A Review on Examination Methods of Types of Working Memory and Cerebral Cortex in EEG Signals
Subject Areas :
Majlesi Journal of Telecommunication Devices
Mehran Emadi
1
,
Mohsen Karimi
2
,
Fatemeh Davoudi
3
1 - Department of Electrical Engineering, Mobarkeh Branch, Islamic Azad University, Mobarkeh, Isfahan, Iran
2 - Department of Bioelectric and Biomedical Engineering, School of Advanced Technologies in Medicine, Isfahan, Iran
3 - Iran university science and technology (IUST) School of Electrical Engineering, Tehran, Iran
Received: 2023-07-10
Accepted : 2023-08-23
Published : 2023-09-01
Keywords:
working memory,
Brain,
Cerebral cortex,
Electroencephalography,
Abstract :
Brain is the most important organ in human body. All of our memories are saved on brain. Brain activity is analyzed by electroencephalogram signals (EEG). Brain activity and memory signal represent brain activity that can be recorded in different brain regions. Electroencephalography signal analysis can provide complete and comprehensive information about brain activity. Working of brain memory as an activity is analyzed by EEG. The main purpose of this research is to review the types of memory and especially working memory in humans by processing of EEG. In this regard, memory and types of memory have been discussed at the beginning. Then the brain activity and memory signal, recording method, electrode placement, brain potentials are discussed. Then, the complexity of the brain activity and memory signal in memory has been investigated. Then, memory and its relationship with brain activity and memory signal have been discussed. Areas affected by memory are expressed in the brain. After the researches about brain activity and memory signals in memory, it has been investigated.
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