Time-series forecasting of microbial fuel cell energy generation using deep learning

被引:2
作者
Hess-Dunlop, Adam [1 ]
Kakani, Harshitha [2 ]
Taylor, Stephen [2 ]
Louie, Dylan [2 ]
Eshraghian, Jason [2 ]
Josephson, Colleen [2 ]
机构
[1] Arizona State Univ, Dept Comp Sci, Kerner Lab, Phoenix, AZ 85004 USA
[2] UC Santa Cruz, Dept Elect & Comp Engn, Santa Cruz, CA USA
来源
FRONTIERS IN COMPUTER SCIENCE | 2025年 / 6卷
关键词
microbial fuel cell (MFC); soil microbial fuel cells; deep learning; energy prediction; quantile regression; Long Short Term Memory Networks (LSTM); time series analysis; intermittent computing; LOAD; SOIL;
D O I
10.3389/fcomp.2024.1447745
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Soil microbial fuel cells (SMFCs) are an emerging technology which offer clean and renewable energy in environments where more traditional power sources, such as chemical batteries or solar, are not suitable. With further development, SMFCs show great promise for use in robust and affordable outdoor sensor networks, particularly for farmers. One of the greatest challenges in the development of this technology is understanding and predicting the fluctuations of SMFC energy generation, as the electro-generative process is not yet fully understood. Very little work currently exists attempting to model and predict the relationship between soil conditions and SMFC energy generation, and we are the first to use machine learning to do so. In this paper, we train Long Short Term Memory (LSTM) models to predict the future energy generation of SMFCs across timescales ranging from 3 min to 1 h, with results ranging from 2.33 to 5.71% Mean Average Percent Error (MAPE) for median voltage prediction. For each timescale, we use quantile regression to obtain point estimates and to establish bounds on the uncertainty of these estimates. When comparing the median predicted vs. actual values for the total energy generated during the testing period, the magnitude of prediction errors ranged from 2.29 to 16.05%. To demonstrate the real-world utility of this research, we also simulate how the models could be used in an automated environment where SMFC-powered devices shut down and activate intermittently to preserve charge, with promising initial results. Our deep learning-based prediction and simulation framework would allow a fully automated SMFC-powered device to achieve a median 100+% increase in successful operations, compared to a naive model that schedules operations based on the average voltage generated in the past.
引用
收藏
页数:20
相关论文
共 50 条
[31]   The Role of Artificial Intelligence in Optometric Diagnostics and Research: Deep Learning and Time-Series Forecasting Applications [J].
Santos, Luis F. F. M. ;
Sanchez-Tena, Miguel angel ;
Alvarez-Peregrina, Cristina ;
Sanchez-Gonzalez, Jose-Maria ;
Martinez-Perez, Clara .
TECHNOLOGIES, 2025, 13 (02)
[32]   Deep learning methods for forecasting COVID-19 time-Series data: A Comparative study [J].
Zeroual, Abdelhafid ;
Harrou, Fouzi ;
Dairi, Abdelkader ;
Sun, Ying .
CHAOS SOLITONS & FRACTALS, 2020, 140
[33]   Energy generation forecasting: elevating performance with machine and deep learning [J].
Mystakidis, Aristeidis ;
Ntozi, Evangelia ;
Afentoulis, Konstantinos ;
Koukaras, Paraskevas ;
Gkaidatzis, Paschalis ;
Ioannidis, Dimosthenis ;
Tjortjis, Christos ;
Tzovaras, Dimitrios .
COMPUTING, 2023, 105 (08) :1623-1645
[34]   Energy generation forecasting: elevating performance with machine and deep learning [J].
Aristeidis Mystakidis ;
Evangelia Ntozi ;
Konstantinos Afentoulis ;
Paraskevas Koukaras ;
Paschalis Gkaidatzis ;
Dimosthenis Ioannidis ;
Christos Tjortjis ;
Dimitrios Tzovaras .
Computing, 2023, 105 :1623-1645
[35]   Forecasting of municipal solid waste multi-classification by using time-series deep learning depending on the living standard [J].
Ahmed, Ahmed Khaled Abdella ;
Ibraheem, Amira Mofreh ;
Abd-Ellah, Mahmoud Khaled .
RESULTS IN ENGINEERING, 2022, 16
[36]   Optimizing Time-Series forecasting using stacked deep learning framework with enhanced adaptive moment estimation and error correction [J].
Varshney, Ravi Prakash ;
Sharma, Dilip Kumar .
EXPERT SYSTEMS WITH APPLICATIONS, 2024, 249
[37]   BACKPROPAGATION IN TIME-SERIES FORECASTING [J].
LACHTERMACHER, G ;
FULLER, JD .
JOURNAL OF FORECASTING, 1995, 14 (04) :381-393
[38]   Neural additive time-series models: Explainable deep learning for multivariate time-series prediction [J].
Jo, Wonkeun ;
Kim, Dongil .
EXPERT SYSTEMS WITH APPLICATIONS, 2023, 228
[39]   Time-series forecasting of mortality rates using transformer [J].
Wang, Jun ;
Wen, Lihong ;
Xiao, Lu ;
Wang, Chaojie .
SCANDINAVIAN ACTUARIAL JOURNAL, 2024, 2024 (02) :109-123
[40]   AnIO: anchored input–output learning for time-series forecasting [J].
Ourania Stentoumi ;
Paraskevi Nousi ;
Maria Tzelepi ;
Anastasios Tefas .
Neural Computing and Applications, 2024, 36 :2683-2693