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Total 1499 records

    Subcutaneous insulin administration by deep reinforcement learning for blood glucose level control of type-2 diabetic patients

    , Article Computers in Biology and Medicine ; Volume 148 , 2022 ; 00104825 (ISSN) Raheb, M. A ; Niazmand, V. R ; Eqra, N ; Vatankhah, R ; Sharif University of Technology
    Elsevier Ltd  2022
    Abstract
    Background: Type-2 diabetes mellitus is characterized by insulin resistance and impaired insulin secretion in the human body. Many endeavors have been made in terms of controlling and reducing blood glucose via the medium of automated controlling tools to increase precision and efficiency and reduce human error. Recently, reinforcement learning algorithms are proved to be powerful in the field of intelligent control, which was the motivation for the current study. Methods: For the first time, a reinforcement algorithm called normalized advantage function (NAF) algorithm has been applied as a model-free reinforcement learning method to regulate the blood glucose level of type-2 diabetic... 

    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... 

    Encrypted internet traffic classification using a supervised spiking neural network

    , Article Neurocomputing ; Volume 503 , 2022 , Pages 272-282 ; 09252312 (ISSN) Rasteh, A ; Delpech, F ; Aguilar Melchor, C ; Zimmer, R ; Shouraki, S. B ; Masquelier, T ; Sharif University of Technology
    Elsevier B.V  2022
    Abstract
    Internet traffic recognition is essential for access providers since it helps them define adapted priorities in order to enhance user experience, e.g., a high priority for an audio conference and a low priority for a file transfer. As internet traffic becomes increasingly encrypted, the main classic traffic recognition technique, payload inspection, is rendered ineffective. Hence this paper uses machine learning techniques looking only at packet size and time of arrival. For the first time, Spiking neural networks (SNNs), which are inspired by biological neurons, were used for this task for two reasons. Firstly, they can recognize time-related data packet features. Secondly, they can be... 

    Cost overrun risk assessment and prediction in construction projects: a bayesian network classifier approach

    , Article Buildings ; Volume 12, Issue 10 , 2022 ; 20755309 (ISSN) Ashtari, M. A ; Ansari, R ; Hassannayebi, E ; Jeong, J ; Sharif University of Technology
    MDPI  2022
    Abstract
    Cost overrun risks are declared to be dynamic and interdependent. Ignoring the relationship between cost overrun risks during the risk assessment process is one of the primary reasons construction projects go over budget. Conversely, recent studies have failed to account for potential interrelationships between risk factors in their machine learning (ML) models. Additionally, the presented ML models are not interpretable. Thus, this study contributes to the entire ML process using a Bayesian network (BN) classifier model by considering the possible interactions between predictors, which are cost overrun risks, to predict cost overrun and assess cost overrun risks. Furthermore, this study... 

    Details study on the kinematic characteristics of manta ray section in flapping motion and exploring its application in wave glider propulsion system

    , Article Sustainable Energy Technologies and Assessments ; Volume 53 , 2022 ; 22131388 (ISSN) Abbaspour, M ; Safari, H ; Darbandi, M ; Sharif University of Technology
    Elsevier Ltd  2022
    Abstract
    It has always been a human challenge to inspire natural configurations and phenomena and benefit from their merits in improving the performances of man-made proposed aero/hydro vehicles. For example, the manta rays are known for their great swimming performances. To design and fabricate an underwater robot based on the manta ray geometry and its kinematic characteristics, it is important to initially study its hydrodynamic behavior and possibly arrive at some key design parameters, which can remarkably help to figure out an optimum geometry with high swimming performances. The main objective of this study is to focus on the merits of gliding motion inspired by the manta ray fish considering... 

    A new scheme for the development of IMU-based activity recognition systems for telerehabilitation

    , Article Medical Engineering and Physics ; Volume 108 , 2022 ; 13504533 (ISSN) Nasrabadi, A. M ; Eslaminia, A. R ; Bakhshayesh, P. R ; Ejtehadi, M ; Alibiglou, L ; Behzadipour, S ; Sharif University of Technology
    Elsevier Ltd  2022
    Abstract
    Wearable human activity recognition systems (HAR) using inertial measurement units (IMU) play a key role in the development of smart rehabilitation systems. Training of a HAR system with patient data is costly, time-consuming, and difficult for the patients. This study proposes a new scheme for the optimal design of HARs with minimal involvement of the patients. It uses healthy subject data for optimal design for a set of activities used in the rehabilitation of PD1 patients. It maintains its performance for individual PD subjects using a single session data collection and an adaptation procedure. In the optimal design, several classifiers (i.e. NM, k-NN, MLP with RBF as a hidden layer, and... 

