Comparing MOPSO Approaches for Hydrothermal Systems Operation Planning

Jonathan Cardoso Silva, G. Cruz, C. Vinhal, D. R. C. Silva, C. Bastos-Filho
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引用次数: 5

Abstract

Hydrothermal operational planning is categorized as an optimization problem that demands operational strategies of hydroelectric power plants in order to minimize the use of thermoelectric power plants, while maintaining the highest possible level of system's reservoirs during planning period. Moreover, the problem must meet a set of complex constraints. We showed in this paper that it is possible to tackle the medium-term planning of hydrothermal systems as a multi-objective problem. The particles were represented as vectors indicating the monthly generation of hydropower. We applied some three recent swarm based multi-objective optimizers, MOPSO-CDR, MOPSO-DFR and SMPSO. This trade-off is presented in Pareto Fronts, which can be used for decision making. Among the assessed approaches involving a system composed of eight Brazilian hydroelectric plants, we observed that the MOPSO-CDR returned the best results and it is worth to include seeds from mono-objective approaches to improve the convergence capacity. We included the result achieved by the PSO-CLANM algorithm and it generated effective results.
热液系统运行规划的MOPSO方法比较
热液运行规划是一个优化问题,要求水电站的运行策略在规划期内尽量减少热电厂的使用,同时保持系统水库的最高水位。此外,该问题必须满足一组复杂的约束条件。我们在本文中表明,有可能将热液系统的中期规划作为一个多目标问题来解决。粒子被表示为矢量,表示每月的水力发电。本文应用了三种最新的基于群的多目标优化算法:MOPSO-CDR、MOPSO-DFR和SMPSO。这种权衡是在帕累托前沿中提出的,它可以用于决策。在涉及八个巴西水力发电厂组成的系统的评估方法中,我们观察到MOPSO-CDR返回了最好的结果,值得将单目标方法的种子纳入以提高收敛能力。我们纳入了pso - clam算法得到的结果,得到了有效的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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