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    Effect of hotspot on THz radiation from Bi2Sr2CaCu2O8 intrinsic josephson junctions

    , Article Applied Physics A: Materials Science and Processing ; Volume 123, Issue 8 , 2017 ; 09478396 (ISSN) Iranmehr, M ; Mohamadian, A ; Faez, R ; Sharif University of Technology
    2017
    Abstract
    We investigate hot spot effects on increasing THz emission of the frequency modes in a square mesa structure with constant hot spot size in different positions, without applying magnetic field. We show that in the presence of hot spot at any position, the average of emitted power intensity level is increased. The frequency modes that the position of their field concentration is more matched with hot spot position are more excited. Accordingly, in the case with hot spot located at center of a-axis or b-axis, frequency modes TM(m,n) with even indices m or n is more excited and in the case in which hot spot is located at the corner of a-axis or b-axis, frequency modes TM(m,n) with odd indices m... 

    Developing a structural-based local learning rule for classification tasks using ionic liquid space-based reservoir

    , Article Neural Computing and Applications ; Volume 34, Issue 17 , 2022 , Pages 15075-15093 ; 09410643 (ISSN) Iranmehr, E ; Shouraki, S. B ; Faraji, M ; Sharif University of Technology
    Springer Science and Business Media Deutschland GmbH  2022
    Abstract
    Coming up with a model which matches biological observations more closely has always been one of the main challenges in the field of artificial neural networks. Lately, an ionic model of reservoir networks containing spiking neurons (ILS-based reservoir network) has been proposed which seems to replicate some of the biological processes we have observed up until now. This paper presents a local learning rule for the ILS-based reservoir inspired by the biological fact that each incoming stimulus causes the formation of new dendritic spines, producing new synapses. This property may result in a higher degree of neuroplasticity, leading to a higher learning capacity. To evaluate the proposed... 

    Nano-Fluid Natural Convection on a Constant Temperature Vertical Plate

    , M.Sc. Thesis Sharif University of Technology Iranmehr, Arash (Author) ; Nouri Boroujerdi, Ali (Supervisor)
    Abstract
    In the present study, Nano-fluid natural convection on a constant temperature vertical plate is numerically investigated, following the similarity analysis of transport equations. After changing the governing differential equations to the ordinary differential equations, they were numerically solved by the fourth order Runge-Kutta method.. The analysis shows that all three main profiles, velocity, temperature and concentration in their specific boundary layers, and the Prandtle number, depend on three important additional dimensionless parameters, namely a Brownian motion parameter, a thermophoresis parameter, and a buoyancy ratio parameter. Finally, it was found that the Nusselt number in... 

    Developing a Model for Learning in Spiking Neural Network Domain based on Unique Processing Operator (with Joint Capability of Spatiotemporal Coding)

    , Ph.D. Dissertation Sharif University of Technology Iranmehr, Ensieh (Author) ; Bagheri Shouraki, Saeed (Supervisor)
    Abstract
    Scientists have discovered by researching the human brain that full knowledge of the functions of the human brain is beyond what they have ever imagined. Much has been learned about the brain and structure of the human nervous system today, but complete structural implementation with the complexity of the human brain is not possible with today's information and technology.One of the biggest struggles while working with artificial neural networks is being able to come up with models which closely match biological observations. Biological neural networks seem to capable of creating and pruning dendritic spines, leading to synapses being changed, which may result in higher learning capability.... 

    Unsupervised feature selection for phoneme sound classification using particle swarm optimization

    , Article 5th Iranian Joint Congress on Fuzzy and Intelligent Systems - 16th Conference on Fuzzy Systems and 14th Conference on Intelligent Systems, CFIS 2017, 7 March 2017 through 9 March 2017 ; 2017 , Pages 86-90 ; 9781509040087 (ISBN) Iranmehr, E ; Bagheri Shourak, S ; Faraji, M. M ; Sharif University of Technology
    2017
    Abstract
    This paper proposes a new method based on Particle Swarm Optimization (PSO) for feature selection in phonemes sound classification. Inspired of biologist's studies, each particle is represented by filterbank which is motivated by human hearing. Thus, we propose a technique in which PSO is used to extract audio features similar to human's ear in order to achieve better classification. We use PSO technique for optimizing particle's filterbank in order to classify sound signals accurately. Then, feature extraction is done by using particle's information. Moreover, a classification method based on nearest neighbor is used. Furthermore, by using a defined fitness function in this paper, the... 

