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    On a various soft computing algorithms for reconstruction of the neutron noise source in the nuclear reactor cores

    , Article Annals of Nuclear Energy ; Volume 114 , 2018 , Pages 19-31 ; 03064549 (ISSN) Hosseini, A ; Esmaili Paeen Afrakoti, I ; Sharif University of Technology
    Elsevier Ltd  2018
    Abstract
    This paper presents a comparative study of various soft computing algorithms for reconstruction of neutron noise sources in the nuclear reactor cores. To this end, the computational code for reconstruction of neutron noise source is developed based on the Adaptive Neuro-Fuzzy Inference System (ANFIS), Decision Tree (DT), Radial Basis Function (RBF) and Support Vector Machine (SVM) algorithms. Neutron noise source reconstruction process using the developed computational code consists of three stages of training, testing and validation. The information of neutron noise sources and induced neutron noise distributions are used as output and input data of training stage, respectively. As input... 

    Proposing a novel hybrid intelligent model for the simulation of particle size distribution resulting from blasting

    , Article Engineering with Computers ; 2018 , Pages 1-10 ; 01770667 (ISSN) Mojtahedi, S. F. F ; Ebtehaj, I ; Hasanipanah, M ; Bonakdari, H ; Bakhshandeh Amnieh, H ; Sharif University of Technology
    Springer London  2018
    Abstract
    In the open-pit mines and civil projects, drilling and blasting is the most common method for rock fragmentation aims. This article proposes a new hybrid forecasting model based on firefly algorithm, as an algorithm optimizer, combined with the adaptive neuro-fuzzy inference system for estimating the fragmentation. In this regard, 72 datasets were collected from Shur river dam region, and the required parameters were measured. Using the different input parameters, six hybrid models were constructed. In these models, 58 and 14 data were used for training and testing, respectively. The proposed hybrid models were then evaluated in accordance with statistical criteria such as coefficient of... 

    Recurrent poisson factorization for temporal recommendation

    , Article IEEE Transactions on Knowledge and Data Engineering ; 2018 ; 10414347 (ISSN) Hosseini, S ; Khodadadi, A ; Alizadeh, K ; Arabzadeh, A ; Farajtabar, M ; Zha, H ; Rabiee, H. R. R ; Sharif University of Technology
    IEEE Computer Society  2018
    Abstract
    Poisson Factorization (PF) is the gold standard framework for recommendation systems with implicit feedback whose variants show state-of-the-art performance on real-world recommendation tasks. However, most of the previous work do not explicitly take into account the temporal behavior of users which is essential to recommend the right item to the right user at the right time. In this paper, we introduce a Recurrent Poisson Factorization (RPF) framework that generalizes the classical PF methods by utilizing a Poisson process for modeling the implicit feedback. RPF treats time as a natural constituent of the model, and takes important factors for recommendation into consideration to provide a... 

    Compact cross form antenna arrays intended for wideband two dimensional interferometric direction finding including the channel phase tracking error

    , Article AEU - International Journal of Electronics and Communications ; Volume 83 , 2018 , Pages 558-565 ; 14348411 (ISSN) Mollai, S ; Farzaneh, F ; Sharif University of Technology
    Elsevier GmbH  2018
    Abstract
    The interferometer method as one of the most accurate schemes for wideband direction finding (DF) is used. The interferometer method has various algorithms which can be implemented depending on the required specifications. The advantages and disadvantages of these algorithms have been evaluated and the appropriate algorithm for a general practical case in view of the ambiguity resolution is proposed. The receivers’ channel phase tracking error is of significant concern in practice in interferometric DF systems. The induced error due to channels phase tracking error is estimated. Furthermore the use of physically realizable antennas, achievement of high accuracy, minimum number of antennas... 

    Continuous-time user modeling in presence of badges: a probabilistic approach

    , Article ACM Transactions on Knowledge Discovery from Data ; Volume 12, Issue 3 , 2018 ; 15564681 (ISSN) Khodadadi, A ; Hosseini, A ; Tavakoli, E ; Rabiee, H. R ; Sharif University of Technology
    Association for Computing Machinery  2018
    Abstract
    User modeling plays an important role in delivering customized web services to the users and improving their engagement. However, most user models in the literature do not explicitly consider the temporal behavior of users. More recently, continuous-time user modeling has gained considerable attention and many user behavior models have been proposed based on temporal point processes. However, typical point process-based models often considered the impact of peer influence and content on the user participation and neglected other factors. Gamification elements are among those factors that are neglected, while they have a strong impact on user participation in online services. In this article,... 

