|By Business Wire||
|September 3, 2014 03:02 PM EDT||
Research and Markets (http://www.researchandmarkets.com/research/v8l582/small_cell_market) has announced the addition of the "Small Cell Market by Type, by Service, by Operating Environment, & by Verticals & Regions - Market Forecasts and Analysis (2014-2019)" report to their offering.
The global small cell market to grow from $690.0 million in 2014 to $4.8 billion by 2019, at a Compound Annual Growth Rate (CAGR) of 41.7%.
Small cells are small compact-form systems used for extending mobile network coverage and capacity for indoor as well as outdoor environment. Small cells are deployed in those places where the network coverage is non-existent, poor, or the periodical spiking in mobile traffic leads to network congestion. Small cells support 2G, 3G, and Long-Term Evolution (LTE) communication technologies with the integration of Wi-Fi technology to enhance voice and data services offered by the mobile network operator.
Driving factors for the small cell market is the increasing number of smart devices, such as mobile phones and tablets, and the increasing number of data-intensive applications used in these smart devices, is leading to spectrum congestion and poor quality of service and the reduction in network coverage by macro cells due to large number of buildings in high-density urban areas. The major restraint encountered in this market is the issue of providing backhaul support for the deployed small cell.
Key Topics Covered:
2 Research Methodology
3 Executive Summary
4 Premium Insights
5 Market Overview
6 Industry Trends
7 Market By Type
8 Market, By Services
9 Market, By Operating Environment
10 Market, By Verticals
11 Market, By Region
12 Competitive Landscape
13 Company Profiles
- Nokia Solutions and Networks
- Spidercloud Wireless
For more information visit http://www.researchandmarkets.com/research/v8l582/small_cell_market
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