On Molecular Flow Velocity Meters
Maryam Farahnak-Ghazani, Mahtab Mirmohseni, and Masoumeh Nasiri-Kenari

TL;DR
This paper introduces a molecular flow velocity meter using molecule release and detection, providing detection and estimation methods with performance analysis, aiming to enhance molecular communication systems.
Contribution
It presents novel MAP and MMSE estimators for molecular flow velocity, along with performance bounds and optimal sampling strategies, advancing molecular communication techniques.
Findings
Error probability and bounds for velocity detection analyzed.
Optimal sampling times closely match sub-optimal ones.
Estimators achieve near-optimal performance with similar sampling times.
Abstract
Flow velocity is an important characteristic of the fluidic mediums. In this paper, we introduce a molecular based flow velocity meter consisting of a molecule releasing node and a receiver that counts these molecules. We consider both flow velocity detection and estimation problems, which are employed in different applications. For the flow velocity detection, we obtain the maximum a posteriori (MAP) decision rule. To analyze the performance of the proposed flow velocity detector, we obtain the error probability, its Gaussian approximation and Chernoff information (CI) upper bound, and investigate the optimum and sub-optimum sampling times accordingly. We show that, for binary hypothesis, the sub-optimum sampling times using CI upper bound are the same. Further, the sub-optimum sampling times are close to the optimum sampling times. For the flow velocity estimation, we obtain the MAP…
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