Generative AI for Sustainable Smart Environments: A Review of Energy Systems, Buildings, and User-Centric Decision-Making
Abstract
1. Introduction
1.1. Literature Analysis Approach
- Criteria for integrated papers: Peer-reviewed journal or conference articles, preprints with substantial methodological contributions, and studies explicitly applying or evaluating GenAI techniques within the energy or build environment domains.
- Related keywords: “Generative AI”, “Large Language Models”, “Digital Twins”, “Smart Buildings”, “Energy Grids”, “Sustainable Environments”, “User Preferences”, “Reinforcement Learning”, “Urban Energy Systems”.
- Article selection: Literature was identified through systematic searches in Scopus, Web of Science, IEEE Xplore and Google Scholar. Relevant studies were screened based on titles, abstracts, and full texts.
- Data extraction: Key information was extracted, including publication year, model type, application domain, methodology, and reported outcomes.
- Quality assessment: Articles were evaluated based on methodological rigor, clarity of problem definition, reproducibility, and relevance to GenAI applications.
- Data analysis: The extracted data were thematically categorized and analyzed to identify methodological patterns, technological trends, application domains, and research gaps.
1.2. Paper Structure
2. Theoretical Foundations of Generative AI in Energy Systems
3. Applications of GenAI Across Smart Buildings, Energy Grids, and User-Centric Systems
3.1. Smart Buildings and Smart Cities: Comfort, Management, and Design Optimization
3.1.1. Thermal Comfort and Indoor Environment Control
3.1.2. GenAI Copilots and Agentic Interaction in Building Operations
3.1.3. Construction Process and Operational Optimization Through GenAI
3.1.4. GenAI-Enhanced Digital Twins for Urban Planning and Resilience
3.2. Energy Grids and Renewable Systems: Forecasting, Stability and Cybersecurity
3.2.1. Grid Stability and Sustainability
3.2.2. Data Privacy and Cybersecurity
3.2.3. Forecasting and Scenario Generation
3.2.4. Fault and Anomaly Detection
3.3. User Preferences and Decision-Making in Sustainable Environments
4. Result Analysis: Strengths and Limitations of GenAI Compared to Traditional Methods
4.1. Strengths of GenAI (Compared to Traditional Methods)
4.2. Limitations and Risks of GenAI
5. Research Tendencies and Future Directions
6. Conclusions and Future Work
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| ADL | Activities of Daily Living |
| AI | Artificial Intelligence |
| AECO | Architecture, Engineering, Construction and Operations |
| API | Application Programming Interface |
| ATIRENDEE | Artificial Intelligence-driven IoT Recommender Energy System |
| BA | Building Automation |
| BEM | Building Energy Management |
| BIM | Building Information Modelling |
| DDPM | Denoising Diffusion Probabilistic Model |
| DER | Distributed Energy Sources |
| DT | Digital Twin |
| DSS | Decision Support System |
| ETD | Electricity Theft Detection |
| EV | Electric Vehicle |
| GAN | Generative Adversarial Network |
| GenAI | Generative Artificial Intelligence |
| GRAN | Graph Recurrent Neural Network |
| GRU | Gated Recurrent Unit |
| GUIDE | Generative Usage-based Insights for Device Efficiency |
| HITL | Human in the Loop |
| HVAC | Heating, Ventilation and Air Conditioning |
| ICT | Information Communication Technologies |
| IoT | Internet of Things |
| LLM | Large Language Model |
| LSTM | Long Short-Term Memory |
| NLP | Natural Language Processing |
| OOD | Out-of-Distribution |
| QoE | Quality of Experience |
| RES | Renewable Energy Sources |
| RBC | Rule-Based Control |
| RNN | Recurrent Neural Network |
| SGCS | State Grid Corporation of China |
| STLF | Short-Term Load Forecasting |
| SVR | Support Vector Regression |
| UDT | Urban Digital Twin |
| UGI | Urban Generative Intelligence |
| V2G | Vehicle-to-Grid |
| VAE | Variational Autoencoder |
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| Year | Sector | Application | Method | Key Findings | Study |
|---|---|---|---|---|---|