    Convolutional neural networks for estimating the ripening state of fuji apples using visible and near-infrared spectroscopy

    , Article Food and Bioprocess Technology ; Volume 15, Issue 10 , 2022 , Pages 2226-2236 ; 19355130 (ISSN) Benmouna, B ; García Mateos, G ; Sabzi, S ; Fernandez Beltran, R ; Parras-Burgos, D ; Molina Martínez, J. M ; Sharif University of Technology
    Springer  2022
    Abstract
    The quality of fresh apple fruits is a major concern for consumers and manufacturers. Classification of these fruits according to their ripening stage is one of the most decisive factors in determining their quality. In this regard, the aim of this work is to develop a new method for non-destructive classification of the ripening state of Fuji apples using hyperspectral information in the visible and near-infrared (Vis/NIR) regions. Spectra of 172 apple samples in the range from 450 to 1000 nm were studied, which were selected from four different ripening stages. A convolutional neural network (CNN) model was proposed to perform the classification of the samples. The proposed method was... 

    Deep learning in periodontology and oral implantology: A scoping review

    , Article Journal of Periodontal Research ; Volume 57, Issue 5 , 2022 , Pages 942-951 ; 00223484 (ISSN) Mohammad Rahimi, H ; Motamedian, S. R ; Pirayesh, Z ; Haiat, A ; Zahedrozegar, S ; Mahmoudinia, E ; Rohban, M. H ; Krois, J ; Lee, J. H ; Schwendicke, F ; Sharif University of Technology
    John Wiley and Sons Inc  2022
    Abstract
    Deep learning (DL) has been employed for a wide range of tasks in dentistry. We aimed to systematically review studies employing DL for periodontal and implantological purposes. A systematic electronic search was conducted on four databases (Medline via PubMed, Google Scholar, Scopus, and Embase) and a repository (ArXiv) for publications after 2010, without any limitation on language. In the present review, we included studies that reported deep learning models' performance on periodontal or oral implantological tasks. Given the heterogeneities in the included studies, no meta-analysis was performed. The risk of bias was assessed using the QUADAS-2 tool. We included 47 studies: focusing on... 

    Quick generation of SSD performance models using machine learning

    , Article IEEE Transactions on Emerging Topics in Computing ; Volume 10, Issue 4 , 2022 , Pages 1821-1836 ; 21686750 (ISSN) Tarihi, M ; Azadvar, S ; Tavakkol, A ; Asadi, H ; Sarbazi Azad, H ; Sharif University of Technology
    IEEE Computer Society  2022
    Abstract
    Increasing usage of Solid-State Drives (SSDs) has greatly boosted the performance of storage backends. SSDs perform many internal processes such as out-of-place writes, wear-leveling, and garbage collection. These operations are complex and not well documented which make it difficult to create accurate SSD simulators. Our survey indicates that aside from complex configuration, available SSD simulators do not support both sync and discard requests. Past performance models also ignore the long term effect of I/O requests on SSD performance, which has been demonstrated to be significant. In this article, we utilize a methodology based on machine learning that extracts history-aware features at... 

    Evaluation of geopolymer concrete at high temperatures: An experimental study using machine learning

    , Article Journal of Cleaner Production ; Volume 372 , 2022 ; 09596526 (ISSN) Rahmati, M ; Toufigh, V ; Sharif University of Technology
    Elsevier Ltd  2022
    Abstract
    Studying the mechanical performance of concrete after being exposed to high temperatures is an important step in the damage assessment of buildings and fire safety applications. However, predicting the compressive strength of GPC accurately after exposure to high temperatures is a challenging task. In this paper, artificial neural network (ANN) and support vector regression (SVR) models were developed to predict the compressive strength of geopolymer concrete (GPC) at high temperatures ranging from 100 °C to 1000 °C. A series of experiments consisting of different mix designs were conducted at elevated temperatures to prepare a dataset. Besides experiments' results, the data of previously... 

