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An Innovative Genetic Algorithms-Based Inexact Non-Linear Programming Problem Solving Method
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作者 Weihua Jin Zhiying Hu Christine Chan 《Journal of Environmental Protection》 2017年第3期231-249,共19页
In this paper, an innovative Genetic Algorithms (GA)-based inexact non-linear programming (GAINLP) problem solving approach has been proposed for solving non-linear programming optimization problems with inexact infor... In this paper, an innovative Genetic Algorithms (GA)-based inexact non-linear programming (GAINLP) problem solving approach has been proposed for solving non-linear programming optimization problems with inexact information (inexact non-linear operation programming). GAINLP was developed based on a GA-based inexact quadratic solving method. The Genetic Algorithm Solver of the Global Optimization Toolbox (GASGOT) developed by MATLABTM was adopted as the implementation environment of this study. GAINLP was applied to a municipality solid waste management case. The results from different scenarios indicated that the proposed GA-based heuristic optimization approach was able to generate a solution for a complicated nonlinear problem, which also involved uncertainty. 展开更多
关键词 GENETIC Algorithms INEXACT non-linear programming (inlp) ECONOMY of Scale Numeric Optimization Solid Waste Management
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解决高维INLP和MINLP问题的混沌差分进化算法 被引量:1
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作者 谭跃 赵政春 +1 位作者 杨冰 肖湘 《湖南城市学院学报(自然科学版)》 CAS 2020年第1期53-59,共7页
为改进差分进化(Differential Evolution,DE)算法的搜索能力,提出一种新的混沌差分进化算法(CGLSDE).首先,该算法利用混沌序列替换DE参数并采用混沌全局搜索算法来改进DE的全局搜索能力;其次,CGLSDE算法还采用了单维和多维的混沌局部搜... 为改进差分进化(Differential Evolution,DE)算法的搜索能力,提出一种新的混沌差分进化算法(CGLSDE).首先,该算法利用混沌序列替换DE参数并采用混沌全局搜索算法来改进DE的全局搜索能力;其次,CGLSDE算法还采用了单维和多维的混沌局部搜索来改进DE的局部搜索能力.仿真结果表明:CGLSDE算法在解决高维整数非线性规划(INLP)问题和高维混合整数非线性(MINLP)问题上,其性能要好于其它3种混沌差分进化算法. 展开更多
关键词 整数非线性规划(inlp) 混合整数非线性规划(Minlp) 差分进化(DE) 混沌局部搜索 混沌全局搜索
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供能设备模型对冷热电联供微网系统经济调度的影响 被引量:12
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作者 荆朝霞 袁灼新 +1 位作者 胡荣兴 吴青华 《南方电网技术》 北大核心 2016年第8期32-39,共8页
针对一种含光伏、蓄电池和冷热电联供的微网,在满足用户多种能源需求和联网运行的条件下,对系统中的微型燃气轮机、余热锅炉和制冷机等主要供能设备采用基于部分负荷(part load ratio,PLR)特性的模型,建立了以总运行成本最低为目标的微... 针对一种含光伏、蓄电池和冷热电联供的微网,在满足用户多种能源需求和联网运行的条件下,对系统中的微型燃气轮机、余热锅炉和制冷机等主要供能设备采用基于部分负荷(part load ratio,PLR)特性的模型,建立了以总运行成本最低为目标的微网日前动态经济调度的0-1混合整数非线性规划模型。通过求解某个楼宇CCHP型微网夏季典型日的算例,从优化调度方案、总运行费用等方面,比较了系统设备采用部分负荷特性模型和固定效率模型时的调度优化差异。结果表明,两种模型对于调度结果的误差不可忽略,部分负荷特性模型的结果更为准确;值得注意的是冷负荷所造成的模型误差比较显著。 展开更多
关键词 部分负荷模型 微网经济调度 冷热电联供 混合整数非线性规划 固定效率模型 模型误差
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Stochastic Energy Management of Microgrid with Nodal Pricing 被引量:6
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作者 Dhanapala Prudhviraj P.B.S.Kiran Naran M.Pindoriya 《Journal of Modern Power Systems and Clean Energy》 SCIE EI CSCD 2020年第1期102-110,共9页
This paper develops a stochastic framework for the energy management of a microgrid to minimize the energy cost from the grid.It considers the uncertainties in solar photovoltaic(PV)generation,load demand,and electric... This paper develops a stochastic framework for the energy management of a microgrid to minimize the energy cost from the grid.It considers the uncertainties in solar photovoltaic(PV)generation,load demand,and electricity price.Furthermore,the opportunity of flexible load demand,i.e.,the effect of demand response(DR),on the test system is studied.The uncertainties are modeled by using Monte Carlo simulations and the generated scenarios are reduced to improve the computational tractability.In general,microgrid scheduling is implemented by using substation(source node)price as a reference,but that reference price is not the same at all nodes.Therefore,this paper develops the nodal price based energy management in a microgrid to improve the scheduling accuracy.The stochastic energy management framework is formulated as a mixed integer non-linear programming(MINLP).Four case studies are simulated for a modified 15-node radial distribution network integrated with solar PV and battery energy storage system(BESS)to validate the effectiveness of the energy management framework for a microgrid with nodal pricing. 展开更多
关键词 Battery energy storage system(BESS) demand response(DR) distributed generation MICROGRID mixed integer non-linear programming(Minlp) scheduling STOCHASTIC optimization
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