„State Machine“
Suchergebnisse
3.441 Treffer
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An ab initio modelling for pristine and defect-induced emissions from NaCe(WO4)2: a potential material for solid-state lighting application
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Structural and photoluminescence properties of europium (III)-activated lithium meta-silicate phosphors for solid-state lighting
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State of Aging Classification of Modified-HP Steel Tubes by Eddy Current Test Applying Machine Learning
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Use of time-resolved excited state spectroscopy for selection of laser dyes
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Study of non-radiative silicon deexcitation in an oxygen atmosphere using the differential measurement of the excited state lifetimes
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Surface enhanced covalency and its effect on the surface states ofd-band metal oxides
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Influence of collisional coupling on the energy extraction from theB, C, andD state in KrF
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An extension of a procedure to prove statements in differential geometry
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Influence of the inversion depletion in the active medium on the evolution of ultrashort pulses in passively mode-locked solid-state lasers
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Excited state absorption of 1,3,3,1′,3′,3′-hexamethylindotricarbocyanine Iodide: A quantitative study by ultrafast absorption spectroscopy
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Optical spectroscopy of electronic surface states
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Photoelectric spectroscopy of oxide states with MOS structures atT=79 K
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Another method of deconvoluting positron annihilation spectra obtained by the solid-state detector
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Overview of shaft voltage and bearing current mitigation methods applied on the victim machine
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Optimal design of renewable energy based hybrid system considering weather forecasting using machine learning techniques
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Finite state machine synthesis with embedded test function
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A Novel Data‐Driven Approach to Lithium‐ion Battery Dynamic Charge State Capture for New Energy Electric Vehicles
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Mechanika – the Contemporary Arts Center, Cincinnati, Ohio, May 24-July 13, 1991
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A Systematic Review of Waste Management Solutions Using Machine Learning, Internet of Things and Blockchain Technologies: State-of-Art, Methodologies, and Challenges
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Prediction of electrical power consumption in the household: fresh evidence from machine learning approach