RF-LSTM carbon price prediction based on CEEMDAN decomposition and multiscale entropy reconstruction

Read the full article See related articles

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

This paper proposed an RF-LSTM hybrid prediction model based on CEEMDAN decomposition and multiscale entropy reconstruction. The new model solves the problem of insufficient prediction accuracy caused by the carbon price series’ nonlinearity, non-stationarity, and multifractal characteristics. The method first decomposes price series into IMFs using CEEMDAN, then reconstructs components through multiscale entropy analysis to reduce noise interference. A dual prediction framework combines Random Forest (capturing nonlinear patterns in high-frequency components) and LSTM (modeling long-term dependencies in low-frequency components). Empirical tests on Hubei and EU carbon market data show: (1) The model achieves superior accuracy over benchmarks (CEEMDAN-LSTM/LSTM) across multiple metrics; (2) Maintains high computational efficiency; (3) Demonstrates optimal comprehensive performance. Results verify that entropy-based reconstruction effectively mitigates mode mixing, while RF-LSTM synergy enhances cross-frequency prediction capability, providing methodological support for carbon market risk management.

Article activity feed