We use nonlinear signal processing techniques, based on artificial neural networks, to construct a continuous-time model (set of ordinary differential equations, ODEs) from experimental observations of mixed-mode oscillations during the galvanostatic oxidation of hydrogen on platinum in the presence of bismuth and chloride ions. The data was in the form of time-series of the potential for different values of the applied current and chloride ion concentration. We use the model to reconstruct the experimental dynamics and to explore the associated bifurcation structures in phase-space. Using numerical bifurcation techniques we locate stable and unstable periodic solutions, calculate eigenvalues, and identify bifurcation points. This approach ...
Electrochemical reduction of carbon dioxide (CO2) has received increasing attention with the recent ...
We report experimental observations of the spatio-temporal dynamics in the electro-oxidation of form...
The dynamics of neurons consist of oscillating patterns of a membrane potential that underpin the o...
We use nonlinear signal processing techniques, based on artificial neural networks, to construct a c...
Multivariate calibration based on a suitable experimental design (ED) and soft modelling with artifi...
Bifurcations are detected in experiments involving the electrochemical oxidation of copper in phosph...
Pattern formation during electrochemical reactions is a common phenomenon. It is decisively influenc...
Neural networks were applied to the analysis of electrochemical noise data. Electrochemical noise is...
Phase shifts between four Belousov-Zhabotinsky (BZ) oscillators are applied to encode phase patterns...
Many chemical and physical systems show self-sustained oscillations that can be described by a set o...
We report experimental observations of potential oscillations in electrocatalytic oxidation of formi...
This thesis focuses on the study of electrochemical reaction and mass transport processes via numeri...
In this work, we propose a strategy based on an analog active network to detect Hopf bifurcations in...
This experimental thesis deals with self-organization phenomena in electrochemical systems. Two aspe...
Current oscillations vs time series were measured during iron electrodissolution in sulfuric acid so...
Electrochemical reduction of carbon dioxide (CO2) has received increasing attention with the recent ...
We report experimental observations of the spatio-temporal dynamics in the electro-oxidation of form...
The dynamics of neurons consist of oscillating patterns of a membrane potential that underpin the o...
We use nonlinear signal processing techniques, based on artificial neural networks, to construct a c...
Multivariate calibration based on a suitable experimental design (ED) and soft modelling with artifi...
Bifurcations are detected in experiments involving the electrochemical oxidation of copper in phosph...
Pattern formation during electrochemical reactions is a common phenomenon. It is decisively influenc...
Neural networks were applied to the analysis of electrochemical noise data. Electrochemical noise is...
Phase shifts between four Belousov-Zhabotinsky (BZ) oscillators are applied to encode phase patterns...
Many chemical and physical systems show self-sustained oscillations that can be described by a set o...
We report experimental observations of potential oscillations in electrocatalytic oxidation of formi...
This thesis focuses on the study of electrochemical reaction and mass transport processes via numeri...
In this work, we propose a strategy based on an analog active network to detect Hopf bifurcations in...
This experimental thesis deals with self-organization phenomena in electrochemical systems. Two aspe...
Current oscillations vs time series were measured during iron electrodissolution in sulfuric acid so...
Electrochemical reduction of carbon dioxide (CO2) has received increasing attention with the recent ...
We report experimental observations of the spatio-temporal dynamics in the electro-oxidation of form...
The dynamics of neurons consist of oscillating patterns of a membrane potential that underpin the o...