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A novel gravitational acceleration enhanced particle swarm optimization algorithm for wind-thermal economic emission dispatch problem considering wind power availability

机译:考虑风电可利用性的风热经济排放调度问题的重力加速度增强粒子群优化算法

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To reduce the pollutant atmospheric emission level, a Wind-thermal Economic Emission Dispatch (WTEED) model considering the coordination of power allocation from thermal and wind power generators is established. Among the model formulation, the fuel cost and emission level of thermal units and the operating cost caused by wind power availability are comprehensively investigated here. Also, the cost of wind energy including overestimation and underestimation of available wind power using Weibull-based probability density function is also given in a closed-form expression according to the incomplete gamma function to characterize the impact of wind power. To seek the optimum fuel cost, optimum emission level and best compromise solution, a newly developed optimization approach, known as gravitational acceleration enhanced particle swarm optimization algorithm (GAEPSO), has been adopted to solve the model in this work. The approach adopts co-evolutionary technique to simultaneously update particles velocity with PSO velocity and GSA acceleration and fully incorporates the ability of exploration in PSO and the ability of exploitation in GSA. GAEPSO, therefore, is expected to obtain an efficient balance between exploration and exploitation. The potential of the proposed algorithm is assessed in terms of the minimum fuel cost, minimum emission and best compromise solution obtained for conventional thermal generators and modified wind-thermal generators test systems. The results obtained validate the feasibility and effectiveness of the proposed algorithm compared to PSO, GSA and other recently developed approaches. Both the Pareto-optimal set and the convergence speed of the proposed algorithm are also found to be better than, or at least comparable to other algorithms. (C) 2015 Elsevier Ltd. All rights reserved.
机译:为了降低污染物的大气排放水平,建立了考虑热力和风力发电机功率分配协调的风热经济排放调度(WTEED)模型。在模型公式中,这里全面研究了热力单元的燃料成本和排放水平以及由风电可用性引起的运行成本。此外,还根据不完全伽马函数以封闭形式表达了使用基于Weibull的概率密度函数高估和低估了可用风能的风能成本,以表征风能的影响。为了寻求最佳燃料成本,最佳排放水平和最佳折衷解决方案,本文采用了一种新开发的优化方法,即重力加速增强粒子群优化算法(GAEPSO),来对该模型进行求解。该方法采用协同进化技术,以PSO速度和GSA加速度同时更新粒子速度,并充分结合了PSO中的勘探能力和GSA中的开采能力。因此,预计GAEPSO将在勘探与开发之间取得有效的平衡。该算法的潜力是通过对常规热力发电机和改进的风热力发电机测试系统获得的最小燃料成本,最小排放量和最佳折衷解决方案进行评估的。与PSO,GSA和其他最近开发的方法相比,所获得的结果验证了该算法的可行性和有效性。还发现提出的算法的帕累托最优集和收敛速度都优于或至少可与其他算法相比。 (C)2015 Elsevier Ltd.保留所有权利。

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