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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
381

An artificial neural network approach to authorship determination

Thirkell, Lawrence Alexander January 1993 (has links)
No description available.
382

Identification of a neural network for short term load forecasting

Hannan, Jeff January 1997 (has links)
No description available.
383

Functionality constraints in feedforward neuromorphic learning systems

Tebbs, Robert January 1995 (has links)
No description available.
384

A connectionist simulation : towards a model of child language development

Abidi, Syed Sibte Raza January 1994 (has links)
No description available.
385

Memory, emotions and neural networks : associative learning and memory recall influenced by affective evaluation and task difficulty

Araujo, Aluizio Fausto Ribeiro January 1994 (has links)
No description available.
386

Real-time FPGA implementation of a neuromorphic pitch detection system

Temple, Arthur Robert January 1999 (has links)
This thesis explores the real-time implementation of a biologically inspired pitch detection system in digital electronics. Pitch detection is well understood and has been shown to occur in the initial stages of the auditory brainstem. By building such a system in digital hardware we can prove the feasibility of implementing neuromorphic systems using digital technology. This research not only aims to prove that such an implementation is possible but to investigate ways of achieving efficient and effective designs. We aim to achieve this complexity reduction while maintaining the fine granularity of the signal processing inherent in neural systems. By producing an efficient design we present the possibility of implementing the system within the available resources, thus producing a demonstrable system. This thesis presents a review of computational models of all the components within the pitch detection system. The review also identifies key issues relating to the efficient implementation and development of the pitch detection system. Four investigations are presented to address these issues for optimal neuromorphic designs of neuromorphic systems. The first investigation aims to produce the first-ever digital hardware implementation of the inner hair cell. The second investigation develops simplified models of the auditory nerve and the coincidence cell. The third investigation aims to reduce the most complex stage of the system, the stellate chopper cell array. Finally, we investigate implementing a large portion of the pitch detection system in hardware. The results contained in this thesis enable us to understand the feasibility of implementing such systems in real-time digital hardware. This knowledge may help researchers to make design decisions within the field of digital neuromorphic systems.
387

A tool for quantitative problem solving in science and engineering

Krishnamurty, Meesala Venkata January 1993 (has links)
No description available.
388

An expert system for MMIC amplifier design

Parks, Gillian January 1993 (has links)
No description available.
389

Intelligent decision support systems for optimised diabetes

Jackson-Smale, Andrew David January 1993 (has links)
Computers now pervade the field of medicine extensively; one recent innovation is the development of intelligent decision support systems for inexperienced or non-specialist pbysicians, or in some cases for use by patients. In this thesis a critical review of computer systems in medicine, with special reference to decision support systems, is followed by a detailed description of the development and evaluation of two new, interacting, intelligent decision support systems in the domain of diabetes. Since the discovery of insulin in 1922, insulin replacement therapy for the treatment of diabetes mellitus bas evolved into a complex process; there are many different formulations of insulin and much more information about the factors which affect patient management (e.g. diet, exercise and progression of complications) are recognised. Physicians have to decide on the most appropriate anti-diabetic therapy to prescribe to their patients. Insulin-treated patients also have to monitor their blood glucose and decide how much insulin to inject and when to inject it. In order to help patients determine the most appropriate dose of insulin to take, a simple-to-use, hand-held decision support system has been developed. Algorithms for insulin adjustment have been elicited and combined with general rules of therapy to offer advice for every dose. The utility of the system has been evaluated by clinical trials and simulation studies. In order to aid physician management, a clinic-based decision support system has also been developed. The system provides wide-ranging advice on all aspects of diabetes care and advises an appropriate therapy regimen according to individual patient circumstances. Decisions advised by the pbysician-related system have been evaluated by a panel of expert physicians and the system has undergone informal primary evaluation within the clinic setting. An interesting aspect of both systems is their ability to provide advice even in cases where information is lacking or uncertain.
390

Inducing succinct rules in machine learning problems

Whelan, Kenneth Edward January 1998 (has links)
Machine Learning techniques, in particular induction algorithms, have been applied to the field of expert systems development in an effort to overcome the knowledge acquisition bottleneck. Many different induction algorithms have been developed. These utilise a number of different knowledge representations: e.g decision trees and rules. The rule based representation includes systems which utilise both propositional and predicate logic languages. Decision tree and rule based induction employ different knowledge acquisition mechanisms, however both strategies tend to induce complex and inaccurate knowledge from problem domains that contain noise or representational complexity. Previous techniques have concentrated on changing either the knowledge acquisition mechanism or the final ruleset/decision tree to reduce complexity. This thesis presents a new approach that focuses induction on those members of a training set that are likely to provide reliable knowledge. This is achieved by a new measure which is used to identify the most representative examples in a training set. The results of experiments show that this approach produces much simpler rulesets which in some circumstances perform with greater accuracy on unseen data.

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