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    Determination of Landing Gear Loading in Landing Process Using Multi-body Dynamics Softwares

    , M.Sc. Thesis Sharif University of Technology Kavousi, Ahmad (Author) ; Haddadpour, Hassan (Supervisor)
    Abstract
    In this project, the landing process is simulated by using of multi-body dynamics commercial software. Various factors, including landing situations, aircraft structures and climate are used in this simulation. The purpose of this project is to determine the forces exerted on the aircraft landing gears in landing process in various landing conditions. For this purpose, the ADAMS multi-body dynamics software is used. At first, different scenarios based on FAR-25, including level landing, tail-down landing, crab landing are simulated. Results of dynamic simulation software with landing load factor obtained from the analytical solution are compared. Then for the level landing, different... 

    Optimization of Hybrid Anaerobic/Aerobic Bioreactor for Phosphate Removal

    , M.Sc. Thesis Sharif University of Technology Kavousi, Rezvan (Author) ; Borghei, Mehdi (Supervisor)
    Abstract
    Discharging treated or raw waste water in to surface water may cause lots of serious problems, including growth of algae, as a result of the presence of nutrients in waste water.algae decrease the concentration of dissolve oxygen in water.phosphorus removal from waste water is of absolute necessity. according to the standards set by the environmental organization, discharge the untreated waster water in to the surface water is not allowed. on the other hand, given manager facilities of deprived area,effort is channeled to reach the desired result through designing the simplest treatment systems. anaerobic-aerobic systems have remarkably been used for many years in the treatment of urban and... 

    Efficient scalable multi-party private set intersection using oblivious PRF

    , Article 17th International Workshop on Security and Trust Management, STM 2021, co-located with the 26th European Symposium on Research in Computer Security, ESORICS 2021, 8 October 2021 through 8 October 2021 ; Volume 13075 LNCS , 2021 , Pages 81-99 ; 03029743 (ISSN); 9783030918583 (ISBN) Kavousi, A ; Mohajeri, J ; Salmasizadeh, M ; Sharif University of Technology
    Springer Science and Business Media Deutschland GmbH  2021
    Abstract
    In this paper, we present a concretely efficient protocol for private set intersection (PSI) in the multi-party setting using oblivious pseudorandom function (OPRF). In fact, we generalize the approach used in the work of Chase and Miao [CRYPTO 2020] towards deploying a lightweight multi-point OPRF construction for two-party PSI. Our protocol only includes oblivious transfer (OT) extension and garbled Bloom filter as its main ingredients and avoids computationally expensive operations. From a communication pattern perspective, the protocol consists of two types of interactions. The first type is performed over a star-like communication graph in which one designated party interacts with all... 

    Miniaturized patch antenna using a circular spiral-based metamaterial

    , Article Microwave and Optical Technology Letters ; Volume 59, Issue 9 , 2017 , Pages 2276-2279 ; 08952477 (ISSN) Kavousi, H ; Rashed Mohassel, J ; Edalatipour, M ; Sharif University of Technology
    2017
    Abstract
    A miniaturized patch antenna is proposed and its radiation properties are experimentally investigated. A new metamaterial configuration based on circular spiral inclusion is used as the patch antenna substrate. The proposed antenna has not only a lighter profile but also a higher gain in comparison with its previously reported counterparts. It is shown that by using this new configuration a miniaturization factor of 3.1 can be realized. © 2017 Wiley Periodicals, Inc  

    Text Mining in Biological data for Protein-Protein Interaction

    , M.Sc. Thesis Sharif University of Technology Taheri, Nooshin (Author) ; Ghorshi, Ali (Supervisor) ; Kavousi, Kaveh (Supervisor)
    Abstract
    Decades ago, scientists and researchers found out proteins are not function isolated and act in multi protein complexes as complex networks. So, they started to study about proteins and their interaction in the term of protein-protein interaction, therefore, the number of publication in this field grows rapidly. This large amount of published articles (in scientific journals or web pages or books) are unstructured and it is hard to classify them manually. Also, study and read all of these documents is difficult for one person. Hence, it’s better to find a way which could help scientists and researcher to study these unstructured or semi-structured information more easily. The best way to... 

