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    Prediction of shear strength parameters of hydrocarbon contaminated sand based on machine learning methods

    , Article Georisk ; 2020 Rezaee, M ; Mojtahedi, S. F. F ; Taherabadi, E ; Soleymani, K ; Pejman, M ; Sharif University of Technology
    Taylor and Francis Ltd  2020
    Abstract
    The objective of this paper is to predict the effect of hydrocarbon contamination on the shear strength parameters of sand by using various machine learning platforms. Multilayer perceptron, support vector machine, random forest, gradient boosting method, and multi-output support vector machine were methods used to predict the hydrocarbon contamination impacts on the internal friction angle and cohesion of contaminated sand. Random forest exhibited the best results for cohesion, whereas, for the friction angle, the gradient boosting method outperformed other approaches. Moreover, the multi-output support vector machine yielded better results than those pertaining to a single support vector... 

    Short term load forecasting of Iran national power system using artificial neural network

    , Article 2001 IEEE Porto Power Tech Conference, Porto, 10 September 2001 through 13 September 2001 ; Volume 3 , 2001 , Pages 361-365 ; 0780371399 (ISBN); 9780780371392 (ISBN) Barghinia, S ; Ansarimehr, P ; Habibi, H ; Vafadar, N ; Sharif University of Technology
    2001
    Abstract
    One of the most important requirements for the operation and planning activities of an electrical utility is the prediction of load for the next hour to several days out, known as short term load forecasting (STLF). This paper presents STLF of Iran national power system (INPS) using artificial neural network (ANN). The developed program is based on a four-layered perceptron ANN building block. The optimum inputs were selected for the ANN considering historical data of the INPS. Instead of conventional back propagation (BP) methods, Levenberg-Marquardt BP (LMBP) method has been used for the ANN training to increase the speed of convergence. A data analyzer and a temperature forecaster are... 

    Deep Learning for Speech Recognition

    , M.Sc. Thesis Sharif University of Technology Azadi Yazdi, Saman (Author) ; Sameti, Hossein (Supervisor)
    Abstract
    Speech recognition is one of the first goals of speech processing. Our goal in this thesis is to use deep learning for speech recognition. In recent years little improvement of speech recognition accuracies are reported. Deep learning is a new learning algorithm that results in improvement in many machine learning tasks. Following improvements reported in speech recognition in English language by deep learning, in this thesis we tried to improve accuracy over common and new recognition methods for Persian language.
    First the overall structure of a typical speech recognition system is introduced. For this purpose, the modules of a speech recognition system are introduced. Deep multilayer... 

    Application of multilayer perceptron network for unsteady three dimensional aerodynamic load prediction

    , Article 25th AIAA Applied Aerodynamics Conference, 2007, Miami, FL, 25 June 2007 through 28 June 2007 ; Volume 2 , 2007 , Pages 1197-1202 ; 10485953 (ISSN) ; 1563478986 (ISBN); 9781563478987 (ISBN) Gholamrezaei, M ; Soltani, M. R ; Ghorbanian, K ; Amiralaei, M. R ; Sharif University of Technology
    2007
    Abstract
    Surface pressure measurements were conducted for a pitch oscillation wing in a subsonic closed circuit wind tunnel. Experimental results have been used to train a multilayer perceptron network to foresee the effect of modification of oscillation amplitude and reduced frequency. Consistent results are obtained both for the training data as well as generalization to other amplitudes and reduced frequencies. This work indicates that artificial neural networks can reliably predict aerodynamic coefficients and forecast the effects of oscillation amplitude as well as reduced frequency on the wind turbine blade performance. Moreover, this study introduces a new tool for the designers to have enough... 

    Application of neural networks and state space averaging to a DC/DC PWM converter in sliding mode operation

    , Article IECON Proceedings (Industrial Electronics Conference) ; Volume 1 , 2000 , Pages 172-177 Mahdavi, J ; Nasiri, M. R ; Agah, A ; Sharif University of Technology
    IEEE Computer Society  2000
    Abstract
    A novel output feedback neural controller is presented for the implementation of sliding mode control of DC/DC converters. The controller, which consists of a multilayer perceptron, has been trained so as to be robust for large variations of system parameters and state variables. Fast dynamic behavior is the other main advantage of the proposed controller, which allows realization of all the beneficial features of sliding mode control technique. Other advantages of the controller are simplicity and low cost. Computer simulations are carried out to investigate the effectiveness of the controller in voltage regulation for a relatively complex topology such as a Cuk converter. Simulation... 

