Eberhard Karls Universität Tübingen, Wilhelm-Schickard-Institut für Informatik, 72076 Tübingen, Germany.
Water Sci Technol. 2010;61(1):53-66. doi: 10.2166/wst.2010.778.
In order to meet new environmental standards, sewage treatment plants may need to be redesigned or extended. Instead of reconstructing large parts of a sewage treatment plant, which can be very costly, it is in many cases sufficient to install relatively inexpensive equipment, which controls parts of the plant in a new way. Fuzzy controllers are often used for this task. Use of these controllers often leads to an improved water quality. Such fuzzy controllers contain a number of parameters which are determined by a human expert. With this contribution, a dedicated multi-objective evolutionary algorithm is developed to optimize these parameters. The evolutionary algorithm is based on the successful strength pareto evolutionary algorithm 2 (SPEA2). The fuzzy control parameters, which are optimized are continuous parameters. Therefore, an evolution strategy was employed which uses the multi-objective ranking as used by the SPEA2 algorithm. Optimal parameters were first evolved on simulated sewage treatment plants. One set of parameters was also tested on an actual plant. Owing to the enormous computational demands of simulating a sewage treatment plant, it is only possible to work with small population sizes. Nevertheless, it was possible to evolve parameters which were equally well as those found by a human expert indicating that the parameter tuning can be automized.
为了满足新的环境标准,污水处理厂可能需要重新设计或扩建。与其重建污水处理厂的大部分,这可能非常昂贵,在许多情况下,安装相对便宜的设备就足够了,这些设备以新的方式控制工厂的部分设备。模糊控制器常用于此任务。使用这些控制器通常会导致水质得到改善。这些模糊控制器包含许多由人类专家确定的参数。通过这项贡献,开发了一种专门的多目标进化算法来优化这些参数。该进化算法基于成功的强度 Pareto 进化算法 2(SPEA2)。要优化的模糊控制参数是连续参数。因此,采用了一种进化策略,该策略使用 SPEA2 算法使用的多目标排序。首先在模拟污水处理厂上对最佳参数进行进化。还在实际工厂上测试了一组参数。由于模拟污水处理厂的计算需求巨大,因此只能使用较小的种群规模。尽管如此,仍然可以进化出与人类专家找到的参数同样好的参数,这表明参数调整可以自动化。