The present invention relates generally to the modeling of systems and, more particularly, to modeling and analysis of systems in a system-of-systems (SoS) environment.
In current modeling environments, a variety of modeling tools are available that provide different ways of analyzing a system. Typically a single characteristic and/or view of a system is modeled to provide insight into a targeted aspect of the system. While such model output may provide results relative to the targeted aspect of the system, no visibility is provided into the impact of behavior associated with the targeted aspect on the behavior of the system as a whole. When modeling efforts are compartmentalized, it can be difficult and time consuming to analyze a large system. Modeling and analysis can be particularly difficult where the system is included in a system-of-systems (SoS).
The present invention, in one implementation, is directed to a method of modeling one or more operational and/or logical aspects of a system. A plurality of modeling components of generic structure are used to obtain a logical model of the system. The logical model and one or more of the modeling components of generic structure are used to obtain a plurality of related models targeted toward the one or more aspects. The related models are implemented to determine one or more effects of the one or more aspects on the system.
In another implementation, the invention is directed to a method of modeling one or more systems in a system-of-systems (SoS). A plurality of modeling components of generic structure are used to obtain a system architecture for the SoS. The system architecture and one or more of the modeling components of generic structure are used to obtain a plurality of related models targeted toward the one or more systems. A plurality of modeling tools are integrated based on at least one of the following: model description commonality among the tools, and view description commonality among the tools. The related models are implemented using the integrated tools.
In another configuration, the invention is directed to an apparatus for modeling a system. The apparatus includes at least one processor and at least one memory configured to use a plurality of components of generic structure (COGSs) to represent the system as a plurality of architectural components. The apparatus further includes at least one COTS modeling tool. The processor and memory are further configured to provide user runtime input to the COGSs that modifies the system representation, and execute the at least one COTS modeling tool to model the modified system representation using the COGSs and the user input.
The features, functions, and advantages can be achieved independently in various embodiments of the present inventions or may be combined in yet other embodiments.
The present invention will become more fully understood from the detailed description and the accompanying drawings, wherein:
The following description of preferred embodiments is merely exemplary in nature and is in no way intended to limit the invention, its application, or uses.
The present invention, in some configurations, is directed to an integrated system-modeling environment for creating, visualizing and executing a plurality of related models for a system and/or system-of-systems (SoS). In one implementation of the present invention, an integrated modeling environment provides a framework for performing analysis of hardware, software and/or operational aspects of a system and/or SoS. Modeling may be performed at a level, determined by a user, that provides data that can be used, e.g., to predict behavior, performance and/or availability profile of a system and/or SoS. Analysis results of the quantitative model outputs can be used to adjust the system and/or SoS, for example, to ensure that system architecture and design meet stated quality metrics.
In some implementations, a modeling framework includes reusable, discrete model components of generic structure (COGS). The modeling framework, which provides a layered approach to modeling, includes COGS and models created using the COGS. For example, method of the invention, in one implementation, includes unifying a plurality of models of processes, data management, information management, architecture, interactions, constraints, performance requirements, and/or physical host(s) of a SoS environment. Model unification can be achieved by abstracting the models to a meta-model level, e.g., by linking model components stored in a repository to obtain a meta-model. Additionally, a plurality of design tools in the environment are integrated on the basis of commonalities among the tools pertaining to model and view descriptions.
A conceptual diagram of one embodiment of a modeling framework is indicated generally in
Such tools may be integrated semantically with one another on the basis of commonalities in model and view descriptions. Integrating modeling tools may entail mapping between and/or among meta-model and meta-data representations. Using abstracted tool semantics to obtain an integrated model is described in co-pending U.S. patent application Ser. No. 10/277,455 filed on Oct. 22, 2002, the disclosure of which is incorporated herein by reference in its entirety. For example, as described in the foregoing patent application, a workflow information model internal to a COTS workflow tool may be extended (without having to implement code within the tool) to provide a tool-neutral representation of a semantically integrated model of workflow and project management for a process. Using the integrated framework 10, a user may implement a plurality of modeling approaches 14 relative to one or more models integrated in such manner.
