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Multi-source coordinated stochastic restoration for SOP in distribution networks with a two-stage algorithm 被引量:1
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作者 Xianxu Huo Pan Zhang +3 位作者 Tao Zhang Shiting Sun Zhanyi Li Lei Dong 《Global Energy Interconnection》 EI CAS CSCD 2023年第2期141-153,共13页
After suffering from a grid blackout, distributed energy resources(DERs), such as local renewable energy and controllable distributed generators and energy storage can be used to restore loads enhancing the system’s ... After suffering from a grid blackout, distributed energy resources(DERs), such as local renewable energy and controllable distributed generators and energy storage can be used to restore loads enhancing the system’s resilience. In this study, a multi-source coordinated load restoration strategy was investigated for a distribution network with soft open points(SOPs). Here, the flexible regulation ability of the SOPs is fully utilized to improve the load restoration level while mitigating voltage deviations. Owing to the uncertainty, a scenario-based stochastic optimization approach was employed,and the load restoration problem was formulated as a mixed-integer nonlinear programming model. A computationally efficient solution algorithm was developed for the model using convex relaxation and linearization methods. The algorithm is organized into a two-stage structure, in which the energy storage system is dispatched in the first stage by solving a relaxed convex problem. In the second stage, an integer programming problem is calculated to acquire the outputs of both SOPs and power resources. A numerical test was conducted on both IEEE 33-bus and IEEE 123-bus systems to validate the effectiveness of the proposed strategy. 展开更多
关键词 Load restoration Soft open points Distribution network stochastic optimization Two-stage algorithm
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Distributed Momentum-Based Frank-Wolfe Algorithm for Stochastic Optimization
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作者 Jie Hou Xianlin Zeng +2 位作者 Gang Wang Jian Sun Jie Chen 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2023年第3期685-699,共15页
This paper considers distributed stochastic optimization,in which a number of agents cooperate to optimize a global objective function through local computations and information exchanges with neighbors over a network... This paper considers distributed stochastic optimization,in which a number of agents cooperate to optimize a global objective function through local computations and information exchanges with neighbors over a network.Stochastic optimization problems are usually tackled by variants of projected stochastic gradient descent.However,projecting a point onto a feasible set is often expensive.The Frank-Wolfe(FW)method has well-documented merits in handling convex constraints,but existing stochastic FW algorithms are basically developed for centralized settings.In this context,the present work puts forth a distributed stochastic Frank-Wolfe solver,by judiciously combining Nesterov's momentum and gradient tracking techniques for stochastic convex and nonconvex optimization over networks.It is shown that the convergence rate of the proposed algorithm is O(k^(-1/2))for convex optimization,and O(1/log_(2)(k))for nonconvex optimization.The efficacy of the algorithm is demonstrated by numerical simulations against a number of competing alternatives. 展开更多
关键词 Distributed optimization Frank-Wolfe(FW)algorithms momentum-based method stochastic optimization
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A genetic algorithm based stochastic programming model for air quality management 被引量:5
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作者 MaXM ZhangF 《Journal of Environmental Sciences》 SCIE EI CAS CSCD 2002年第3期367-374,共8页
This paper presents a model that can aid planners in defining the total allowable pollutant discharge in the planning region, accounting for the dynamic and stochastic character of meteorological conditions. This is a... This paper presents a model that can aid planners in defining the total allowable pollutant discharge in the planning region, accounting for the dynamic and stochastic character of meteorological conditions. This is accomplished by integrating Monte Carlo simulation and using genetic algorithm to solve the model. The model is demonstrated by using a realistic air urban scale SO 2 control problem in the Yuxi City of China. To evaluate effectiveness of the model, results of the approach are shown to compare with those of the linear deterministic procedures. This paper also provides a valuable insight into how air quality targets should be made when the air pollutant will not threat the residents' health. Finally, a discussion of the areas for further research are briefly delineated. 展开更多
