...
首页> 外文期刊>Computers & geosciences >Metamodeling-based approach for risk assessment and cost estimation: Application to geological carbon sequestration planning
【24h】

Metamodeling-based approach for risk assessment and cost estimation: Application to geological carbon sequestration planning

机译:基于元模型的风险评估和成本估算方法:在地质固碳计划中的应用

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Carbon capture and storage (CCS) is being evaluated globally as a geoengineering measure for significantly reducing greenhouse emission. However, long-term liability associated with potential leakage from these geologic repositories is perceived as a main barrier of entry to site operators. Risk quantification and impact assessment help CCS operators to screen candidate sites for suitability of CO2 storage. Leakage risks are highly site dependent, and a quantitative understanding and categorization of these risks can only be made possible through broad participation and deliberation of stakeholders, with the use of site-specific, process-based models as the decision basis. Online decision making, however, requires that scenarios be run in real time. In this work, a Python based, Leakage Assessment and Cost Estimation (PyLACE) web application was developed for quantifying financial risks associated with potential leakage from geologic carbon sequestration sites. PyLACE aims to assist a collaborative, analytic-deliberative decision making processes by automating metamodel creation, knowledge sharing, and online collaboration. In PyLACE, metamodeling, which is a process of developing faster-to-run surrogates of process-level models, is enabled using a special stochastic response surface method and the Gaussian process regression. Both methods allow consideration of model parameter uncertainties and the use of that information to generate confidence intervals on model outputs. Training of the metamodels is delegated to a high performance computing cluster and is orchestrated by a set of asynchronous job scheduling tools for job submission and result retrieval. As a case study, workflow and main features of PyLACE are demonstrated using a multilayer, carbon storage model.
机译:碳捕集与封存(CCS)正在全球范围内进行评估,以作为可显着减少温室气体排放的地球工程措施。但是,与这些地质资料库潜在泄漏有关的长期责任被认为是进入现场作业人员的主要障碍。风险量化和影响评估可帮助CCS运营商筛选候选站点是否适合二氧化碳存储。泄漏风险高度依赖于现场,只有通过使用特定于现场的,基于过程的模型作为决策基础,才可以通过利益相关者的广泛参与和审议来实现对这些风险的定量理解和分类。但是,在线决策需要实时运行方案。在这项工作中,开发了基于Python的泄漏评估和成本估算(PyLACE)Web应用程序,用于量化与地质碳封存站点潜在泄漏相关的财务风险。 PyLACE旨在通过自动执行元模型创建,知识共享和在线协作来协助进行协作式分析协商决策过程。在PyLACE中,使用特殊的随机响应面方法和高斯过程回归来启用元模型化,这是开发过程级模型的运行速度更快的替代品的过程。两种方法都可以考虑模型参数的不确定性,并可以使用该信息在模型输出上生成置信区间。元模型的培训被委派给高性能计算集群,并由一组用于作业提交和结果检索的异步作业调度工具进行协调。作为案例研究,使用多层碳存储模型演示了PyLACE的工作流程和主要功能。

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