Submitted:
23 July 2025
Posted:
24 July 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. Scoping and Framing
- Smart building and infrastructure technologies, including BACS, BEMS, HEMS;
- SLES, including microgrids, DSM, and DT;
- CES and LSS relevant to long-duration human spaceflight and off-Earth habitats.
2.2. Literature Search Strategy
2.3. Literature Search Strategy
- the initial group comprised articles that presented research findings and developmental work on the modeling, simulation, and control of smart buildings and energy systems. The majority of these publications were from Elsevier journals and the MDPI platform, with significant representation in the domains of energy informatics, automation, and building simulation;
- The second group encompassed studies focusing on practical applications and design of SLES, including the use of modeling and simulation tools for various use cases and operational environments. The preponderance of publications from the IEEE Xplore system within this group is notable, encompassing both conference proceedings and journal articles that pertain to the domains of embedded systems, smart grid control, and integrated energy solutions.
2.4. Identified Gap and Contribution Rationale
3. Modeling and Simulations—Analytical Overview
3.1. Modeling—Tools, Approaches and Applications
3.1.1. SLES Modeling Domain
3.1.2. Microgrid Modeling Domain
3.1.3. Buildings Modeling Domain
3.2. Simulation—Tools, Approaches and Applications
3.2.1. SLES Simulation Domain
3.2.2. Microgrid Simulation Domain
3.2.3. Buildings Simulation Domain
3.3. Co-Modelig and Co-Simulation Approaches
- coupling MATLAB/Simulink with OMNeT++ for integrated control and communication analysis;
- integrating EnergyPlus with GridLAB-D to combine building dynamics with grid-side behaviors;
- using the FMI standard to interface models from tools such as Modelica, Simulink, and TRNSYS.
4. Challenges of SLES and CES: Emerging Research, Engineering, and Application Trends
4.1. SLES—Integration Potential and Toolchains
4.2. CES—Specific Environment and Conditions for Simulation and Modeling
4.3. Transferability of SLES Modeling and Simulation Approaches to CES
5. Discussion
5.1. Extension of SLES Modeling and Simulation Tools Toward CES and LSS Contexts
5.2. Smart Building Technologies in Space Systems: From BACS/HEMS/BEMS to CES Smart Control Architectures
5.3. Energy Strategies in CES and LSS: Renewable Energy, Storage, and DSM/DSR
5.4. Bidirectional Earth–Space Technology Transfer
5.5. Summary SWOT Analysis—Smart Energy and Building Solutions in CES and LSS
6. Conclusions
- for building and industrial automation engineers, the focus should be on evolving BACS, BEMS, and HEMS architectures toward fully autonomous, multi-domain control frameworks. These systems must extend beyond energy management to include environmental and biological regulation in CES and LSS applications, supported by robust, hierarchical, and fault-tolerant control logic;
- for computer scientists and data engineers, future work includes the design of edge-AI frameworks, lightweight learning algorithms, and real-time coordination platforms for distributed sensing and actuation. Key priorities involve semantic interoperability, adaptive control under uncertainty, and efficient data handling in low resource environments;
- for energy system and infrastructure engineers, challenges relate to integrating multi-modal systems (electrical, thermal, biological, environmental) within unified architectures that support optimization, resilience, and autonomy. Simulation environments should accommodate real-time adaptation, predictive diagnostics, and long-duration operation;
- for interdisciplinary research teams, there is a need to develop shared simulation platforms, digital twin frameworks, and experimental testbeds that reflect the tight coupling and constraints of CES and LSS. These platforms should support co-simulation across domains, dynamic scenario testing, and hybrid physical-virtual system evaluation.
