The interconnected smart devices and industrial internet of things devices require low-latency communication to fulfill control objectives despite limited resources. In essence, such devices have a time-critical nature but also require a highly accurate data input based on its significance. In this paper, we investigate various coordinated and distributed semantic scheduling schemes with a data significance perspective. In particular, novel algorithms are proposed to analyze the benefit of such schemes for the significance in terms of estimation accuracy. Then, we derive the bounds of the achievable estimation accuracy. Our numerical results showcase the superiority of semantic scheduling policies that adopt an integrated control and communication strategy. In essence, such policies can reduce the weighted sum of mean squared errors compared to traditional policies.
翻译:尽管资源有限,但相联的智能装置和事物装置的工业互联网需要低时间通信才能实现控制目标,实际上,这些装置具有时间紧迫性,但也需要基于其重要性的高度准确的数据输入。在本文件中,我们从数据意义的角度对各种协调和分布的语义安排计划进行了调查,特别是,提出了新的算法,以分析这种安排对估算准确性的意义的好处。然后,我们得出了可实现估算准确性的范围。我们的数字结果显示了采用综合控制和通信战略的语义安排政策所具有的优越性。在本质上,这种政策可以减少与传统政策相比的中位方错误的加权总和。