| 2024 | Smart Building and Smart Cities | Building Management and Environmental Control | LLMs and RAG | LLM-based comfort monitoring | [28] |
| 2025 | Smart Building and Smart Cities | Device Orchestration for Agentic Smart Home Systems | LLMs and Semantic Kernel | Agentic smart home control | [31] |
| 2025 | Smart Building and Smart Cities | Building Energy Management | STLF and GRANs | Generative STLF platform | [32] |
| 2024 | Smart Building and Smart Cities | GenAI Privacy-Preserving Copilot | GenAI Copilots and LLMs | Privacy-preserving building copilot | [34] |
| 2025 | Smart Building and Smart Cities, User Preferences and Decision Making | GenAI Copilots and Conversational Interfaces | GenAI Copilots and LLMs | User-centric GenAI survey | [35] |
| 2024 | Smart Building and Smart Cities | Project and Building Management Processes | Text-based models | LLMs aid construction management | [37] |
| 2025 | Smart Building and Smart Cities | Architecture, Engineering, Construction and Operations | Review | GenAI in AEC review | [29] |
| 2025 | Smart Building and Smart Cities | Early-Stage Creation of BIM models | LLMs | LLM generates BIM models | [38] |
| 2024 | Smart Building and Smart Cities | City-Level Digital Twins | GenAI | GenAI for urban resilience | [39] |
| 2024 | Smart Building and Smart Cities | Building Modeling | LLMs and T5 | LLM automates energy modeling | [30] |
| 2024 | Smart Building and Smart Cities | Building Retrofitting | LLMs | AI-driven retrofit platform | [40] |
| 2025 | Energy Grids and Renewable Systems | Data Centres for Optimized Use of Renewable Energy | Review | GenAI for renewable integration | [46] |
| 2025 | Energy Grids and Renewable Systems | Sustainable Smart Cities | GAIoT and GANs, VAEs, Transformers, Diffusion Models | GAIoT enhances sustainability | [47] |
| 2024 | Energy Grids and Renewable Systems | Multi-modal Data and Renewable Energy Generation | Cross-modal GAN | Cross-modal GAN for scenarios | [43] |
| 2025 | Energy Grids and Renewable Systems | Solar Energy Resources | Review | GenAI enhances solar systems | [48] |
| 2022 | Energy Grids and Renewable Systems | Climate-Impacted Energy Systems | GANs | GAN simulates climate uncertainty | [49] |
| 2025 | Energy Grids and Renewable Systems | Anomaly Detection and Cybersecurity in IEC61850-based digital Substations | Conditional-GAN and Adversarial Traffic Mutation | Synth data for grid security | [50] |
| 2021 | Energy Grids and Renewable Systems | Fault diagnosis and Cybersecurity | GANs | GAN detects faults and attacks | [51] |
| 2024 | Energy Grids and Renewable Systems | Data Privacy in Smart Grids | GANs, VAEs and Foundational Models | GenAI improves distributed learning | [52] |
| 2025 | Energy Grids and Renewable Systems | Grid Stability and Cybersecurity | GANs | GAN aids grid stability | [44] |
| 2022 | Energy Grids and Renewable Systems | Forecasting and Scenario Generation for RES Uncertainty | VAEs and Deep Neural Networks | VAE+TL improves wind forecast | [53] |
| 2021 | Energy Grids and Renewable Systems | Renewable Energy Forecasting and Dimensionality Reduction | VAE and BiLSTM | VAE for feature reduction | [15] |
| 2022 | Energy Grids and Renewable Systems | Electricity Demand Forecasting | VAE-BiLSTM | VAE-BiLSTM improves load forecast | [24] |
| 2024 | Energy Grids and Renewable Systems | Renewable Electricity Demand Forecasting | VAE-BiLSTM | VAE-BiLSTM predicts renewable demand | [54] |
| 2024 | Energy Grids and Renewable Systems | Short-Term Wind Power Forecasting | Variational auto-encoder with BiLSTM | Self-attentive VAE improves wind forecast | [55] |
| 2023 | Energy Grids and Renewable Systems | Scenario Generation for Wind and Solar Power | Self-attentive VAEs | VAE generates renewable scenarios | [56] |
| 2023 | Energy Grids and Renewable Systems | Scenario-based Load Forecasting | Diffusion model | Diffusion for probabilistic forecasting | [25] |
| 2022 | Energy Grids and Renewable Systems | Electrical Load Forecasting | Transformer-based architecture | Transformer for load forecasting | [26] |
