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Data-Driven State Prediction and Analysis of SOFC System Based on Deep Learning Method

Mumin Rao, Li Wang, Chuangting Chen, Kai Xiong, Mingfei Li, Zhengpeng Chen, Jiangbo Dong, Jun‐Li Xu, Xi Li

2022Energies24 citationsDOIOpen Access PDF

Abstract

A solid oxide fuel cell (SOFC) system is a kind of green chemical-energy–electric-energy conversion equipment with broad application prospects. In order to ensure the long-term stable operation of the SOFC power-generation system, prediction and evaluation of the system’s operating state are required. The mechanism of the SOFC system has not been fully revealed, and data-driven single-step prediction is of little value for practical applications. The state-prediction problem can be regarded as a time series prediction problem. Therefore, an innovative deep learning model for SOFC system state prediction is proposed in this study. The model uses a two-layer LSTM network structure that supports multiple sequence feature inputs and flexible multi-step prediction outputs, which allows multi-step prediction of system states using SOFC system experimental data. Comparing the proposed model with the traditional ARIMA model and LSTM recursive prediction model, it is shown that the multi-step LSTM prediction model performs better than the ARIMA and LSTM recursive prediction models in terms of two evaluation criteria: root mean square error and mean absolute error. Thus, the proposed multi-step LSTM prediction model can effectively and accurately predict and evaluate the SOFC system’s state.

Topics & Concepts

Autoregressive integrated moving averageElectric power systemComputer scienceMean squared errorTime seriesFeature (linguistics)Artificial neural networkEnergy (signal processing)State (computer science)Artificial intelligencePower (physics)Machine learningAlgorithmMathematicsLinguisticsStatisticsPhilosophyPhysicsQuantum mechanicsFuel Cells and Related MaterialsAdvancements in Solid Oxide Fuel CellsGas Sensing Nanomaterials and Sensors