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    Noncoherent weighted detection for time reversal UWB systems: Energy and kurtosis detectors

    , Article International Journal on Communications Antenna and Propagation ; Volume 1, Issue 2 , 2011 , Pages 174-181 ; 20395086 (ISSN) Vakili, V. T ; Moghaddam, S. S ; Mohebbi, A ; Abbasi Moghadam, D ; Sharif University of Technology
    Praise Worthy Prize S.r.l 
    Abstract
    Time reversal is a technique in which a signal is pre-filtered such that it focuses both in time and space. Spatial focusing reduces interference to other co-existing systems and temporal focusing concentrates the received power in a very short interval. Energy detector is a practical receiver for ultra-wideband (UWB) time reversed signals due to its low-complexity and low-cost implementation. However, selection of an optimum integration interval to minimize the bit error rate is a major problem. Weighted energy detection is an effective technique to overcome this problem and enhance the performance of energy detectors. However, this improvement is achieved at the expense of non-trivial... 

    Estimating parameters of the three-parameter Weibull distribution using a neural network

    , Article European Journal of Industrial Engineering ; Volume 2, Issue 4 , 2008 , Pages 428-445 ; 17515254 (ISSN) Abbasi, B ; Rabelo, L ; Hosseinkouchack, M ; Sharif University of Technology
    Inderscience Publishers  2008
    Abstract
    Weibull distributions play an important role in reliability studies and have many applications in engineering. It normally appears in the statistical scripts as having two parameters, making it easy to estimate its parameters. However, once you go beyond the two parameter distribution, things become complicated. For example, estimating the parameters of a three-parameter Weibull distribution has historically been a complicated and sometimes contentious line of research since classical estimation procedures such as Maximum Likelihood Estimation (MLE) have become almost too complicated to implement. In this paper, we will discuss an approach that takes advantage of Artificial Neural Networks... 

    An improved algorithm for heart Rate tracking during physical exercise using simultaneous wrist-type photoplethysmographic (PPG) and acceleration signals

    , Article 2016 23rd Iranian Conference on Biomedical Engineering and 2016 1st International Iranian Conference on Biomedical Engineering, ICBME 2016, 23 November 2016 through 25 November 2016 ; 2017 , Pages 146-149 ; 9781509034529 (ISBN) Boloursaz Mashhadi, M ; Essalat, M ; Ahmadi, M ; Marvasti, F ; Sharif University of Technology
    Abstract
    Causal Heart Rate (HR) monitoring using photoplethysmographic (PPG) signals recorded from wrist during physical exercise is a challenging task because the PPG signals in this scenario are highly contaminated by artifacts caused by hand movements of the subject. This paper proposes a novel algorithm for this problem, which consists of two main blocks of Noise Suppression and Peak Selection. The Noise Suppression block removes Motion Artifacts (MAs) from the PPG signals utilizing simultaneously recorded 3D acceleration data. The Peak Selection block applies some decision mechanisms to correctly select the spectral peak corresponding to HR in PPG spectra. Experimental results on benchmark... 

    Estimation of flow rates of individual phases in an oil-gas-water multiphase flow system using neural network approach and pressure signal analysis

    , Article Flow Measurement and Instrumentation ; Volume 66 , 2019 , Pages 28-36 ; 09555986 (ISSN) Bahrami, B ; Mohsenpour, S ; Shamshiri Noghabi, H. R ; Hemmati, N ; Tabzar, A ; Sharif University of Technology
    Elsevier Ltd  2019
    Abstract
    Up until now, different methods, including; flow pressure signal, ultrasonic, gamma-ray and combination of them with the neural network approach have been proposed for multiphase flow measurement. More sophisticated techniques such as ultrasonic waves and electricity, as well as high-cost procedures such as gamma waves gradually, can be replaced by simple methods. In this research, only flow parameters such as temperature, viscosity, pressure signals, standard deviation and coefficients of kurtosis and skewness are used as inputs of an artificial neural network to determine the three phase flow rates. The model is validated by the field data which were obtained from separators of two oil...