    An Algorithm for Distributed Connectivity Decomposition and its Applications in Information Dissemination

    , M.Sc. Thesis Sharif University of Technology Ebrahimi, Shahab (Author) ; Izadi, Mohammad (Supervisor) ; Kavousi, Kaveh (Co-Advisor)
    Abstract
    The fundamental goal of communication networks is to transfer messages across the network between the nodes. Often, maximizing the information flow which is limited by connectivity of the network could be interesting. The concept of connectivity is divided into edge and vertex connectivity. If our focus were on the vertex-connectivity, connected dominating sets (CDS) could be a valuable tool. Obtaining (fractionally) vertex-disjoint connected dominating sets which are called fractional CDS packing presents a backbone to get an information flow matching the size of connectivity. In this thesis, we will present a distributed algorithm that is given a communication network with n nodes and... 

    Stochastic Reconfiguration and Optimal Coordination of V2G Plug-in Electric Vehicles Considering Correlated Wind Power Generation

    , Article IEEE Transactions on Sustainable Energy ; Volume 6, Issue 3 , 2015 , Pages 822-830 ; 19493029 (ISSN) Kavousi Fard, A ; Niknam, T ; Fotuhi Firuzabad, M ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2015
    Abstract
    This paper investigates the optimal operation of distribution feeder reconfiguration (DFR) strategy in the smart grids with high penetration of plug-in electric vehicles (PEVs) and correlated wind power generation. The increased utilization of PEVs in the system with stochastic volatile behavior along with the high penetration of renewable power sources such as wind turbines (WTs) can create new challenges in the system that will affect the DFR strategy greatly. In order to reach the most efficiency from the PEVs, the idea of vehicle-to-grid (V2G) is employed in this paper to make a bidirectional power flow (either charging/discharging or idle mode) strategy when providing the main charging... 

    A novel stochastic framework based on cloud theory and θ-modified bat algorithm to solve the distribution feeder reconfiguration

    , Article IEEE Transactions on Smart Grid ; Volume 7, Issue 2 , 2016 , Pages 740-750 ; 19493053 (ISSN) Kavousi Fard, A ; Niknam, T ; Fotuhi Firuzabad, M ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2016
    Abstract
    Distribution feeder reconfiguration (DFR) is a precious operation strategy that can improve the system from different aspects including total cost, reliability, and power quality. Nevertheless, the high complexity of the new smart grids has resulted in much uncertainty in the DFR problem that necessities the use of a sufficient stochastic framework to deal with them. In this way, this paper proposes a new stochastic framework based on cloud theory to account the uncertainties associated with multiobjective DFR problem from the reliability point of view. Cloud theory is constructed based on fuzzy theory and probability idea. In comparison with the Monte Carlo simulation method, cloud models... 

    Analysis and Improvement of Private Set Intersection Schemes

    , M.Sc. Thesis Sharif University of Technology Kavousi, Alireza (Author) ; Mohajeri, Javad (Supervisor) ; Salmasizadeh, Mahmoud (Co-Supervisor)
    Abstract
    Secure multi-party computation (MPC) enables a group of mutually distrustful parties to compute a joint and agreed upon function of their private inputs without disclosing anything but the corresponding output. One of the most important secure computation protocols is private set intersection (PSI). In PSI, often two or several parties wish to find the intersection of their sets without revealing other non-common elements. There exist some other variants of PSI protocol like PSI cardinality or threshold PSI which in the former only the cardinality of the intersection set is revealed and in the latter the intersection set is revealed if its cardinality is greater (less) than a certain value.... 

    Predicting Research Trends by Using Link Prediction in Keywords Network

    , M.Sc. Thesis Sharif University of Technology Behrouzi, Saman (Author) ; Hajsadeghi, Khosrow (Supervisor) ; Kavousi, Kaveh (Co-Advisor)
    Abstract
    The rapid development of scientific areas in this modern era makes the process of finding new field of research slow and laborious for prospective scholars. Thus, having a vision of the future could be helpful to pick a right path for doing researches and ensuring that it is worth to invest in. This thesis seeks to predict research trends by using link prediction approaches on keywords network and discusses about the performance of various algorithms in different situations. Moreover, for the last part of the experiments, novel link prediction algorithms are proposed by the author, enhances the accuracy of prediction results. The data set collected from Sciencedirect and Scopus by a strong... 

