Three-dimensional optimal multi-level Monte–Carlo approximation of the stochastic drift–diffusion–Poisson system in nanoscale devices

被引:0
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作者
Amirreza Khodadadian
Leila Taghizadeh
Clemens Heitzinger
机构
[1] Vienna University of Technology (TU Wien),Institute for Analysis and Scientific Computing
[2] Arizona State University,School of Mathematical and Statistical Sciences
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关键词
Stochastic drift–diffusion–Poisson system; Multi-level Monte–Carlo; Optimal method; Uncertainty quantification; Fluctuations; Noise; Transistor; Nanowire;
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摘要
The three-dimensional stochastic drift–diffusion–Poisson system is used to model charge transport through nanoscale devices in a random environment. Applications include nanoscale transistors and sensors such as nanowire field-effect bio- and gas sensors. Variations between the devices and uncertainty in the response of the devices arise from the random distributions of dopant atoms, from the diffusion of target molecules near the sensor surface, and from the stochastic association and dissociation processes at the sensor surface. Furthermore, we couple the system of stochastic partial differential equations to a random-walk-based model for the association and dissociation of target molecules. In order to make the computational effort tractable, an optimal multi-level Monte–Carlo method is applied to three-dimensional solutions of the deterministic system. The whole algorithm is optimal in the sense that the total computational cost is minimized for prescribed total errors. This comprehensive and efficient model makes it possible to study the effect of design parameters such as applied voltages and the geometry of the devices on the expected value of the current.
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页码:76 / 89
页数:13
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