关键词 stochastic model genetic algorithms air quality management OPTIMIZATION
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Archery Algorithm:A Novel Stochastic Optimization Algorithm for Solving Optimization Problems 被引量:2
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作者 Fatemeh Ahmadi Zeidabadi Mohammad Dehghani +3 位作者 Pavel Trojovsky Štěpán Hubálovsky Victor Leiva Gaurav Dhiman 《Computers, Materials & Continua》 SCIE EI 2022年第7期399-416,共18页
Finding a suitable solution to an optimization problem designed in science is a major challenge.Therefore,these must be addressed utilizing proper approaches.Based on a random search space,optimization algorithms can ... Finding a suitable solution to an optimization problem designed in science is a major challenge.Therefore,these must be addressed utilizing proper approaches.Based on a random search space,optimization algorithms can find acceptable solutions to problems.Archery Algorithm(AA)is a new stochastic approach for addressing optimization problems that is discussed in this study.The fundamental idea of developing the suggested AA is to imitate the archer’s shooting behavior toward the target panel.The proposed algorithm updates the location of each member of the population in each dimension of the search space by a member randomly marked by the archer.The AA is mathematically described,and its capacity to solve optimization problems is evaluated on twenty-three distinct types of objective functions.Furthermore,the proposed algorithm’s performance is compared vs.eight approaches,including teaching-learning based optimization,marine predators algorithm,genetic algorithm,grey wolf optimization,particle swarm optimization,whale optimization algorithm,gravitational search algorithm,and tunicate swarm algorithm.According to the simulation findings,the AA has a good capacity to tackle optimization issues in both unimodal and multimodal scenarios,and it can give adequate quasi-optimal solutions to these problems.The analysis and comparison of competing algorithms’performance with the proposed algorithm demonstrates the superiority and competitiveness of the AA. 展开更多
关键词 Archer meta-heuristic algorithm population-based optimization stochastic programming swarm intelligence population-based algorithm Wilcoxon statistical test
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A New Stochastic Algorithm of Global Optimization ——Region's Walk and Contraction 被引量:2
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作者 SHI Ding hua 1, PENG Jian ping 2 1.College of Sciences, Shanghai University, Shanghai 200436, China 2.Shanghai Municipal Commission of Science and Technology, Shanghai 200003, China 《Advances in Manufacturing》 2000年第1期1-3,共3页
This paper presents a new stochastic algorithm for box constrained global optimization problem. Bacause the level set of objective function is always not known, the authors designed a region containing the current mi... This paper presents a new stochastic algorithm for box constrained global optimization problem. Bacause the level set of objective function is always not known, the authors designed a region containing the current minimum point to replace it, and in order to fit the level set well, this region would be walking and contracting in the running process. Thus, the new algorithm is named as region's walk and contraction(RWC). Some numerical experiments for the RWC were conducted, which indicate good property of the algorithm. 展开更多
关键词 global optimization stochastic global optimization algorithm simulated annealing
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ANew Theoretical Framework forAnalyzing Stochastic Global Optimization Algorithms 被引量:1
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作者 SHI Ding hua PENG Jian ping (College of Sciences, Shanghai University) 《Advances in Manufacturing》 SCIE CAS 1999年第3期175-180,共6页
In this paper, we develop a new theoretical framework by means of the absorbing Markov process theory for analyzing some stochastic global optimization algorithms. Applying the framework to the pure random search, we ... In this paper, we develop a new theoretical framework by means of the absorbing Markov process theory for analyzing some stochastic global optimization algorithms. Applying the framework to the pure random search, we prove that the pure random search converges to the global minimum in probability and its time has geometry distribution. We also analyze the pure adaptive search by this framework and turn out that the pure adaptive search converges to the global minimum in probability and its time has Poisson distribution. 展开更多
关键词 Global optimization stochastic global optimization algorithm random search absorbing Markov process
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Frequency modulated weak signal detection based on stochastic resonance and genetic algorithm 被引量:17
