论文标题
进行实时监控和控制水网络
Towards Real-Time Monitoring and Control of Water Networks
论文作者
论文摘要
水网络用于众多应用中,所有应用都具有对水状态进行实时监控和控制的必不可少的任务。提出了用于生成有效模型的水网络模型的框架。提出的模型保留了连接的本地元素的分布式参数特征。因此,回收了所考虑的财产的空间解决方案。通过减少构成组件的模型的订单建模来确保网络模型的实时可行性。引入了保留模型参数依赖性的新型模型订购过程。拟议的概念以水温作为所考虑的特性评估。该公式模型用于在Viega公司的60米示例性循环网络的实验测试工作台内预测水温。具有50 mM空间分辨率的降低订单模型(ROM),即1200个离散点,并用作测试工作台单个路径的识别模型。之后,在循环实验中的硬件中评估了ROM,以预测下游温度,显示高预测精度,平均相对误差低于3.5 \%。 ROM单步计算时间不超过2毫秒,突出了该方法的实时潜力。此外,进行了完整的网络模型验证实验,具有扩散和传输主导的零件。网络模型能够在网络的不同路径上准确预测平均相对误差,分别低于4 \%,2 \%和2 \%。
Water networks are used in numerous applications, all of which have the essential task of real-time monitoring and control of water states. A framework for the generation of efficient models of water networks suitable for real-time monitoring and control purposes is proposed. The proposed models preserve the distributed parameter character of the connected local elements. Hence, the spatial resolution of the property under consideration is recovered. The real-time feasibility of the network model is ensured by means of reduced order modeling of the models constituting components. A novel model order reduction procedure that preserves the model parametric dependency is introduced. The proposed concept is evaluated with the water temperature as the property under consideration. The formulated model is applied for the prediction of the water temperature within an experimental test bench of a 60 meter exemplary circulation network at the company VIEGA. A reduced order model (ROM) with a 50 mm spatial resolution, i.e. 1200 discretization points, is constructed and utilized as the identification model for a single path of the test bench. Afterwards, the ROM is evaluated in a Hardware in the Loop experiment for the prediction of the downstream temperature showing high prediction accuracy with mean relative error below 3.5 \%. The ROM single step computation time did not exceed 2 msec highlighting the real-time potential of the method. Moreover, full network model validation experiments featuring both diffusion and transport dominated parts were conducted. The network model is able to predict the temperature evolution, flow rate, and pressure accurately at the different paths of the network with mean relative errors below 4 \%, 2 \%, and 2 \%, respectively.