Plant-scale biogas production prediction based on multiple hybrid machine learning technique.

Journal: Bioresource technology
Published Date:

Abstract

The parameters from full-scale biogas plants are highly nonlinear and imbalanced, resulting in low prediction accuracy when using traditional machine learning algorithms. In this study, a hybrid extreme learning machine (ELM) model was proposed to improve prediction accuracy by solving imbalanced data. The results showed that the best ELM model had a good prediction for validation data (R = 0.972), and the model was developed into the software (prediction error of 2.15 %). Furthermore, two parameters within a certain range (feed volume (FV) = 23-45 m and total volatile fatty acids of anaerobic digestion (TVFA) = 1750-3000 mg/L) were identified as the most important characteristics that positively affected biogas production. This study combines machine learning with data-balancing techniques and optimization algorithms to achieve accurate predictions of plant biogas production at various loads.

Authors

  • Yi Zhang
    Department of Thyroid Surgery, China-Japan Union Hospital of Jilin University, Jilin University, Changchun, China.
  • Linhui Li
    College of Artificial Intelligence, China University of Petroleum Beijing (CUPB), Beijing 102249, PR China.
  • Zhonghao Ren
    State Key Laboratory of Heavy Oil Processing, Beijing Key Laboratory of Biogas Upgrading Utilization, College of New Energy and Materials, China University of Petroleum Beijing (CUPB), Beijing 102249, PR China.
  • Yating Yu
    State Key Laboratory of Heavy Oil Processing, Beijing Key Laboratory of Biogas Upgrading Utilization, College of New Energy and Materials, China University of Petroleum Beijing (CUPB), Beijing 102249, PR China.
  • Yeqing Li
    State Key Laboratory of Heavy Oil Processing, Beijing Key Laboratory of Biogas Upgrading Utilization, College of New Energy and Materials, China University of Petroleum Beijing (CUPB), Beijing 102249, PR China. Electronic address: liyeqingcup@126.com.
  • Junting Pan
    Institute of Agricultural Resources and Regional Planning, Chinese Academy of Agricultural Sciences, Beijing 100081, PR China.
  • Yanjuan Lu
    Beijing Fairyland Environmental Technology Co., Ltd, Beijing 100094, PR China.
  • Lu Feng
    Department of Medical Oncology, the First Affiliated Hospital of Xi'an Jiaotong University, Xi'an 710061,China.
  • Weijin Zhang
    School of Energy Science and Engineering, Central South University, Changsha 410083, PR China.
  • Yongming Han
    College of Information Science & Technology, Beijing University of Chemical Technology, Beijing 100029, PR China.