用水分配系统中水泵调度的计算智能:优化算法的比较

Tulio P. Vieira, P. E. M. Almeida, M. Meireles, M. Souza
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引用次数: 3

摘要

本文旨在利用计算智能技术研究处理水提升站(TWLS)液压泵的运行调度。这种调度对降低TWLS的用电量具有重要意义。在实验中,模拟了一个典型的由两个泵和一个水库组成的TWLS。通过优化任务,得到运行周期的选择,以使电能消耗最小化。根据所消耗的液压功率,计算出TWLS的耗电量。因子$\lambda$用于关联泵启动数量和相应的维护成本。用电函数经该维护因子调整后,作为待优化的目标函数。在这种情况下,比较了两种元启发式方法:模拟退火(SA)和遗传算法的混合实例(HGA)。之所以选择这两种元启发式方法,是因为能源和维护费用的减少可以被视为一个非线性优化问题,此外,这两种技术都被成功地用于解决几个现实世界的问题。在统计推理的基础上,对两种算法的结果进行了客观比较,结果表明SA的效果更好。在优化了与此调度相关的活动后,与实际的未优化操作相比,可以验证减少高达28.0%的电能费用。
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Use of Computational Intelligence for Scheduling of Pumps in Water Distribution Systems: a comparison between optimization algorithms
This work aims to study the operational scheduling of hydraulic pumps in a Treated Water Lift Station (TWLS) using computational intelligence techniques. This scheduling is very important to reduce electricity consumption of TWLS. For the experiments, a typical TWLS composed of two pumps and a reservoir is simulated. The choice of operation periods is obtained to minimize expenses with electrical energy, by means of an optimization task. From the hydraulic power spent, the TWLS electrical consumption is calculated. A factor $\lambda$ is used to correlate number of pumps starts and corresponding maintenance costs. An electrical consumption function, adjusted with this maintenance factor, is used as the objective function to be optimized. In this context, two meta-heuristics are compared: Simulated Annealing (SA) and a hybrid instance of Genetic Algorithms (HGA). Both meta-heuristic approaches were chosen because the reduction of energy and maintenance expenses can be seen as a nonlinear optimization problem, in addition to both techniques being used successfully to solve several real World problems. A statistical inference based objective comparison is done between results of both algorithms, and SA showed to achieve better results. After optimizing the activities related to this scheduling, it is possible to verify a reduction of up to 28.0% in electrical energy expenses, when compared to actual non-optimized operation.
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