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作者 XING Hongyan LU Chunxia ZHANG Qiang 《Instrumentation》 2016年第1期41-49,共9页
Stochastic resonance system is subject to the restriction of small frequency parameter in weak signal detection,in order to solve this problem,a frequency modulated weak signal detection method based on stochastic res... Stochastic resonance system is subject to the restriction of small frequency parameter in weak signal detection,in order to solve this problem,a frequency modulated weak signal detection method based on stochastic resonance and genetic algorithm is presented in this paper. The frequency limit of stochastic resonance is eliminated by introducing carrier signal,which is multiplied with the measured signal to be injected in the stochastic resonance system,meanwhile,using genetic algorithm to optimize the carrier signal frequency,which determine the generated difference-frequency signal in the lowfrequency range,so as to achieve the stochastic resonance weak signal detection. Results showthat the proposed method is feasible and effective,which can significantly improve the output SNR of stochastic resonance,in addition,the system has the better self-adaptability,according to the operation result and output phenomenon,the unknown frequency of the signal to be measured can be obtained,so as to realize the weak signal detection of arbitrary frequency. 展开更多
关键词 stochastic RESONANCE two-dimension DUFFING OSCILLATOR frequency MODULATED GENETIC algorithm
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Stochastic Design of Enhanced Network Management Architecture and Algorithmic Implementations 被引量:1
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作者 Song-Kyoo Kim 《American Journal of Operations Research》 2013年第1期87-93,共7页
The paper is focused on available server management in Internet connected network environments. The local backup servers are hooked up by LAN and replace broken main server immediately and several different types of b... The paper is focused on available server management in Internet connected network environments. The local backup servers are hooked up by LAN and replace broken main server immediately and several different types of backup servers are also considered. The remote backup servers are hooked up by VPN (Virtual Private Network) with high-speed optical network. A Virtual Private Network (VPN) is a way to use a public network infrastructure and hooks up long-distance servers within a single network infrastructure. The remote backup servers also replace broken main severs immediately under the different conditions with local backups. When the system performs a mandatory routine maintenance of main and local backup servers, auxiliary servers from other location are being used for backups during idle periods. Analytically tractable results are obtained by using several mathematical techniques and the results are demonstrated in the framework of optimized networked server allocation problems. The operational workflow give the guidelines for the actual implementations. 展开更多
关键词 stochastic Network Management N-POLICY CLOSED QUEUE algorithmic Implementation stochastic Optimization
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A Modified Inhomogeneous Stochastic Simulation Algorithm to Model Reactive Boundary Conditions 被引量:1
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作者 A. Sayyidmousavi S. Ilie 《Journal of Applied Mathematics and Physics》 2021年第8期1870-1882,共13页
The present study proposes a stochastic simulation scheme to model reactive boundaries through a position jump process which can be readily implemented into the Inhomogeneous Stochastic Simulation Algorithm by modifyi... The present study proposes a stochastic simulation scheme to model reactive boundaries through a position jump process which can be readily implemented into the Inhomogeneous Stochastic Simulation Algorithm by modifying the propensity of the diffusive jump over the reactive boundary. As compared to the literature, the present approach does not require any correction factors for the propensity. Also, the current expression relaxes the constraint on the compartment size allowing the problem to be solved with a coarser grid and therefore saves considerable computational cost. The modified algorithm is then applied to simulate three reaction-diffusion systems with reactive boundaries. 展开更多
关键词 Reactive Boundary stochastic Simulation algorithm Reaction-Diffusion Systems
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Modified stochastic user-equilibrium assignment algorithm for urban rail transit under network operation
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作者 朱炜 胡昊 +1 位作者 徐瑞华 洪玲 《Journal of Central South University》 SCIE EI CAS 2013年第10期2897-2904,共8页
