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    Reliability consideration in optimization of cascaded hydrothermal power systems

    , Article International Journal of Power and Energy Systems ; Volume 23, Issue 1 , 2003 , Pages 6-14 ; 10783466 (ISSN) Modarres, M ; Farrokhzad, D ; Sharif University of Technology
    2003
    Abstract
    This article investigates optimization of long-term operation of hydrothermal power systems consisting of cascaded reservoirs. Due to stochasticity of reservoir inflows, demand for energy, and unit forced outages, the uncertainty of this system is so significant that reliability of demand satisfaction becomes an indispensable component of the modelling process. On the other hand, existence of stochastic parameters, especially in the case of cascaded reservoirs, makes the problem very difficult to solve by applying existing optimization techniques. A hybrid genetic algorithm with dynamic tuning of its control parameters is developed that incorporates real number encoding and an analytical... 

    Study of stochastic sequence-dependent flexible flow shop via developing a dispatching rule and a hybrid GA

    , Article Engineering Applications of Artificial Intelligence ; 2012 , Pages 494-506 ; 09521976 (ISSN) Kianfar, K ; Fatemi Ghomi, S. M. T ; Oroojlooy Jadid, A ; Sharif University of Technology
    2012
    Abstract
    A flexible flow shop is a generalized flow shop with multiple machines in some stages. This system is fairly common in flexible manufacturing and in process industry. In most practical environments, scheduling is an ongoing reactive process where the presence of real time information continually forces reconsideration of pre-established schedules. This paper studies a flexible flow shop system considering non-deterministic and dynamic arrival of jobs and also sequence dependent setup times. The problem objective is to determine a schedule that minimizes average tardiness of jobs. Since the problem class is NP-hard, a novel dispatching rule and hybrid genetic algorithm have been developed to... 

    Three hybrid GAs for discounted fixed charge transportation problems

    , Article Cogent Engineering ; Volume 5, Issue 1 , 2018 ; 23311916 (ISSN) Ghassemi Tari, F ; Hashemi, Z ; Sharif University of Technology
    Cogent OA  2018
    Abstract
    The problem of allocating heterogeneous fleet of vehicles to the existing distribution network for dispensing products fro. manufacturing firm t. set of depots is considered. It is assume. heterogeneous fleet of vehicles with the given capacities and total costs consisting o. discounted fixed cost an. variable cost proportional to the amount shipped is employed for handling products. To minimize the total transportation costs, the problem is modeled i. form of the nonlinear mixed integer program. Due to the NP hard complexity of the mathematical model, three prioritized K-mean clustering hybrid GAs, by incorporating two new heuristic algorithms, are proposed. The efficiency of the algorithms... 

    Launch vehicle multi-objective reliability-redundancy optimization using a hybrid genetic algorithm-particle swarm optimization

    , Article Proceedings of the Institution of Mechanical Engineers, Part G: Journal of Aerospace Engineering ; Volume 229, Issue 10 , Nov , 2015 , Pages 1785-1797 ; 09544100 (ISSN) Raouf, N ; Pourtakdoust, S. H ; Sharif University of Technology
    SAGE Publications Ltd  2015
    Abstract
    This paper focuses on multi-objective reliability optimization of a two-stage launch vehicle using a hybridized Genetic Algorithm-Particle Swarm Optimization with provisions of relative weighting between the objectives. In this respect, the launch vehicle key subsystems as well as their functions are initially introduced. Subsequently, the system reliability block diagram is constructed using the launch vehicle working order of the subsystems augmented with the requirements for a robust fault/failure tolerant design and performance. Next, based on the proposed reliability block diagram arrangement a bi-objective optimization is formulated to maximize the system reliability while minimizing... 

    Designing of Clinical Decision Support System for Heart Disease Diagnosis Using Data Mining Techniques

    , M.Sc. Thesis Sharif University of Technology Sali, Rasoul (Author) ; Shavandi, Hassan (Supervisor)
    Abstract
    In this study hybrid classification models by combining genetic algorithm and classifiers such as neural network and decision tree are presented and efficiency of these models is tested on 5 different databases against other proposed models in this area. This comparison shows that the model obtained by combining genetic algorithm and neural network obtains better results than other models. Afterwards this model is used as a decision support system in diagnosis heart disease and in addition to determining the parameters of neural network such as the number of hidden layers and the number of neurons in each layer, efficient features in diagnosis heart disease are also determined. Among the... 

    Reliability-Driven Approach for Controller Placement Problem in Software-Defined Networking

    , M.Sc. Thesis Sharif University of Technology Zarepour Niary, Shabnam (Author) ; Movaghar Rahimabadi, Ali (Supervisor)
    Abstract
    Software Defined Networks has a centralized control layer for the network, so that the controller manages network on the basis of a global view of the network. Large-sized networks use multiple network controllers due to the possibility of single point of failure(SPOF) and distribute control tasks of the network between them. One of the challenges in these networks is how to place the controllers in order to increase network performance. Most of the work done in this field uses heuristic algorithms to solve the placement problems of controllers. The main weakness of the heuristic algorithms is that they are trapped in local optimal solutions. In this research, we used a hybrid genetic... 