    A bayesian inference and stochastic dynamic programming approach to determine the best binomial distribution

    , Article Communications in Statistics - Theory and Methods ; Volume 38, Issue 14 , 2009 , Pages 2379-2397 ; 03610926 (ISSN) Fallah Nezhad, M. S ; Akhavan Niaki, S. T ; Sharif University of Technology
    2009
    Abstract
    In this research, we employ Bayesian inference and stochastic dynamic programming approaches to select the binomial population with the largest probability of success from n independent Bernoulli populations based upon the sample information. To do this, we first define a probability measure called belief for the event of selecting the best population. Second, we explain the way to model the selection problem using Bayesian inference. Third, we clarify the model by which we improve the beliefs and prove that it converges to select the best population. In this iterative approach, we update the beliefs by taking new observations on the populations under study. This is performed using Bayesian... 

    Measuring customer satisfaction using a fuzzy inference system

    , Article Journal of Applied Sciences ; Volume 9, Issue 3 , 2009 , Pages 469-478 ; 18125654 (ISSN) Darestani, A. Y ; Jahromi, A. E ; Sharif University of Technology
    2009
    Abstract
    This study presents a new method called FCSMM (Fuzzy Customer Satisfaction Measurement Method) for measuring individual customer satisfaction using a fuzzy inference system. The main advantage of this method is its simplification in evaluation of Customer Satisfaction Index (CSI) based on simple linguistic statements collected from experienced people. In contrast with assumptions used in other methods such as linear regression principles and predefined criteria weights, the aforementioned statements form the FCSMM computational structure. Since the drivers of satisfaction and dissatisfaction and performance indexes can be simultaneously applied, concurrent direct and indirect customer... 

    Designing an optimum acceptance sampling plan using bayesian inferences and a stochastic dynamic programming approach

    , Article Scientia Iranica ; Volume 16, Issue 1 E , 2009 , Pages 19-25 ; 10263098 (ISSN) Akhavan Niaki, T ; Fallah Nezhad, M. S ; Sharif University of Technology
    2009
    Abstract
    In this paper, we use both stochastic dynamic programming and Bayesian inference concepts to design an optimum-acceptance-sampling-plan policy in quality control environments. To determine the optimum policy, we employ a combination of costs and risk functions in the objective function. Unlike previous studies, accepting or rejecting a batch are directly included in the action space of the proposed dynamic programming model. Using the posterior probability of the batch being in state p (the probability of non-conforming products), first, we formulate the problem into a stochastic dynamic programming model. Then, we derive some properties for the optimal value of the objective function, which... 

    Continuous-Time relationship prediction in dynamic heterogeneous information networks

    , Article ACM Transactions on Knowledge Discovery from Data ; Volume 13, Issue 4 , 2019 ; 15564681 (ISSN) Sajadmanesh, S ; Bazargani, S ; Zhang, J ; Rabiee, H. R ; Sharif University of Technology
    Association for Computing Machinery  2019
    Abstract
    Online social networks, World Wide Web, media, and technological networks, and other types of so-called information networks are ubiquitous nowadays. These information networks are inherently heterogeneous and dynamic. They are heterogeneous as they consist of multi-Typed objects and relations, and they are dynamic as they are constantly evolving over time. One of the challenging issues in such heterogeneous and dynamic environments is to forecast those relationships in the network that will appear in the future. In this article, we try to solve the problem of continuous-Time relationship prediction in dynamic and heterogeneous information networks. This implies predicting the time it takes... 

    Application of decision tree, artificial neural networks, and adaptive neuro-fuzzy inference system on predicting lost circulation: A case study from Marun oil field

    , Article Journal of Petroleum Science and Engineering ; Volume 177 , 2019 , Pages 236-249 ; 09204105 (ISSN) Sabah, M ; Talebkeikhah, M ; Agin, F ; Talebkeikhah, F ; Hasheminasab, E ; Sharif University of Technology
    Elsevier B.V  2019
    Abstract
    One of the most prevalent problems in drilling industry is lost circulation which causes intense increase in drilling expenditure as well as operational obstacles such as well instability and blowout. The aim of this research is to develop smart systems for estimating amount of lost circulation making able to use appropriate prevention and remediation methods. To obtain this aim, a large data set were collected from 61 recently drilled wells in Marun oil field in Iran to be used for developing relevant models. After that, using the extracted data set consisting of 1900 data subset, intelligent prediction models including decision tree (DT), adaptive neuro-fuzzy inference systems (ANFIS),... 

