How to Conduct Human-Centric Building Design? A Review of Occupant Modeling Methods and Applications
Abstract
1. Introduction
- Geographical distribution and targeting building typologies: What patterns exist in their spatial deployment and architectural applications?
- Typology: What are the prevalent categories, along with their respective strengths and limitations?
- Data framework: What constitutes the predominant input-output data structures, and to what extent is real-world data integrated into current practices?
- Application scenarios: What is the prevalence ratio between collective models and individual models, and how do their application scenarios differ?
- How can architects choose the right model and apply it in practice? And how to build a better iterative cycle?
2. Materials and Methods
2.1. Literature Search
2.2. Overview of the Existing Review Articles
3. Methods and Applications of Occupant Modeling
3.1. Distributions of Current Models
3.2. Categories of Models
3.2.1. Statistical Models
3.2.2. Probabilistic Models
3.2.3. Agent-Based Models
3.2.4. Machine Learning Models
3.2.5. Hybrid Models
3.3. Data Stream
3.3.1. Input and Output
3.3.2. Linkages Between Data Stream
3.3.3. Reinforcement Caused by Simulated Data
3.4. Application Scenarios of Occupant Modeling
4. Discussion
4.1. Suggestions for Building the Most Suitable Occupant Model
4.2. How Do Occupant Models Contribute to Building Design?
5. Conclusions
- Occupant modeling research has exhibited clear geographical and typological patterns. Most studies originate from technologically advanced regions such as North America, Western Europe, and East Asia. Regulatory pressures, digital infrastructure, and academic networks in these regions support occupant-centric innovation. Research has shifted from focusing on thermal comfort and adaptive behavior in office/residential environments to capturing dynamic behavior in mixed-use buildings. The rise in the Internet of Things (IoT), Agent-Based Modeling, and digital twin has reinforced this shift, enabling real-time data-driven applications in sensor-rich urban environments. Occupant modeling approaches are evolving from single, deterministic models to adaptive hybrid models fusing data-driven, agent-based simulation, stochasticity and physical principles, with the core driver being balancing computational complexity with human-centric design.
- Occupant models can be categorized into statistical models, machine learning models, agent-based models, probabilistic models, and hybrid models. Statistical models can provide powerful causal insights with minimal data requirements, but struggle with nonlinearity and temporal dynamics. Machine learning models offer high predictive accuracy and scalability for complex behaviors, but they suffer from opacity and a reliance on large, high-quality datasets. Agent-based models excel at simulating individual interactions and emerging group dynamics, but they have limited generalization capabilities. Probabilistic models effectively capture uncertainty and state transitions but lack causal depth. Hybrid models, though emerging, integrate methodological advantages to balance accuracy and transparency, but face challenges in standardization and reproducibility. Overall, the diversity of occupantmodeling types reflects the ongoing trade-off between behavioral fidelity, computational feasibility, and future directions may lie in hybrid and context-aware modeling frameworks.
- The current occupantmodeling data framework exhibits significant imbalance: although input data increasingly originates from empirical sources—particularly occupant behavior and subjective data—output results remain highly dependent on simulation. Meanwhile, the adoption of parameters like psychosocial signals is minimal due to integration challenges. As a result, models risk reinforcing theoretical assumptions rather than capturing actual occupant variability. The application of physiological signals, immersive environments, and longitudinal datasets should be considered for the need for more comprehensive multimodal data strategies and standardized benchmarking protocols to balance empirical foundations with predictive complexity in occupant-centered modeling.
- Occupant modeling applications reveal a significant imbalance between collective and individualized approaches, reflecting an emphasis on building-scale efficiency and regulatory compliance, which tends to aggregate occupant behavior for energy prediction, evacuation planning, and adaptive control strategy simulation. The differences in application scenarios highlight methodological trade-offs: collective models align with system-level objectives but risk oversimplification, while individualized models prioritize behavioral realism but sacrifice broader applicability. Future research may need to bridge these paradigms through hybrid frameworks, potentially achieving a balance between efficiency and personalization, contingent on advancements in data integration and privacy-preserving modeling techniques.
- To determine the most appropriate occupant model, we propose a structured, decision-oriented framework that combines modeling strategies with specific design objectives, data availability, behavioral complexity, and platform integration requirements to guide method selection. At the same time, occupant models serve as a key tool for bridging the gap between design intent and operational performance. Although currently mainly applied in the operational phase, focusing on energy and comfort optimization. However, its transformative potential in early design stages remains underexplored, such as when integrated with a digital twin.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| ABM | Agent-Based Modeling |
| AEC | Architecture, Engineering, and Construction |
| BIM | Building Information Modeling |
| BPS | Building Performance Simulation |
| RMSE | Root Mean Square Error |
| DNAs | Standardizing Drivers-Needs-Actions-system |
| DNN | Deep Neural Networks |
| DRL | Deep reinforcement learning |
| FMU | Functional Mock-up Unit |
| GNN | Graph Neural Networks |
| HIM | Human Information Modeling |
| LSTM | Long Short-Term Memory |
| OB | Occupant Modeling |
| OCD | Occupant-centric Design |
| OBEM | Occupant-centric Building Energy Modeling |
| RF | Random Forests |
| RNN | Recurrent Neural Networks |
| R2 | Coefficient of Determination |
| SEM | Structural Equation Modeling |
| SVM | Support Vector Machines |
| ML | Machine Learning |
| MC | Monte Carlo |
| MBE | Mean Bias Error |
| XGBoost | EXtreme Gradient-Boosted trees |
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| Model Type | Representative Algorithm | Strengths | Limitations | Proportion |
|---|---|---|---|---|
| Statistical Models | Linear Regression, Logistic Regression, ANOVA |
|
| 21.9% |
| Probabilistic Models | Markov Chains, Bayesian Networks, Monte Carlo (MC) Simulation |
|
| 17.2% |
| Agent-Based Models (ABM) | Agent-Based Modeling, BDI Models |
|
| 18.1% |
| Machine Learning (ML) Models | SVM, Random Forest, XGBoost, RNN |
|
| 33.9% |
| Hybrid Models | ABM + Optimization, Statistics + ML, MC + Rule Systems |
|
| 8.9% |
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Sun, R.; Sun, C.; Adhikari, R.S.; Qu, D.; Del Pero, C. How to Conduct Human-Centric Building Design? A Review of Occupant Modeling Methods and Applications. Buildings 2025, 15, 4117. https://doi.org/10.3390/buildings15224117
Sun R, Sun C, Adhikari RS, Qu D, Del Pero C. How to Conduct Human-Centric Building Design? A Review of Occupant Modeling Methods and Applications. Buildings. 2025; 15(22):4117. https://doi.org/10.3390/buildings15224117
Chicago/Turabian StyleSun, Rui, Cheng Sun, Rajendra S. Adhikari, Dagang Qu, and Claudio Del Pero. 2025. "How to Conduct Human-Centric Building Design? A Review of Occupant Modeling Methods and Applications" Buildings 15, no. 22: 4117. https://doi.org/10.3390/buildings15224117
APA StyleSun, R., Sun, C., Adhikari, R. S., Qu, D., & Del Pero, C. (2025). How to Conduct Human-Centric Building Design? A Review of Occupant Modeling Methods and Applications. Buildings, 15(22), 4117. https://doi.org/10.3390/buildings15224117