    Optimization of gas allocation to a group of wells in gas lift in one of the Iranian oil fields using an efficient hybrid genetic algorithm (HGA)

    , Article Petroleum Science and Technology ; Volume 31, Issue 9 , 2013 , Pages 949-959 ; 10916466 (ISSN) Ghaedi, M ; Ghotbi, C ; Aminshahidy, B ; Sharif University of Technology
    2013
    Abstract
    A hybrid genetic algorithm (HGA) was introduced to allocate optimum amount of gas. This method was applied to a group of wells in gas lift in the case of availability limited amount of gas. For testing the ability of the proposed HGA, the results of this work with those of previous works in a field with six wells were compared. Then for an Iranian southern west oil field with nine wells, gas allocation is performed using different amount of available gas. The results show that the introduced method (HGA) is very efficient tool in gas allocation issue  

    An efficient hybrid genetic algorithm to solve assembly line balancing problem with sequence-dependent setup times

    , Article Computers and Industrial Engineering ; Volume 62, Issue 4 , 2012 , Pages 936-945 ; 03608352 (ISSN) Yolmeh, A ; Kianfar, F ; Sharif University of Technology
    2012
    Abstract
    In this paper the setup assembly line balancing and scheduling problem (SUALBSP) is considered. Since this problem is NP-hard, a hybrid genetic algorithm (GA) is proposed to solve the problem. This problem involves assigning the tasks to the stations and scheduling them inside each station. A simple permutation is used to determine the sequence of tasks. To determine the assignment of tasks to stations, the algorithm is hybridized using a dynamic programming procedure. Using dynamic programming, at any time a chromosome can be converted to an optimal solution (subject to the chromosome sequence). Since population diversity is very important to prevent from being trapped in local optimum... 

    A hybrid genetic algorithm and variable neighborhood search for task scheduling problem in grid environment

    , Article Procedia Engineering ; Volume 29 , 2012 , Pages 3808-3814 ; 18777058 (ISSN) Kardani Moghaddam, S ; Khodadadi, F ; Entezari Maleki, R ; Movaghar, A ; Sharif University of Technology
    2012
    Abstract
    This paper addresses scheduling problem of independent tasks in the market-based grid environment. In market-based grids, resource providers can charge users based on the amount of resource requested by them. In this case, scheduling algorithms should consider users' willingness to execute their applications in most economical manner. As a solution to this problem, a hybrid genetic algorithm and variable neighborhood search is presented to reduce overall cost of task executions without noticeable increment in system makespan. Simulation results show that our algorithm performs much better than other algorithms in terms of cost of task executions. Considering the negative correlation between... 

    Proposing a new model to approximate the elasticity modulus of granite rock samples based on laboratory tests results

    , Article Bulletin of Engineering Geology and the Environment ; 2017 , Pages 1-10 ; 14359529 (ISSN) Behzadafshar, K ; Esfandi Sarafraz, M ; Hasanipanah, M ; Mojtahedi, S. F. F ; Tahir, M. M ; Sharif University of Technology
    Abstract
    An accurate examination of deformability of rock samples in response to any change in stresses is deeply dependent on the reliable determination of properties of the rock as analysis inputs. Although Young’s modulus (E) can provide valuable characteristics of the rock material deformation, the direct determination of E is considered a time-consuming and complicated analysis. The present study is aimed to introduce a new hybrid intelligent model to predict the E of granitic rock samples. Hence, a series of granitic block samples were collected from the face of a water transfer tunnel excavated in Malaysia and transferred to laboratory to conduct rock index tests for E prediction. Rock index... 

    Proposing a new model to approximate the elasticity modulus of granite rock samples based on laboratory tests results

    , Article Bulletin of Engineering Geology and the Environment ; Volume 78, Issue 3 , 2019 , Pages 1527-1536 ; 14359529 (ISSN) Behzadafshar, K ; Esfandi Sarafraz, M ; Hasanipanah, M ; Mojtahedi, S. F. F ; Tahir, M. M ; Sharif University of Technology
    Springer Verlag  2019
    Abstract
    An accurate examination of deformability of rock samples in response to any change in stresses is deeply dependent on the reliable determination of properties of the rock as analysis inputs. Although Young’s modulus (E) can provide valuable characteristics of the rock material deformation, the direct determination of E is considered a time-consuming and complicated analysis. The present study is aimed to introduce a new hybrid intelligent model to predict the E of granitic rock samples. Hence, a series of granitic block samples were collected from the face of a water transfer tunnel excavated in Malaysia and transferred to laboratory to conduct rock index tests for E prediction. Rock index... 

    Well Placement optimization using hybrid optimization technique combined with fuzzy inference system

    , Article Petroleum Science and Technology ; Vol. 31, issue. 5 , Dec , 2009 , p. 481-491 ; ISSN: 10916466 Darabi, H ; Masihi, M ; Sharif University of Technology
    Abstract
    Decision on the location of new wells through infill drilling projects is a complex problem that depends on the reservoir rock and fluid properties, well and surface facilities specifications, and economic measures. Conventional approach to address this is a direct optimization that uses the numerical flow simulation. However, this is computationally very extensive. In this study the authors use a hybrid genetic algorithm (HGA) optimization technique based on the genetic algorithm (GA) with helper functions based on the polytope algorithm and the neural network. This hybridization introduces hill-climbing into the stochastic search and makes use of proxies created and calibrated iteratively... 

    Well Placement optimization using hybrid optimization technique combined with fuzzy inference system

    , Article Petroleum Science and Technology ; Volume 31, Issue 5 , 2013 , Pages 481-491 ; 10916466 (ISSN) Darabi, H ; Masihi, M ; Sharif University of Technology
    2013
    Abstract
    Decision on the location of new wells through infill drilling projects is a complex problem that depends on the reservoir rock and fluid properties, well and surface facilities specifications, and economic measures. Conventional approach to address this is a direct optimization that uses the numerical flow simulation. However, this is computationally very extensive. In this study the authors use a hybrid genetic algorithm (HGA) optimization technique based on the genetic algorithm (GA) with helper functions based on the polytope algorithm and the neural network. This hybridization introduces hill-climbing into the stochastic search and makes use of proxies created and calibrated iteratively...