Results 21 to 30 of about 271,040 (153)

Real-Time System Identification Using Deep Learning for Linear Processes With Application to Unmanned Aerial Vehicles

open access: yesIEEE Access, 2020
System identification is a key discipline within the field of automation that deals with inferring mathematical models of dynamic systems based on input-output measurements.
Abdulla Ayyad   +3 more
doaj   +1 more source

Weighted change-point method for detecting differential gene expression in breast cancer microarray data. [PDF]

open access: yesPLoS ONE, 2012
In previous work, we proposed a method for detecting differential gene expression based on change-point of expression profile. This non-parametric change-point method gave promising result in both simulation study and public dataset experiment.
Yao Wang   +4 more
doaj   +1 more source

Quantifying Dynamic Regulation in Metabolic Pathways with Nonparametric Flux Inference [PDF]

open access: yes, 2019
One of the central tasks in systems biology is to understand how cells regulate their metabolism. Hierarchical regulation analysis is a powerful tool to study this regulation at the metabolic, gene-expression, and signaling levels.
He, Fei, Stumpf, Michael P H
core   +1 more source

Kinetically modified parametric instabilities of circularly-polarized Alfven waves: Ion kinetic effects [PDF]

open access: yes, 2006
Parametric instabilities of parallel propagating, circularly polarized finite amplitude Alfven waves in a uniform background plasma is studied, within a framework of one-dimensional Vlasov description for ions and massless electron fluid, so that kinetic
Hada, Tohru, Nariyuki, Yasuhiro
core   +2 more sources

A Practical Type Analysis for Verification of Modular Prolog Programs [PDF]

open access: yes, 2008
Regular types are a powerful tool for computing very precise descriptive types for logic programs. However, in the context of real life, modular Prolog programs, the accurate results obtained by regular types often come at the price of efficiency.
Correas Fernandez, Jesús   +3 more
core   +3 more sources

Parametric Design and System Development of Different Types of Rollers Globoidal Cam Deceleration Mechanism

open access: yesJixie chuandong, 2023
In order to improve the design efficiency of different types of rollers globoidal cam deceleration mechanism and standardize the design system, a parametric design method based on NX secondary development is proposed, and the design system is developed ...
Chen Ruyun   +4 more
doaj  

Information hiding through variance of the parametric orientation underlying a B-rep face [PDF]

open access: yes, 2008
Watermarking technologies have been proposed for many different,types of digital media. However, to this date, no viable watermarking techniques have yet emerged for the high value B-rep (i.e.
Corney, Jonathan   +2 more
core   +1 more source

A New Modification of Modified Weibull Distribution for Modeling Engineering Data

open access: yesMathematics
This study investigates a novel modification for a modified Weibull distribution called the new modification of modified Weibull distribution. Some distributions related to the NMMWD are given.
Asmaa S. Al-Moisheer   +2 more
doaj   +1 more source

Fuzzy reliability‐redundancy allocation problem of the overspeed protection system

open access: yesEngineering Reports, 2020
System reliability is defined as the probability of satisfactory performance of a system under stated conditions for a specified period of time. According to this definition, four parameters, including probability, satisfactory performance, specific ...
Sajjad Taghiyeh   +3 more
doaj   +1 more source

Field data-based mathematical modeling by Bode equations and vector fitting algorithm for renewable energy applications. [PDF]

open access: yesPLoS ONE, 2018
The power system always has several variations in its profile due to random load changes or environmental effects such as device switching effects when generating further transients.
A H Sabry   +4 more
doaj   +1 more source

Home - About - Disclaimer - Privacy