    ILS-based reservoir computing for handwritten digits recognition

    , Article 8th Iranian Joint Congress on Fuzzy and Intelligent Systems, CFIS 2020, 2 September 2020 through 4 September 2020 ; 2020 , Pages 7-12 Iranmehr, E ; Baghri Shouraki, S ; Faraji, M. M ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2020
    Abstract
    ILS-based reservoir is a bio-inspired computational model consisting of spiking neurons which has been designed to process spatiotemporal patterns appropriately. In ILS-based reservoir, the neurons are located in an ionic environment and the connections are provided by ionic density. By using ionic diffusion as a processing operation, this model is able to consider the effects of both the preceding and current stimuli properly. Since character recognition is an important task in various applications, this paper focuses on the classification of handwritten digits using ILS-based reservoir. For this purpose, a neuromorphic handwritten digit dataset called N-MNIST dataset is used as a... 

    Fuzzy based algorithm for acoustic source localization using array of microphones

    , Article 2017 25th Iranian Conference on Electrical Engineering, ICEE 2017, 2 May 2017 through 4 May 2017 ; 2017 , Pages 2102-2105 ; 9781509059638 (ISBN) Faraji, M. M ; Bagheri Shouraki, S ; Iranmehr, E ; Sharif University of Technology
    2017
    Abstract
    This paper focuses on localizing acoustic source using fuzzy logic. For this purpose, an array of microphones are used as sensors. The Time Delay Estimation (TDE) is performed by correlation between received signals from each pair of microphones. In this paper, instead of assuming a crisp value as a TDOA, we introduce fuzzy number of TDOA in which the absolute value of the cross correlation function is normalized and then assumed as TDOA membership function for each pair of microphones. Truth value of presenting acoustic source is computed in region of interest based on achieved TDOA membership functions. Computing this truth value is represented in this paper based on fuzzy logic. The... 

    A fusion-based gender recognition method using facial images

    , Article 26th Iranian Conference on Electrical Engineering, ICEE 2018, 8 May 2018 through 10 May 2018 ; 2018 , Pages 1493-1498 ; 9781538649169 (ISBN) Ghojogh, B ; Bagheri Shouraki, S ; Mohammadzade, H ; Iranmehr, E ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2018
    Abstract
    This paper proposes a fusion-based gender recognition method which uses facial images as input. Firstly, this paper utilizes pre-processing and a landmark detection method in order to find the important landmarks of faces. Thereafter, four different frameworks are proposed which are inspired by state-of-the-art gender recognition systems. The first framework extracts features using Local Binary Pattern (LBP) and Principal Component Analysis (PCA) and uses back propagation neural network. The second framework uses Gabor filters, PCA, and kernel Support Vector Machine (SVM). The third framework uses lower part of faces as input and classifies them using kernel SVM. The fourth framework uses... 

    The Removal of CO2 from Flue Gas by Using MOF/Graphene Hybrid Adsorbents

    , M.Sc. Thesis Sharif University of Technology Pourebrahimi, Sina (Author) ; Kazemeini, Mohammad (Supervisor) ; Ganji, Ensieh (Supervisor) ; Bozorgzadeh, Hamid Reza ($item.subfieldsMap.e)
    Abstract
    Due to the increase in greenhouse gases in earth’s atmosphere in recent years and its devastating environmental outcomes, there has been an increase in research trying to reduce these gases especially CO2. Flue gas is one of the most important sources of CO2 emission. Among the many techniques of removal, capturing and CO2 separation from flue gas, physical adsorption by a solid adsorbent is considered as a suitable and economic option. Among the solid adsorbent that are used for adsorption of CO2, Metal-Organic frameworks have many interesting features such as high specific surface area and high internal free volume. Among the Metal-Organic frameworks, MIL-53 (Al) and MIL-101 (Cr) are two... 

