Characterizing the sensing and communication performance tradeoff in integrated sensing and communication (ISAC) systems is challenging in the applications of learning-based human motion recognition. This is because of the large experimental datasets and the black-box nature of deep neural networks. This paper presents SDP3, a Simulation-Driven Performance Predictor and oPtimizer, which consists of SDP3 data simulator, SDP3 performance predictor and SDP3 performance optimizer. Specifically, the SDP3 data simulator generates vivid wireless sensing datasets in a virtual environment, the SDP3 performance predictor predicts the sensing performance based on the function regression method, and the SDP3 performance optimizer investigates the sensing and communication performance tradeoff analytically. It is shown that the simulated sensing dataset matches the experimental dataset very well in the motion recognition accuracy. By leveraging SDP3, it is found that the achievable region of recognition accuracy and communication throughput consists of a communication saturation zone, a sensing saturation zone, and a communication-sensing adversarial zone, of which the desired balanced performance for ISAC systems lies in the third one.
翻译:在综合遥感和通信系统(ISAC)中,在应用基于学习的人类运动识别方面,在应用基于学习的人类运动的感知和通信性能权衡方面,具有挑战性,这是因为实验数据集庞大,深神经网络具有黑盒性质,本文介绍了SDP3、模拟驱动性性能预测器和OPimizer,由SDP3数据模拟器、SDP3性能预测器和SDP3性能优化器组成。具体来说,SDP3数据模拟器在虚拟环境中生成了生动的无线感应感测数据集,SDP3性能预测器预测了基于功能回归法的感测性能,SDP3性能优化器对感知和通信性能权衡分析进行了调查,显示模拟感测数据集与实验数据集非常符合运动识别准确性。通过利用SDP3发现,可实现的识别准确度和通信性能区域包括通信饱和区、感饱和区和通信感测防御区,而ISAC系统预期的平衡性能处于第三个区域。