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Comparative Analysis of Optimization Techniques for Optimizing the Radio Network Parameters of Next Generation Wireless Mobile Communication

机译:优化技术优化技术的比较分析,用于优化下一代无线移动通信的无线网络参数

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One of the primary aims of Optimization is to hunt the best entity from the available set of choice without explicitly assessing them. A new design, efficient outcome and cost effective solution is the outcome of optimization. Radio network planning is the basic seed required for configuring the base station parameters to attain the desired Quality of Service. The tuning of the radio network parameters like power control parameter, radius, tilt, azimuth orientation, cost etc. is a composite task, as majority of parameters are interdependent on each other. Optimization of these radio network parameters is the solution for the effective deployment of the network. Conventional optimizing algorithms like non-linear programming, Steepest Ascent, Golden Search, Newton Raphson, Quadratic programming etc are local search techniques which may stuck at local optimum. These techniques do not work for multi-modal functions and leads to degraded outcome if input parameters are misconfigured. To overcome this condition, modern optimization techniques like Genetic Algorithm, Particle Swarm Optimization, Simulated Annealing and Taguchi's Method of Optimization have been discussed in this paper. These meta-heuristic search techniques have been compared based on the exploration of search space, performance characteristics and computational intricacy. It is shown that Taguchi's method of Optimization has a comparable performance in terms of less iterations and control outcome.
机译:优化的主要目标之一是从可用的选择集中捕获最佳实体,而无需明确评估它们。新的设计,高效结果和成本效益的解决方案是优化的结果。无线电网络规划是配置基站参数所需的基本种子以获得所需的服务质量。电源控制参数,半径,倾斜,方位角方向,成本等的电台上的调整是一个复合任务,因为大多数参数都是相互相互依赖的。这些无线电网络参数的优化是用于有效部署网络的解决方案。传统的优化算法,如非线性编程,最陡峭的上升,金色搜索,牛顿Raphson,二次编程等是可能陷入本地最佳的本地搜索技术。如果输入参数误配置,这些技术不适用于多模态函数,并导致劣化结果。为了克服这种情况,本文讨论了现代优化技术,如遗传算法,粒子群优化,模拟退火和Taguchi的优化方法。这些元启发式搜索技术已经基于搜索空间,性能特征和计算复杂性的探索。结果表明,Taguchi的优化方法在更少的迭代和控制结果方面具有可比性。

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