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An Improved Affine-Scaling Interior Point Algorithm for Linear Programming 被引量:1
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作者 Douglas Kwasi Boah Stephen Boakye Twum 《Journal of Applied Mathematics and Physics》 2019年第10期2531-2536,共6页
In this paper, an Improved Affine-Scaling Interior Point Algorithm for Linear Programming has been proposed. Computational results of selected practical problems affirming the proposed algorithm have been provided. Th... In this paper, an Improved Affine-Scaling Interior Point Algorithm for Linear Programming has been proposed. Computational results of selected practical problems affirming the proposed algorithm have been provided. The proposed algorithm is accurate, faster and therefore reduces the number of iterations required to obtain an optimal solution of a given Linear Programming problem as compared to the already existing Affine-Scaling Interior Point Algorithm. The algorithm can be very useful for development of faster software packages for solving linear programming problems using the interior-point methods. 展开更多
关键词 interior-point Methods Affine-Scaling interior point algorithm Optimal SOLUTION Linear Programming Initial Feasible TRIAL SOLUTION
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Path-following interior point algorithms for the Cartesian P_*(κ)-LCP over symmetric cones 被引量:5
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作者 LUO ZiYan XIU NaiHua 《Science China Mathematics》 SCIE 2009年第8期1769-1784,共16页
In this paper, we establish a theoretical framework of path-following interior point al- gorithms for the linear complementarity problems over symmetric cones (SCLCP) with the Cartesian P*(κ)-property, a weaker condi... In this paper, we establish a theoretical framework of path-following interior point al- gorithms for the linear complementarity problems over symmetric cones (SCLCP) with the Cartesian P*(κ)-property, a weaker condition than the monotonicity. Based on the Nesterov-Todd, xy and yx directions employed as commutative search directions for semidefinite programming, we extend the variants of the short-, semilong-, and long-step path-following algorithms for symmetric conic linear programming proposed by Schmieta and Alizadeh to the Cartesian P*(κ)-SCLCP, and particularly show the global convergence and the iteration complexities of the proposed algorithms. 展开更多
关键词 Cartesian P *(κ)-property symmetric cone linear complementarity problem path-following interior point algorithm global convergence COMPLEXITY 90C33 90C51
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Correction of array failure using grey wolf optimizer hybridized with an interior point algorithm 被引量:2
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作者 Shafqat Ullah KHAN M.K.A.RAHIM Liaqat ALI 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2018年第9期1191-1202,共12页
We design a grey wolf optimizer hybridized with an interior point algorithm to correct a faulty antenna array. If a single sensor fails, the radiation power pattern of the entire array is disturbed in terms of sidelob... We design a grey wolf optimizer hybridized with an interior point algorithm to correct a faulty antenna array. If a single sensor fails, the radiation power pattern of the entire array is disturbed in terms of sidelobe level(SLL) and null depth level(NDL), and nulls are damaged and shifted from their original locations. All these issues can be solved by designing a new fitness function to reduce the error between the preferred and expected radiation power patterns and the null limitations. The hybrid algorithm has been designed to control the array's faulty radiation power pattern. Antenna arrays composed of 21 sensors are used in an example simulation scenario. The MATLAB simulation results confirm the good performance of the proposed method, compared with the existing methods in terms of SLL and NDL. 展开更多
关键词 Failure correction Grey wolf optimizer interior point algorithm SIDELOBES Deeper null depth level
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AN INFEASIBLE-INTERIOR-POINT PREDICTOR-CORRECTOR ALGORITHM FOR THE SECOND-ORDER CONE PROGRAM 被引量:11
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作者 迟晓妮 刘三阳 《Acta Mathematica Scientia》 SCIE CSCD 2008年第3期551-559,共9页
A globally convergent infeasible-interior-point predictor-corrector algorithm is presented for the second-order cone programming (SOCP) by using the Alizadeh- Haeberly-Overton (AHO) search direction. This algorith... A globally convergent infeasible-interior-point predictor-corrector algorithm is presented for the second-order cone programming (SOCP) by using the Alizadeh- Haeberly-Overton (AHO) search direction. This algorithm does not require the feasibility of the initial points and iteration points. Under suitable assumptions, it is shown that the algorithm can find an -approximate solution of an SOCP in at most O(√n ln(ε0/ε)) iterations. The iteration-complexity bound of our algorithm is almost the same as the best known bound of feasible interior point algorithms for the SOCP. 展开更多
关键词 Second-order cone programming infeasible-interior-point algorithm predictor-corrector algorithm global convergence