    Feature Extraction for Protein Sequences Based on NMR Spectra and Its Application in the Protein Interaction Prediction

    , M.Sc. Thesis Sharif University of Technology Teimoori, Bahareh (Author) ; Hajsadeghy, Khosro (Supervisor) ; Kavousi, Kaveh (Supervisor)
    Abstract
    Nuclear magnetic resonance is a spectroscopic method which is used to investigate characteristics of molecules with hydrogen and carbon chains. In this thesis we used, NMR spectrum extracted from 19 types of amino acids for investigating on feature generation for protein sequences. We processed NMR spectra based on Hydrogen and Carbon atoms in structure of the amino acids and after preprocessing we extracted features for each amino acid from the spectra. After that, we tried to cluster the amino acids with Fuzzy Clustering Method (FCM) then we generated feature vectors by extracting special descriptor for amino acids in sequence of proteins. In addition to NMR, we used the features of... 

    Predicting scientific research trends based on link prediction in keyword networks

    , Article Journal of Informetrics ; Volume 14, Issue 4 , 2020 Behrouzi, S ; Shafaeipour Sarmoor, Z ; Hajsadeghi, K ; Kavousi, K ; Sharif University of Technology
    Elsevier Ltd  2020
    Abstract
    The rapid development of scientific fields in this modern era has raised the concern for prospective scholars to find a proper research field to conduct their future studies. Thus, having a vision of future could be helpful to pick the right path for doing research and ensuring that it is worth investing in. In this study, we use article keywords of computer science journals and conferences, assigned by INSPEC controlled indexing, to construct a temporal scientific knowledge network. By observing keyword networks snapshots over time, we can utilize the link prediction methods to foresee the future structures of these networks. We use two different approaches for this link prediction problem.... 

    Improving Robustness of Complex Net-works through Centrality Metrics Analysis

    , M.Sc. Thesis Sharif University of Technology Sayahi, Ali (Author) ; Ghorshi, Mohammad Ali (Supervisor) ; Kavousi, Kaveh (Co-Advisor)
    Abstract
    Complex Networks are everywhere, many complex systems can be represented as networks, such as the power grid, the road network, the airline network and the Protein-protein interaction network, delivery and distribution networks, and telephone networks. A fundamental issue concerning complex networks is the robustness of the overall system to the failure of its constituent parts. The robustness of networks against failure, targeted attacks to individuals’ components, and the impact on the performance of the system has become an important issue for practical reasons in the last few years. The failures attacks or errors on networks are not limited to the deletion of vertex, for common... 

    A network model for vehicular Ad hoc networks: an introduction to obligatory attachment rule

    , Article IEEE Transactions on Network Science and Engineering ; Volume 3, Issue 2 , 2016 , Pages 82-94 ; 23274697 (ISSN) Ghafourian Ghahramani, S. A. A ; Hemmatyar, A. M. A ; Kavousi, K ; Sharif University of Technology
    2016
    Abstract
    In the past few years, the study of complex networks has attracted the attention of researchers. Many real networks, ranging from technological networks such as the Internet to biological networks, have been considered as special types of complex networks. Through application of the network science, important structural properties of such networks have been analyzed and the mechanisms that form such characteristics have been introduced. In this paper, we address the structural characteristics of a technological network called Vehicular Ad hoc Networks (VANETs). Recent studies reveal that the communication graph of VANETs has some interesting characteristics including: the Gaussian degree... 

    An algorithm for constructing all supercharacter theories of a finite group

    , Article Ars Mathematica Contemporanea ; Volume 18, Issue 1 , 2020 , Pages 149-162 Ashrafi, A. R ; Ghanbari Maman, L ; Kavousi, K ; Koorepazan Moftakhar, F ; Sharif University of Technology
    Society of Mathematicians, Physicists and Astronomers of Slovenia  2020
    Abstract
    In 2008, Diaconis and Isaacs introduced the notion of a supercharacter theory of a finite group in which supercharacters replace with irreducible characters and superclasses by conjugacy classes. In this paper, we introduce an algorithm for constructing supercharacter theories of a finite group by which all supercharacter theories of groups containing up to 14 conjugacy classes are calculated. © 2020 Society of Mathematicians, Physicists and Astronomers of Slovenia. All rights reserved  

    Load Balancing In Software Defined Networks

    , M.Sc. Thesis Sharif University of Technology Kavousi Rekati, Amin (Author) ; Hemmatyar, Ali Mohammad Afshin (Supervisor)
    Abstract
    The widely used services such as search engines, websites and social networks are deployed on multiple servers for quick and reliable access. Therefore, there is need to load balancer for distributing requests. In traditional networks usually dedicated hardware load balancers are used, which are very expensive, inflexible, single point of failure and prone to congestion. To solve this problem, using software defined networks, a simple device which works based on OpenFlow protocol can turn into a powerful load balancer with installing the rules by the controller.In software defined networks, a controller is used for load balancing, which has two main problems. First, in case of a failure in... 