Based on the framework of method of successive averages(MSA), a modified stochastic user-equilibrium assignment algorithm was proposed, which can be used to calculate the passenger flow distribution of urban rail tran... Based on the framework of method of successive averages(MSA), a modified stochastic user-equilibrium assignment algorithm was proposed, which can be used to calculate the passenger flow distribution of urban rail transit(URT) under network operation. In order to describe the congestion's impact to passengers' route choices, a generalized cost function with in-vehicle congestion was set up. Building on the k-th shortest path algorithm, a method for generating choice set with time constraint was embedded, considering the characteristics of network operation. A simple but efficient route choice model, which was derived from travel surveys for URT passengers in China, was introduced to perform the stochastic network loading at each iteration in the algorithm. Initial tests on the URT network in Shanghai City show that the methodology, with rational calculation time, promises to compute more precisely the passenger flow distribution of URT under network operation, compared with those practical algorithms used in today's China. 展开更多
关键词 urban rail TRANSIT stochastic USER equilibrium ASSIGNMENT algorithm method of successive AVERAGES network operation
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The Fuzzy Modeling Algorithm for Complex Systems Based on Stochastic Neural Network
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作者 李波 张世英 李银惠 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2002年第3期46-51,共6页
A fuzzy modeling method for complex systems is studied. The notation of general stochastic neural network (GSNN) is presented and a new modeling method is given based on the combination of the modified Takagi and Suge... A fuzzy modeling method for complex systems is studied. The notation of general stochastic neural network (GSNN) is presented and a new modeling method is given based on the combination of the modified Takagi and Sugeno's (MTS) fuzzy model and one-order GSNN. Using expectation-maximization(EM) algorithm, parameter estimation and model selection procedures are given. It avoids the shortcomings brought by other methods such as BP algorithm, when the number of parameters is large, BP algorithm is still difficult to apply directly without fine tuning and subjective tinkering. Finally, the simulated example demonstrates the effectiveness. 展开更多
关键词 Complex system modeling General stochastic neural network MTS fuzzy model Expectation-maximization algorithm
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Gaining-Sharing Knowledge Based Algorithm for Solving Stochastic Programming Problems
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作者 Prachi Agrawal Khalid Alnowibet Ali Wagdy Mohamed 《Computers, Materials & Continua》 SCIE EI 2022年第5期2847-2868,共22页
This paper presents a novel application of metaheuristic algorithmsfor solving stochastic programming problems using a recently developed gaining sharing knowledge based optimization (GSK) algorithm. The algorithmis b... This paper presents a novel application of metaheuristic algorithmsfor solving stochastic programming problems using a recently developed gaining sharing knowledge based optimization (GSK) algorithm. The algorithmis based on human behavior in which people gain and share their knowledgewith others. Different types of stochastic fractional programming problemsare considered in this study. The augmented Lagrangian method (ALM)is used to handle these constrained optimization problems by convertingthem into unconstrained optimization problems. Three examples from theliterature are considered and transformed into their deterministic form usingthe chance-constrained technique. The transformed problems are solved usingGSK algorithm and the results are compared with eight other state-of-the-artmetaheuristic algorithms. The obtained results are also compared with theoptimal global solution and the results quoted in the literature. To investigatethe performance of the GSK algorithm on a real-world problem, a solidstochastic fixed charge transportation problem is examined, in which theparameters of the problem are considered as random variables. The obtainedresults show that the GSK algorithm outperforms other algorithms in termsof convergence, robustness, computational time, and quality of obtainedsolutions. 展开更多
关键词 Gaining-sharing knowledge based algorithm metaheuristic algorithms stochastic programming stochastic transportation problem
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Efficient Stochastic Simulation Algorithm for Chemically Reacting Systems Based on Support Vector Regression 被引量:1
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作者 Xin-jun Peng Yi-fei Wang 《Chinese Journal of Chemical Physics》 SCIE CAS CSCD 2009年第5期502-510,I0002,共10页
随机的模拟算法(SSA ) 精确地与化学种类的小人口描绘空间地同类的搅动得好的化学上反应的系统并且适当地表示当因为它的计算复杂性,为更大的系统建模时,噪音,而是它经常被放弃。在这个工作,成双的支持向量回归基于随机的模拟算法(T... 随机的模拟算法(SSA ) 精确地与化学种类的小人口描绘空间地同类的搅动得好的化学上反应的系统并且适当地表示当因为它的计算复杂性,为更大的系统建模时,噪音,而是它经常被放弃。在这个工作,成双的支持向量回归基于随机的模拟算法(TS3A ) 被联合成双的支持向量回归和 SSA 建议,前者是在机器学习的一个著名柔韧的回归方法。数字结果显示这个建议算法能被用于大量化学上反应的系统并且在存在方法上与更少模仿的跑在效率和精确性上获得重要改进。 展开更多
关键词 化学反应系统 随机模拟算法 机器学习 支持向量回归 直方图距离
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A Novel Stochastic Algorithm Using Pythagorean Means for Minimization
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作者 Mona Subramaniam Manju Senthil Madhav Nigam 《Intelligent Control and Automation》 2010年第2期82-89,共8页
In this paper, A Novel Stochastic Algorithm using Pythagorean means for minimization of the objective function is described. The algorithm is initially tested with Rastrigin’s function and compared with Genetic algor... In this paper, A Novel Stochastic Algorithm using Pythagorean means for minimization of the objective function is described. The algorithm is initially tested with Rastrigin’s function and compared with Genetic algorithm results for the function with the same initial conditions. After this, it is used in tuning the gains of fuzzy PD + I controller for trajectory control of PUMA 560 robot manipulator. The results are again verified with the results of genetic algorithm. 展开更多
关键词 stochastic algorithm PYTHAGOREAN MEANS Gain Tuning Fuzzy Controller Genetic algorithm PUMA560 TRAJECTORY Control ROBOTICS
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A Complex Algorithm for Solving a Kind of Stochastic Programming
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作者 Yunpeng Luo Xinshun Ma 《Journal of Applied Mathematics and Physics》 2020年第6期1016-1030,共15页
Considering that the probability distribution of random variables in stochastic programming usually has incomplete information due to a perfect sample data in many real applications, this paper discusses a class of tw... Considering that the probability distribution of random variables in stochastic programming usually has incomplete information due to a perfect sample data in many real applications, this paper discusses a class of two-stage stochastic programming problems modeling with maximum minimum expectation compensation criterion (MaxEMin) under the probability distribution having linear partial information (LPI). In view of the nondifferentiability of this kind of stochastic programming modeling, an improved complex algorithm is designed and analyzed. This algorithm can effectively solve the nondifferentiable stochastic programming problem under LPI through the variable polyhedron iteration. The calculation and discussion of numerical examples show the effectiveness of the proposed algorithm. 展开更多
关键词 stochastic Programming with Recourse Probability Distribution with Linear Partial Information Maximized Minimum Expectation Complex algorithm
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Multicut L-Shaped Algorithm for Stochastic Convex Programming with Fuzzy Probability Distribution
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作者 Miaomiao Han Xinshun MA 《Open Journal of Applied Sciences》 2012年第4期219-222,共4页
Two-stage problem of stochastic convex programming with fuzzy probability distribution is studied in this paper. Multicut L-shaped algorithm is proposed to solve the problem based on the fuzzy cutting and the minimax ... Two-stage problem of stochastic convex programming with fuzzy probability distribution is studied in this paper. Multicut L-shaped algorithm is proposed to solve the problem based on the fuzzy cutting and the minimax rule. Theorem of the convergence for the algorithm is proved. Finally, a numerical example about two-stage convex recourse problem shows the essential character and the efficiency. 展开更多
关键词 stochastic CONVEX PROGRAMMING fuzzy probability DISTRIBUTION TWO-STAGE problem multicut L-shaped algorithm
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A stochastic gradient-based two-step sparse identification algorithm for multivariate ARX systems
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作者 Yanxin Fu Wenxiao Zhao 《Control Theory and Technology》 EI CSCD 2024年第2期213-221,共9页
We consider the sparse identification of multivariate ARX systems, i.e., to recover the zero elements of the unknown parameter matrix. We propose a two-step algorithm, where in the first step the stochastic gradient (... We consider the sparse identification of multivariate ARX systems, i.e., to recover the zero elements of the unknown parameter matrix. We propose a two-step algorithm, where in the first step the stochastic gradient (SG) algorithm is applied to obtain initial estimates of the unknown parameter matrix and in the second step an optimization criterion is introduced for the sparse identification of multivariate ARX systems. Under mild conditions, we prove that by minimizing the criterion function, the zero elements of the unknown parameter matrix can be recovered with a finite number of observations. The performance of the algorithm is testified through a simulation example. 展开更多
