The multi-agent system (MAS) enables the sharing of capabilities among agents, such that collaborative tasks can be accomplished with high scalability and efficiency. MAS is increasingly widely applied in various fields. Meanwhile, the large-scale and time-sensitive data transmission between agents brings challenges to the communication system. The traditional wireless communication ignores the content of the data and its impact on the task execution at the receiver, which makes it difficult to guarantee the timeliness and relevance of the information. This limitation leads to that traditional wireless communication struggles to effectively support emerging multi-agent collaborative applications. Faced with this dilemma, task-oriented communication is a potential solution, which aims to transmit task-relevant information to improve task execution performance. However, multi-agent collaboration itself is a complex class of sequential decision problems. It is challenging to explore efficient information flow in this context. In this article, we use deep reinforcement learning (DRL) to explore task-oriented communication in MAS. We begin with a discussion on the application of DRL to task-oriented communication. We then envision a task-oriented communication architecture for MAS, and discuss the designs based on DRL. Finally, we discuss open problems for future research and conclude this article.
翻译:多试剂系统(MAS)使代理人之间能够分享能力,从而能够以高度的可扩缩性和高效率的方式完成协作任务。MAS日益被广泛应用于各个领域。与此同时,代理人之间大规模和时间敏感的数据传输给通信系统带来了挑战。传统的无线通信忽视了数据的内容及其对接收者任务执行的影响,这使得难以保证信息的及时性和相关性。这一限制导致传统的无线通信斗争,以有效支持新出现的多试剂合作应用。面对这一困境,面向任务的通信是一种潜在的解决办法,其目的是传递与任务有关的信息,以改进任务执行绩效。然而,多试剂合作本身是一系列复杂的连续决策问题。在这方面,探索高效的信息流动具有挑战性。在本篇文章中,我们使用深入的强化学习(DRL)来探索在MAS中面向任务的通信。我们首先讨论DL对面向任务的通信的应用问题。我们然后设想一个面向任务的通信结构,并讨论以DL为基础的设计。最后,我们讨论未来研究的公开问题和文章的结论。