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Total 285 records

    Optimizing size and operation of hybrid energy systems

    , Article Proceedings of the 2013 IEEE 7th International Power Engineering and Optimization Conference, PEOCO 2013 ; 2013 , p. 489-494 ; ISBN: 9781470000000 Ghazvini, M ; Abbaspour-Tehrani-Fard, A ; Fotuhi-Firuzabad, M ; Othman, M. M ; Sharif University of Technology
    Abstract
    This paper presents a new method to simultaneously optimize components' size, set points of the control system and slope of PV panels of standalone hybrid energy systems (HESs) using the Passive Congregation PSO (PSOPC) approach. New control set points are defined for the HES, and a new operation strategy is presented based on the defined set points. The optimization algorithm determines the optimal values of the set points to efficiently optimize the HES operation. The effectiveness of the proposed control set points is finally verified through some numerical analyses. In this regard, the proposed optimization method is employed to optimize various HES configurations and compared with other... 

    Controlling chaos in tapping mode atomic force microscopes using improved minimum entropy control

    , Article Applied Mathematical Modelling ; Vol. 37, Issue 3 , 2013 , pp. 1599-1606 ; ISSN: 0307904X Sadeghpour, M ; Salarieh, H ; Alasty, A ; Sharif University of Technology
    Abstract
    Minimum entropy control technique, an approach for controlling chaos without using the dynamical model of the system, can be improved by being combined with a nature-based optimization technique. In this paper, an ACO-based optimization algorithm is employed to minimize the entropy function of the chaotic system. The feedback gain of a delayed feedback controller is adjusted in the ACO algorithm. The effectiveness of the idea is investigated on suppressing chaos in the tapping-mode atomic force microscope equations. Results show a good performance. The PSO-based version of the minimum entropy control technique is also used to control the chaotic behavior of the AFM, and corresponding results... 

    Leader connectivity management and flocking velocity optimization using the particle swarm optimization method

    , Article Scientia Iranica ; Vol. 19, Issue 5 , 2012 , pp. 1251-1257 ; ISSN: 10263098 Etemadi, S ; Vatankhah, R ; Alasty, A ; Vossough,i G. R ; Boroushaki M ; Sharif University of Technology
    Abstract
    Flocking through leader following structures in mobile networks raises attractive control problems. Due to limited sensing radii, leaders locally influence a network of agents. In this paper, we consider the problem of real-time maximization of flocking velocity. By using local information and a Particle-Swarm-Optimization (PSO) algorithm, a Leader Agent (LA) actively motivates flocking at high speed. The LA manages topology of the network in its neighborhood and increases flocking velocity. PSO output quality and calculation costs show that the proposed optimization algorithm is practically feasible. A case-study is also presented  

    variable control of chaos using PSO-based minimum entropy control

    , Article Communications in Nonlinear Science and Numerical Simulation ; Vol. 16, Issue. 6 , 2011 , pp. 2397-2404 ; ISSN: 10075704 Sadeghpour, M ; Salarieh, H ; Vossoughi, G ; Alasty, A ; Sharif University of Technology
    Abstract
    The minimum entropy (ME) control is a chaos control technique which causes chaotic behavior to vanish by stabilizing unstable periodic orbits of the system without using mathematical model of the system. In this technique some controller type, normally delayed feedback controller, with an adjustable parameter such as feedback gain is used. The adjustable parameter is determined such that the entropy of the system is minimized. Proposed in this paper is the PSO-based multi-variable ME control. In this technique two or more control parameters are adjusted concurrently either in a single or in multiple control inputs. Thus it is possible to use two or more feedback terms in the delayed feedback... 

    Optimizing a hybrid vendor-managed inventory and transportation problem with fuzzy demand: An improved particle swarm optimization algorithm

    , Article Information Sciences ; Vol. 272 , July , 2014 , pp. 126-144 ; ISSN: 00200255 Sadeghi, J ; Sadeghi, S ; Niaki, S. T. A ; Sharif University of Technology
    Abstract
    Vendor-managed inventory (VMI) is a popular policy in supply chain management (SCM) to decrease bullwhip effect. Since the transportation cost plays an important role in VMI and because the demands are often fuzzy, this paper develops a VMI model in a multi-retailer single-vendor SCM under the consignment stock policy. The aim is to find optimal retailers' order quantities so that the total inventory and transportation cost are minimized while several constraints are satisfied. Because of the NP-hardness of the problem, an algorithm based on particle swarm optimization (PSO) is proposed to find a near optimum solution, where the centroid defuzzification method is employed for... 

