1 AIT Asian Institute of Technology

Elementary function generators for neural network emulators

AuthorHtet Htet Wunn
Call NumberAIT Thesis no.CS-95-08
Subject(s)Neural networks (Computer science)

NoteA thesis submitted in partial fulfillment of the requirement for the degree of Master of Engineering
PublisherAsian Institute of Technology
AbstractGeneration of elementary functions is not a trivial task and in hardware implementations of neural networks it may be critical that they be generated with speed and with given precision. The transfer function and its derivative, which are elementary functions or compositions of them, for example, are needed extensively in backpropagation learning algorithm. We compare two methods, piece-wise linear approximation (PLA) method and add table-lookup add (ATA) method, and present two more polynomial interpolation methods called pl and p2, to compute elementary functions by hardware. Although ATA yields more precision than other methods presented, because of simple circuitry, PLA, pl and p2 methods are more suitable for neural network hardware. Further p2 method among these three is the most precise: it offers an average precision of 10-4 while PLA and pl's average precision is 10-3. An elementary statistical analysis has been provided and design of components by using SIS is introduced.
Year1995
TypeThesis
SchoolSchool of Engineering and Technology (SET)
DepartmentDepartment of Information and Communications Technologies (DICT)
Academic Program/FoSComputer Science (CS)
Chairperson(s)Yulu, Qi;
Examination Committee(s)Sadananda, Ramakoti;Batanov, Dentcho N.;
Scholarship Donor(s)Government of Finland;
DegreeThesis (M.Eng.) - Asian Institute of Technology, 1995


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