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Intelligent particle swarm optimization augmented with chaotic searching technique to integrate distant energy resources

机译:结合混沌搜索技术的智能粒子群优化算法,融合远距离能源

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This paper proposes a long-term framework for generation expansion and transmission expansion planning taking into account the renewable energy integration. To solve the problem, a hybrid technique is used. The mechanism of this technique is based on decomposing the original problem into master and slave subproblems where the master subproblem is solved using a heuristic optimization algorithm and slave subproblems are solved using general algebraic modeling system, which is a well-known software with powerful mathematical solvers. The proposed heuristic algorithm is a combination of the intelligent particle swarm optimization and chaotic searching technique. Finally, the proposed model is simulated using 3 case studies including 6-bus Garver test system, IEEE 24-bus, and modified IEEE 118-bus test systems to validate the effectiveness of the long-term planning framework while the simulation results are compared to those obtained from classic genetic algorithm (GA-Classic) and classic particle swarm optimization (PSO-Classic) to verify the efficiency of the technique used in this paper.
机译:考虑到可再生能源的整合,本文提出了一个发电扩展和输电扩展规划的长期框架。为了解决该问题,使用了混合技术。该技术的机制是基于将原始问题分解为主子问题,并使用启发式优化算法解决主子问题,并使用通用代数建模系统解决子问题,这是一款功能强大的数学求解器,是知名软件。提出的启发式算法是智能粒子群优化和混沌搜索技术的结合。最后,使用3个案例研究对提出的模型进行仿真,包括6总线Garver测试系统,IEEE 24-bus和改进的IEEE 118总线测试系统,以验证长期规划框架的有效性,同时将仿真结果与以下结果进行比较:通过经典遗传算法(GA-Classic)和经典粒子群优化(PSO-Classic)获得的结果验证了本文所用技术的效率。

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