    Probabilistic hierarchical bayesian framework for time-domain model updating and robust predictions

    , Article Mechanical Systems and Signal Processing ; Volume 123 , 2019 , Pages 648-673 ; 08883270 (ISSN) Sedehi, O ; Papadimitriou, C ; Katafygiotis, L. S ; Sharif University of Technology
    Academic Press  2019
    Abstract
    A new time-domain hierarchical Bayesian framework is proposed to improve the performance of Bayesian methods in terms of reliability and robustness of estimates particularly for uncertainty quantification and propagation in structural dynamics. The proposed framework provides a reliable approach to account for the variability of the inference results observed when using different data sets. The proposed formulation is compared with a state-of-the-art Bayesian approach using numerical and experimental examples. The results indicate that the hierarchical Bayesian framework provides a more realistic account of the uncertainties, whereas the non-hierarchical Bayesian approach severely... 

    Stratification of admixture population:A bayesian approach

    , Article 7th Iranian Joint Congress on Fuzzy and Intelligent Systems, CFIS 2019, 29 January 2019 through 31 January 2019 ; 2019 ; 9781728106731 (ISBN) Tamiji, M ; Taheri, S. M ; Motahari, S. A ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2019
    Abstract
    A statistical algorithm is introduced to improve the false inference of active loci, in the population in which members are admixture. The algorithm uses an advanced clustering algorithm based on a Bayesian approach. The proposed algorithm simultaneously infers the hidden structure of the population. In this regard, the Monte Carlo Markov Chain (MCMC) algorithm has been used to evaluate the posterior probability distribution of the model parameters. The proposed algorithm is implemented in a bundle, and then its performance is widely evaluated in a number of artificial databases. The accuracy of the clustering algorithm is compared with the STRUCTURE method based on certain criterion. © 2019... 

    Proposing a novel hybrid intelligent model for the simulation of particle size distribution resulting from blasting

    , Article Engineering with Computers ; Volume 35, Issue 1 , 2019 , Pages 47-56 ; 01770667 (ISSN) Mojtahedi, S. F. F ; Ebtehaj, I ; Hasanipanah, M ; Bonakdari, H ; Bakhshandeh Amnieh, H ; Sharif University of Technology
    Springer London  2019
    Abstract
    In the open-pit mines and civil projects, drilling and blasting is the most common method for rock fragmentation aims. This article proposes a new hybrid forecasting model based on firefly algorithm, as an algorithm optimizer, combined with the adaptive neuro-fuzzy inference system for estimating the fragmentation. In this regard, 72 datasets were collected from Shur river dam region, and the required parameters were measured. Using the different input parameters, six hybrid models were constructed. In these models, 58 and 14 data were used for training and testing, respectively. The proposed hybrid models were then evaluated in accordance with statistical criteria such as coefficient of... 

    Online jointly estimation of hysteretic structures using the combination of central difference Kalman filter and Robbins–Monro technique

    , Article JVC/Journal of Vibration and Control ; 2020 Amini Tehrani, H ; Bakhshi, A ; Yang, T. T. Y ; Sharif University of Technology
    SAGE Publications Inc  2020
    Abstract
    Rapid assessment of structural safety and performance right after the occurrence of significant earthquake shaking is crucial for building owners and decision-makers to make informed risk management decisions. Hence, it is vital to develop online and pseudo-online health monitoring methods to quantify the health of the building right after significant earthquake shaking. Many Bayesian inference–based methods have been developed in the past which allow the users to estimate the unknown states and parameters. However, one of the most challenging part of the Bayesian inference–based methods is the determination of the parameter noise covariance matrix. It is especially difficult when the number... 

    Power allocation of sensor transmission for remote estimation over an unknown gilbert-elliott channel

    , Article 18th European Control Conference, ECC 2020, 12 May 2020 through 15 May 2020 ; 2020 , Pages 1461-1467 Farjam, T ; Fardno, F ; Charalambous, T ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2020
    Abstract
    In this paper, we consider the problem of scheduling the power of a sensor when transmitting over an unknown Gilbert-Elliott (GE) channel for remote state estimation. The sensor supports two power modes, namely low power and high power, which are to be selected for transmission over the channel in order to minimize a cost on the error covariance, while satisfying the energy constraints. The remote estimator provides error-free acknowledgement/negative-acknowledgement (ACK/NACK) messages to the sensor only when low power is utilized. We first consider the Partially Observable Markov Decision Process (POMDP) problem for the case of known GE channels and derive conditions for optimality of a... 

