Spelling suggestions: "subject:"artificial beural"" "subject:"artificial aneural""
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Intelligent hybrid approach for integrated designWakelam, Mark January 1998 (has links)
No description available.
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Connectionist feedforward networks for control of nonlinear systemsHofer, Daniel G. Sbarbaro January 1992 (has links)
No description available.
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An investigation of task level programming for robotic assemblyHowarth, Martin January 1998 (has links)
No description available.
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Adaptive compensation for errors due to flexibility in mechanical systemsKabiri, Peyman January 2000 (has links)
No description available.
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Neuron to symbol : relevance information in hybrid systemsJohnson, Geraint January 1997 (has links)
No description available.
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Design and characterisation of a ferroelectric liquid crystal over silicon spatial light modulatorBurns, Dwayne C. January 1995 (has links)
Many optical processing systems rely critically on the availability of high performance, electrically-addressed spatial light modulators. Ferroelectric liquid crystal over silicon is an attractive spatial light modulator technology because it combines two well matched technologies. Ferroelectric liquid crystal modulating materials exhibit fast switching times with low operating voltages, while very large scale silicon integrated circuits offer high-frequency, low power operation, and versatile functionality. This thesis describes the design and characterisation of the SBS256 - a general purpose 256 x 256 pixel ferroelectric liquid crystal over silicon spatial light modulator that incorporates a static-RAM latch and an exclusive-OR gate at each pixel. The static-RAM latch provides robust data storage under high read-beam intensities, while the exclusive-OR gate permits the liquid crystal layer to be fully and efficiently charge balanced. The SBS256 spatial light modulator operates in a binary mode. However, many applications, including helmet-mounted displays and optoelectronic implementations of artificial neural networks, require devices with some level of grey-scale capability. The 2 kHz frame rate of the device, permits temporal multiplexing to be used as a means of generating discrete grey-scale in real-time. A second integrated circuit design is also presented. This prototype neuraldetector backplane consists of a 4 x 4 array of optical-in, electronic-out processing units. These can sample the temporally multiplexed grey-scale generated by the SBS256. The neurons implement the post-synaptic summing and thresholding function, and can respond to both positive and negative activations - a requirement of many artificial neural network models.
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A recurrent neural network approach to quantification of risks surrounding the Swedish property marketVikström, Filip January 2016 (has links)
As the real estate market plays a central role in a countries financial situation, as a life insurer, a bank and a property developer, Skandia wants a method for better assessing the risks connected to the real estate market. The goal of this paper is to increase the understanding of property market risk and its covariate risks and to conduct an analysis of how a fall in real estate prices could affect Skandia’s exposed assets.This paper explores a recurrent neural network model with the aim of quantifying identified risk factors using exogenous data. The recurrent neural network model is compared to a vector autoregressive model with exogenous inputs that represent economic conditions.The results of this paper are inconclusive as to which method that produces the most accurate model under the specified settings. The recurrent neural network approach produces what seem to be better results in out-of-sample validation but both the recurrent neural network model and the vector autoregressive model fail to capture the hypothesized relationship between the exogenous and modeled variables. However producing results that does not fit previous assumptions, further research into artificial neural networks and tests with additional variables and longer sample series for calibration is suggested as the model preconditions are promising.
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Development of a fault location method based on fault induced transients in distribution networks with wind farm connectionsLout, Kapildev January 2015 (has links)
Electrical transmission and distribution networks are prone to short circuit faults since they span over long distances to deliver the electrical power from generating units to where the energy is required. These faults are usually caused by vegetation growing underneath bare overhead conductors, large birds short circuiting the phases, mechanical failure of pin-type insulators or even insulation failure of cables due to wear and tear, resulting in creepage current. Short circuit faults are highly undesirable for distribution network companies since they cause interruption of supply, thus affecting the reliability of their network, leading to a loss of revenue for the companies. Therefore, accurate offline fault location is required to quickly tackle the repair of permanent faults on the system so as to improve system reliability. Moreover, it also provides a tool to identify weak spots on the system following transient fault events such that these future potential sources of system failure can be checked during preventive maintenance. With these aims in mind, a novel fault location technique has been developed to accurately determine the location of short circuit faults in a distribution network consisting of feeders and spurs, using only the phase currents measured at the outgoing end of the feeder in the substation. These phase currents are analysed using the Discrete Wavelet Transform to identify distinct features for each type of fault. To achieve better accuracy and success, the scheme firstly uses these distinct features to train an Artificial Neural Network based algorithm to identify the type of fault on the system. Another Artificial Neural Network based algorithm dedicated to this type of fault then identifies the location of the fault on the feeder or spur. Finally, a series of Artificial Neural Network based algorithms estimate the distance to the point of fault along the feeder or spur. The impact of wind farm connections consisting of doubly-fed induction generators and permanent magnet synchronous generators on the accuracy of the developed algorithms has also been investigated using detailed models of these wind turbine generator types in Simulink. The results obtained showed that the developed scheme allows the accurate location of the short circuit faults in an active distribution network. Further sensitivity tests such as the change in fault inception angle, fault impedance, line length, wind farm capacity, network configuration and white noise confirm the robustness of the novel fault location technique in active distribution networks.
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An artificial neural network model of the Crocodile river system for low flow periodsSebusang, Nako Maiswe 21 January 2009 (has links)
With increasing demands on limited water resources and unavailability of suitable
dam sites, it is essential that available storage works be carefully planned and
efficiently operated to meet the present and future water needs.This research
report presents an attempt to: i) use Artificial Neural Networks (ANN) for the
simulation of the Crocodile water resource system located in the Mpumalanga
province of South Africa and ii) use the model to assess to what extent Kwena
dam, the only major dam in the system could meet the required 0.9m3/s cross
border flow to Mozambique. The modelling was confined to the low flow periods
when the Kwena dam releases are significant.
The form of ANN model developed in this study is the standard error
backpropagation run on a daily time scale. It is comprised of 32 inputs being four
irrigation abstractions at Montrose, Tenbosch, Riverside and Karino; current and
average daily rainfall totals for the previous 4 days at the respective rainfall
stations; average daily temperature at Karino and Nelspruit; daily releases from
Kwena dam; daily streamflow from the tributaries of Kaap, Elands and Sand
rivers and the previous day’s flow at Tenbosch. The single output was the current
day’s flow at Tenbosch. To investigate the extent to which the 0.9m3/s flow
requirement into Mozambique could be met, data from a representative dry year
and four release scenarios were used. The scenarios assumed that Kwena dam was
100%, 75%, 50% and 25% full at the beginning of the year. It was found as
expected that increasing Kwena releases improved the cross border flows but the
improvement in providing the 0.9m3/s cross border flow was minimal. For the
scenario when the dam is initially full, the requirement was met with an
improvement of 11% over the observed flows.
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Secret sharing using artificial neural networkAlkharobi, Talal M. 15 November 2004 (has links)
Secret sharing is a fundamental notion for secure cryptographic design. In a secret sharing scheme, a set of participants shares a secret among them such that only pre-specified subsets of these shares can get together to recover the secret. This dissertation introduces a neural network approach to solve the problem of secret sharing for any given access structure. Other approaches have been used to solve this problem. However, the yet known approaches result in exponential increase in the amount of data that every participant need to keep. This amount is measured by the secret sharing scheme information rate. This work is intended to solve the problem with better information rate.
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