In this paper, we will discuss how human Brain is one of the most vital component for a human body and if we want to cap-ture the domain of Artificial Intelligence, we need to focus on the development of artificial brain in line with Human Brain. We will be analysing Blue Brain Project and its techniques for the development of artificial brain.AI basically learns from past experiences.So, we will see how we can develop Artificial Brain without learning from past experiences and taking logical decisions.
Published In:IJCSN Journal Volume 8, Issue 1
Date of Publication : February 2019
Pages : 102-109
Tables : --
Divya Bharti :
is a Student of Bits, Pilani Pursuing Masters in
Software Systems with Specialisation in Data Analytics.
She has more than 5 years of experience with IBM India and
DXC technology exploring different domains of analytics. She
has presented the paper in IBM for Migration of Mainframes in
Cloud. Her current field of interest is AI.
Human brain, Artificial Brain, Blue Brain,Patterns
Neurons are organized into circuits. In a reflex
arc, such as the knee-jerk reflex, interneurons connect
multiple sensory and motor neurons, allowing one sensory
neuron to affect multiple motor neurons. One muscle can
be stimulated to contract while another is inhibited from
contracting.In neuroscience, a biological neural network
describes a population of physically interconnected neurons
or a group of disparate neurons whose inputs or signalling
targets define a recognizable circuit. Communication
b e t w e e n n e u r o n s o f t e n i n v o l v e s a n
electrochemical process. The interface through which they
interact with surrounding neurons usually consists of several
dendrites (input connections), which are connected via
synapses to other neurons, and one axon (output connection).
If the sum of the input signals surpasses a certain
threshold, the neuron sends an action potential (AP) at the
axon hillock and transmits this electrical signal along the
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