Fundamental Detection Probability vs. Achievable Rate Tradeoff in Integrated Sensing and Communication Systems
Jiancheng An, Hongbin Li, Derrick Wing Kwan Ng, Chau Yuen

TL;DR
This paper investigates the fundamental tradeoff between detection probability and achievable data rate in integrated sensing and communication systems, providing theoretical bounds, analytical expressions, and power allocation strategies.
Contribution
It characterizes the performance bounds and tradeoffs in ISAC systems, deriving closed-form detection probabilities and proposing power allocation solutions for optimal resource use.
Findings
Analytical expressions for false alarm and detection probabilities.
Tradeoff analysis between sensing performance and communication rate.
Power allocation strategies to optimize system performance.
Abstract
Integrating sensing functionalities is envisioned as a distinguishing feature of next-generation mobile networks, which has given rise to the development of a novel enabling technology -- \emph{Integrated Sensing and Communication (ISAC)}. Portraying the theoretical performance bounds of ISAC systems is fundamentally important to understand how sensing and communication functionalities interact (e.g., competitively or cooperatively) in terms of resource utilization, while revealing insights and guidelines for the development of effective physical-layer techniques. In this paper, we characterize the fundamental performance tradeoff between the detection probability for target monitoring and the user's achievable rate in ISAC systems. To this end, we first discuss the achievable rate of the user under sensing-free and sensing-interfered communication scenarios. Furthermore, we derive…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms