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A POLYNOMIAL PREDICTOR-CORRECTOR INTERIOR-POINT ALGORITHM FOR CONVEX QUADRATIC PROGRAMMING 被引量:4
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作者 余谦 黄崇超 江燕 《Acta Mathematica Scientia》 SCIE CSCD 2006年第2期265-270,共6页
This article presents a polynomial predictor-corrector interior-point algorithm for convex quadratic programming based on a modified predictor-corrector interior-point algorithm. In this algorithm, there is only one c... This article presents a polynomial predictor-corrector interior-point algorithm for convex quadratic programming based on a modified predictor-corrector interior-point algorithm. In this algorithm, there is only one corrector step after each predictor step, where Step 2 is a predictor step and Step 4 is a corrector step in the algorithm. In the algorithm, the predictor step decreases the dual gap as much as possible in a wider neighborhood of the central path and the corrector step draws iteration points back to a narrower neighborhood and make a reduction for the dual gap. It is shown that the algorithm has O(√nL) iteration complexity which is the best result for convex quadratic programming so far. 展开更多
关键词 Convex quadratic programming PREDICTOR-CORRECTOR interior-point algorithm
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Complexity analysis of interior-point algorithm based on a new kernel function for semidefinite optimization 被引量:3
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作者 钱忠根 白延琴 王国强 《Journal of Shanghai University(English Edition)》 CAS 2008年第5期388-394,共7页
Interior-point methods (IPMs) for linear optimization (LO) and semidefinite optimization (SDO) have become a hot area in mathematical programming in the last decades. In this paper, a new kernel function with si... Interior-point methods (IPMs) for linear optimization (LO) and semidefinite optimization (SDO) have become a hot area in mathematical programming in the last decades. In this paper, a new kernel function with simple algebraic expression is proposed. Based on this kernel function, a primal-dual interior-point methods (IPMs) for semidefinite optimization (SDO) is designed. And the iteration complexity of the algorithm as O(n^3/4 log n/ε) with large-updates is established. The resulting bound is better than the classical kernel function, with its iteration complexity O(n log n/ε) in large-updates case. 展开更多
关键词 interior-point algorithm primal-dual method semidefinite optimization (SDO) polynomial complexity
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Primal-Dual Interior-Point Algorithms with Dynamic Step-Size Based on Kernel Functions for Linear Programming 被引量:3
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作者 钱忠根 白延琴 《Journal of Shanghai University(English Edition)》 CAS 2005年第5期391-396,共6页
In this paper, primal-dual interior-point algorithm with dynamic step size is implemented for linear programming (LP) problems. The algorithms are based on a few kernel functions, including both serf-regular functio... In this paper, primal-dual interior-point algorithm with dynamic step size is implemented for linear programming (LP) problems. The algorithms are based on a few kernel functions, including both serf-regular functions and non-serf-regular ones. The dynamic step size is compared with fixed step size for the algorithms in inner iteration of Newton step. Numerical tests show that the algorithms with dynaraic step size are more efficient than those with fixed step size. 展开更多
关键词 linear programming (LP) interior-point algorithm small-update method large-update method.
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A predictor-corrector interior-point algorithmfor monotone variational inequality problems 被引量:2
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作者 梁昔明 钱积新 《Journal of Zhejiang University Science》 CSCD 2002年第3期321-325,共5页
Mehrotra's recent suggestion of a predictor corrector variant of primal dual interior point method for linear programming is currently the interior point method of choice for linear programming. In this work t... Mehrotra's recent suggestion of a predictor corrector variant of primal dual interior point method for linear programming is currently the interior point method of choice for linear programming. In this work the authors give a predictor corrector interior point algorithm for monotone variational inequality problems. The algorithm was proved to be equivalent to a level 1 perturbed composite Newton method. Computations in the algorithm do not require the initial iteration to be feasible. Numerical results of experiments are presented. 展开更多
关键词 Variational inequality problems(VIP) Predictor corrector interior point algorithm Numerical experiments
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A Wide Neighborhood Arc-Search Interior-Point Algorithm for Convex Quadratic Programming 被引量:2
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作者 YUAN Beibei ZHANG Mingwang HUANG Zhengwei 《Wuhan University Journal of Natural Sciences》 CAS CSCD 2017年第6期465-471,共7页
In this paper, we propose an arc-search interior-point algorithm for convex quadratic programming with a wide neighborhood of the central path, which searches the optimizers along the ellipses that approximate the ent... In this paper, we propose an arc-search interior-point algorithm for convex quadratic programming with a wide neighborhood of the central path, which searches the optimizers along the ellipses that approximate the entire central path. The favorable polynomial complexity bound of the algorithm is obtained, namely O(nlog(( x^0)~TS^0/ε)) which is as good as the linear programming analogue. Finally, the numerical experiments show that the proposed algorithm is efficient. 展开更多
关键词 arc-search interior-point algorithm polynomial complexity convex quadratic programming
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Interior-Point Algorithm for Linear Optimization Based on a New Kernel Function 被引量:2
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作者 CHEN Donghai ZHANG Mingwang LI Weihua 《Wuhan University Journal of Natural Sciences》 CAS 2012年第1期12-18,共7页
In this paper, we design a primal-dual interior-point algorithm for linear optimization. Search directions and proximity function are proposed based on a new kernel function which includes neither growth term nor barr... In this paper, we design a primal-dual interior-point algorithm for linear optimization. Search directions and proximity function are proposed based on a new kernel function which includes neither growth term nor barrier term. Iteration bounds both for large-and small-update methods are derived, namely, O(nlog(n/c)) and O(√nlog(n/ε)). This new kernel function has simple algebraic expression and the proximity function has not been used before. Analogous to the classical logarithmic kernel function, our complexity analysis is easier than the other pri- mal-dual interior-point methods based on logarithmic barrier functions and recent kernel functions. 展开更多
关键词 linear optimization interior-point algorithms pri- mal-dual methods kernel function polynomial complexity
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Power System Reactive Power Optimization Based on Fuzzy Formulation and Interior Point Filter Algorithm 被引量:1
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作者 Zheng Fan Wei Wang +3 位作者 Tian-jiao Pu Guang-yi Liu Zhi Cai Ning Yang 《Energy and Power Engineering》 2013年第4期693-697,共5页
Considering the soft constraint characteristics of voltage constraints, the Interior-Point Filter Algorithm is applied to solve the formulation of fuzzy model for the power system reactive power optimization with a la... Considering the soft constraint characteristics of voltage constraints, the Interior-Point Filter Algorithm is applied to solve the formulation of fuzzy model for the power system reactive power optimization with a large number of equality and inequality constraints. Based on the primal-dual interior-point algorithm, the algorithm maintains an updating “filter” at each iteration in order to decide whether to admit correction of iteration point which can avoid effectively oscillation due to the conflict between the decrease of objective function and the satisfaction of constraints and ensure the global convergence. Moreover, the “filter” improves computational efficiency because it filters the unnecessary iteration points. The calculation results of a practical power system indicate that the algorithm can effectively deal with the large number of inequality constraints of the fuzzy model of reactive power optimization and satisfy the requirement of online calculation which realizes to decrease the network loss and maintain specified margins of voltage. 展开更多
关键词 POWER System REACTIVE POWER Optimization FUZZY Filter interior-point algorithm Online Calculation
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Predictor-corrector interior-point algorithm for linearly constrained convex programming
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作者 LIANG Xi-ming (College of Information Science & Engineering, Central South University, Changsh a 410083, China) 《Journal of Central South University》 SCIE EI CAS 2001年第3期208-212,共5页
Active set method and gradient projection method are curre nt ly the main approaches for linearly constrained convex programming. Interior-po int method is one of the most effective choices for linear programming. In ... Active set method and gradient projection method are curre nt ly the main approaches for linearly constrained convex programming. Interior-po int method is one of the most effective choices for linear programming. In the p aper a predictor-corrector interior-point algorithm for linearly constrained c onvex programming under the predictor-corrector motivation was proposed. In eac h iteration, the algorithm first performs a predictor-step to reduce the dualit y gap and then a corrector-step to keep the points close to the central traject ory. Computations in the algorithm only require that the initial iterate be nonn egative while feasibility or strict feasibility is not required. It is proved th at the algorithm is equivalent to a level-1 perturbed composite Newton method. Numerical experiments on twenty-six standard test problems are made. The result s show that the proposed algorithm is stable and robust. 展开更多