    A multi-product multi-period inventory control problem under inflation and discount: A parameter-tuned particle swarm optimization algorithm

    , Article International Journal of Advanced Manufacturing Technology ; Vol. 70, issue. 9-12 , 2014 , pp. 1739-1756 ; ISSN: 02683768 Mousavi, S. M ; Hajipour, V ; Niaki, S. T. A ; Aalikar, N ; Sharif University of Technology
    Abstract
    In this paper, a seasonal multi-product multi-period inventory control problem is modeled in which the inventory costs are obtained under inflation and all-unit discount policy. Furthermore, the products are delivered in boxes of known number of items, and in case of shortage, a fraction of demand is considered backorder and a fraction lost sale. Besides, the total storage space and total available budget are limited. The objective is to find the optimal number of boxes of the products in different periods to minimize the total inventory cost (including ordering, holding, shortage, and purchasing costs). Since the integer nonlinear model of the problem is hard to solve using exact methods, a... 

    Well placement optimization using a particle swarm optimization algorithm, a novel approach

    , Article Petroleum Science and Technology ; Vol. 32, issue. 2 , 2014 , pp. 170-179 ; ISSN: 10916466 Afshari, S ; Pishvaie, M. R ; Aminshahidy, B ; Sharif University of Technology
    Abstract
    Optimal well placement is a crucial step in reservoir development process. The key points in such an optimization process are using a fast function evaluation tool and development of an efficient optimization algorithm. This study presents an approach that uses particle swarm optimization algorithm in conjunction with streamline simulation to determine the optimum well locations within a reservoir, regarding a modified net present value as the objective. Performance of this algorithm was investigated through several different examples, and compared to that of genetic algorithm (GA) and simulated annealing (SA) methods. It was observed that particle swarm optimization algorithm outperformed... 

    A PSO based approach for multi-stage transmission expansion planning in electricity markets

    , Article International Journal of Electrical Power and Energy Systems ; Vol. 54, issue , 2014 , pp. 91-100 ; SSN: 01420615 Kamyab, G. R ; Fotuhi-Firuzabad, M ; Rashidinejad, M ; Sharif University of Technology
    Abstract
    This paper presents a particle swarm optimization (PSO) based approach to solve the multi-stage transmission expansion planning problem in a competitive pool-based electricity market. It is a large-scale non-linear combinatorial problem. We have considered some aspects in our modeling including a multi-year time horizon, a number of scenarios based on the future demands of system, investment and operating costs, the N - 1 reliability criterion, and the continuous non-linear functions of market-driven generator offers and demand bids. Also the optimal expansion plan to maximize the cumulative social welfare among the multi-year horizon is searched. Our proposed PSO based approach, namely... 

    An evolutionary decoding method for HMM-based continuous speech recognition systems using particle swarm optimization

    , Article Pattern Analysis and Applications ; Vol. 17, issue. 2 , 2014 , pp. 327-339 Najkar, N ; Razzazi, F ; Sameti, H ; Sharif University of Technology
    Abstract
    The main recognition procedure in modern HMM-based continuous speech recognition systems is Viterbi algorithm. Viterbi algorithm finds out the best acoustic sequence according to input speech in the search space using dynamic programming. In this paper, dynamic programming is replaced by a search method which is based on particle swarm optimization. The major idea is focused on generating initial population of particles as the speech segmentation vectors. The particles try to achieve the best segmentation by an updating method during iterations. In this paper, a new method of particles representation and recognition process is introduced which is consistent with the nature of continuous... 

    A novel simultaneous reconfiguration and capacitor switching method to improve distribution networks operation

    , Article 2014 14th International Conference on Environment and Electrical Engineering, EEEIC 2014 - Conference Proceedings ; May , 2014 , pp. 295-300 ; ISBN: 9781479946617 Ameli, A ; Davari-Nejad, E ; Kamyab, F ; Vakilian, M ; Haghifam, M. R ; Sharif University of Technology
    Abstract
    Due to the important role that distribution systems play in quality of power delivered to the customers, there has always been a great deal of interest in investigating different methods of efficiency enhancement for these networks. Two of these methods are Feeder Reconfiguration (FR) and Capacitor Allocation (CA); both have been widely employed to reduce losses and improve several other operational characteristics in electrical power distribution systems. As in FR process the topology of the network changes, it is necessary to change some previous settings; for instance: the capacity of capacitor banks in service in each bus, after each reconfiguration process. This is due to the fact that... 

