Probabilistic Behavioural Modelling of Non-Linear Devices
Citation:
Manjaly, Anna Davis, Probabilistic Behavioural Modelling of Non-Linear Devices, Trinity College Dublin, School of Engineering, Electronic & Elect. Engineering, 2023Download Item:

Abstract:
Behavioural device models are black-box models which depend only on measured
data and are independent of the underlying physics behind the working of the device.
Behavioural device models are widely used to model non-linear devices due to their
computational convenience. Accurate models are useful for circuit and system designs to help minimise the design time and maximise the utility of simulations.
In most of the behavioural models, the measured data are assumed to be ideal, while
in actuality these measured data are subjected to errors. These errors can influence
the modelling of the device and result in inaccurate predictions. In many cases, the
measurement system can be designed to minimise measurement uncertainty and measurement errors, but measurements will also be subject to random errors due to environmental conditions. In the existing studies which include measurement errors in
modelling, point estimates are estimated for the output responses of the Device Under Test (DUT). However, these point estimates do not reflect the reality that the input
data are measured in the presence of uncertainties.
In this work, a method to model non-linear devices with random errors is proposed.
This method is based on the Bayesian probabilistic approach which gives probabilistic
distributions for the model parameters and output responses of the DUT. Probabilistic
distributions and credible regions for X-parameters are established by deriving probability distributions for the output responses of the DUT rather than point responses.
Finally, the potential to use Bayesian Neural Networks (BNN) to achieve increased
accuracy is proposed and examined.
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Department of Electronic & Electrical engineering
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https://tcdlocalportal.tcd.ie/pls/EnterApex/f?p=800:71:0::::P71_USERNAME:MANJALYADescription:
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Author: Manjaly, Anna Davis
Publisher:
Trinity College Dublin. School of Engineering. Discipline of Electronic & Elect. EngineeringType of material:
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Bayesian Probabilistic ModellingLicences: