首页> 外文会议>World environmental and water resources congress >Exploring Adaptive Demand-side and Supply-side Management of Urban Water Resources using a Multi-objective Optimization Approach
【24h】

Exploring Adaptive Demand-side and Supply-side Management of Urban Water Resources using a Multi-objective Optimization Approach

机译:使用多目标优化方法探索城市水资源的自适应需求侧和供应侧管理

获取原文

摘要

Urban water management specifies supply-side infrastructure and demand-side policies to balance water supply and demands for social and environmental systems. As the sustainability of water resources depends on the dynamic interactions among the environmental, technological, and social characteristics of the water system and local population, an adaptive water management approach can be used to update utility decisions based on the feedback among these systems and may enable a more efficient use of resources. Adaptive demand-side management strategies, such as regulating water for outdoor use, can be designed with increasing restrictions corresponding to the depletion of reservoirs. Adaptive supply-side strategies supplement supply by increasing the volume of water that is transferred among basins when reservoirs levels drop. Frequent water use restrictions, however, can have adverse effects on property values, due to prolonged periods without lawn watering, while pumping water from external basins carries a high cost due to energy requirements. A trade-off exists between the management costs to the water utility and the number of day when outdoor water use is restricted. In this study, a Complex Adaptive Systems (CAS) framework is used to simulate the adaptive behaviors of consumers, the adaptive decisions of the water utility, and an engineering model of the water supply infrastructure. The CAS framework is coupled with a multi-objective optimization methodology to evaluate a combination of supply-side and demand-side adaptive water management strategies in achieving the conflicting goals of minimizing management costs and minimizing the number of days with outdoor water use restrictions. An evolutionary computation-based methodology, Hypervolume Maximizing Multi-objective Evolutionary Algorithm (HM2EA), is applied to an illustrative case study of an urban water supply system to explore Pareto-optimal solution sets of adaptive water management strategies.
机译:城市水管理规定了供应方的基础设施和需求方的政策,以平衡水的供应与社会和环境系统的需求。由于水资源的可持续性取决于供水系统的环境,技术和社会特征与当地人口之间的动态相互作用,因此可以使用自适应水管理方法根据这些系统之间的反馈来更新效用决策。更有效地利用资源。可以设计适应性需求侧管理策略,例如调节室外用水,以增加相应于水库枯竭的限制。自适应的供应方策略通过增加水库水位下降时盆地之间转移的水量来补充供水。但是,由于长时间不使用草坪浇水,频繁的用水限制可能会对财产价值产生不利影响,而由于能源需求,从外部水盆中抽水会带来高昂的成本。在自来水公司的管理成本和限制室外用水的天数之间存在折衷。在这项研究中,使用复杂的自适应系统(CAS)框架来模拟消费者的自适应行为,自来水公司的自适应决策以及供水基础设施的工程模型。 CAS框架与多目标优化方法结合使用,可以评估供方和需求方自适应水管理策略的组合,以实现相互矛盾的目标,即最小化管理成本并最大程度减少受户外用水限制的天数。一种基于进化计算的方法,即“超大型最大化多目标进化算法(HM2EA)”,被用于城市供水系统的案例研究,以探索适应水管理策略的帕累托最优解集。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号