    Speech Activity Detection Using Deep Networks

    , M.Sc. Thesis Sharif University of Technology Shahsavari, Sajad (Author) ; Sameti, Hossein (Supervisor)
    Abstract
    In this paper, we introduce a new dataset for SAD and evaluate certain common methods such as GMM, ANN, and RNN on it. We have collected our dataset in a semi-supervised approach, using subtitled movies, with a labeling accuracy of 95%. This semi-automatic method can help us collect huge amounts of labeled audio data with very high diversity in language, speaker, and channel. We model the problem of SAD as a classification task to two classes of speech and non-speech. When using GMM for this problem, we use two separate mixtures to model speech and non-speech. In the case of neural networks, we use a softmax layer at the end of the network, with two neurons which represent speech and... 

    Performance Evaluation and Improvement of Duplicate Question Detection in Developers’ Online Q&A Community

    , M.Sc. Thesis Sharif University of Technology Daliri, Majid (Author) ; Habibi, Jafar (Supervisor)
    Abstract
    In this research, we study one of the challenges in the field of software engineering, namely the detection of diplicate questions in Stackoverflow, the Q&A community of programmers. The works done in this area has problems such as complexity and reduced performance over time. The proposed solution is based on machine learning and modern representation learning methods. Representation is done with two approaches, domain specific learning and transfer learning. Fasttext and GloVe, the two word embeddings used in domain specific learning, and in transfer learning, the embedding of the universal sentence encoder has been used. Support vector machine and multilayer perceptron used as... 

    Acoustic simulation of ultrasonic testing and neural network used for diameter prediction of three-sheet spot welded joints

    , Article Journal of Manufacturing Processes ; Volume 64 , 2021 , Pages 1507-1516 ; 15266125 (ISSN) Ghafarallahi, E ; Farrahi, G. H ; Amiri, N ; Sharif University of Technology
    Elsevier Ltd  2021
    Abstract
    Ultrasonic Testing (UT) is one of the most common types of nondestructive methods that is being used in various industries, especially in the automotive industry. In this paper, qualitative and quantitative control of resistance spot welds on three-sheet joints was studied. Initially, mathematical model of ultrasonic waves was extracted for triple sheet joints. Then, acoustic simulation of ultrasonic testing on spot welds was performed using Finite Element Method (FEM). Afterwards, A Multilayer Perceptron (MLP) neural network was used to classify spot welds based on their diameter. There was a mean error of 20.9 % between peak amplitudes of numerical and theoretical models which the most... 

    A combined wavelet transform and recurrent neural networks scheme for identification of hydrocarbon reservoir systems from well testing signals

    , Article Journal of Energy Resources Technology, Transactions of the ASME ; Volume 143, Issue 1 , 2021 ; 01950738 (ISSN) Moghimihanjani, M ; Vaferi, B ; Sharif University of Technology
    American Society of Mechanical Engineers (ASME)  2021
    Abstract
    Oil and gas are likely the most important sources for producing heat and energy in both domestic and industrial applications. Hydrocarbon reservoirs that contain these fuels are required to be characterized to exploit the maximum amount of their fluids. Well testing analysis is a valuable tool for the characterization of hydrocarbon reservoirs. Handling and analysis of long-term and noise-contaminated well testing signals using the traditional methods is a challenging task. Therefore, in this study, a novel paradigm that combines wavelet transform (WT) and recurrent neural networks (RNN) is proposed for analyzing the long-term well testing signals. The WT not only reduces the dimension of... 

    Earthquake vulnerability assessment for urban areas using an ann and hybrid swot-qspm model

    , Article Remote Sensing ; Volume 13, Issue 22 , 2021 ; 20724292 (ISSN) Alizadeh, M ; Zabihi, H ; Rezaie, F ; Asadzadeh, A ; Wolf, I. D ; Langat, P. K ; Khosravi, I ; Beiranvand Pour, A ; Mohammad Nataj, M ; Pradhan, B ; Sharif University of Technology
    MDPI  2021
    Abstract
    Tabriz city in NW Iran is a seismic-prone province with recurring devastating earthquakes that have resulted in heavy casualties and damages. This research developed a new computational framework to investigate four main dimensions of vulnerability (environmental, social, economic and physical). An Artificial Neural Network (ANN) Model and a SWOT-Quantitative Strategic Planning Matrix (QSPM) were applied. Firstly, a literature review was performed to explore indicators with significant impact on aforementioned dimensions of vulnerability to earthquakes. Next, the twenty identified indicators were analyzed in ArcGIS, a geographic information system (GIS) software, to map earthquake... 