关键词 linearly constrained convex programming PREDICTOR corrector interior point algorithm numerical experiment
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Complexity Analysis of an Interior Point Algorithm for the Semidefinite Optimization Based on a Kernel Function with a Double Barrier Term 被引量:1
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作者 Mohamed ACHACHE 《Acta Mathematica Sinica,English Series》 SCIE CSCD 2015年第3期543-556,共14页
In this paper, we establish the polynomial complexity of a primal-dual path-following interior point algorithm for solving semidefinite optimization(SDO) problems. The proposed algorithm is based on a new kernel fun... In this paper, we establish the polynomial complexity of a primal-dual path-following interior point algorithm for solving semidefinite optimization(SDO) problems. The proposed algorithm is based on a new kernel function which differs from the existing kernel functions in which it has a double barrier term. With this function we define a new search direction and also a new proximity function for analyzing its complexity. We show that if q1 〉 q2 〉 1, the algorithm has O((q1 + 1) nq1+1/2(q1-q2)logn/ε)and O((q1 + 1)2(q1-q2)^3q1-2q2+1√n logn/c) complexity results for large- and small-update methods, respectively. 展开更多
关键词 Semidefinite optimization kernel functions primal-dual interior point methods large andsmall-update algorithms complexity of algorithms
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A POSITIVE INTERIOR-POINT ALGORITHM FOR NONLINEAR COMPLEMENTARITY PROBLEMS
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作者 马昌凤 梁国平 陈新美 《Applied Mathematics and Mechanics(English Edition)》 SCIE EI 2003年第3期355-362,共8页
A new iterative method,which is called positive interior-point algorithm,is presented for solving the nonlinear complementarity problems.This method is of the desirable feature of robustness.And the convergence theore... A new iterative method,which is called positive interior-point algorithm,is presented for solving the nonlinear complementarity problems.This method is of the desirable feature of robustness.And the convergence theorems of the algorithm is established.In addition,some numerical results are reported. 展开更多
关键词 nonlinear complementarity problems positive interior-point algorithm non-smooth equations
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Optimal Adjustment Algorithm for <i>p</i>Coordinates and The Starting Point in Interior Point Methods 被引量:1
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作者 Carla T. L. S. Ghidini Aurelio R. L. Oliveira Jair Silva 《American Journal of Operations Research》 2011年第4期191-202,共12页
Optimal adjustment algorithm for p coordinates is a generalization of the optimal pair adjustment algorithm for linear programming, which in turn is based on von Neumann’s algorithm. Its main advantages are simplicit... Optimal adjustment algorithm for p coordinates is a generalization of the optimal pair adjustment algorithm for linear programming, which in turn is based on von Neumann’s algorithm. Its main advantages are simplicity and quick progress in the early iterations. In this work, to accelerate the convergence of the interior point method, few iterations of this generalized algorithm are applied to the Mehrotra’s heuristic, which determines the starting point for the interior point method in the PCx software. Computational experiments in a set of linear programming problems have shown that this approach reduces the total number of iterations and the running time for many of them, including large-scale ones. 展开更多
关键词 Von Neumann’s algorithm Mehrotra’s HEURISTIC interior point Methods Linear Programming
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A PREDICTOR-CORRECTOR INTERIOR-POINT ALGORITHM FOR CONVEX QUADRATIC PROGRAMMING
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作者 Liang Ximing(梁昔明) +1 位作者 Qian Jixin(钱积新) 《Numerical Mathematics A Journal of Chinese Universities(English Series)》 SCIE 2002年第1期52-62,共11页
The simplified Newton method, at the expense of fast convergence, reduces the work required by Newton method by reusing the initial Jacobian matrix. The composite Newton method attempts to balance the trade-off betwee... The simplified Newton method, at the expense of fast convergence, reduces the work required by Newton method by reusing the initial Jacobian matrix. The composite Newton method attempts to balance the trade-off between expense and fast convergence by composing one Newton step with one simplified Newton step. Recently, Mehrotra suggested a predictor-corrector variant of primal-dual interior point method for linear programming. It is currently the interiorpoint method of the choice for linear programming. In this work we propose a predictor-corrector interior-point algorithm for convex quadratic programming. It is proved that the algorithm is equivalent to a level-1 perturbed composite Newton method. Computations in the algorithm do not require that the initial primal and dual points be feasible. Numerical experiments are made. 展开更多
关键词 CONVEX QUADRATIC programming interior-point methods PREDICTOR-CORRECTOR algorithms NUMERICAL experiments.
