In this work, the capabilities of an encoder-decoder learning framework are leveraged to predict soft-failure evolution over a long future horizon. This enables the triggering of timely repair actions with low quality-of-transmission (QoT) margins before a costly hard-failure occurs, ultimately reducing the frequency of repair actions and associated operational expenses. Specifically, it is shown that the proposed scheme is capable of triggering a repair action several days prior to the expected day of a hard-failure, contrary to soft-failure detection schemes utilizing rule-based fixed QoT margins, that may lead either to premature repair actions (i.e., several months before the event of a hard-failure) or to repair actions that are taken too late (i.e., after the hard failure has occurred). Both frameworks are evaluated and compared for a lightpath established in an elastic optical network, where soft-failure evolution can be modeled by analyzing bit-error-rate information monitored at the coherent receivers.
翻译:在这项工作中,利用编码器代碼学习框架的能力来预测未来长期的软故障演变,从而能够在费用高昂的硬故障发生之前,触发低质量传输(QoT)边缘的及时修理行动,最终减少修复行动的频率和相关业务费用,具体地说,表明拟议的计划能够在预期的硬故障之日前几天触发修复行动,而与使用基于规则的固定QoT差幅的软故障探测计划相反,这可能导致过早修复行动(即在出现硬故障之前几个月)或修复太迟的行动(即发生硬故障之后),两个框架都经过评价,比较了在弹性光学光学网络中建立的光路路,通过分析在连贯的接收器中监测到的微错误率信息,可以模拟软故障演变。