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Application of Simulated Annealing Algorithm to Optimization Deployment of Mobile Wireless Base Stations

机译:模拟退火算法在移动无线基站优化部署中的应用

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Deployment of mobile wireless base (transceiver) stations (MBTS, vehicles) is expensive, with the wireless provider often offering a basic coverage of BTS in a normal communication data flow. However, during a special festival celebration or a popular outdoor concert in a big city, the quality of the wireless connection would be insufficient. In this situation, the wireless service providers always increase the number of MBTS to improve the density of nets and speed up the data flow of communication. This research intended to construct an integer programming (IP) model to minimize the density gap between wireless request and supply. The solver used was an SA algorithm. In order to validate, the proposed approach was compared to other famous heuristics, such as Random with Tabu and Ransom Search; and it was found that SA outperformed RS by an average of 18%. This result suggested a reduction of the density gap between wireless request and supply by 18% if an MBTS company's allocation of transceiver stations is optimal, and an SA algorithm is used.
机译:移动无线基站(收发器)站(MBTS,车辆)的部署非常昂贵,无线提供商通常会在常规通信数据流中提供BTS的基本覆盖范围。但是,在特殊的节日庆典或大城市的热门户外音乐会期间,无线连接的质量将不足。在这种情况下,无线服务提供商总是增加MBTS的数量,以提高网络的密度并加快通信的数据流。这项研究旨在构建一个整数编程(IP)模型,以最大程度地减少无线请求和提供之间的密度差距。使用的求解器是SA算法。为了进行验证,将提出的方法与其他著名的启发式方法进行了比较,例如“随机禁忌”和“勒索搜索”;结果发现,SA的效果比RS高出18%。该结果表明,如果MBTS公司的收发器站分配达到最佳,并且使用SA算法,则无线请求与提供之间的密度差距将减少18%。

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