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Hardware Annealing in Analog VLSI Neurocomputing (Paperback, Softcover reprint of the original 1st ed. 1991)
Loot Price: R2,917
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Hardware Annealing in Analog VLSI Neurocomputing (Paperback, Softcover reprint of the original 1st ed. 1991)
Series: The Springer International Series in Engineering and Computer Science, 127
Expected to ship within 10 - 15 working days
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Rapid advances in neural sciences and VLSI design technologies have
provided an excellent means to boost the computational capability
and efficiency of data and signal processing tasks by several
orders of magnitude. With massively parallel processing
capabilities, artificial neural networks can be used to solve many
engineering and scientific problems. Due to the optimized data
communication structure for artificial intelligence applications, a
neurocomputer is considered as the most promising sixth-generation
computing machine. Typical applica tions of artificial neural
networks include associative memory, pattern classification, early
vision processing, speech recognition, image data compression, and
intelligent robot control. VLSI neural circuits play an important
role in exploring and exploiting the rich properties of artificial
neural networks by using pro grammable synapses and gain-adjustable
neurons. Basic building blocks of the analog VLSI neural networks
consist of operational amplifiers as electronic neurons and
synthesized resistors as electronic synapses. The synapse weight
information can be stored in the dynamically refreshed capacitors
for medium-term storage or in the floating-gate of an EEPROM cell
for long-term storage. The feedback path in the amplifier can
continuously change the output neuron operation from the unity-gain
configuration to a high-gain configuration. The adjustability of
the vol tage gain in the output neurons allows the implementation
of hardware annealing in analog VLSI neural chips to find optimal
solutions very efficiently. Both supervised learning and
unsupervised learning can be implemented by using the programmable
neural chips."
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