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Total 52 records

    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... 

    Estimating phase behavior of the asphaltene precipitation by GA-ANFIS approach

    , Article Petroleum Science and Technology ; Volume 36, Issue 19 , 2018 , Pages 1582-1588 ; 10916466 (ISSN) Chen, M ; Sasanipour, J ; Kiaian Mousavy, S. A ; Khajeh, E ; Kamyab, M ; Sharif University of Technology
    Taylor and Francis Inc  2018
    Abstract
    This study implements an adaptive neuro-fuzzy inference system (ANFIS) approach to predict the precipitation amount of the asphaltene using temperature (T), dilution ratio (Rv), and molecular weight of different n-alkanes. Results are then evaluated using graphical and statistical error analysis methods, confirming the model’s great ability for appropriate prediction of the precipitation amount. Mean squared error and determination coefficient (R2) values of 0.036 and 0.995, respectively are obtained for the proposed ANFIS model. Results are then compared to those from previously reported correlations revealing the better performance of the proposed model. © 2018, © 2018 Taylor & Francis... 

    Application of ANFIS-PSO as a novel method to estimate effect of inhibitors on asphaltene precipitation

    , Article Petroleum Science and Technology ; Volume 36, Issue 8 , 2018 , Pages 597-603 ; 10916466 (ISSN) Malmir, P ; Suleymani, M ; Bemani, A ; Sharif University of Technology
    Taylor and Francis Inc  2018
    Abstract
    Asphaltene precipitation in petroleum industries is known as major problems. To solve problems there are approaches for inhibition of asphaltene precipitation, Asphaltene inhibitors are known effective and economical approach for inhibition and prevention of asphaltene precipitation. In the present study Adaptive neuro-fuzzy inference system (ANFIS) was coupled with Particle swarm optimization (PSO) to create a novel approach to predict effect of inhibitors on asphaltene precipitation as function of crude oil properties and concentration and structure of asphaltene inhibitors.in order to training and testing the algorithm, a total number of 75 experimental data was gathered from the... 

    Application of ANFIS-PSO algorithm as a novel method for estimation of higher heating value of biomass

    , Article Energy Sources, Part A: Recovery, Utilization and Environmental Effects ; Volume 40, Issue 3 , 1 February , 2018 , Pages 288-293 ; 15567036 (ISSN) Suleymani, M ; Bemani, A ; Sharif University of Technology
    Taylor and Francis Inc  2018
    Abstract
    One of the important parameters in economic study of energy sources and bioenergy is higher heating value (HHV). In this investigation, adaptive neuro fuzzy inference system (ANFIS) was applied as a novel method to predict HHV of biomass in terms of fixed carbon (FC), ash content (ASH), and volatile matters (VMs). Due to the fact that experimental investigations are time- and cost-consuming, this investigation was selected purely computational and a total number of 350 experimental data were extracted from literature for different steps of modeling. The proposed algorithm was evaluated by statistical indexes such as coefficient of determination (R2), root mean squared error (RMSE), and... 

    A comparison of performance of artificial intelligence methods in prediction of dry sliding wear behavior

    , Article International Journal of Advanced Manufacturing Technology ; Volume 84, Issue 9-12 , 2016 , Pages 1981-1994 ; 02683768 (ISSN) Alambeigi, F ; Khadem, S. M ; Khorsand, H ; Mirza Seied Hasan, E ; Sharif University of Technology
    Springer-Verlag London Ltd 
    Abstract
    Developing a computational model for studying tribological performance is essential for computing accurate life cycle of various materials. Caused by the existence of complicated and nonlinear interactions between material surfaces, exact modeling of wear behavior is very difficult. Artificial intelligence (AI) can be used in distinguishing similar patterns in experimental data and predictive modeling of a certain material’s wear behavior. In this paper, artificial neural networks (ANNs) approach, adaptive neural-based fuzzy inference system (ANFIS) technique, and fuzzy clustering method (FCM) are used to develop a simple, accurate, and applicable model for predicting the wear behavior of... 

    Developing cluster-based adaptive network fuzzy inference system tuned by particle swarm optimization to forecast annual automotive sales: a case study in iran market

    , Article International Journal of Fuzzy Systems ; 2022 ; 15622479 (ISSN) Hasheminejad, S. A ; Shabaab, M ; Javadinarab, N ; Sharif University of Technology
    Springer Science and Business Media Deutschland GmbH  2022
    Abstract
    Automotive Industry has an important place all around the world and sales forecasting process supports companies to meet their goals such as sales revenue increase, efficiency improvement, capacity planning and customer care. Traditional methods such as time series and econometrics have been applied by scientists during last decades. However, recently sales forecast problem by means of machine learning techniques are welcomed by data scientists because of increasing power of information technology in both hardware and software aspects. In this research, the hybridization of clustering method, Adaptive network Fuzzy Inference System (ANFIS) and Particle Swarm Optimization (PSO) are developed... 

