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Short-term hydrothermal generation scheduling by a modified dynamic neighborhood learning based particle swarm optimization

机译:基于改进动态邻域学习的粒子群算法的短期水热发电调度

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The main objective of the short-term hydrothermal generation scheduling (SHGS) problem is to determine the optimal strategy for hydro and thermal generation in order to minimize the fuel cost of thermal plants while satisfying various operational and physical constraints. Usually, SHGS is assumed for a 1 day or a 1 week planing time horizon. It is viewed as a complex non-linear, non-convex and non-smooth optimization problem considering valve point loading (VPL) effect related to the thermal power plants, transmission loss and other constraints. In this paper, a modified dynamic neighborhood learning based particle swarm optimization (MDNLPSO) is proposed to solve the SHGS problem. In the proposed approach, the particles in swarm are grouped in a number of neighborhoods and every particle learns from any particle which exists in current neighborhood. The neighborhood memberships are changed with a refreshing operation which occurs at refreshing periods. It causes the information exchange to be made with all particles in the swarm. It is found that mentioned improvement increases both of the exploration and exploitation abilities in comparison with the conventional PSO. The presented approach is applied to three different multi-reservoir cascaded hydrothermal test systems. The results are compared with other recently proposed methods. Simulation results clearly show that the MDNLPSO method is capable of obtaining a better solution.
机译:短期水热发电调度(SHGS)问题的主要目标是确定水力和热力发电的最佳策略,以便在满足各种运行和物理约束的同时,将热电厂的燃料成本降至最低。通常,SHGS被假定为1天或1周的计划时间范围。考虑到与火力发电厂,传输损耗和其他限制因素有关的阀点负载(VPL)效应,它被视为复杂的非线性,非凸和非平滑优化问题。为了解决SHGS问题,提出了一种改进的基于动态邻域学习的粒子群算法(MDNLPSO)。在提出的方法中,群中的粒子被分组在多个邻域中,每个粒子都从存在于当前邻域中的任何粒子中学习。邻居成员资格通过在刷新周期发生的刷新操作进行更改。它使信息交换与群中的所有粒子进行。发现与传统的PSO相比,上述改进提高了勘探和开发能力。该方法适用于三种不同的多水库级联水热试验系统。将结果与其他最近提出的方法进行比较。仿真结果清楚地表明MDNLPSO方法能够获得更好的解决方案。

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