首页> 外国专利> Autonomous, closed-loop and adaptive simulated annealing based machine learning approach for intelligent analytics-assisted self-organizing-networks (SONs)

Autonomous, closed-loop and adaptive simulated annealing based machine learning approach for intelligent analytics-assisted self-organizing-networks (SONs)

机译:基于自治,闭环和自适应模拟退火的机器学习方法,用于智能分析辅助的自组织网络(SON)

摘要

Convergence times associated with simulated annealing based (SA-based) optimization in wireless networks can be reduced by introducing an additional local or cell-level evaluation step into the evaluation of global solutions. In particular, new local solutions may be evaluated based on local performance criteria when the new solutions are in a global solution deemed to have satisfied a global performance criteria. New local solutions that satisfy their corresponding local performance criteria remain in the new global solution. New local solutions that do not satisfy their corresponding local performance criteria are replaced with a corresponding current local solution from a current global solution, thereby modifying the new global solution. The resulting modified global solution includes both new local solutions and current local solutions prior to being accepted as the current global solution for the next iteration.
机译:通过在全局解决方案的评估中引入额外的本地或小区级别评估步骤,可以减少与无线网络中基于模拟退火(基于SA)的优化相关的收敛时间。特别地,当新解决方案处于被认为已满足全局性能标准的全局解决方案中时,可以基于本地性能标准来评估新的本地解决方案。满足其相应的本地性能标准的新本地解决方案仍保留在新的全局解决方案中。不满足其相应本地性能标准的新本地解决方案将由当前全局解决方案中的相应当前本地解决方案替换,从而修改新的全局解决方案。最终的修改后的全局解决方案包括新的本地解决方案和当前的本地解决方案,然后才被接受为下一迭代的当前全局解决方案。

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