Method for Developing the System Architecture of Existing Industrial Objects for Digital Representation Tasks
Abstract
:1. Introduction
- To determine the state of the art and identify developments in similar methodologies.
- To develop requirements for the method of creating the system architecture of an existing industrial object. The main requirement is that the architecture of the industrial object in the physical world and its architecture in the digital space constitute a single entity.
- To apply the MBSE approach by creating the components of the method in the format: “Requirements–Functions–Components–Processes” for the developed method.
- To present the method for constructing the system architecture of an existing industrial object.
2. Background
2.1. System Architecture of Existing Industrial Objects
- A description of the main blocks or modules of the system and their functions.
- The definition of interfaces for interaction between components.
- Structural division of the system into subsystems and their organization [16].
- System architecture specific to a broader range of system aspects compared to basic architecture [27], which may be more limited and focus on specific structural elements.
- System architecture often requires a more detailed and comprehensive approach, including analysis and design at multiple levels.
- System architecture focuses more on functional completeness and performance optimization of the system under real operating conditions.
2.2. General Principles and Methods of Systems Engineering and MBSE Applicable to the Creation of System Architecture for Existing Industrial Objects
- The preliminary phase, where the main objectives, project scope, and tools to be used are established.
- Business architecture to support business goals and structures.
- Data and application system architecture to support business functions.
- Technical architecture to define hardware, software, and network solutions for implementing systems.
- Planning and execution of projects, change management, and maintaining the architecture’s relevance.
- The Consolidated Reference Model (CRM) provides a common language for describing and analyzing investments.
- The Collaborative Planning Methodology is a repeatable process for planning and implementing architectural projects, promoting transparency and inter-agency cooperation.
- The Performance Reference Model (PRM) links investments to agency goals and measures performance in various areas.
2.3. Ontological Models and the Creation of System Architecture for Existing Industrial Objects
- Development of a unified ontological model covering all domains involved in the life cycle of an industrial object.
- Development of an ontological model for each domain, ensuring their alignment for information exchange.
- Refinement of the domain ontological model based on a unified ontology.
3. Materials and Methods
3.1. Limitations and Essence of the Method Development
3.2. Identification of Requirements for the Method of Forming the System Architecture of Existing Industrial Objects
- The system architecture of the digital representation must be identical to the system architecture of the existing object in the physical world concerning the objectives of creating the digital representation. The architectural representation of the existing industrial object (EIO) must be provided to the necessary and sufficient extent for the purposes of system design. This means that the actual system architecture of the existing object in the physical world must be represented in the digital world to the necessary and sufficient extent, as creating a complete digital copy of the object reflecting all its temporal changes is impossible. This goal can be verified by comparing the system architecture of the digital representation and the level of detail defined by the objectives. If, after collecting information and identifying missing system elements, there are no unknown elements left at the required level of detail, the goal is considered achieved.
- The proposed method must create a semantic foundation where the constituent elements of the system architecture (requirements, functions, components, processes, models) are unambiguously defined and understood by all stakeholders. This requirement is verified by ensuring that all parties agree on the provided directories and matrices. If all parties have agreed, the criterion is met.
- The method must provide the capability to balance the requirements of different stakeholders. This goal is verified by the presence of tools in the method procedure for resolving contradictions and identifying unknown elements of the system. If the procedure provides tools for these tasks and their implementation is demonstrated, then the goal is considered achieved.
- The method must ensure an iterative process for creating the system architecture, allowing for the updating and modernization of the constructed system architecture. The goal indicates that the procedure of the method must allow for the possibility to return to previous stages at any time and to perform repeat steps and clarifications, including during further work with the already completed architecture in case of external changes.
3.3. Expected Outcome of the Method Application
4. Results
4.1. Method Algorithm
- Physical components and processes of the EIO;
- Documentation of the EIO;
- Information support of the EIO, including information models of the EIO’s infrastructure and technological equipment;
- All stakeholders interacting with the EIO.
- Define the boundaries of the target system;
- Annotate the collected initial data and classify them into groups corresponding to the entities used in the method for forming the system architecture: requirements, functions, components, and processes.