    An adaptive efficient memristive ink drop spread (IDS) computing system

    , Article Neural Computing and Applications ; 2018 , Pages 1-22 ; 09410643 (ISSN) Haghzad Klidbary, S ; Bagheri Shouraki, S ; Esmaili Paeen Afrakoti, I ; Sharif University of Technology
    Springer London  2018
    Abstract
    Active Learning Method (ALM) is one of the powerful tools in soft computing and it is inspired by the human brain capabilities in approaching complicated problems. ALM, which is in essence an adaptive fuzzy learning algorithm, tries to model a Multi-Input Single-Output system with several single-input single-output subsystems. Each of these subsystems is then modeled by an ink drop spread (IDS) plane. IDS operator, which is the main processing engine of ALM, extracts two kinds of informative features, Narrow Path and Spread, from each IDS plane without complicated computations. These features from all IDS planes are then aggregated in the inference engine. Despite the great performance of... 

    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... 

    An adaptive efficient memristive ink drop spread (IDS) computing system

    , Article Neural Computing and Applications ; Volume 31, Issue 11 , 2019 , Pages 7733-7754 ; 09410643 (ISSN) Haghzad Klidbary, S ; Bagheri Shouraki, S ; Esmaili Paeen Afrakoti, I ; Sharif University of Technology
    Springer London  2019
    Abstract
    Active Learning Method (ALM) is one of the powerful tools in soft computing and it is inspired by the human brain capabilities in approaching complicated problems. ALM, which is in essence an adaptive fuzzy learning algorithm, tries to model a Multi-Input Single-Output system with several single-input single-output subsystems. Each of these subsystems is then modeled by an ink drop spread (IDS) plane. IDS operator, which is the main processing engine of ALM, extracts two kinds of informative features, Narrow Path and Spread, from each IDS plane without complicated computations. These features from all IDS planes are then aggregated in the inference engine. Despite the great performance of... 

    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... 

    Application of integrated fuzzy logic and neural networks to the performance prediction of axial compressors

    , Article Proceedings of the Institution of Mechanical Engineers, Part A: Journal of Power and Energy ; Volume 229, Issue 8 , 2015 , Pages 928-947 ; 09576509 (ISSN) Gholamrezaei, M ; Ghorbanian, K ; Sharif University of Technology
    SAGE Publications Ltd  2015
    Abstract
    An integrated fuzzy logic-neural network methodology is presented as a mean to improve the reconstruction of the performance map of axial compressors and fans. The learning capability of artificial neural network technique is integrated to the knowledge aspect of fuzzy inference system to offer enhanced prediction capabilities compared to using a single methodology independently. The proposed technique incorporates information of experimental data on surge, operating, and choke lines at any arbitrary but fixed rotational speed. A comparison of the predicted results with experimental data reveals a very good agreement. The proposed technique has the capability to model the nonlinear surge... 

    Trajectory tracking of a mobile robot using fuzzy logic tuned by genetic algorithm

    , Article International Journal of Engineering, Transactions A: Basics ; Volume 19, Issue 1 , 2006 , Pages 95-104 ; 17281431 (ISSN) Pishkenari, H. N ; Mahboobi, S. H ; Alasty, A ; Sharif University of Technology
    Materials and Energy Research Center  2006
    Abstract
    In recent years, soft computing methods, like fuzzy logic and neural networks have been presented and developed for the purpose of mobile robot trajectory tracking. In this paper we will present a fuzzy approach to the problem of mobile robot path tracking for the CEDRA rescue robot with a complicated kinematical model. After designing the fuzzy tracking controller, the membership functions and rule weights will be optimized by genetic algorithm in order to obtain more acceptable results. Simulation results have demonstrated significant improvements in controller efficacy  

    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... 

    Neutron spectroscopy with soft computing: Development of a computational code based on Support Vector Machine (SVM) for reconstruction of neutron energy spectrum

    , Article Journal of Instrumentation ; Volume 14, Issue 2 , 2019 ; 17480221 (ISSN) Hosseini, S. A ; Sharif University of Technology
    Institute of Physics Publishing  2019
    Abstract
    This paper presents a developed computational code based on Support Vector Machine (SVM) for reconstruction of energy spectrum of neutron source. To reconstruct unknown energy spectrum using known neutron pulse height distribution, the developed machine is trained by known neutron pulse height distribution of detector and corresponding energy spectrum of neutron source. Validation and testing are the next steps to verify the validity of the calculations done with the developed computational code. The calculated neutron pulse height distributions due to randomly generated energy spectrum using MCNPX-ESUT (MCNPX-Energy engineering of Sharif University of Technology) computational code are used... 

