Digital twin assisted decision support system for quality regulation and leak localization task in large-scale water distribution networks

IF 3 Q2 ENGINEERING, CHEMICAL
Parth Brahmbhatt , Abhilasha Maheshwari , Ravindra D. Gudi
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引用次数: 0

Abstract

Effective water resource management is essential in large metropolitan cities. Digital Twins (DT), supported by IIoT and machine learning technologies, provide opportunities for real-time prediction and optimization for effective decision-making in water distribution systems. A framework for the digital twin of the Water Distribution Network (WDN) is developed in this paper to achieve higher operational efficiency using ‘WNTR’, the Python-based library of EPANET. All computational experiments and methods were validated on the benchmark hydraulic C-TOWN network (Ostfeld et al., 2011). The hydraulic parameters and quality parameters of the DT model for the water network were calibrated using the Differential Evolution (DE) algorithm. The calibrated DT served as a real-time proxy to generate simulation data, which is used for two different applications in large-scale water networks: (i) Disinfectant dosage regulation task using booster stations and (ii) pipe leakage localization task. The calibrated DT was utilized to estimate the optimal disinfectant dosing rates, ensuring water quality control within an acceptable range using optimization. The results highlight the effectiveness of the neural network and real-time optimization strategy to achieve the optimal dosing rate. For the leakage localization task, the Graph Convolution Networks (GCN) based neural network trained on the DT was found to predict leakage location very accurately.

大型配水管网质量调控与泄漏定位的数字孪生辅助决策支持系统
有效的水资源管理对大城市来说至关重要。数字双胞胎(DT)在IIoT和机器学习技术的支持下,为供水系统的有效决策提供了实时预测和优化的机会。为了使用EPANET的基于Python的库“WNTR”实现更高的运行效率,本文开发了一个用于配水网络(WDN)数字孪生的框架。所有计算实验和方法都在基准水力C-TOWN网络上进行了验证(Ostfeld等人,2011)。使用差分进化(DE)算法校准了水网DT模型的水力参数和质量参数。校准后的DT作为实时代理生成模拟数据,用于大规模供水网络中的两种不同应用:(i)使用加强站的消毒剂剂量调节任务和(ii)管道泄漏定位任务。使用校准的DT来估计最佳消毒剂剂量率,确保使用优化将水质控制在可接受的范围内。结果突出了神经网络和实时优化策略实现最佳给药速率的有效性。对于泄漏定位任务,发现在DT上训练的基于图卷积网络(GCN)的神经网络可以非常准确地预测泄漏位置。
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CiteScore
3.10
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