Characterization of Brain Frequency Using EEG Signals

Sailesh Kumar T, Dr Kakasaheb Chandrakant Mohite

Volume 6, Issue 1 2022

Page: 2-12

Abstract

Billions of neurons hold an electrical charge in the brain. Membrane transport proteins to neuron by pumping the ions across their membrane, this results that they are charged or polarized. Resting potential is maintained due to constant exchange of ions with the extracellular environment by brain neurons and also to propagate action potentials. In wave propagation, many ions are liberated from many neurons simultaneously since ions of similar charge repel each other and at the same time, neighbours ions are pushed and this process go on in a wave form.

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