优化连接:评估光网络传输水平的新型人工智能方法

Mehaboob Mujawar, S. Manikandan, Monica Kalbande, Puneet Kumar Aggarwal, Nallam Krishnaiah, Yasin Genc
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引用次数: 0

摘要

我们提出了量子驱动的粒子群优化自适应支持向量机(QPSO-SASVM)模型,为评估动态光网络的连通性引入了一种新方法。通过整合量子计算和机器学习,这一先进的框架具有更强的收敛性和鲁棒性。通过对 187 个节点和 96 个 DWDM 信道的网络模拟进行测试,QPSO-SASVM 优于 LSTM、Naive 方法、E-DLSTM 和 GRU 等传统基准。使用信噪比、ROC 曲线、RMSE 和 R2 等指标进行的评估一致表明,QPSO-SASVM 具有出色的预测准确性和适应性。这些结果表明,QPSO-SASVM 是在动态光网络环境中进行精确可靠预测的有力工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimizing connectivity: a novel AI approach to assess transmission levels in optical networks

Optimizing connectivity: a novel AI approach to assess transmission levels in optical networks

Introducing a novel approach for assessing connectivity in dynamic optical networks, we propose the quantum-driven particle swarm-optimized self-adaptive support vector machine (QPSO-SASVM) model. By integrating quantum computing and machine learning, this advanced framework offers enhanced convergence and robustness. Tested against a network simulation with 187 nodes and 96 DWDM channels, QPSO-SASVM outperforms traditional benchmarks such as LSTM, Naive method, E-DLSTM, and GRU. Evaluation using metrics such as signal-to-noise ratio, ROC curve, RMSE, and R2 consistently demonstrates superior predictive accuracy and adaptability. These results underscore QPSO-SASVM as a powerful tool for precise and reliable prediction in dynamic optical network environments.

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