    Automated Plant Species Identification Using Leaf Shape-Based Classification Techniques: A Case Study on Iranian Maples

    , Article Iranian Journal of Science and Technology - Transactions of Electrical Engineering ; Volume 45, Issue 3 , 2021 , Pages 1051-1061 ; 22286179 (ISSN) Mohtashamian, M ; Karimian, M ; Moola, F ; Kavousi, K ; Masoudi Nejad, A ; Sharif University of Technology
    Springer Science and Business Media Deutschland GmbH  2021
    Abstract
    Foliar characteristics, especially the overall leaf shape, are useful features for the taxonomic identification of plants. Computer-aided plant species identification systems make it possible to investigate a large number of leaves in a short period of time. In this study, a fully automatic system was developed to accurately classify eight species of maples (Acer L.) in Iran using the leaf shape characteristics of harvested leaves. Maples show a broad range of leaf morphology, and the provided dataset is a diverse collection of simple leaves which can be a good representative of woody plant leaves with any overall shape and margin pattern. The applied method consisted of preprocessing,... 

    An integrative Bayesian network approach to highlight key drivers in systemic lupus erythematosus

    , Article Arthritis Research and Therapy ; Volume 22, Issue 1 , June , 2020 Maleknia, S ; Salehi, Z ; Rezaei Tabar, V ; Sharifi Zarchi, A ; Kavousi, K ; Sharif University of Technology
    BioMed Central  2020
    Abstract
    Background: A comprehensive intuition of the systemic lupus erythematosus (SLE), as a complex and multifactorial disease, is a biological challenge. Dealing with this challenge needs employing sophisticated bioinformatics algorithms to discover the unknown aspects. This study aimed to underscore key molecular characteristics of SLE pathogenesis, which may serve as effective targets for therapeutic intervention. Methods: In the present study, the human peripheral blood mononuclear cell (PBMC) microarray datasets (n = 6), generated by three platforms, which included SLE patients (n = 220) and healthy control samples (n = 135) were collected. Across each platform, we integrated the datasets by... 

    Drug-Target Interaction Prediction with Deep Learning and Recommender Systems

    , M.Sc. Thesis Sharif University of Technology Nosrati, Amir Hossein (Author) ; Ghafourian Ghahramani, Amir Ali (Supervisor) ; Kavousi, Kaveh (Supervisor)
    Abstract
    A drug can be defined as a substance made to prevent disease, cure a specific symptom, relieve pain, and reduce anomalies in the body. The process of drug designing is so laborious, complex, costly, and time-consuming that chance of failure during the lab experiment stages is high. These challenges have persuaded researchers to find new usage for existing drugs, referred to as drug repurposing, with the main advantage of reducing cost, risk, and time. To this aim, computational methods have been applied to discover hidden pharmaceutical capabilities of drugs in terms of predicting whether a particular drug can interact with a particular protein.Graph Neural Networks (GNNs) have recently... 

    Mutation Prediction of Infectious Viruses Based on Different Machine Learning Approaches

    , M.Sc. Thesis Sharif University of Technology Ehteshami, Khashayar (Author) ; Ghafourian Ghahramani, Amir Ali (Supervisor) ; Kavousi, Kaveh (Supervisor)
    Abstract
    Predicting the evolution of viruses is vital in controlling, preventing, and treating diseases. Mutations that evade the host immune system can propagate and persist through generations, making it crucial to anticipate and combat them effectively. The 1918 H1N1 pandemic serves as an example of the devastating impact of pandemics caused by viral mutations. By predicting mutations in advance, we can identify potential future pandemics and take effective preventative measures to mitigate their impact. Proteins play a vital role in the functioning of viruses. They are involved in various processes, such as replication, transcription, and host cell invasion. Any changes in the protein sequence...