    Earthquake vulnerability assessment for urban areas using an ann and hybrid swot-qspm model

    , Article Remote Sensing ; Volume 13, Issue 22 , 2021 ; 20724292 (ISSN) Alizadeh, M ; Zabihi, H ; Rezaie, F ; Asadzadeh, A ; Wolf, I. D ; Langat, P. K ; Khosravi, I ; Beiranvand Pour, A ; Nataj, M. M ; Pradhan, B ; Sharif University of Technology
    MDPI  2021
    Abstract
    Tabriz city in NW Iran is a seismic-prone province with recurring devastating earthquakes that have resulted in heavy casualties and damages. This research developed a new computational framework to investigate four main dimensions of vulnerability (environmental, social, economic and physical). An Artificial Neural Network (ANN) Model and a SWOT-Quantitative Strategic Planning Matrix (QSPM) were applied. Firstly, a literature review was performed to explore indicators with significant impact on aforementioned dimensions of vulnerability to earthquakes. Next, the twenty identified indicators were analyzed in ArcGIS, a geographic information system (GIS) software, to map earthquake... 

    EEG artifact removal using sub-space decomposition, nonlinear dynamics, stationary wavelet transform and machine learning algorithms

    , Article Frontiers in Physiology ; Volume 13 , 2022 ; 1664042X (ISSN) Zangeneh Soroush, M ; Tahvilian, P ; Nasirpour, M. H ; Maghooli, K ; Sadeghniiat Haghighi, K ; Vahid Harandi, S ; Abdollahi, Z ; Ghazizadeh, A ; Jafarnia Dabanloo, N ; Sharif University of Technology
    Frontiers Media S.A  2022
    Abstract
    Blind source separation (BSS) methods have received a great deal of attention in electroencephalogram (EEG) artifact elimination as they are routine and standard signal processing tools to remove artifacts and reserve desired neural information. On the other hand, a classifier should follow BSS methods to automatically identify artifactual sources and remove them in the following steps. In addition, removing all detected artifactual components leads to loss of information since some desired information related to neural activity leaks to these sources. So, an approach should be employed to detect and suppress the artifacts and reserve neural activity. This study introduces a novel method... 

    Multi-head relu implicit neural representation networks

    , Article 47th IEEE International Conference on Acoustics, Speech, and Signal Processing, ICASSP 2022, 23 May 2022 through 27 May 2022 ; Volume 2022-May , 2022 , Pages 2510-2514 ; 15206149 (ISSN); 9781665405409 (ISBN) Aftab, A ; Morsali, A ; Ghaemmaghami, S ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2022
    Abstract
    In this paper, a novel multi-head multi-layer perceptron (MLP) structure is presented for implicit neural representation (INR). Since conventional rectified linear unit (ReLU) networks are shown to exhibit spectral bias towards learning low-frequency features of the signal, we aim at mitigating this defect by taking advantage of local structure of the signals. To be more specific, an MLP is used to capture the global features of the underlying generator function of the desired signal. Then, several heads are utilized to reconstruct disjoint local features of the signal, and to reduce the computational complexity, sparse layers are deployed for attaching heads to the body. Through various... 

    The prediction of permeability using an artificial neural network system

    , Article Petroleum Science and Technology ; Volume 30, Issue 20 , 2012 , Pages 2108-2113 ; 10916466 (ISSN) Pazuki, G. R ; Nikookar, M ; Dehnavi, M ; Al Anazi, B ; Sharif University of Technology
    2012
    Abstract
    The authors studied the efficiency and accuracy of neural network model for prediction of permeability as a key parameter in reservoir characterization. So, some multilayer perceptron (MLP) neural network models with different learning algorithms of Levenberg-Margnardt, back propagation, improved back propagation (IBP), and quick propagation with three layers and different node numbers (3, 4, 5, 6, 7) in the middle layer have been presented. These models have been obtained by 630 permeability data from one of offshore reservoirs located in Saudi Arabia. The accuracy of models was studied by comparing the obtained results of each model with experimental data. So, the neural network with IBP... 

    Bayesian regularization of multilayer perceptron neural network for estimation of mass attenuation coefficient of gamma radiation in comparison with different supervised model-free methods

    , Article Journal of Instrumentation ; Volume 15, Issue 11 , November , 2020 Moshkbar Bakhshayesh, K ; Sharif University of Technology
    IOP Publishing Ltd  2020
    Abstract
    Multilayer perceptron (MLP) neural networks have been used extensively for estimation/regression of parameters. Moreover, recent studies have shown that learning algorithms of MLP which are based on Gaussian function are more accurate. In this paper, the mass attenuation coefficient (MAC) of gamma radiation for light-weight materials (e.g. O-8), mid-weight materials (e.g. Al-13), and heavy-weight materials (e.g. Pb-82) is modelled using Gaussian function based regularization of MLP (i.e. Bayesian regularization (BR)) and by a modular estimator. The results are compared with the Reference results. To show better performance of the utilized algorithm, the results of the different supervised... 