    Adaptive neuro-fuzzy algorithm applied to predict and control multi-phase flow rates through wellhead chokes

    , Article Flow Measurement and Instrumentation ; Volume 76 , 2020 Ghorbani, H ; Wood, D. A ; Mohamadian, N ; Rashidi, S ; Davoodi, S ; Soleimanian, A ; Kiani Shahvand, A ; Mehrad, M ; Sharif University of Technology
    Elsevier Ltd  2020
    Abstract
    A Takagi-Sugeno adaptive neuro-fuzzy inference system (TSFIS) model is developed and applied to a dataset of wellhead flow-test data for the Resalat oil field located offshore southern Iran, the objective is to assist in the prediction and control of multi-phase flow rates of oil and gas through the wellhead chokes. For this purpose, 182 test data points (Appendix 1) related to the Resalat field are evaluated. In order to predict production flow rate (QL) expressed as stock-tank barrels per day (STB/D), this dataset includes four selected input variables: upstream pressure (Pwh); wellhead choke sizes (D64); gas to liquid ratio (GLR); and, base solids and water including some water-soluble... 

    Recurrent poisson factorization for temporal recommendation

    , Article IEEE Transactions on Knowledge and Data Engineering ; Volume 32, Issue 1 , 2020 , Pages 121-134 Hosseini, S. A ; Khodadadi, A ; Alizadeh, K ; Arabzadeh, A ; Farajtabar, M ; Zha, H ; Rabiee, H. R ; Sharif University of Technology
    IEEE Computer Society  2020
    Abstract
    Poisson Factorization (PF) is the gold standard framework for recommendation systems with implicit feedback whose variants show state-of-the-art performance on real-world recommendation tasks. However, they do not explicitly take into account the temporal behavior of users which is essential to recommend the right item to the right user at the right time. In this paper, we introduce Recurrent Poisson Factorization (RPF) framework that generalizes the classical PF methods by utilizing a Poisson process for modeling the implicit feedback. RPF treats time as a natural constituent of the model, and takes important factors for recommendation into consideration to provide a rich family of... 

    Prediction of the thorax/pelvis orientations and L5–S1 disc loads during various static activities using neuro-fuzzy

    , Article Journal of Mechanical Science and Technology ; Volume 34, Issue 8 , 7 August , 2020 , Pages 3481-3485 ; ISSN: 1738494X Mousavi, S. H ; Sayyaadi, H ; Arjmand, N ; Sharif University of Technology
    Korean Society of Mechanical Engineers  2020
    Abstract
    Spinal posture including thorax/pelvis orientations as well as loads on the intervertebral discs are crucial parameters in biomechanical models and ergonomics to evaluate the risk of low back injury. In vivo measurement of spinal posture toward estimation of spine loads requires the common motion capture techniques and laboratory instruments that are costly and time-consuming. Hence, a closed loop algorithm including an artificial neural network (ANN) and fuzzy logic is proposed here to predict the L5–S1 segment loads and thorax/pelvis orientations in various 3D reaching activities. Two parts namely a fuzzy logic strategy and an ANN from this algorithm; the former, developed based on the... 

    Wind speed sensor calibration in thermal power plant using Bayesian inference

    , Article Case Studies in Thermal Engineering ; Volume 19 , June , 2020 Mokhtari, A ; Ghodrat, M ; Javadpoor Langroodi, P ; Shahrian, A ; Sharif University of Technology
    Elsevier Ltd  2020
    Abstract
    Using natural draft dry air cooling systems in the power plant cycle is one of the proposed solutions for less water consumption. But the wind blowing will cause decreasement of cooling system performance in the power plants that work with the Rankin cycle. Therefore, it is important to know the right amount of wind speed to make the right decision to prevent reducing generating power or provide the right solution to improve the performance of the power plant cooling system. There are many methods of calibration of sensors in the world. But using optimization techniques or stochastic methods that do not require physical facilities and additional costs is almost a new approach. Therefore, in... 

    Hardware-algorithm co-design of a compressed fuzzy active learning method

    , Article IEEE Transactions on Circuits and Systems I: Regular Papers ; Volume 67, Issue 12 , July , 2020 , Pages 4932-4945 Jokar, E ; Klidbary, S. H ; Abolfathi, H ; Shouraki, S. B ; Zand, R ; Ahmadi, A ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2020
    Abstract
    Active learning method (ALM) is a powerful fuzzy-based soft computing methodology suitable for various applications such as function modeling, control systems, clustering and classification. Despite considerable advantages, the main computational engine of ALM, ink drop spread (IDS), is memory-intensive, which imposes significant area overheads in the hardware realization of the ALM for real-time applications. In this paper, we propose a compressed model for ALM which greatly alleviates the storage limitations. The proposed approach employs a distinct inference algorithm, enabling a significant reduction in memory utilization from O(N2) to O(2N) for a multi-input single-output (MISO) system....