivery delay and power consumption.Entities:
Keywords: 5G; cache-enabled D2D transmitter; content caching; content delivery; multitier cellular networks
Mesh:
Year: 2022 PMID: 35890758 PMCID: PMC9322377 DOI: 10.3390/s22145078
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1Cache-enabled D2D assisted multitier cellular network.
Figure 2Formation of squeezed cluster in proximity of ID2DTs.
System-related parameters.
| Parameters | Descriptions |
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| proximity of the ID2DT | |
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| path loss coefficient for a link between pico BS |
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| path loss coefficient for a link between micro BS |
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| path loss coefficient for a link between macro BS |
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| distance between pico BS |
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| distance between micro BS |
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Figure 3Content popularity prediction-based caching framework in D2D networks.
Figure 4Content delivery strategy based on maximization of reward function.
Parameters for simulations.
| Parameters | Values/Types |
|---|---|
| Total number of D2D users | 200 |
| Radius of macrocell | 800 m |
| Radius of microcell | 300 m |
| Radius of picocell | 150 m |
| Total number of clusters | 2 |
| Path loss exponent | 4 |
| Thermal noise | 1 |
| Weight coefficient A and B | 0 to 1 |
| Size of each file | 1 |
| Software | MATLAB |
| Total number of contents | 2000 |
| System bandwidth | 900 MHz |
| Minimum sensitivity of D2D receiver | −70 dBm |
| Bandwidth per channel | 200 kHZ |
Figure 5Performance evaluation of content caching based on SVM at D2D assisted multitier cellular networks.
Figure 6Performance comparison of different content caching techniques for D2D assisted multitier cellular networks.
Figure 7Improvement in performance due to the inclusion of D2D transmitters at various tiers of multitier cellular network.
Figure 8Cache hit ratio vs. cache size of incentivized D2D transmitters.
Figure 9Reward of the system based on Hungarian algorithm with varying weight coefficients.
Figure 10(a) Performance comparison of the delay of the system; (b) Performance comparison of the power consumption of the system.