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首页> 外文期刊>World journal of engineering >Dynamic economic emission dispatch of thermal-wind-solar system with constriction factor-based particle swarm optimization algorithm
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Dynamic economic emission dispatch of thermal-wind-solar system with constriction factor-based particle swarm optimization algorithm

机译:基于收缩因子粒子群优化算法的热风太阳系动态发射调度

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摘要

Purpose - Dynamic economic and emission dispatch (DEED) aims to optimally set the active power generation with constraints in a power system, which should target minimum operation cost and at the same time minimize the pollution in terms of emission when the load dynamically changes hour to hour. The purpose of this study is to achieve optimal economic and emission dispatch of an electrical system with a renewable generation mix, consisting of 3-unit thermal, 2-unit wind and 2-unit solar generators for dynamic load variation in a day. An improved version of a simple, easy to understand and popular optimization algorithm particle swarm optimization (PSO) referred to as a constriction factor-based particle swarm optimization (CFBPSO) algorithm is deployed to get optimal solution as compared to PSO, modified PSO and red deer algorithm (RDA). Design/methodology/approach - Different model with and without wind and solar power generating systems; with valve point effect is analyzed. The thermal generating system (TGs) are the major green house gaseous emission producers on earth. To take up this ecological issue in addition to economic operation cost, the wind and solar energy sources are integrated with the thermal system in a phased manner for electrical power generation and optimized for dynamic load variation. This DEED being a multi-objective optimization (MO) has contradictory objectives of fuel cost and emission. To get the finest combination of the two objectives and to get a non-dominated solution the fuzzy decision-making (FDM) method is used herein, the MO problem is solved by a single objective function, including min-max price penalty factor on emission in the total cost to treat as cost. Further, the weight factor accumulation (WFA) technique normalizes the pair of objectives into a single objective by giving each objective a weightage. The weightage is decided by the FDM approach in a systematic manner from a set of non-dominated solutions. Here, the CFBPSO algorithm is applied to lessen the total generation cost and emission of the thermal power meeting the load dynamically. Findings - The efficacy of the contribution of stochastic wind and solar power generation with the TGs in the dropping of net fuel cost and emission in a day for dynamic load vis-a-vis the case with TGs is established. Research limitations/implications - Cost and emission are conflicting objectives and can be handled carefully by weight factors and penalty factors to find out the best solution. Practical implications - The proposed methodology and its strategy are very useful for thermal power plants incorporating diverse sources of generations. As the execution time is very less, practical implementation can be possible. Social implications - As the cheaper generation schedule is obtained with respect to time, cost and emission are minimized, a huge revenue can be saved over the passage of time, and therefore it has a societal impact. Originality/value - In this work, the WFA with the FDM method is used to facilitate CFBPSO to decipher this DEED multi-objective problem. The results reveal the competence of the projected proposal to satisfy the dynamic load demand and to diminish the combined cost in contrast to the PSO algorithm, modified PSO algorithm and a newly developed meta-heuristic algorithm RDA in a similar system.
机译:目的 - 动态经济和排放调度(契约)旨在使电力系统中的约束进行最佳地设定有限的动力发电,该系统应瞄准最小运行成本,同时在负载动态地改变小时时最小化发射方面的污染小时。本研究的目的是实现具有可再生生成混合的电气系统的最佳经济和排放调度,包括3单元热,2单元风和2单元太阳能发电机,用于一天的动态负载变化。一种改进的简单,易于理解和流行的优化算法粒子群优化(PSO)被部署的简单,易于理解和流行的优化算法粒子群优化(PSO)被部署以获得与PSO,修改的PSO和红色相比的最佳解决方案鹿算法(RDA)。设计/方法/方法 - 不同型号,具有风和太阳能发电系统;分析阀点效果。热发电系统(TGS)是地球上的主要温室气体排放生产商。为了占用这种生态问题,除了经济运营成本之外,风和太阳能电源以逐步的方式与热系统集成,用于电力发电,针对动态负载变化进行了优化。这种契约是一种多目标优化(Mo)具有燃料成本和排放的矛盾目标。为了获得两个目标的最佳组合并获得非主导的解决方案,这里使用模糊决策(FDM)方法,MO问题通过单个目标函数解决,包括发射的最小价格损失因素以总成本为作为成本。此外,权重因因子累积(WFA)技术通过给出每个物体的重量将这对象的目标正常化为单个目标。重量由FDM方法从一组非主导的解决方案以系统的方式决定。这里,应用CFBPSO算法来减少动态地满足负载的热功率的总产生成本和发射。调查结果 - 建立了随机风力和太阳能发电的贡献的功效在动态载荷Vis-A-Vis的一天中滴加净燃料成本和发射的效果。研究限制/影响 - 成本和排放是相互冲突的目标,可以根据权重因素和惩罚因素进行仔细处理,以找出最佳解决方案。实际意义 - 拟议的方法及其策略对于包含各种几代来源的热电厂非常有用。由于执行时间非常少,因此可以实现实际实现。社会影响 - 随着时间的推移,成本和排放获得更便宜的发电时间表,可以在时间的推移中保存巨额收入,因此它具有社会影响。原创性/值 - 在这项工作中,使用FDM方法的WFA用于促进CFBPSO来破译该义务的多目标问题。结果揭示了预计提案的能力,以满足动态负荷需求,并与PSO算法相比,修改的PSO算法和新开发的元 - 启发式算法RDA在类似系统中的新开发的元算法RDA。

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