Realizing edge intelligence consists of sensing, communication, training, and inference stages. Conventionally, the sensing and communication stages are executed sequentially, which results in excessive amount of dataset generation and uploading time. This paper proposes to accelerate edge intelligence via integrated sensing and communication (ISAC). As such, the sensing and communication stages are merged so as to make the best use of the wireless signals for the dual purpose of dataset generation and uploading. However, ISAC also introduces additional interference between sensing and communication functionalities. To address this challenge, this paper proposes a classification error minimization formulation to design the ISAC beamforming and time allocation. Globally optimal solution is derived via the rank-1 guaranteed semidefinite relaxation, and performance analysis is performed to quantify the ISAC gain. Simulation results are provided to verify the effectiveness of the proposed ISAC scheme. Interestingly, it is found that when the sensing time dominates the communication time, ISAC is always beneficial. However, when the communication time dominates, the edge intelligence with ISAC scheme may not be better than that with the conventional scheme, since ISAC introduces harmful interference between the sensing and communication signals.
翻译:实现边缘情报包括遥感、通信、培训和推论阶段。从公约角度讲,遥感和通信阶段按顺序进行,结果产生过多的数据集生成和上传时间。本文件建议通过综合遥感和通信加速边缘情报(ISAC)。因此,将遥感和通信阶段合并,以便最佳地利用无线信号生成和上传的双重目的。然而,ISAC还引入了遥感和通信功能之间的更多干扰。为了应对这一挑战,本文件建议采用尽量减少分类错误的公式来设计ISAC的成型和时间分配。通过一级保证的半无限制放松和时间分配,得出全球最佳解决办法,并进行绩效分析,以量化ISAC的收益。提供了模拟结果,以核实拟议的ISAC计划的有效性。有趣的是,人们发现当感测时间主宰着通信时间时,ISAC总是有好处。然而,当通信时间占主导地位时,与ISAC机制的边缘情报可能不会比常规计划更好,因为ISAC引入了遥感和通信信号之间的有害干扰。