Liquid Neural Network Models for Natural Gas Spot Price Time-Series Forecasting

arXiv cs.LG / 4/29/2026

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Key Points

  • The study addresses the difficulty of short-term Henry Hub natural gas spot price forecasting caused by strong volatility and frequent regime shifts.
  • It proposes using Liquid Neural Networks (LNNs), which continuously adapt internal states to better handle nonstationary time-series dynamics.
  • The work evaluates LNNs for forecasting the Henry Hub spot price as a key benchmark for natural gas pricing.
  • It argues that improved accuracy in volatile conditions can reduce uncertainty and enhance decision support for energy trading and power market operations.
  • The article is presented as an arXiv new preprint, indicating an early-stage research contribution rather than a deployed system.

Abstract

Natural gas is undoubtedly an essential component of the global energy system. Accurate short-term forecasting of natural gas price is challenging due to pronounced volatility driven by seasonal demand patterns, geopolitical developments, and shifting macroeconomic conditions. The nonlinear dynamics and frequent regime changes can limit the effectiveness of traditional time-series models. In this study, we explore the use of Liquid Neural Networks (LNNs) for short-horizon forecasting of the Henry Hub spot price, a primary benchmark for pricing. LNNs are designed to adapt continuously to evolving temporal patterns through dynamic internal state updates, making them well suited for nonstationary price behavior. By improving forecast accuracy in volatile market conditions, this work aims to reduce uncertainty and enhance decision support across energy trading and power market applications.