Attention-based Dependability Prediction for Industrial Wireless Communication Systems

Danfeng Sun, Yang Yang, Hongping Wu
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Abstract

Wireless communication systems are ever-increasing important for industrial applications, supported by organizations such as the German Electro and Digital Industry Association (ZVEI), 5G Alliance for Connected Industries and Automation (5G ACIA), and 3rd Generation Partnership Project (3GPP). Industrial wireless communication systems (IWCSs) have high requirements for dependability, where dependability prediction can support to assess and improve the IWCSs. With the fast development of machine learning techniques, several Long Short-term Memory (LSTM) models have been proposed and indicate effectiveness for the dependability prediction task. However, these models ignore the truth that wireless devices are always resource-constrained and relationships between logical links can increase the prediction accuracy. Therefore, we propose the attention-based dependability prediction model which includes a sequence-to-sequence model and attention mechanism. We vary the attention mechanism with several Transformer variants to reduce time complexity and conducted experiments on a realistic measured data set. We compared the execution time and prediction performance of these models. Results indicate that the Sinkhorn-based model can meet the real-time requirement and has the best performance, and the Performer-based model has the lowest execution time, which can be applied for harsh real-time industrial applications.
基于注意力的工业无线通信系统可靠性预测
在德国电子和数字工业协会(ZVEI)、5G互联工业和自动化联盟(5G ACIA)和第三代合作伙伴计划(3GPP)等组织的支持下,无线通信系统对工业应用的重要性日益提高。工业无线通信系统对可靠性有很高的要求,可靠性预测是评估和改进工业无线通信系统的重要手段。随着机器学习技术的快速发展,人们提出了许多长短期记忆模型,并证明了它们在可靠性预测任务中的有效性。然而,这些模型忽略了一个事实,即无线设备总是资源受限的,而逻辑链路之间的关系可以提高预测的准确性。因此,我们提出了基于注意的可靠性预测模型,该模型包括序列到序列模型和注意机制。我们使用几个Transformer变体来改变注意力机制以降低时间复杂度,并在实际测量数据集上进行了实验。我们比较了这些模型的执行时间和预测性能。结果表明,基于sinkhorn的模型能够满足实时性要求,具有最佳的性能,而基于performer的模型具有最低的执行时间,可以应用于苛刻的实时性工业应用。
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