AI-Based Energy Management and Optimization for Urban Infrastructure: A Case Study in Trikala, Greece †
Abstract
1. Introduction
2. Material and Methods
2.1. System Architecture
- Water and Wastewater Infrastructure: Including 50 pumping stations and 25 local stations with dataloggers, plus one wastewater treatment plant (WWTP), accounting for a combined load of ~2 MW.
- Public Buildings: A set of 60 buildings, of which 10 will be fully monitored (energy consumption and analytics) and 50 will be reported through periodic CSV file uploads.
- Renewable Assets: A 1 MWp photovoltaic plant and two Battery Energy Storage Systems (BESS) will be included in the future, forming the distributed energy resources (DER) layer.
2.2. Data Integration and Signal Design
- Load forecasting (using historical consumption and weather data)
- Intra-day dispatch optimization
- Day-ahead planning based on price signals (when available) and PV forecasts
- Anomaly detection and efficiency diagnostics
2.3. AI-Driven Forecasting and Optimization
3. Expected Results
3.1. Load Coverage and System Responsiveness
3.2. Forecasting Accuracy and Optimization Potential
3.3. Energy Flow Optimization Scenarios
- PV self-consumption ratios could be increased by 22% by rescheduling pumping operations to daylight hours.
- Energy cost savings for public buildings (when simulated against time-of-use pricing) ranged from 12% to 18%.
- Load balancing between BESS and grid could import reduced peak loads by approximately 15% in modeled weeks.
4. Discussion—Ongoing Work
4.1. Final Integration and Live Testing
4.2. Energy Policy and Governance Interfaces
4.3. Scalability and Replication
4.4. AI Governance and Ethical Considerations
4.5. Future Research Directions
- Incorporating dynamic pricing algorithms for BESS operation optimization
- Enhancing digital twin fidelity to better simulate fault scenarios
- Exploring federated learning for cross-municipality AI model sharing
- Evaluating citizen behavior modeling to inform DSM strategies
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Chasiotis, A.; Gialama, S.; Piromalis, D.; Nastos, P.T. AI-Based Energy Management and Optimization for Urban Infrastructure: A Case Study in Trikala, Greece. Environ. Earth Sci. Proc. 2025, 35, 76. https://doi.org/10.3390/eesp2025035076
Chasiotis A, Gialama S, Piromalis D, Nastos PT. AI-Based Energy Management and Optimization for Urban Infrastructure: A Case Study in Trikala, Greece. Environmental and Earth Sciences Proceedings. 2025; 35(1):76. https://doi.org/10.3390/eesp2025035076
Chicago/Turabian StyleChasiotis, Angelos, Sofia Gialama, Dimitris Piromalis, and Panagiotis T. Nastos. 2025. "AI-Based Energy Management and Optimization for Urban Infrastructure: A Case Study in Trikala, Greece" Environmental and Earth Sciences Proceedings 35, no. 1: 76. https://doi.org/10.3390/eesp2025035076
APA StyleChasiotis, A., Gialama, S., Piromalis, D., & Nastos, P. T. (2025). AI-Based Energy Management and Optimization for Urban Infrastructure: A Case Study in Trikala, Greece. Environmental and Earth Sciences Proceedings, 35(1), 76. https://doi.org/10.3390/eesp2025035076