    Coordination of large-scale systems using fuzzy optimal control strategies and neural networks

    , Article 2016 IEEE International Conference on Fuzzy Systems, 24 July 2016 through 29 July 2016 ; 2016 , Pages 2035-2042 ; 9781509006250 (ISBN) Sadati, N ; Berenji, H ; Gulf University for Science and Technology (GUST); IEEE; IEEE Big Data Initiative; IEEE Computational Intelligence Society (CIS); The International Neural Network Society (INNS) ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc 
    Abstract
    Coordination strategies in large-scale systems are mainly based on two principles: interaction prediction and interaction balance. Using these principles, Model coordination and Goal coordination were proposed. The interactions in the first method and the Lagrangian coefficients in the second method were considered as coordination parameters. In this paper, the concept of coordination is introduced within the framework of two-level large-scale systems and a new intelligent approach for Model coordination is introduced. For this purpose, the system is decomposed into several subsystems, and the overall problem is considered as an optimization problem. With the aim of optimization, the control... 

    Application of soft computing models in streamflow forecasting

    , Article Proceedings of the Institution of Civil Engineers: Water Management ; Volume 172, Issue 3 , 2019 , Pages 123-134 ; 17417589 (ISSN) Adnan, R. M ; Yuan, X ; Kisi, O ; Yuan, Y ; Tayyab, M ; Lei, X ; Sharif University of Technology
    ICE Publishing  2019
    Abstract
    The accuracy of five soft computing techniques was assessed for the prediction of monthly streamflow of the Gilgit river basin by a cross-validation method. The five techniques assessed were the feed-forward neural network (FFNN), the radial basis neural network (RBNN), the generalised regression neural network (GRNN), the adaptive neuro fuzzy inference system with grid partition (Anfis-GP) and the adaptive neuro fuzzy inference system with subtractive clustering (Anfis-SC). The interaction between temperature and streamflow was considered in the study. Two statistical indexes, mean square error (MSE) and coefficient of determination (R2), were used to evaluate the performances of the... 

    Estimation of trunk muscle forces using a bio-inspired control strategy implemented in a neuro-osteo-ligamentous finite element model of the lumbar spine

    , Article Frontiers in Bioengineering and Biotechnology ; Volume 8 , 2020 Sharifzadeh Kermani, A ; Arjmand, N ; Vossoughi, G ; Shirazi Adl, A ; Patwardhan, A. G ; Parnianpour, M ; Khalaf, K ; Sharif University of Technology
    Frontiers Media S.A  2020
    Abstract
    Low back pain (LBP), the leading cause of disability worldwide, remains one of the most common and challenging problems in occupational musculoskeletal disorders. The effective assessment of LBP injury risk, and the design of appropriate treatment modalities and rehabilitation protocols, require accurate estimation of the mechanical spinal loads during different activities. This study aimed to: (1) develop a novel 2D beam-column finite element control-based model of the lumbar spine and compare its predictions for muscle forces and spinal loads to those resulting from a geometrically matched equilibrium-based model; (2) test, using the foregoing control-based finite element model, the... 

    Accident management support tools in nuclear power plants: A post-Fukushima review

    , Article Progress in Nuclear Energy ; Volume 92 , 2016 , Pages 1-14 ; 01491970 (ISSN) Saghafi, M ; Ghofrani, M. B ; Sharif University of Technology
    Elsevier Ltd  2016
    Abstract
    In stressful situations such as severe accidents in nuclear power plants, operators need support tools to ease decision making in the selection of accident management measures. Following the Three Mile Island (TMI) accident in 1979, the first severe accident in a nuclear power plant, Accident Management Support Tools (AMSTs) were extensively developed and installed in a number of nuclear power plants. Lessons learned from the Fukushima accident highlighted the importance of accident management in mitigation severe accidents and suggested the reconsideration of accident management programs, which in turn created the need for AMSTs adaption and modernization. This paper provides the first... 

    A novel regression imputation framework for Tehran air pollution monitoring network using outputs from WRF and CAMx models

    , Article Atmospheric Environment ; Volume 187 , 2018 , Pages 24-33 ; 13522310 (ISSN) Shahbazi, H ; Karimi, S ; Hosseini, V ; Yazgi, D ; Torbatian, S ; Sharif University of Technology
    Elsevier Ltd  2018
    Abstract
    Missing or incomplete data in short or long intervals is a common problem in measuring air pollution. Severe issues may arise when dealing with missing data for time-series prediction schemes or mean analysis. This study aimed to develop a new regression imputation framework to impute missing values in the hourly air quality data set of Tehran and enhance the applicability of Tehran Air Pollution Forecasting System (TAPFS). The proposed framework was designed based on three types of features including measurements of other stations, WRF and CAMx physical models. In this framework, elastic net and neuro-fuzzy networks were efficiently combined in a two-layer structure. The framework was... 

    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...