    TripletProt: Deep Representation Learning of Proteins Based On Siamese Networks

    , Article IEEE/ACM Transactions on Computational Biology and Bioinformatics ; Volume 19, Issue 6 , 2022 , Pages 3744-3753 ; 15455963 (ISSN) Nourani, E ; Asgari, E ; McHardy, A. C ; Mofrad, M. R. K ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2022
    Abstract
    Pretrained representations have recently gained attention in various machine learning applications. Nonetheless, the high computational costs associated with training these models have motivated alternative approaches for representation learning. Herein we introduce TripletProt, a new approach for protein representation learning based on the Siamese neural networks. Representation learning of biological entities which capture essential features can alleviate many of the challenges associated with supervised learning in bioinformatics. The most important distinction of our proposed method is relying on the protein-protein interaction (PPI) network. The computational cost of the generated... 

    SCGG: A deep structure-conditioned graph generative model

    , Article PLoS ONE ; Volume 17, Issue 11 November , 2022 ; 19326203 (ISSN) Faez, F ; Hashemi Dijujin, N ; Soleymani-Baghshah, M ; Rabiee, H. R ; Sharif University of Technology
    Public Library of Science  2022
    Abstract
    Deep learning-based graph generation approaches have remarkable capacities for graph data modeling, allowing them to solve a wide range of real-world problems. Making these methods able to consider different conditions during the generation procedure even increases their effectiveness by empowering them to generate new graph samples that meet the desired criteria. This paper presents a conditional deep graph generation method called SCGG that considers a particular type of structural conditions. Specifically, our proposed SCGG model takes an initial subgraph and autoregressively generates new nodes and their corresponding edges on top of the given conditioning substructure. The architecture... 

    A hierarchical machine learning model based on Glioblastoma patients' clinical, biomedical, and image data to analyze their treatment plans

    , Article Computers in Biology and Medicine ; Volume 150 , 2022 ; 00104825 (ISSN) Ershadi, M. M ; Rahimi Rise, Z ; Akhavan Niaki, S. T ; Sharif University of Technology
    Elsevier Ltd  2022
    Abstract
    Aim of study: Glioblastoma Multiforme (GBM) is an aggressive brain cancer in adults that kills most patients in the first year due to ineffective treatment. Different clinical, biomedical, and image data features are needed to analyze GBM, increasing complexities. Besides, they lead to weak performances for machine learning models due to ignoring physicians' knowledge. Therefore, this paper proposes a hierarchical model based on Fuzzy C-mean (FCM) clustering, Wrapper feature selection, and twelve classifiers to analyze treatment plans. Methodology/Approach: The proposed method finds the effectiveness of previous and current treatment plans, hierarchically determining the best decision for... 

    Machine learning-based seismic damage assessment of non-ductile RC beam-column joints using visual damage indices of surface crack patterns

    , Article Structures ; Volume 45 , 2022 , Pages 2038-2050 ; 23520124 (ISSN) Hamidia, M ; Mansourdehghan, S ; Asjodi, A. H ; Dolatshahi, K. M ; Sharif University of Technology
    Elsevier Ltd  2022
    Abstract
    After a significant earthquake, the updated status of the structural elements is usually determined based on a qualitative visual inspection. Although visual inspection provides a prompt assessment of the damaged elements, the output of this subjective method is influenced by the experience and decision of a trained inspector, which may vary from case to case. In this study, an innovative machine learning-based procedure is developed to automate damage state identification of non-ductile reinforced concrete moment frames (RCMFs) utilizing visual indices of crack patterns of the concrete surface. An extensive database including 264 surface crack patterns is constructed corresponding to 61... 

    Compound short- and long-term memory for memory augmented neural networks

    , Article Engineering Applications of Artificial Intelligence ; Volume 116 , 2022 ; 09521976 (ISSN) Bidokhti, A ; Ghaemmaghami, S ; Sharif University of Technology
    Elsevier Ltd  2022
    Abstract
    Adding memory to artificial intelligence systems in an effective way has been addressed by researchers for many years. Recurrent neural networks and long short-term memories (LSTMs), among other neural network systems, have some inherent memory capabilities. Recently, in memory augmented neural networks, such as neural Turing machine (NTM) and its variants, a separate memory module is implemented, which can be accessed via read and write heads. Despite its capabilities in simple algorithmic tasks, such as copying and repeat copying, neural Turing machines fail when doing complex tasks with long-term dependencies due to their limited memory capacity. In this paper, we propose a new memory... 

