Eawag, Swiss Federal Institute of Aquatic Science and Technology, Überlandstrasse 133, 8600 Dübendorf, Switzerland.
Water Res. 2011 Oct 15;45(16):4983-94. doi: 10.1016/j.watres.2011.07.008. Epub 2011 Jul 13.
An accurate description of aging and deterioration of urban drainage systems is necessary for optimal investment and rehabilitation planning. Due to a general lack of suitable datasets, network condition models are rarely validated, and if so with varying levels of success. We therefore propose a novel network condition simulator (NetCoS) that produces a synthetic population of sewer sections with a given condition-class distribution. NetCoS can be used to benchmark deterioration models and guide utilities in the selection of appropriate models and data management strategies. The underlying probabilistic model considers three main processes: a) deterioration, b) replacement policy, and c) expansions of the sewer network. The deterioration model features a semi-Markov chain that uses transition probabilities based on user-defined survival functions. The replacement policy is approximated with a condition-class dependent probability of replacing a sewer pipe. The model then simulates the course of the sewer sections from the installation of the first line to the present, adding new pipes based on the defined replacement and expansion program. We demonstrate the usefulness of NetCoS in two examples where we quantify the influence of incomplete data and inspection frequency on the parameter estimation of a cohort survival model and a Markov deterioration model. Our results show that typical available sewer inventory data with discarded historical data overestimate the average life expectancy by up to 200 years. Although NetCoS cannot prove the validity of a particular deterioration model, it is useful to reveal its possible limitations and shortcomings and quantifies the effects of missing or uncertain data. Future developments should include additional processes, for example to investigate the long-term effect of pipe rehabilitation measures, such as inliners.
准确描述城市排水系统的老化和恶化对于优化投资和修复规划是必要的。由于普遍缺乏合适的数据集,网络状况模型很少得到验证,如果得到验证,其成功率也各不相同。因此,我们提出了一种新颖的网络状况模拟器(NetCoS),它可以生成具有给定条件类别分布的下水道管段的合成种群。NetCoS 可用于基准测试劣化模型,并指导公用事业公司选择合适的模型和数据管理策略。该基础概率模型考虑了三个主要过程:a)劣化,b)更换政策,和 c)排水管网的扩展。劣化模型采用基于用户定义的生存函数的转移概率的半马尔可夫链。更换政策通过与条件类别相关的更换下水道管的概率来近似。然后,该模型根据定义的更换和扩展计划,模拟从第一条线安装到现在的下水道管段的过程,添加新的管道。我们在两个示例中展示了 NetCoS 的有用性,其中我们量化了不完全数据和检查频率对队列生存模型和马尔可夫劣化模型参数估计的影响。我们的结果表明,具有废弃历史数据的典型可用下水道清单数据高估了平均预期寿命多达 200 年。尽管 NetCoS 不能证明特定劣化模型的有效性,但它有助于揭示其可能的局限性和缺点,并量化缺失或不确定数据的影响。未来的发展应包括其他过程,例如研究管道修复措施(例如衬里)的长期效果。