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A Primal-dual Interior Point Method for Nonlinear Programming 被引量:1
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作者 张珊 姜志侠 《Northeastern Mathematical Journal》 CSCD 2008年第3期275-282,共8页
In this paper, we propose a primal-dual interior point method for solving general constrained nonlinear programming problems. To avoid the situation that the algorithm we use may converge to a saddle point or a local ... In this paper, we propose a primal-dual interior point method for solving general constrained nonlinear programming problems. To avoid the situation that the algorithm we use may converge to a saddle point or a local maximum, we utilize a merit function to guide the iterates toward a local minimum. Especially, we add the parameter ε to the Newton system when calculating the decrease directions. The global convergence is achieved by the decrease of a merit function. Furthermore, the numerical results confirm that the algorithm can solve this kind of problems in an efficient way. 展开更多
关键词 primal-dual interior point algorithm merit function global convergence nonlinear programming
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考虑原油采购选择的混炼加工优化
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作者 董丰莲 李鹏 +3 位作者 魏志伟 孙鑫 徐赫锴 何畅 《化工进展》 北大核心 2025年第8期4648-4656,共9页
目前,原油采购和混炼加工方案多采用人工经验或数学规划方法进行决策,存在求解时间过长以及无法统筹考虑全局性等问题。针对炼化场景下的典型混炼工艺和原油采购要求,结合“P模型”的概念建立了混合整数非线性模型,并根据整数变量的特... 目前,原油采购和混炼加工方案多采用人工经验或数学规划方法进行决策,存在求解时间过长以及无法统筹考虑全局性等问题。针对炼化场景下的典型混炼工艺和原油采购要求,结合“P模型”的概念建立了混合整数非线性模型,并根据整数变量的特性设计了基于p范数和内点法的迭代求解算法。结果表明,在10种原油、54种物性、58套加工装置的优化背景下,与商用求解器优化结果相比,采用以上方法可以在短时间内找到一个经济效益更好的原油采购加工方案并且在多个算例下均展现出了更好的鲁棒性。 展开更多
关键词 优化 算法 石油 混炼 双线性 内点法 范数平滑
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基于内点算法的海杂波幅度分布参数估计方法 被引量:1
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作者 张庆珍 曾昭赫 +2 位作者 徐涛 曾鹏 张金鹏 《电波科学学报》 北大核心 2025年第1期191-198,共8页
航空器在海域飞行时,强度大、范围广的海杂波会严重干扰气象回波的正确识别,海杂波的幅度统计特性对于气象目标检测至关重要。为精准评估海杂波幅度统计特性进而有效抑制海杂波,本文提出了一种基于内点算法的分布模型参数估计方法。该... 航空器在海域飞行时,强度大、范围广的海杂波会严重干扰气象回波的正确识别,海杂波的幅度统计特性对于气象目标检测至关重要。为精准评估海杂波幅度统计特性进而有效抑制海杂波,本文提出了一种基于内点算法的分布模型参数估计方法。该方法将高阶海杂波统计曲线参数估计问题转为最优解求解子问题,可以实现海杂波幅度分布参数快速搜索和估计;进一步地,引入一种新的自适应调整目标函数,用于增强分布模型与实测杂波在拖尾部分的拟合效果。结合岸基多波段不同海情、不同雷达参数的实测海杂波数据统计特性,并与典型的参数估计方法和优化方法对比分析可知,本文方法可以实现实测海杂波幅度分布参数的更优估计,幅度分布曲线在拖尾处的拟合效果更优。通过对不同条件下实测杂波数据统计对比分析,验证了本文参数估计方法的普适性,实验数据表明在K分布情况下拟合精度提升率达70%。 展开更多
关键词 参数估计 内点算法 岸基雷达 海杂波特性 幅度分布
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在轨制造桁架结构的变设计域优化方法研究
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作者 陈阳 敬石开 +5 位作者 宾凤娇 赵桐 肖登宝 杨东升 梁春祖 韩建超 《航天制造技术》 2025年第5期21-28,共8页
在轨制造桁架缓解了空间大型结构体积大、结构复杂带来的对火箭运载能力的压力,摆脱火箭运载能力对桁架包络尺寸的限制,提高航天任务的灵活性,具有广阔应用前景。传统桁架结构采用桁架构型和模块先设计、后制造的工序,无法处理在轨制造... 在轨制造桁架缓解了空间大型结构体积大、结构复杂带来的对火箭运载能力的压力,摆脱火箭运载能力对桁架包络尺寸的限制,提高航天任务的灵活性,具有广阔应用前景。传统桁架结构采用桁架构型和模块先设计、后制造的工序,无法处理在轨制造中面临的桁架任务重构、桁架框架建造失败再设计等多种突发问题。为此,本文提出了一种基于内点法求解的在轨制造桁架结构变设计域优化方法,通过统一多个设计域尺寸不同的优化问题的方式综合考虑整个桁架的设计与制造过程,在已经建造的桁架结构基础上重新规划剩余的桁架单元分布,实现桁架结构的设计与制造工序同步。算例表明,变设计域优化方法可以根据当前已经建造的桁架结构和载荷分配,优化剩余未建造的桁架结构,保障整体承载设计目标下降可控,能够为大型在轨制造桁架结构提供设计理论支撑。 展开更多
关键词 在轨制造 桁架结构 变设计域 内点法
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