15 resultados para Second-order nonlinearity

em Bulgarian Digital Mathematics Library at IMI-BAS


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Some oscillation criteria for solutions of a general perturbed second order ordinary differential equation with damping (r(t)x′ (t))′ + h(t)f (x)x′ (t) + ψ(t, x) = H(t, x(t), x′ (t)) with alternating coefficients are given. The results obtained improve and extend some existing results in the literature.

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Oscillation criteria are given for the second order sublinear non-autonomous differential equation. (r(t) (x)x′(t))′ + q(t)g(x(t)) = (t). These criteria extends and improves earlier oscillation criteria of Kamenev, Kura, Philos and Wong. Oscillation criteria are also given for second order sublinear damped non-autonomous differential equations.

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In this paper, we are concerned with the optimal control boundary control of a second order parabolic heat equation. Using the results in [Evtushenko, 1997] and spatial central finite difference with diagonally implicit Runge-Kutta method (DIRK) is applied to solve the parabolic heat equation. The conjugate gradient method (CGM) is applied to solve the distributed control problem. Numerical results are reported.

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Architecture and learning algorithm of self-learning spiking neural network in fuzzy clustering task are outlined. Fuzzy receptive neurons for pulse-position transformation of input data are considered. It is proposed to treat a spiking neural network in terms of classical automatic control theory apparatus based on the Laplace transform. It is shown that synapse functioning can be easily modeled by a second order damped response unit. Spiking neuron soma is presented as a threshold detection unit. Thus, the proposed fuzzy spiking neural network is an analog-digital nonlinear pulse-position dynamic system. It is demonstrated how fuzzy probabilistic and possibilistic clustering approaches can be implemented on the base of the presented spiking neural network.

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2000 Mathematics Subject Classification: Primary 90C29; Secondary 90C30.

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AMS subject classification: 49J52, 90C30.

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2010 Mathematics Subject Classification: Primary 35J70; Secondary 35J15, 35D05.

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2000 Mathematics Subject Classification: 62G32, 62G20.

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2002 Mathematics Subject Classification: 35J15, 35J25, 35B05, 35B50

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2000 Mathematics Subject Classification: 35J70, 35P15.

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2000 Mathematics Subject Classification: 34C10, 34C15.

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2000 Mathematics Subject Classification: 34C10, 34C15.

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2000 Mathematics Subject Classification: 39A10.

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Mathematics Subject Class.: 33C10,33D60,26D15,33D05,33D15,33D90

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AMS subject classification: Primary 34A60, Secondary 49K24.