    A hybrid deep and machine learning model for short-term traffic volume forecasting of adjacent intersections

    , Article IET Intelligent Transport Systems ; Volume 16, Issue 11 , 2022 , Pages 1648-1663 ; 1751956X (ISSN) Mirzahossein, H ; Gholampour, I ; Sajadi, S. R ; Zamani, A. H ; Sharif University of Technology
    John Wiley and Sons Inc  2022
    Abstract
    Despite complex fluctuations, missing data, and maintenance costs of detectors, traffic volume forecasting at intersections is still a challenge. Moreover, most existing forecasting methods consider an isolated intersection instead of multiple adjacent ones. By accurately forecasting the volume of short-term traffic, a low-cost method can be provided to solve the problems of congestion, delay, and breakdown of detectors in the road transport system. This paper outlines a novel hybrid method based on deep learning to estimate short-term traffic volume at three adjacent intersections. The gated recurrent unit (GRU) and long short-term memory (LSTM) bilayer network with wavelet transform (WL)... 

    The effect of bainite volume fraction on wear behavior of aisi 4340 ferrite–bainite dual-phase steel

    , Article Journal of Materials Engineering and Performance ; Volume 31, Issue 11 , 2022 , Pages 8687-8698 ; 10599495 (ISSN) Safarpour, M ; Ekrami, A ; Sharif University of Technology
    Springer  2022
    Abstract
    The tribological behaviors of an AISI 4340 ferritic-bainitic dual-phase steel with different bainite (VB) content were investigated. The effects of VB on wear resistance and the corresponding wear mechanisms were investigated using a pin-on-disk wear testing machine, at normal loads of 10 and 50 N, at a constant sliding velocity. The tensile and hardness tests showed that the yield strength, ultimate tensile strength, and hardness increased with increasing the VB. The wear test results at the 10 N normal load showed a direct correlation between the tensile and tribological behavior of the samples. Nevertheless, at the normal load of 50 N, unexpected behavior was observed due to the carbon... 

    Using metaheuristic algorithms to improve the estimation of acidity in Fuji apples using NIR spectroscopy

    , Article Ain Shams Engineering Journal ; Volume 13, Issue 6 , 2022 ; 20904479 (ISSN) Pourdarbani, R ; Sabzi, S ; Rohban, M. H ; García Mateos, G ; Paliwal, J ; Molina Martínez, J. M ; Sharif University of Technology
    Ain Shams University  2022
    Abstract
    This study focuses on the spectrochemical estimation of pH and titratable acidity (TA) of apples of Fuji variety at different stages of ripening. A novel approach is proposed for near-infrared (NIR) spectral analysis using hybrid machine learning methods that combine artificial neural networks (ANN) and metaheuristic algorithms. One hundred twenty samples were collected at three ripening stages and spectral data within two bands of NIR were extracted from each sample to predict the acidity properties. Alternatively, the 4 most effective wavelengths were also selected using a hybrid of ANN and the cultural algorithm. The experimental results prove that the models using spectral bands and the... 

    DONE: Distributed approximate newton-type method for federated edge learning

    , Article IEEE Transactions on Parallel and Distributed Systems ; Volume 33, Issue 11 , 2022 , Pages 2648-2660 ; 10459219 (ISSN) Dinh, C. T ; Tran, N. H ; Nguyen, T. D ; Bao, W ; Balef, A. R ; Zhou, B. B ; Zomaya, A. Y ; Sharif University of Technology
    IEEE Computer Society  2022
    Abstract
    There is growing interest in applying distributed machine learning to edge computing, forming federated edge learning. Federated edge learning faces non-i.i.d. and heterogeneous data, and the communication between edge workers, possibly through distant locations and with unstable wireless networks, is more costly than their local computational overhead. In this work, we propose ${{sf DONE}}$DONE, a distributed approximate Newton-type algorithm with fast convergence rate for communication-efficient federated edge learning. First, with strongly convex and smooth loss functions, ${{sf DONE}}$DONE approximates the Newton direction in a distributed manner using the classical Richardson iteration... 

    A machine learning framework for predicting entrapment efficiency in niosomal particles

    , Article International Journal of Pharmaceutics ; Volume 627 , 2022 ; 03785173 (ISSN) Kashani Asadi Jafari, F ; Aftab, A ; Ghaemmaghami, S ; Sharif University of Technology
    Elsevier B.V  2022
    Abstract
    Niosomes are vesicles formed mostly by nonionic surfactant and cholesterol incorporation as an excipient. The drug entrapment efficiency of niosomal vesicles is particularly important and depends on many parameters. Changing the effective parameters to have maximum entrapment efficiency in the laboratory is time-consuming and costly. In this study, a machine learning framework was proposed to address these problems. In order to find the most critical parameter affecting the entrapment efficiency and its optimal value in a specific experiment, data were first extracted from articles of the last decade using keywords of niosome and thin-film hydration method. Then, deep neural network (DNN),...