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首页> 外文期刊>International journal of green energy >A novel objective function for optimal DG allocation in distribution systems using meta-heuristic algorithms
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A novel objective function for optimal DG allocation in distribution systems using meta-heuristic algorithms

机译:基于元启发式算法的配电系统最优DG分配目标函数

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摘要

Meta heuristic algorithms have been introduced as a powerful method to solve the nonlinear optimization problems. These algorithms have been employed in many complex engineering problems due to their high capability in finding the solutions and reaching the optimal results within a short period of time. Optimization of distributed generation units in distribution systems, which have profoundly impacted on the system losses and voltage profile, is one of these nonlinear problems. In this study, a novel objective function was proposed for optimization procedure by meta-heuristic algorithms. The related objective function consists of the total cost of distributed generation units, cost of the purchased natural gas, cost of distribution system power losses, and penalty for greenhouse gas emissions. The electrical, cooling, and heating loads were considered in this study. In the distribution system, the waste and fuel cell were used to supply the required heating and cooling loads. The meta-heuristic algorithms including Particle Swarm Optimization (PSO), Genetic Algorithm (GA), and Imperialist Competitive Algorithm (ICA) were employed to find the optimal location and size of distributed generation units in a distribution system. A detailed performance analysis was done on 13 bus radial distribution system. The performances of three algorithms were compared with each other and results showed that the PSO was the fastest; and had the best solution and optimum results. Furthermore, the PSO reached the optimum solution in a fewer number of iterations than the GA and ICA algorithms.
机译:引入元启发式算法作为解决非线性优化问题的有力方法。这些算法由于具有在短时间内找到解决方案并达到最佳结果的能力,因此已被用于许多复杂的工程问题中。配电系统中分布式发电单元的优化已对系统损耗和电压曲线产生深远影响,这是这些非线性问题之一。在这项研究中,提出了一种新颖的目标函数,通过元启发式算法优化程序。相关的目标函数包括分布式发电装置的总成本,所购天然气的成本,配电系统功率损耗的成本以及温室气体排放的罚款。在这项研究中考虑了电,冷和热负荷。在分配系统中,废物和燃料电池用于提供所需的加热和冷却负荷。采用元启发式算法,包括粒子群优化(PSO),遗传算法(GA)和帝国主义竞争算法(ICA)来寻找配电系统中分布式发电单元的最佳位置和大小。在13总线径向分配系统上进行了详细的性能分析。将三种算法的性能进行了比较,结果表明PSO是最快的。并拥有最佳解决方案和最佳结果。此外,与GA和ICA算法相比,PSO在更少的迭代中达到了最佳解决方案。

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