    Development of a new features selection algorithm for estimation of NPPs operating parameters

    , Article Annals of Nuclear Energy ; Volume 146 , October , 2020 Moshkbar Bakhshayesh, K ; Ghanbari, M ; Ghofrani, M. B ; Sharif University of Technology
    Elsevier Ltd  2020
    Abstract
    One of the most important challenges in target parameters estimation via model-free methods is selection of the most effective input parameters namely features selection (FS). Indeed, irrelevant features can degrade the estimation performance. In the current study, the challenge of choosing among the several plant parameters is tackled by means of the innovative FS algorithm named ranking of features with minimum deviation from the target parameter (RFMD). The selected features accompanied with the stable and the fast learning algorithm of multilayer perceptron (MLP) neural network (i.e. Levenberg-Marquardt algorithm) which is a combination of gradient descent and Gauss-newton learning... 

    An efficient stress recovery technique in adaptive finite element method using artificial neural network

    , Article Engineering Fracture Mechanics ; Volume 237 , October , 2020 Khoei, A. R ; Moslemi, H ; Seddighian, M. R ; Sharif University of Technology
    Elsevier Ltd  2020
    Abstract
    In this paper, an efficient stress recovery technique is presented to estimate the recovered stress field at the nodal points. The feed–forward back–propagation multilayer perceptron (MLP) neural network approach is employed to improve the accuracy of the stress recovery method. An automatic adaptive mesh refinement is performed based on a–posteriori Zienkiewicz–Zhu error estimation method. The proposed technique is employed to recover the stress field accurately in the regions with a high stress gradient where the conventional recovery techniques are not able to improve the stress fields efficiently due to the singular behavior of problem. Finally, several numerical examples are solved to... 

    Accurate prediction of kinematic viscosity of biodiesels and their blends with diesel fuels

    , Article JAOCS, Journal of the American Oil Chemists' Society ; Volume 97, Issue 10 , September , 2020 , Pages 1083-1094 Mehrizadeh, M ; Nikbin Fashkacheh, H ; Zand, N ; Najafi Marghmaleki, A ; Sharif University of Technology
    Wiley-Blackwell  2020
    Abstract
    Viscosity of mixtures of biodiesels (admixtures) and mixtures of biodiesel/diesel (blends) is a important parameter for determining their combustion behavior. There is no universal and general model for prediction of viscosity of these systems at different conditions. Hence, developing simple, accurate, and general models for prediction of viscosity of these systems is of great importance. In this work, three computer-based models named multilayer perceptron neural network (MLP-NN), radial basis function optimized by particle swarm optimization (PSO-RBF), and adaptive neuro fuzzy inference system optimized by hybrid approach (Hybrid-ANFIS) were developed for prediction of viscosity of blends... 

    Processing scintillation gamma-ray spectra by artificial neural network

    , Article Journal of Radioanalytical and Nuclear Chemistry ; Volume 325, Issue 2 , 2020 , Pages 471-483 Shahabinejad, H ; Vosoughi, N ; Saheli, F ; Sharif University of Technology
    Springer Netherlands  2020
    Abstract
    Elemental analysis can be performed using obtained gamma-ray spectrum of the sample under study. In this work, simple Multi-Layer Perceptron (MLP) neural network models are proposed for analyzing a gamma-ray emitting sample using whole information of its obtained gamma-ray spectrum. Elemental analysis is performed in two fields of study using 3 × 3 inch NaI(Tl) detectors: Radio-Isotope Identification (RIID) and Prompt Gamma Neutron Activation Analysis (PGNAA). The gamma-ray point sources are used for an empirical study in RIID field, while a Monte Carlo simulation study is considered for determining chlorine and water content of crude oil using combination of PGNAA technique and a MLP model.... 

    COVID and nutrition: A machine learning perspective

    , Article Informatics in Medicine Unlocked ; Volume 28 , 2022 ; 23529148 (ISSN) Jafari, N ; Besharati, M. R ; Izadi, M ; Talebpour, A ; Sharif University of Technology
    Elsevier Ltd  2022
    Abstract
    A self-report questionnaire survey was conducted online to collect big data from over 16000 Iranian families (who were the residents of 1000 urban and rural areas of Iran). The resulting data storage contained over 1 M records of data and over 1G records of automatically inferred information. Based on this data storage, a series of machine learning experiments was conducted to investigate the relationship between nutrition and the risk of contracting COVID-19. With highly accurate scores, the findings strongly suggest that foods and water sources containing certain natural bioactive and phytochemical agents may help to reduce the risk of apparent COVID-19 infection. © 2022 The Author(s)