A platform for research: civil engineering, architecture and urbanism
Novel Machine Learning-Based Energy Consumption Model of Wastewater Treatment Plants
Wastewater treatment plants (WWTPs) can account for up to 1% of a country’s energy consumption. Meanwhile, WWTPs have high energy-saving potential. To achieve this, it is necessary to establish appropriate energy consumption models for WWTPs. Several recent models have been developed using logarithmic, exponential, or linear functions. However, the behavior of WWTPs is non-linear and difficult to fit with simple functions, particularly for non-numerical variables. Thus, traditional modeling methods cannot effectively describe the relationship between water and energy in WWTPs. Therefore, a machine learning method was adopted in this study to investigate the energy consumption in WWTPs; a novel energy consumption model with a non-numerical variable (discharge standard) for WWTPs was developed using the random forest algorithm. The model can also predict the energy consumption of WWTPs after upgrading discharge standards. We found that the unit electricity consumption of WWTPs exhibited an average increase of 17% after the effluent discharge standard was increased from class I B to class I A (as per China’s classification). The correlation coefficient of the model was 0.702. Thus, the developed model can provide a better understanding of energy efficiency in WWTPs.
A novel machine learning-based energy consumption model of wastewater treatment plants was built to better understand water-energy nexus.
Novel Machine Learning-Based Energy Consumption Model of Wastewater Treatment Plants
Wastewater treatment plants (WWTPs) can account for up to 1% of a country’s energy consumption. Meanwhile, WWTPs have high energy-saving potential. To achieve this, it is necessary to establish appropriate energy consumption models for WWTPs. Several recent models have been developed using logarithmic, exponential, or linear functions. However, the behavior of WWTPs is non-linear and difficult to fit with simple functions, particularly for non-numerical variables. Thus, traditional modeling methods cannot effectively describe the relationship between water and energy in WWTPs. Therefore, a machine learning method was adopted in this study to investigate the energy consumption in WWTPs; a novel energy consumption model with a non-numerical variable (discharge standard) for WWTPs was developed using the random forest algorithm. The model can also predict the energy consumption of WWTPs after upgrading discharge standards. We found that the unit electricity consumption of WWTPs exhibited an average increase of 17% after the effluent discharge standard was increased from class I B to class I A (as per China’s classification). The correlation coefficient of the model was 0.702. Thus, the developed model can provide a better understanding of energy efficiency in WWTPs.
A novel machine learning-based energy consumption model of wastewater treatment plants was built to better understand water-energy nexus.
Novel Machine Learning-Based Energy Consumption Model of Wastewater Treatment Plants
Zhang, Shike (author) / Wang, Hongtao (author) / Keller, Arturo A. (author)
ACS ES&T Water ; 1 ; 2531-2540
2021-12-10
Article (Journal)
Electronic Resource
English
DOAJ | 2023
|Energy Consumption and Carbon Footprint of Greek Wastewater Treatment Plants
DOAJ | 2022
|American Chemical Society | 2024
|DOAJ | 2020
|