标题: | 应用遗传演算法于多目标区域性水资源规划模式之发展 Development of multi-objective water resource planning model using genetic algorithms and differential dynamic programming |
作者: | 赵锦伦 Chin-Lun Chao 张良正 Liang-Cheng Chang 土木工程学系 |
关键字: | 遗传演算法;动态控制理论;非劣势解 |
公开日期: | 2000 |
摘要: | 应用遗传演算法于多目标区域性水资源规划模式之发展 摘要 本研究首先结合多目标遗传演算法与限制型微分动态规划理论发展一新的多目标演算法,并进而以此演算法开发一水资源多目标规划模式,此规划模式之目标函数包含建水库之固定成本与营运之操作成本,固定成本为库容大小之函数而操作成本则以常用之缺水指标(Shortage Index)代表。此两种成本原本互相竞争,在本研究中并未以权重系数将其结合成单一目标函数,而以新发展的多目标演算法计算其完整的非劣势解集合。 此多目标规划问题之决策变数包括各水库库容及对应之放水操作策略。在新发展之多目标演算法中,各水库库容乃以二进位编码之染色体表示,每一染色体代表一组可能的水库群容量方案,而其对应的最佳操作策略则以限制型微分动态规划求解,如此各方案之固定成本及操作成本即可求得,再透过遗传演算法的演算机制则可计算出所有非劣解集合。本研究为验证此水资源多目标规划模式之适用性,选定一个具有三个水库系统之案例验证本模式,根据本案例结果显示,在可容许的计算资源下,本模式确能求得完整的非劣势解,并且显示固定成本与操作成本(缺水指标)确有明确的竞争关系,同时若规划期距较短,水库大小与缺水指标竞争情形受水文状况影响甚大。 综合言之,本模式能提供水资源开发规划时完整的投资成本与未来营运成本间完整的竞争关系,可为提高水资源规划效益之良好辅助工具。 Development of multi-objective water resource planning model using genetic algorithms and differential dynamic programming Abstract The study proposes a new multi-objective programming algorithm by integrating a genetic algorithms (GA) with constrained differential dynamic programming (CDDP), and develops a multi-objective model for water resources planning using the algorithm. The multi-objective planning model considers the fixed cost of reservoirs construction and management cost. The fixed cost is assumed to be linear increased with the reservoirs size and the Shortage Index (SI) surrogates the management cost. These objectives are competed to each other. However, instead of combining the objectives using a weighting factor, the planning model generates the non-inferior solutions set by the proposed multi-objective algorithm. The decision variables of the multi-objective planning model include the reservoirs size and operating policy (amount of water release). As computing the non-inferior solutions by the planning model, the chromosomes represent the combinations of reservoirs size and the associated optimal operating policy for each chromosome is computed by the CDDP algorithm. Therefore, the fixed and management cost for each chromosome can be obtained and the multi-objective genetic algorithm generates the non-inferior set based on the values of two objectives. To verify the capability of the planning model, a water resources system planning problem with three reservoirs is solved by the planning model. The result demonstrates that the model can indeed generates the complete non-inferior set under an affordable computation resources. The non-inferior set clearly indicates the competition of the two objectives, and, for a short planning horizon, the non-inferior solutions are strongly affected by the stream flow hydrograph. In summary, the proposed multi-objective planning model can provide a complete competition relationship. Therefore, it is a valuable tool to facilitate the decisions making on a multi-objective water resources planning problem. |
URI: | http://140.113.39.130/cdrfb3/record/nctu/#NT890015077 http://hdl.handle.net/11536/66461 |
显示于类别: | Thesis |