Modelling of Received Signals in Molecular Communication Systems based
machine learning: Comparison of azure machine learning and Python tools
- URL: http://arxiv.org/abs/2112.10214v1
- Date: Sun, 19 Dec 2021 18:15:17 GMT
- Title: Modelling of Received Signals in Molecular Communication Systems based
machine learning: Comparison of azure machine learning and Python tools
- Authors: Soha Mohamed, Mahmoud S. Fayed
- Abstract summary: This paper applies Azure Machine Learning ( Azure ML) for flexible pavement maintenance regressions problems and solutions.
For prediction, four parameters are used as inputs: the receiver radius, transmitter radius, distance between receiver and transmitter, and diffusion coefficient.
In the established Azure ML, the regression algorithms such as, boost decision tree regression, Bayesian linear regression, neural network, and decision forest regression are selected.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Molecular communication (MC) implemented on Nano networks has extremely
attractive characteristics in terms of energy efficiency, dependability, and
robustness. Even though, the impact of incredibly slow molecule diffusion and
high variability environments remains unknown. Analysis and designs of
communication systems usually rely on developing mathematical models that
describe the communication channel. However, the underlying channel models are
unknown in some systems, such as MC systems, where chemical signals are used to
transfer information. In these cases, a new method to analyze and design is
needed. In this paper, we concentrate on one critical aspect of the MC system,
modelling MC received signal until time t , and demonstrate that using tools
from ML makes it promising to train detectors that can be executed well without
any information about the channel model. Machine learning (ML) is one of the
intelligent methodologies that has shown promising results in the domain. This
paper applies Azure Machine Learning (Azure ML) for flexible pavement
maintenance regressions problems and solutions. For prediction, four parameters
are used as inputs: the receiver radius, transmitter radius, distance between
receiver and transmitter, and diffusion coefficient, while the output is mAP
(mean average precision) of the received signal. Azure ML enables algorithms
that can learn from data and experiences and accomplish tasks without having to
be coded. In the established Azure ML, the regression algorithms such as, boost
decision tree regression, Bayesian linear regression, neural network, and
decision forest regression are selected. The best performance is chosen as an
optimality criterion. Finally, a comparison that shows the potential benefits
of Azure ML tool over programmed based tool (Python), used by developers on
local PCs, is demonstrated
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