    A particle swarm optimization approach for robust unit commitment with significant vehicle to grid penetration

    , Article Iranian Conference on Intelligent Systems, ICIS 2014 ; 2014 Kherameh, A. E ; Aien, M ; Rashidinejad, M ; Fotuhi-Firouzabad, M
    Abstract
    Smartening of contemporaneous power delivery systems in conjunction with increased penetration of vehicle to grid (V2G) technology, changes the way market participants play their role in the market operation to maximize their profit. In V2G technology, plug-in electric vehicles (PEV) have bidirectional power flows i.e. they can either inject power to the grid or draw power from it. In recent years, the V2G technology has found a world wild attention due to its important advantages such as the peak load reduction and providing system reserve, to name a few. The unit commitment (UC) is a power system operation problem which is used to find the optimal operation schedule of generation units.... 

    An evolvable self-organizing neuro-fuzzy multilayered classifier with group method data handling and grammar-based bio-inspired supervisors for fault diagnosis of hydraulic systems

    , Article International Journal of Intelligent Computing and Cybernetics ; Vol. 7, issue. 1 , 2014 , p. 38-78 Mozaffari, A ; Fathi, A ; Behzadipour, S ; Sharif University of Technology
    Abstract
    Purpose: The purpose of this paper is to apply a hybrid neuro-fuzzy paradigm called self-organizing neuro-fuzzy multilayered classifier (SONeFMUC) to classify the operating faults of a hydraulic system. The main motivation behind the use of SONeFMUC is to attest the capabilities of neuro-fuzzy classifier for handling the difficulties associated with fault diagnosis of hydraulic circuits. Design/methodology/approach: In the proposed methodology, first, the neuro-fuzzy nodes at each layer of the SONeFMUC are trained separately using two well-known bio-inspired algorithms, i.e. a semi deterministic method with random walks called co-variance matrix adaptation evolutionary strategy (CMA-ES) and... 

    Total fuel reduction via formation flights: a new approach to air-corridor path optimization

    , Article AIAA AVIATION 2014 -14th AIAA Aviation Technology, Integration, and Operations Conference ; 2014 Asadi, F ; Malaek, S. M. B ; Sharif University of Technology
    Abstract
    This paper presents a new approach to better utilize international air-corridors for formation flights. Using Particle Swarm Optimization, we show how different long-range flights can be brought together to form a formation. The idea serves both to increase international air-corridor capacities together and to decrease fuel consumption up to 8-10%. Case studies show that there are many places which such an approach could effectively be implemented to help cope with increase in fuel price as well as the demand for aerial transport of passengers and goods  

    Shape optimization of concrete arch dams considering abutment stability

    , Article Scientia Iranica ; Vol. 21, issue. 4 , 2014 , p. 1297-1308 ; 10263098 Takalloozadeh, M ; Ghaemian, M ; Sharif University of Technology
    Abstract
    A novel and robust approach is proposed to find the optimum shape of concrete arch dams located on any unsymmetrical shape of a valley. The approach is capable of finding the optimum shape for any given valley type in suitable time, based on abutment stability analysis, against thrust forces from an arch dam. The behavior and stability of a concrete arch dam is strongly dependent on the bedrock on which the dam rests. The stability of the abutment is considered a constraint in the proposed approach. In addition, a new objective function is introduced to decrease the final volume of the arch dam. Furthermore, a computer program was developed, which takes the effect of the dam foundation... 

    Dynamic diversity enhancement in particle swarm optimization (DDEPSO) algorithm for preventing from premature convergence

    , Article Procedia Computer Science ; Volume 24 , 2013 , Pages 54-65 ; ISSN: 18770509 Nezami, O. M ; Bahrampour, A ; Jamshidlou, P ; Sharif University of Technology
    2013
    Abstract
    The problem of early convergence in the Particle Swarm Optimization (PSO) algorithm often causes the search process to be trapped in a local optimum. This problem often occurs when the diversity of the swarm decreases and the swarm cannot escape from a local optimal. In this paper, a novel dynamic diversity enhancement particle swarm optimization (DDEPSO) algorithm is introduced. In this variant of PSO, we periodically replace some of the swarm's particles by artificial ones, which are generated based on the history of the search process, in order to enhance the diversity of the swarm and promote the exploration ability of the algorithm. Afterwards, we update the velocity of the artificial... 

