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Abis Optimization

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Submitted By majidy
Words 1558
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The value of Abis optimization PUBLIC
2011-11-10 Issue 39 of Huawei Communicate Page 1 of 6
Not So Worthy: Abis optimization
With the rapid development of mobile services, there had been increasing pressure and demands on mobile backhaul bandwidth, especially in terms of 3G service provision. Abis optimization can ameliorate this situation to some extent by enhancing transport efficiency, but the total value it generates remains in question.
Theory of Abis optimization
As 3G traffic continues to grow, operators must tackle the issue of higher bandwidth requirements. This has resulted in huge investments for network capacity expansion. With such high demands for bandwidth optimization, various technologies have been developed and applied to mobile backhaul networks—Abis is one of the many options available.
Voice services remain a dominant commercial interest for mobile operators. Since GSM system differs from 3G UMTS systems in terms of voice service processing, Abis optimization technology has various effects.
GSM system utilizes full-rate (FR) codes to process voice services, and occupies transmission bandwidth even during the mute period of the communication process. Abis optimization technology is designed to eliminate mute frames through its BTS interface. It can also multiply the unused timeslots. The mute frames are then recovered before the BSC, enhancing 2G service transport efficiency by an average of 60%, and even 80% in best case scenarios. On the other hand, 3G systems employ adaptive multi-rate (AMR) technology to process voice services. Since voice activation factors are introduced in coding, mute frames would not exist in service bandwidth. Thus, 3G service transport efficiency cannot be improved by Abis.
Saving bandwidth with Abis optimization?
The value of Abis optimization PUBLIC
2011-11-10 Issue 39 of Huawei Communicate

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