关键词 ARX system stochastic gradient algorithm Sparse identification Support recovery Parameter estimation Strong consistency
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Stability and performance analysis of the compressed Kalman filter algorithm for sparse stochastic systems
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作者 LI RongJiang GAN Die +1 位作者 XIE SiYu LüJinHu 《Science China(Technological Sciences)》 SCIE EI CAS CSCD 2024年第2期380-394,共15页
This paper considers the problem of estimating unknown sparse time-varying signals for stochastic dynamic systems.To deal with the challenges of extensive sparsity,we resort to the compressed sensing method and propos... This paper considers the problem of estimating unknown sparse time-varying signals for stochastic dynamic systems.To deal with the challenges of extensive sparsity,we resort to the compressed sensing method and propose a compressed Kalman filter(KF)algorithm.Our algorithm first compresses the original high-dimensional sparse regression vector via the sensing matrix and then obtains a KF estimate in the compressed low-dimensional space.Subsequently,the original high-dimensional sparse signals can be well recovered by a reconstruction technique.To ensure stability and establish upper bounds on the estimation errors,we introduce a compressed excitation condition without imposing independence or stationarity on the system signal,and therefore suitable for feedback systems.We further present the performance of the compressed KF algorithm.Specifically,we show that the mean square compressed tracking error matrix can be approximately calculated by a linear deterministic difference matrix equation,which can be readily evaluated,analyzed,and optimized.Finally,a numerical example demonstrates that our algorithm outperforms the standard uncompressed KF algorithm and other compressed algorithms for estimating high-dimensional sparse signals. 展开更多
关键词 sparse signal compressed sensing Kalman filter algorithm compressed excitation condition stochastic stability tracking performance
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Controlling the uncertainty in reservoir stochastic simulation 被引量:2
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作者 Cui Yong Chi Bo +2 位作者 Chen Guo Ouyang Cheng Xia Bairu 《Petroleum Science》 SCIE CAS CSCD 2010年第4期472-476,共5页
Unexpected noise in reservoir stochastic simulation realization may be too high to make the realization useful, especially when there is a lack of hard data. Through discussing the uncertainties, we present two ways t... Unexpected noise in reservoir stochastic simulation realization may be too high to make the realization useful, especially when there is a lack of hard data. Through discussing the uncertainties, we present two ways to control the uncertainty ratio that is brought by the algorithm of stochastic simulation. By reasonably reducing the random value of the stochastic simulation result, the unexpected values introduced by the residual that associates with random series can be controlled. Another way when the data disperse unevenly is to control the stochastic simulation order by grouping the points that need to be simulated to make those points which can be simulated by more neighborhood hard data calculated first. Both methods do not go against the core stochastic simulation algorithm. 展开更多
关键词 Reservoir stochastic simulation hard data Kriging algorithm RESIDUAL REALIZATION
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L-leap:accelerating the stochastic simulation of chemically reacting systems 被引量:1
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作者 彭新俊 王翼飞 《Applied Mathematics and Mechanics(English Edition)》 SCIE EI 2007年第10期1361-1371,共11页
Presented here is an L-leap method for accelerating stochastic simulation of well-stirred chemically reacting systems, in which the number of reactions occurring in a reaction channel with the largest propensity funct... Presented here is an L-leap method for accelerating stochastic simulation of well-stirred chemically reacting systems, in which the number of reactions occurring in a reaction channel with the largest propensity function is calculated from the leap condition and the number of reactions occurring in the other reaction channels are generated by using binomial random variables during a leap. The L-leap method can better satisfy the leap condition. Numerical simulation results indicate that the L-leap method can obtain better performance than established methods. 展开更多
关键词 L-leap algorithm leap condition stochastic simulation algorithm chemically reacting systems
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