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Data-Driven Natural Gas Compressor Models for Gas Transport Network Optimization

Zaid Marfatia, Xiang Li

2022Digital Chemical Engineering14 citationsDOIOpen Access PDF

Abstract

The fuel cost minimization problem (FCMP) for natural gas transport is important because of the immense energy consumed by compressors to satisfy increasing natural gas demands. Current approaches to the FCMP use inaccurate simplified models, or more complex and computationally challenging models, to describe compressor performance. This paper develops two novel data-driven surrogate models, namely, the dimensionless group based model and the deep neural network (DNN) model. The DNN involves rectified linear units as activation functions, so it can be reformulated into mixed-integer linear constraints in the FCMP. The case study results show that both the dimensionless group based and the DNN models achieve better accuracy than two typical surrogate models in the literature, and they are also computationally more efficient for optimization. The computational performance of the dimensionless based model is sensitive to gas supply and demand data, while that of the DNN model is robust.

Topics & Concepts

Gas compressorDimensionless quantityNatural gasArtificial neural networkMinificationComputer scienceSurrogate modelMathematical optimizationCompressor stationEngineeringMathematicsArtificial intelligenceMechanical engineeringThermodynamicsPhysicsWaste managementAdvanced Multi-Objective Optimization AlgorithmsRefrigeration and Air Conditioning TechnologiesBuilding Energy and Comfort Optimization