Green and robust optimal design of Single Frequency Networks by min-max regret and ACO-based learning

Fabio D’Andreagiovanni, Hicham Lakhlef, Antonella Nardin
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Abstract

Notwithstanding the introduction of brand new 5G-based wireless services, single frequency networks supporting digital television and radio broadcasting still represent a major source of telecommunications services in modern smart cities. In this work, we propose a robust optimization model for the green design of second generation single frequency networks based on the digital television DVB-T standard, whose ongoing adoption requires to reconfigure and redesign existing networks. Our robust model aims at protecting design solutions against the data uncertainty that naturally affect propagation of signals in a real environment. For reducing conservatism of solutions, we refer to a heuristic min-max regret paradigm and to solve the resulting problem we propose to adopt a hybrid exact-heuristic algorithm based on the combination of an Ant Colony Optimization-like learning procedure, exploiting tight formulations of the optimization model, with an exact large neighborhood search. Results of computational tests considering realistic instances show that the heuristic min-max regret approach can produce solutions characterized by a substantially lower price of robustness without sacrificing protection against data uncertainty.
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基于最小最大遗憾和aco学习的单频网络绿色鲁棒优化设计
尽管推出了全新的5g无线服务,但支持数字电视和无线电广播的单频网络仍然是现代智慧城市电信服务的主要来源。在这项工作中,我们提出了基于数字电视DVB-T标准的第二代单频网络绿色设计的鲁棒优化模型,该标准的持续采用需要重新配置和重新设计现有网络。我们的鲁棒模型旨在保护设计解决方案免受数据不确定性的影响,这些不确定性自然影响信号在真实环境中的传播。为了减少解决方案的保守性,我们参考了启发式最小-最大遗憾范式,并且为了解决由此产生的问题,我们建议采用混合精确启发式算法,该算法基于类似蚁群优化的学习过程的组合,利用优化模型的紧密公式,具有精确的大邻域搜索。考虑实际实例的计算测试结果表明,启发式最小最大遗憾方法可以在不牺牲对数据不确定性的保护的情况下产生具有显著较低鲁棒性代价的解。
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