Optimizing the Composting Process Emissions – Process Kinetics and Artificial Intelligence Approach DOI Open Access
Joanna Rosik, Sylwia Stegenta-Dąbrowska

Published: April 28, 2024

Although composting has many advantages in the treatment of organic waste, there are still problems and challenges associated with emissions, like NH3, VOCs, H2S, as well greenhouse gases such CO2, CH4, N2O. One promising approach to enhancing conditions is used novel analytical methods bad on artificial intelligence. To predict optimize emissions (CO, NH3) during process kinetics thought mathematical models (MM) machine learning (ML) were utilized. Data about everyday from laboratory compost’s biochar different incubation (50, 60, 70 °C) doses (0, 3, 6, 9, 12, 15% d.m.) for MM ML selections training. not been very effective predicting (R2 0.1 - 0.9), while acritical neural network (ANN, Bayesian Regularized Neural Network; R2 accuracy CO:0,71, CO2:0,81, NH3:0,95, H2S:0,72)) decision tree (DT, RPART; CO:0,693, CO2:0,80, NH3:0,93, H2S:0,65) have demonstrated satisfactory results. For first time CO H2S demonstrated. Further research a semi-scale field study needed improve developments models.

Language: Английский

Artificial intelligence for waste management in smart cities: a review DOI Creative Commons

Bingbing Fang,

Jiacheng Yu,

Zhonghao Chen

et al.

Environmental Chemistry Letters, Journal Year: 2023, Volume and Issue: 21(4), P. 1959 - 1989

Published: May 9, 2023

Abstract The rising amount of waste generated worldwide is inducing issues pollution, management, and recycling, calling for new strategies to improve the ecosystem, such as use artificial intelligence. Here, we review application intelligence in waste-to-energy, smart bins, waste-sorting robots, generation models, monitoring tracking, plastic pyrolysis, distinguishing fossil modern materials, logistics, disposal, illegal dumping, resource recovery, cities, process efficiency, cost savings, improving public health. Using logistics can reduce transportation distance by up 36.8%, savings 13.35%, time 28.22%. Artificial allows identifying sorting with an accuracy ranging from 72.8 99.95%. combined chemical analysis improves carbon emission estimation, energy conversion. We also explain how efficiency be increased costs reduced management systems cities.

Language: Английский

Citations

210

Artificial intelligence and machine learning for smart bioprocesses DOI
Samir Kumar Khanal, Ayon Tarafdar, Siming You

et al.

Bioresource Technology, Journal Year: 2023, Volume and Issue: 375, P. 128826 - 128826

Published: March 5, 2023

Language: Английский

Citations

41

Applicability and limitation of compost maturity evaluation indicators: A review DOI
Yilin Kong, Jing Zhang, Xuanshuo Zhang

et al.

Chemical Engineering Journal, Journal Year: 2024, Volume and Issue: 489, P. 151386 - 151386

Published: April 17, 2024

Language: Английский

Citations

39

From waste to wealth: Innovations in organic solid waste composting DOI
Mingyue Xu,

Haishu Sun,

Enmiao Chen

et al.

Environmental Research, Journal Year: 2023, Volume and Issue: 229, P. 115977 - 115977

Published: April 24, 2023

Language: Английский

Citations

33

Machine learning applications for biochar studies: A mini-review DOI
Wei Wang, Jo‐Shu Chang, Duu‐Jong Lee

et al.

Bioresource Technology, Journal Year: 2024, Volume and Issue: 394, P. 130291 - 130291

Published: Jan. 4, 2024

Language: Английский

Citations

15

Machine-learning intervention progress in the field of organic waste composting: Simulation, prediction, optimization, and challenges DOI

Li-ting Huang,

Jia-yi Hou,

Hongtao Liu

et al.

Waste Management, Journal Year: 2024, Volume and Issue: 178, P. 155 - 167

Published: Feb. 24, 2024

Language: Английский

Citations

12

Machine learning for sustainable organic waste treatment: a critical review DOI Creative Commons
Rohit Gupta,

Zahra Hajabdollahi Ouderji,

Uzma Uzma

et al.

npj Materials Sustainability, Journal Year: 2024, Volume and Issue: 2(1)

Published: April 8, 2024

Abstract Data-driven modeling is being increasingly applied in designing and optimizing organic waste management toward greater resource circularity. This study investigates a spectrum of data-driven techniques for treatment, encompassing neural networks, support vector machines, decision trees, random forests, Gaussian process regression, k -nearest neighbors. The application these explored terms their capacity complex processes. Additionally, the delves into physics-informed highlighting significance integrating domain knowledge improved model consistency. Comparative analyses are carried out to provide insights strengths weaknesses each technique, aiding practitioners selecting appropriate models diverse applications. Transfer learning specialized network variants also discussed, offering avenues enhancing predictive capabilities. work contributes valuable field modeling, emphasizing importance understanding nuances technique informed decision-making various treatment scenarios.

Language: Английский

Citations

11

Prediction models for bioavailability of Cu and Zn during composting: Insights into machine learning DOI
Bing Bai, Lixia Wang,

Fachun Guan

et al.

Journal of Hazardous Materials, Journal Year: 2024, Volume and Issue: 471, P. 134392 - 134392

Published: April 23, 2024

Language: Английский

Citations

9

Applications of machine learning tools for biological treatment of organic wastes: Perspectives and challenges DOI Creative Commons
Long Chen, Pinjing He, Hua Zhang

et al.

Circular Economy, Journal Year: 2024, Volume and Issue: 3(2), P. 100088 - 100088

Published: May 31, 2024

Biological treatment technologies (such as anaerobic digestion, composting, and insect farming) have been extensively employed to handle various degradable organic wastes. However, the inherent complexity instability of biological processes adversely affect production renewable energy nutrient-rich products. To ensure stable consistent product quality, researchers invested heavily in control strategies for treatment, with machine learning (ML) recently proving effective optimizing predicting parameters, detecting disturbances, enabling real-time monitoring. This review critically assesses application ML providing an in-depth evaluation key algorithms. study reveals that artificial neural networks, tree-based models, support vector machines, genetic algorithms are leading treatment. A thorough investigation applications farming underscores its remarkable capacity predict products, optimize processes, perform monitoring, mitigate pollution emissions. Furthermore, this outlines challenges prospects encountered applying highlighting crucial directions future research area.

Language: Английский

Citations

8

Substrate preference triggers metabolic patterns of indigenous microbiome during initial composting stages DOI

Yi Ren,

Chen Liu,

Jiayu Luo

et al.

Bioresource Technology, Journal Year: 2025, Volume and Issue: 419, P. 132034 - 132034

Published: Jan. 5, 2025

Language: Английский

Citations

1