Digital twins have shown a great potential in supporting the development of wireless networks. They are virtual representations of 5G/6G systems enabling the design of machine learning and optimization-based techniques. Field data replication is one of the critical aspects of building a simulation-based twin, where the objective is to calibrate the simulation to match field performance measurements. Since wireless networks involve a variety of key performance indicators (KPIs), the replication process becomes a multi-objective optimization problem in which the purpose is to minimize the error between the simulated and field data KPIs. Unlike previous works, we focus on designing a data-driven search method to calibrate the simulator and achieve accurate and reliable reproduction of field performance. This work proposes a search-based algorithm based on mixedvariable particle swarm optimization (PSO) to find the optimal simulation parameters. Furthermore, we extend this solution to account for potential conflicts between the KPIs using {\alpha}-fairness concept to adjust the importance attributed to each KPI during the search. Experiments on field data showcase the effectiveness of our approach to (i) improve the accuracy of the replication, (ii) enhance the fairness between the different KPIs, and (iii) guarantee faster convergence compared to other methods.
翻译:数字孪生在支持无线网络开发方面展示了巨大的潜力。它们是5G/6G系统的虚拟表示,使得机器学习和基于优化的技术的设计成为可能。场数据复制是建立仿真孪生的关键方面之一,其目的是使用仿真来匹配现场性能测量。由于无线网络涉及各种主要性能指标(KPI),因此复制过程变成了一个多目标优化问题,其目的是最小化仿真和现场数据KPI之间的误差。与以往的工作不同,本文侧重于设计一个数据驱动的搜索方法来校准模拟器,并实现准确可靠的现场性能复制。本文提出一种基于混合变量粒子群优化(PSO)的搜索算法来找到最优的模拟参数。此外,我们扩展了此解决方案,以考虑KPI之间的潜在冲突,使用$\alpha$-公平性概念在搜索期间调整分配给每个KPI的重要性。对现场数据的实验展示了我们方法的有效性,包括(i) 改善复制的准确性,(ii) 增强不同KPI之间的公平性,以及(iii) 相比其他方法,保证更快的收敛。