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
| AI | Artificial Intelligence |
| BACS | Building Automation and Control Systems |
| BEMS | Building Energy Management Systems |
| CES | Closed Ecological Systems |
| DER | Distributed Energy Sources |
| DSM | Demand Side Management |
| DSR | Demand Side Response |
| DT | Digital Twin |
| ESA | European Space Agency |
| EV | electric vehicles |
| FMI | Functional Mock-up Interface |
| GIS | Geographic information systems |
| HEMS | Home Energy Management Systems |
| HIL | Hardware-in-the-Loop |
| ICT | Information and Communication Technologies |
| IoT | Internet of Things |
| LSS | Life Support Systems |
| MPC | Model Predictive Control |
| RES | Renewable Energy Sources |
| SLES | Smart Local Energy Systems |
| SRI | Smart Readiness Indicator |
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| Modeling Tool | Occurrences | Papers/Articles |
|---|---|---|
| EnergyPlus | 7 | [27,31,34,35,36,37,38] |
| Modelica | 6 | [25,27,29,39,40,41] |
| TRNSYS | 4 | [28,30,42,43] |
| Matlab/Simulink | 4 | [28,42,44,45] |
| GridLAB-D | 4 | [46,47,48] |
| Modeling Method /Approach |
Occurrences | Papers/Articles |
|---|---|---|
| Physical modeling | 5 | [25,30,34,39,43] |
| Optimization-based modeling |
5 | [31,35,36,49,50] |
| Geospatial / GIS-based modeling |
4 | [36,38,51,52] |
| Data-driven modeling | 3 | [32,53,54] |
| Hybrid modeling | 3 | [27,29,55] |
| Simulation Tool | Occurrences | Papers/Articles |
|---|---|---|
| EnergyPlus | 6 | [27,34,35,36,38,53] |
| TRNSYS | 4 | [28,30,42,43] |
| Modelica | 3 | [29,39,40] |
| MATLAB/Simulink | 3 | [42,44,45] |
| GridLAB-D | 3 | [46,47,57] |
| IDA ICE | 3 | [35,37,58] |
| OpenDSS | 3 | [5,52,59] |
| HOMER | 2 | [49,60] |
| Simulation Method /Approach |
Occurrences | Papers/Articles |
|---|---|---|
| Dynamic simulation | 5 | [39,40,43,44,45] |
| Building energy simulation | 5 | [34,35,36,38,53] |
| Thermal-energy simulation | 4 | [30,34,39,43] |
| Electric grid simulation | 4 | [45,48,49,52] |
| HIL (Hardware-in-the-loop) | 4 | [27,41,47,48] |
| Tool/Framework | Description/Role in SLES | Transferability to CES | Co-Simulation Capability |
|---|---|---|---|
| EnergyPlus | Widely used for building energy modeling; useful for thermal and ventilation modeling in CES |
Moderate – limited biological/environmental coupling |
Moderate – supported via BCVTB, FMI |
| TRNSYS | Flexible multi-domain simulation; supports custom loops and thermal subsystems |
High – extensible with new CES modules |
High – native support for co-simulation and FMI integration |
| Modelica | Object-oriented, multi-domain modeling; supports FMI and custom component libraries | Very High – strong for integrated CES models |
Very High – extensive FMI and tool coupling capabilities |
| MATLAB/Simulink | Widely used for control systems and component modeling |
High – suitable for subsystem-level modeling and integration |
High – FMI, Simulink co-simulation, real-time HIL |
| FMI (Functional Mock-up Interface) |
Standard for model exchange and co-simulation | Very High – supports modular, cross-platform integration |
Core co-simulation model |
| Co-simulation (MOSAIK, BCVTB, etc.) |
Couples models across tools and domains |
High – needed for integration of energy, life support, and control |
Core co-simulation model |
| SmartBuilds | Real-time simulation with EnergyPlus + control/data layers |
Moderate – lacks direct support for biological loops |
Moderate – integrated co-simulation architecture |
| OPEN platform | Open-source framework for SLES coordination and simulation |
Moderate – promising structure but needs CES-specific modules |
Moderate – supports modular agent-based coordination |
| GridLAB-D | Used for modeling distributed power systems and control logic in smart grids | Moderate – suitable for electrical layers in CES microgrids |
Moderate – supports coupling with EnergyPlus and real-time testbeds |
| OMNeT++ / CSMO | Simulates communication networks and integrates with energy models via MATLAB |
Moderate – enables ICT-performance evaluation in CES scenarios |
High – supports energy-ICT co-simulation with MATLAB/Simulink |
| Strengths | Weaknesses |
|
|
| Opportunities | Threats |
|
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