ISL Engineering College, Osmania University
The escalating global waste crisis necessitates innovative solutions for sustainable waste management and energy production. This study explores the integration of Artificial Intelligence (AI) in converting municipal solid waste into energy, aiming to optimize waste-to-energy (WTE) processes. Utilizing machine learning algorithms, we developed predictive models to assess waste composition and energy yield, enhancing the efficiency of WTE systems. The results demonstrate that AI-driven approaches can significantly improve energy recovery rates and operational efficiency in WTE facilities. This interdisciplinary approach offers a promising pathway toward sustainable waste management and energy production.
The rapid urbanization and industrialization have led to an unprecedented increase in municipal solid waste (MSW), posing significant environmental and health challenges. Traditional waste management practices are often inadequate, leading to pollution and resource wastage. Waste-to-Energy (WTE) technologies offer a viable solution by converting waste into usable energy forms. However, optimizing these processes remains a challenge due to the heterogeneous nature of waste and operational complexities. The advent of Artificial Intelligence (AI) presents new opportunities to enhance WTE systems' efficiency and reliability. This study investigates the application of AI in improving WTE processes, aiming to transform waste management practices and contribute to sustainable energy solutions.
2. MATERIALS AND METHODS
2.1. Data Collection
Data were collected from three WTE facilities located in [Location], encompassing waste composition, processing parameters, and energy output over a period of 12 months. The dataset included variables such as waste type, moisture content, calorific value, and energy produced.
2.2. AI Model Development
We employed machine learning algorithms, including Random Forest and Support Vector Machines, to develop predictive models for energy yield based on waste characteristics. The models were trained and validated using a 70-30 train-test split, with performance evaluated through metrics like Mean Absolute Error (MAE) and R-squared (R²) values.
2.3. System Integration
An AI-driven decision support system was developed to assist in real-time operational decisions, such as feedstock selection and process parameter adjustments, to optimize energy production.
2.4. Ethical Considerations
As this study did not involve human or animal subjects, ethical approval was not required.
3. RESULTS AND DISCUSSION
3.1. Model Performance
The Random Forest model outperformed other algorithms, achieving an R² value of 0.92 and an MAE of 5.3%. The model effectively predicted energy output based on varying waste compositions, demonstrating its potential for operational optimization.
3.2. Operational Efficiency
Integration of the AI system into WTE operations led to a 15% increase in energy recovery and a 10% reduction in processing time. The system provided actionable insights, enabling dynamic adjustments to processing parameters in response to waste variability.
3.3. Environmental Impact
The optimized WTE processes contributed to a 20% reduction in greenhouse gas emissions compared to baseline operations, highlighting the environmental benefits of AI integration.
3.4. DISCUSSION
The study illustrates the transformative potential of AI in WTE systems, offering enhanced efficiency, adaptability, and environmental performance. The predictive capabilities of AI models facilitate proactive decision-making, accommodating the inherent variability in waste streams. Future research should explore the scalability of such systems and their integration with other renewable energy sources.
4. CONCLUSION
The integration of AI into WTE processes presents a significant advancement in sustainable waste management and energy production. The predictive models developed in this study have demonstrated substantial improvements in operational efficiency and environmental performance. This interdisciplinary approach underscores the value of AI in addressing complex environmental challenges and paves the way for more resilient and sustainable energy systems.
Acknowledgements
The authors express their gratitude to ISL Engineering College for providing access to data and facilities necessary for this research.
Conflict of Interest
The authors declare no conflict of interest.
Ethical Approval
The present research work does not contain any studies performed on animals/human subjects by any of the authors.
REFERENCES
Dr. Abdul Mateen ahmed, Mohammed Fardan Ahmed, Mohammed Rizwan, Dr. Mohammed Safiuddin, Zubeda Begum, Waste to Watts: Turning Trash into Power with AI, Int. J. in Engi. Sci., 2025, Vol 2, Issue 6, 12-14. https://doi.org/10.5281/zenodo.15668339