Dynamic State and Parameter Estimation for Natural Gas Networks Using Real Pipeline System Data

Kaarthik Sundar1, Anatoly Zlotnik1

  • 1Los Alamos National Laboratory

Details

11:50 - 12:10 | Mon 19 Aug | Lau, 5-205 | MoA3.5

Session: Power and Energy Systems

Abstract

We present a method for joint state and parameter estimation for natural gas networks where gas pressures and flows through a network of pipes depend on time-varying injections, withdrawals, and compression controls. The estimation is posed as an optimal control problem constrained by coupled partial differential equations on each pipe that describe space- and time-dependent density and mass flux.These are discretized and combined with nodal conditions to give dynamic constraints for posing the estimation as nonlinear least squares problems. We develop a rapid, scalable computational method for performing the estimation in the presence of measurement and process noise. Finally, we evaluate its effectiveness using a data set from a capacity planning model for an actual pipeline system and a month of time-series data from its supervisory control and data acquisition (SCADA) system.