- Procedures for validating initial data;
- Rules for compiling the semantic model of the system;
- Rules for compiling entity relationship matrices;
- Rules for forming the hierarchy of the system architecture;
- Rules for assembling the system architecture;
- Other rules as necessary.
- Serial number of the entity in the dictionary;
- Entity number in the hierarchy;
- Source of the semantic value of the definition;
- Entity name;
- Entity definition.
- Semantic unambiguity of the used entities;
- Justification of the hierarchical arrangement of entities, as the definition includes an indication of the class to which the entity belongs;
- Based on this dictionary, a semantic model is constructed. The dictionary contains definitions for all entities, including classes, subclasses, and attributes.
- Hierarchical nesting, including classes, subclasses;
- Entity identifier corresponding to the hierarchical nesting;
- Semantic description of the entity, including attributes;
- The semantic model is formed for the considered system and for the subject area.
- Requirements (R);
- Functions (F);
- Components (W);
- Processes (P).
- Mathematical;
- Computer-based;
- Digital;
- Semantic;
- Ontological;
- Other types.
- Model identifier;
- Model name;
- Semantic description of the model;
- List of attributes and parameters used by the model;
- The obtained classifier is agreed upon by all stakeholders.
- Expert-based;
- Based on the level of component nesting in the hierarchical model.
- Model identifier;
- Model name;
- Semantic description of the model;
- List of attributes and parameters used by the model.
4.2. Testing the Method for Constructing System Architecture for a Small Hydroelectric Power Plant
- Design documentation for the small HPP, including drawings, specifications, and photographs of the structure;
- Open data: terrain modeling using software;
- Construction information classifier.
- Requirements, functions, components, and processes for the considered object;
- Identifiers of the highlighted fragments;
- Sources of the fragments;
- Content of the fragments.
- Sequential number of the entity in the dictionary;
- Number of the entity in the hierarchy;
- Source of the semantic value of the definition;
- Name of the entity;
- Definition of the entity.
- Semantic unambiguity of the used entities;
- Justification of the hierarchical placement of entities, as the definition indicates to which class the entity belongs.
- Attribute name;
- Unit of measurement;
- Designation (symbol);
- Attribute value range;
- The mathematical models themselves;
- Attribute type (textual/numerical);
- Components included in the mathematical model. Components are also taken from the semantic model of the subject area or system.
5. Discussion
5.1. Comparison with Existing Methods
5.1.1. Comparison with INCOSE Systems Engineering Principles
5.1.2. Comparison with TOGAF Architecture Design Principles
5.2. Limitations and Challenges in Applying the Method Identified during Testing on a Small HPP
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Badenko, V.; Yadykin, V.; Kamsky, V.; Mohireva, A.; Bezborodov, A.; Melekhin, E.; Sokolov, N. Method for Developing the System Architecture of Existing Industrial Objects for Digital Representation Tasks. Systems 2024, 12, 355. https://doi.org/10.3390/systems12090355
Badenko V, Yadykin V, Kamsky V, Mohireva A, Bezborodov A, Melekhin E, Sokolov N. Method for Developing the System Architecture of Existing Industrial Objects for Digital Representation Tasks. Systems. 2024; 12(9):355. https://doi.org/10.3390/systems12090355
Chicago/Turabian StyleBadenko, Vladimir, Vladimir Yadykin, Vladimir Kamsky, Arina Mohireva, Andrey Bezborodov, Egor Melekhin, and Nikolay Sokolov. 2024. "Method for Developing the System Architecture of Existing Industrial Objects for Digital Representation Tasks" Systems 12, no. 9: 355. https://doi.org/10.3390/systems12090355
APA StyleBadenko, V., Yadykin, V., Kamsky, V., Mohireva, A., Bezborodov, A., Melekhin, E., & Sokolov, N. (2024). Method for Developing the System Architecture of Existing Industrial Objects for Digital Representation Tasks. Systems, 12(9), 355. https://doi.org/10.3390/systems12090355