    Sound source localization in wide-range outdoor environment using distributed sensor network

    , Article IEEE Sensors Journal ; Volume 20, Issue 4 , 2020 , Pages 2234-2246 Faraji, M. M ; Shouraki, S. B ; Iranmehr, E ; Linares Barranco, B ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2020
    Abstract
    Sound source localization has always been one of the most challenging subjects in different fields of engineering, one of the most important of which being tracking of flying objects. This article focuses on sound source localization using fuzzy fusion and a beamforming method. It proposes a new fuzzy-based algorithm for localizing a sound source using distributed sensor nodes. Eight low-cost sensor nodes have been constructed in this study each of which consists of a microphone array to capture sound waves. Each node is able to record audio signals synchronously on an SD card to evaluate different algorithms offline. However, the sensor nodes are designed to be able to estimate the location... 

    Enhancement of THz Radiation from Josephson Junctions in Superconductors Using Electromagnetic Resonators

    , M.Sc. Thesis Sharif University of Technology Iranmehr, Masoud (Author) ; Ahmadi Boroujeni, Mehdi (Supervisor) ; Fardmanesh, Mehdi (Supervisor)
    Abstract
    Terahertz waves which includes frequencies between 100 GHz to 10 THz of electromagnetic spectrum have found many applications in science, medical treatments and industry. One of the recent methods to produce these waves is using nonlinear properties of superconductors based on Josephson junctions which inherently appear in some superconductors called BSCCO. Stack of intrinsic junctions of these superconducting materials can radiate terahertz waves by only applying a DC voltage across them. This Thesis investigates some of these structures based on Josephson junctions to produce coherent radiation of terahertz waves. For the optimization of the radiation power, this study also investigates... 

    Performance Evaluation and Investigation of Nano-Ceramic Membrane in order to Purification of Hydrogen in Laboratory Scale

    , M.Sc. Thesis Sharif University of Technology heidari, Marziye (Author) ; Sayf Kordi, Ali Akbar (Supervisor) ; Zamanian, Akbar (Supervisor) ; Ganji Babakhani, Ensieh (Co-Advisor)
    Abstract
    Purification of hydrogen, as a clean source of energy has attracted great deal of attention in recent years. Among all available H2 separation methods, membrane technology has been known as the most appropriate way to produce hydrogen with high purity. In this study, we have tried to synthesis and evaluate the performance of perovskite ceramic membranes. The aim of preparing this type of membranes is to use them in separation processes in order to achieve H2 with high purity of >99%. First, general concepts about membranes are discussed. Then synthesis, recognition and performance evaluation of some perovskite membranes are presented. To prepare membranes, ceramic powders are synthesized by... 

    Bio-inspired evolutionary model of spiking neural networks in ionic liquid space

    , Article Frontiers in Neuroscience ; Volume 13 , 2019 ; 16624548 (ISSN) Iranmehr, E ; Bagheri Shouraki, S ; Faraji, M. M ; Bagheri, N ; Linares Barranco, B ; Sharif University of Technology
    Frontiers Media S.A  2019
    Abstract
    One of the biggest struggles while working with artificial neural networks is being able to come up with models which closely match biological observations. Biological neural networks seem to capable of creating and pruning dendritic spines, leading to synapses being changed, which results in higher learning capability. The latter forms the basis of the present study in which a new ionic model for reservoir-like networks, consisting of spiking neurons, is introduced. High plasticity of this model makes learning possible with a fewer number of neurons. In order to study the effect of the applied stimulus in an ionic liquid space through time, a diffusion operator is used which somehow...