Uncertainty Quantification in Molecular Signals Using Polynomial Chaos Expansion

IEEE Transactions on Molecular, Biological, and Multi-Scale Communications(2019)

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摘要
Molecular signals are abundant in engineering and biological contexts, and undergo stochastic propagation in fluid dynamic channels. The received signal is sensitive to a variety of input and channel parameter variations. Currently we do not understand how uncertainty or noise in a variety of parameters affect the received signal concentration, and nor do we have an analytical framework to tackle this challenge. In this paper we utilize Polynomial Chaos Expansion (PCE) to show that uncertainty in parameters propagates to uncertainty in the received signal. For demonstrating its applicability we consider a Turbulent Diffusion Molecular Communication (TDMC) channel and highlight which parameters affect the received signals. This can pave the way for future information theoretic insights, as well as guide experimental design.
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关键词
Uncertainty,Mathematical model,Chaos,Aerodynamics,Monte Carlo methods,Random variables,Biological information theory
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