(373ar) Dynamic Optimization with Intertemporal Uncertainty in Natural Gas Pipeline Operations Using Stochastic Finite Volume
AIChE Annual Meeting
2024
2024 AIChE Annual Meeting
Computing and Systems Technology Division
10C: Planning and Operation of Energy Systems
Monday, October 28, 2024 - 12:51pm to 1:12pm
A standard approach to uncertainty management for this problem is to use stochastic optimization, which results in well-known issues of poor computational scaling arising due to sampling of parameters in the uncertainty region. In this study, we utilize a recently developed stochastic finite volume representation for optimization of the nonlinear gas flow equations with uncertain boundary conditions to manage intertemporal uncertainties for a pipeline system [3]. Intertemporal uncertainty in this context is used to denote a temporary increase in load starting at a time that is randomly distributed (e.g. uniformly on an interval). This represents the activation of a peaking plant at an a priori unknown time in the day ahead planning interval. In conjunction with the proven method of chance-constraints, this time dependent uncertainty management scheme provides robustness guarantees with a minimum of extra reserve requirements.
References:
[1] IEA, âGas,â https://www.iea.org/fuels-and-technologies/gas, 2023, [Online; accessed 27-June-2023]
[2] J. Bistline, âNatural gas, uncertainty, and climate policy in the US electric power sector,â Energy Policy, vol. 74, pp. 433â442, November 2014.
[3] Tokareva, S., Zlotnik, A., & Gyrya, V. (2024). Stochastic finite volume method for uncertainty quantification of transient flow in gas pipeline networks. Applied Mathematical Modelling, 125, 66-84.