    Replenish-up-to multi-chance-constraint inventory control system under fuzzy random lost-sale and backordered quantities

    , Article Knowledge-Based Systems ; Volume 53 , 2013 , Pages 147-156 ; 09507051 (ISSN) Taleizadeh, A. A ; Niaki, S. T. A ; Meibodi, R. G ; Sharif University of Technology
    2013
    Abstract
    In this paper, a multiproduct multi-chance constraint stochastic inventory control problem is considered, in which the time-periods between two replenishments are assumed independent and identically distributed random variables. For the problem at hand, the decision variables are of integer-type, the service-level is a chance constraint for each product, and the space limitation is another constraint of the problem. Furthermore, shortages are allowed in the forms of fuzzy random quantities of lost sale that are backordered. The developed mathematical formulation of the problem is shown to be a fuzzy random integer-nonlinear programming model. The aim is to determine the maximum level of... 

    Multi-objective geometrical optimization of full toroidal CVT

    , Article International Journal of Automotive Technology ; Volume 14, Issue 5 , 2013 , Pages 707-715 ; 12299138 (ISSN) Delkhosh, M ; Saadat Foumani, M ; Sharif University of Technology
    2013
    Abstract
    The objective of this research is geometrical and kinematical optimization of full-toroidal continuously variable transmission (CVT) in order to achieve high power transmission efficiency and low mass. At first, a dynamic analysis is performed for the system. A computer model is developed to simulate elastohydrodynamic (EHL) contact between disks and roller and consequently, calculate CVT efficiency. The validity of EHL model is investigated by comparing output of this model and experimental data. Geometrical parameters are obtained by means of Particle Swarm Optimization algorithm, while the optimization objective is to maximize CVT efficiency and minimize its mass. The algorithm is run for... 

    Availability optimization of a series system with multiple repairable load sharing subsystems considering redundancy and repair facility allocation

    , Article International Journal of Systems Assurance Engineering and Management ; Volume 4, Issue 3 , September , 2013 , Pages 262-274 ; 09756809 (ISSN) Yahyatabar Arabi, A .A ; Eshraghniaye Jahromi, A ; Sharif University of Technology
    2013
    Abstract
    Redundancy technique is considered as a way to enhance the reliability and availability of a system. This paper models availability of a repairable system with multiple subsystems in which the involved components follow the load sharing strategy. In redundancy allocation problems, the redundancy level is just considered, whereas, in this paper, the number of repair facility (repairman) is added to the decision variables. The goal is to find the optimal number of repairmen and redundant components in each subsystem for optimization of availability subject to weight, cost and volume constraints. The main contribution of this study is to present a straightforward model for availability... 

    An intelligent approach for optimal prediction of gas deviation factor using particle swarm optimization and genetic algorithm

    , Article Journal of Natural Gas Science and Engineering ; Volume 14 , September , 2013 , Pages 132-143 ; 18755100 (ISSN) Chamkalani, A ; Mae'soumi, A ; Sameni, A ; Sharif University of Technology
    2013
    Abstract
    The measurement of PVT properties of natural gas in gas pipelines, gas storage systems, and gas reservoirs require accurate values of compressibility factor. Although equation of state and empirical correlations were utilized to estimate compressibility factor, but the demands for novel, more reliable, and easy-to-use models encouraged the researchers to introduce modern tools such as artificial intelligent systems.This paper introduces Particle swarm optimization (PSO) and Genetic algorithm (GA) as population-based stochastic search algorithms to optimize the weights and biases of networks, and to prevent trapping in local minima. Hence, in this paper, GA and PSO were used to minimize the... 

    Optimizing a multi-vendor multi-retailer vendor managed inventory problem: Two tuned meta-heuristic algorithms

    , Article Knowledge Based Systems ; Volume 50 , September , 2013 , Pages 159-170 ; 09507051 (ISSN) Sadeghi, J ; Mousavi, S. M ; Niaki, S. T. A ; Sadeghi, S ; Sharif University of Technology
    2013
    Abstract
    The vendor-managed inventory (VMI) is a common policy in supply chain management (SCM) to reduce bullwhip effects. Although different applications of VMI have been proposed in the literature, the multi-vendor multi-retailer single-warehouse (MV-MR-SW) case has not been investigated yet. This paper develops a constrained MV-MR-SW supply chain, in which both the space and the annual number of orders of the central warehouse are limited. The goal is to find the order quantities along with the number of shipments received by retailers and vendors such that the total inventory cost of the chain is minimized. Since the problem is formulated into an integer nonlinear programming model, the...