25,656 research outputs found
An Evolutionary Approach to the Design of Controllable Cellular Automata Structure for Random Number Generation
Cellular Automata (CA) has been used in pseudorandom number generation over a decade. Recent studies show that two-dimensional (2-d) CA Pseudorandom Number Generators (PRNGs) may generate better random sequences than conventional one-dimensional (1-d) CA PRNGs, but they are more complex to implement in hardware than 1-d CA PRNGs. In this paper, we propose a new class of 1-d CA Controllable Cellular Automata (CCA) without much deviation from the structure simplicity of conventional 1-d CA. We give a general definition of CCA first and then introduce two types of CCA – CCA0 and CCA2. Our initial study on them shows that these two CCA PRNGs have better randomness quality than conventional 1-d CA PRNGs but their randomness is affected by their structures. To find good CCA0/CCA2 structures for pseudorandom number generation, we evolve them using the Evolutionary Multi-Objective Optimization (EMOO) techniques. Three different algorithms are presented in this paper. One makes use of an aggregation function; the other two are based on the Vector Evaluated Genetic Algorithm (VEGA). Evolution results show that these three algorithms all perform well. Applying a set of randomness tests on the evolved CCA PRNGs, we demonstrate that their randomness is better than that of 1-d CA PRNGs and can be comparable to that of two-dimensional CA PRNGs
Incremental evolution of cellular automata for random number generation
Cellular automata (CA) have been used in pseudorandom number generation for over a decade. Recent studies show that controllable CA (CCA) can generate better random sequences than conventional one-dimensional (1-d) CA and compete with two-dimensional (2-d) CA. Yet the structural complexity of CCA is higher than that of 1-d PCA. It would be good if CCA can attain good randomness quality with the least structural complexity. In this paper, we evolve PCA/CCA to their lowest complexity level using genetic algorithms (GAs). Meanwhile, the randomness quality and output efficiency of PCA/CCA are also evolved. The evolution process involves two algorithms a multi-objective genetic algorithm (MOGA) and an algorithm for incremental evolution. A set of PCA/CCA are evolved and compared in randomness, complexity, and efficiency. The results show that without any spacing, CCA could generate good random number sequences that could pass DIEHARD. And, to obtain the same randomness quality, the structural complexity of CCA is not higher than that of 1-d CA. Furthermore, the methodology developed could be used to evolve other CA or serve as a yardstick to compare different types of CA
Permutation and sampling with maximum length CA for pseudorandom number generation
In this paper, we study the effect of dynamic permutation and sampling on the randomness quality of sequences generated by cellular automata (CA). Dynamic permutation and sampling have not been explored in previous CA work and a suitable implementation is shown using a two CA model. Three different schemes that incorporate these two operations are suggested - Weighted Permutation Vector Sampling with Controlled Multiplexing, Weighted Permutation Vector Sampling with Irregular Decimation and Permutation Programmed CA Sampling. The experiment results show that the resulting sequences have varying degrees of improvement in DIEHARD results and linear complexity compared to the CA
Two problems related to prescribed curvature measures
Existence of convex body with prescribed generalized curvature measures is
discussed, this result is obtained by making use of Guan-Li-Li's innovative
techniques. In surprise, that methods has also brought us to promote
Ivochkina's estimates for prescribed curvature equation in \cite{I1, I}.Comment: 12 pages, Corrected typo
An Adaptive Neuro-Fuzzy Inference System Based Approach to Real Estate Property Assessment
This paper describes a first effort to design and implement an adaptive neuro-fuzzy inference system based approach to estimate prices for residential properties. The data set consists of historic sales of homes in a market in Midwest USA and it contains parameters describing typical residential property features and the actual sale price. The study explores the use of fuzzy inference systems to assess real estate property values and the use of neural networks in creating and fine tuning the fuzzy rules used in the fuzzy inference system. The results are compared with those obtained using a traditional multiple regression model. The paper also describes possible future research in this area.
Electrical neurostimulation for chronic pain: on selective relay of sensory neural activities in myelinated nerve fibers
Chronic pain affects about 100 million adults in the US. Despite their great
need, neuropharmacology and neurostimulation therapies for chronic pain have
been associated with suboptimal efficacy and limited long-term success, as
their mechanisms of action are unclear. Yet current computational models of
pain transmission suffer from several limitations. In particular, dorsal column
models do not include the fundamental underlying sensory activity traveling in
these nerve fibers. We developed a (simple) simulation test bed of electrical
neurostimulation of myelinated nerve fibers with underlying sensory activity.
This paper reports our findings so far. Interactions between stimulation-evoked
and underlying activities are mainly due to collisions of action potentials and
losses of excitability due to the refractory period following an action
potential. In addition, intuitively, the reliability of sensory activity
decreases as the stimulation frequency increases. This first step opens the
door to a better understanding of pain transmission and its modulation by
neurostimulation therapies
Recent developments in the dynamical and unitary isobar models for pion electromagnetic production
gamma N->Delta transition form factors and threshold pi^0 photo- and
electroproduction are studied with the new version of MAID and a dynamical
model. By re-analyzing the recent Jlab data on p(e,e'p) pi^0 at Q^2 = 2.8 and
4.0 (GeV/c)^2, we find that the hadronic helicity conservation is not yet
observed in this region of Q^2. The extracted R_{EM}, starting from a small and
negative value at the real photon point, actually exhibits a clear tendency to
cross zero and change sign as Q^2 increases, while the absolute value of R_{SM}
is strongly increasing. Our analysis indicates that A_{1/2} and S_{1/2}, but
not A_{3/2}, starts exhibiting the pQCD scaling behavior at about Q^2 = 2.5
(GeV/c)^2. For the pi^0 photo- and electroproduction near threshold, results
obtained within the dynamical model with the use of a meson-exchange pi N model
for the final state interaction are in as good agreement with the data as ChPT.Comment: 9 pages, 5 figures, talk given at the NSTAR2001 Workshop, Mainz,
Germany, March 7-10, 200
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