| 2023 | Energy Grids and Renewable Systems | Fault and Anomaly Detection in Small and Noisy Wind Turbine Datasets | VAE with radial basis function kernels | LSTM-VAE-GAN detects anomalies | [57] |
| 2024 | Energy Grids and Renewable Systems | Photovoltaic Anomaly Detection | Conditional VAE | CVAE detects PV anomalies | [45] |
| 2025 | Energy Grids and Renewable Systems | Load Anomaly Detection | VAE for load profiles | VAE detects load anomalies | [58] |
| 2023 | Energy Grids and Renewable Systems | Fault and Anomaly Detection in Smart Grids | LSTM–VAE | LSTM-VAE detects grid anomalies | [59] |
| 2021 | Energy Grids and Renewable Systems | Electricity Theft Detection | Enhanced NN | GAN aids theft detection | [60] |
| 2025 | User Preferences and Decision-Making | User preference modeling and behaviour simulation | AI + LLM integration | LLMs inform climate strategy | [61] |
| 2025 | User Preferences and Decision-Making | Consumption Optimization and Energy Recommendations | Hybrid GenAI–optimization | LLM guides efficient appliance use | [27] |
| 2026 | User Preferences and Decision-Making | Energy-efficient management in smart houses | AI-driven IoT recommender system | IoT recommender saves energy | [62] |
| 2025 | User Preferences and Decision-Making | Personalized smart-home activity dataset generation | Generative AI simulation | GenAI simulates home activities | [63] |
| 2023 | User Preferences and Decision-Making | Enhanced user interaction with IoT devices | Generative AI integration | GenAI enhances IoT experience | [64] |
| 2025 | User Preferences and Decision-Making | Privacy-preserving control and personalization | Generative AI with privacy-preserving techniques | Privacy-preserving GenAI review | [65] |
| 2025 | User Preferences and Decision-Making | Energy-efficient user interaction and adaptation | Follow-me AI (context-aware generative system) | Context-aware AI saves energy | [66] |
| 2025 | User Preferences and Decision-Making | Balancing and optimization of energy systems | LLM agents | LLM agents manage energy | [67] |
| 2025 | User Preferences and Decision-Making | Building energy analysis and optimization | LLMs | LLMs aid building energy management | [68] |
| 2025 | User Preferences and Decision-Making | Environmental and regulatory implications of GenAI | Theoretical review (Oxford Handbook) | GenAI sustainability policy review | [69] |
| 2024 | User Preferences and Decision-Making | Human preference elicitation for energy-aware systems | Bayesian inference with language models | LLM elicits human preferences | [70] |
| 2025 | User Preferences and Decision-Making | Privacy-preserving control and personalization | Generative AI with privacy-preserving techniques | NIST GenAI risk framework | [71] |
| 2025 | User Preferences and Decision-Making | Renewable energy forecasting and system optimization | Generative AI optimization framework | GenAI aids renewable optimization | [72] |
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Vamvakas, D.; Papaioannou, I.; Tsaknakis, C.; Sgouros, T.; Korkas, C. Generative AI for Sustainable Smart Environments: A Review of Energy Systems, Buildings, and User-Centric Decision-Making. Energies 2025, 18, 6163. https://doi.org/10.3390/en18236163
Vamvakas D, Papaioannou I, Tsaknakis C, Sgouros T, Korkas C. Generative AI for Sustainable Smart Environments: A Review of Energy Systems, Buildings, and User-Centric Decision-Making. Energies. 2025; 18(23):6163. https://doi.org/10.3390/en18236163
Chicago/Turabian StyleVamvakas, Dimitrios, Ioannis Papaioannou, Christos Tsaknakis, Thomas Sgouros, and Christos Korkas. 2025. "Generative AI for Sustainable Smart Environments: A Review of Energy Systems, Buildings, and User-Centric Decision-Making" Energies 18, no. 23: 6163. https://doi.org/10.3390/en18236163
APA StyleVamvakas, D., Papaioannou, I., Tsaknakis, C., Sgouros, T., & Korkas, C. (2025). Generative AI for Sustainable Smart Environments: A Review of Energy Systems, Buildings, and User-Centric Decision-Making. Energies, 18(23), 6163. https://doi.org/10.3390/en18236163