A conceptual diagram of one embodiment of a cohesive integrated modeling framework is indicated generally in
In one implementation of the framework 50, the system architecture approach 38 is used to provide a logical model of a target system. The target system may be, for example, a discrete system or a system-of-systems (SoS). A flow diagram describing a method of modeling one or more operational and/or logical aspects of the target system is indicated generally in
As previously stated, configurations of the invention may be implemented in connection with a system-of-systems (SoS). A conceptual diagram of one embodiment of an integrated modeling environment for system-of-systems modeling is indicated generally in
Models may be developed, modified and executed using a layered runtime model engine which is decoupled from model components and from model intelligence. As further described below, a runtime modeling environment may be controlled dynamically, for example, to execute “what-if” scenarios. A conceptual diagram of an exemplary cohesive integrated modeling environment is indicated generally in
Configurations of the integrated modeling environment are scalable in that a user may target a system environment, a layer within a system and/or individual data elements of a system. For example, a user may scale from a software process running on a CPU to a SoS environment. Use cases can be validated on top of a representation of a target system architecture or SoS environment.
Configurations of the integrated modeling environment are extendible in that new models and associated framework components may be added to support dynamic requirements. In one such configuration of the invention, a component-based modeling environment allows for modeling of a systems hardware and software architecture to generate predictive performance analysis data. An exemplary system architecture that can be modeled in accordance with one implementation of the invention is indicated generally in
For example, reusable, configurable COGSs may be combined with a COTS tool such as Extend™ to model architecture performance. COGSs are used to represent generic system elements. Thus a COGS may represent, for example, a resource (e.g., a CPU, LAN, server, HMI, or storage device), a resource scheduler, a subsystem process, a transport component such as a bus or network, or an I/O channel sensor or other I/O device. In the present exemplary configuration, inputs to COGSs are spreadsheet inputs to Extend™ which, for example, can be modified at modeling runtime. COGSs are library components that are programmed to attach to appropriate spreadsheets based on row number. Exemplary spreadsheet inputs are shown in Table 1.
A block diagram illustrating how an exemplary server node may be modeled as a COGS is indicated generally in
A block diagram illustrating how an exemplary server process may be modeled as a COGS is indicated generally in
A block diagram illustrating how one or more LANs and/or system buses may be modeled as a transport COGS is indicated generally in
In one implementation of the invention, to build a model describing the system 200, static models first are created and analyzed. Such models may include models for key system components, deployment architectural views, process and data flow views, key performance parameters, assumptions, constraints, and system architect inputs. The architectural view, static models, system architect predictions and modeling tools are used to create initial dynamic models. Additional inputs, e.g., from prototypes, tests, vendors, and additional architectural decisions may be used to refine the dynamic models and obtain further inputs to the system architecture. Documentation may be produced that includes a performance profile, assumptions used in creating the models, static model and associated performance analysis, dynamic model and associated performance analysis, risks associated with the system architecture, suggested architectural changes based on the analysis, and suggestions as to how to instrument the system 200 to provide “real” inputs to the model.
A conceptual diagram of one implementation of dynamic modeling is indicated generally in
The foregoing modeling framework thus allows component configurations to be easily modified at runtime, enabling the ability to perform rapid “what-if” scenarios. Such configurations include but are not limited to number of CPUs, strength of CPUs, LAN configuration, LAN utilization, system and I/O buses, graphics configuration, disk bandwidth, I/O configuration, process deployment, thread deployment, message number, size and frequency, and hardware and software component availability. System and/or SoS availability can be modeled to predict, for example, server availability and impact on performance, network availability and impact on performance, fault tolerance and how it impacts system function, redundancy and where redundancy is most effective, load balancing, and how loss of load balance impacts system performance. Modeling can be performed that incorporates system latency, and that represents message routing based on a destination process (as opposed to being based on a fixed destination). Impact of a system event on other systems and/or a wide-area network can be analyzed within a single system model environment.
The foregoing framework supports a realistic representation of a system model, including but not limited to a load-balanced LAN, broadcast messages on a LAN, local storage with system bus implications, SAN with system bus implications, I/O control with switches, fine-grain messages, and fine-grain processes and threading. Historical data from deployed systems and definitions and results of previous system models can be captured and used to improve future decision making and/or validate design decisions.
The foregoing framework allows for dynamic control of runtime model environments. In some implementations, knobs may be used to control system model behavior. An unplanned event may be injected into a current model and its impact on the current model can be analyzed. Views of a system model can be added and/or removed. A model can “evolve” as a system being modeled matures. Issues can be identified early in the design process and/or phases, and design and technology decisions can be validated prior to investing time and resources. Thus lifecycle decision making can be improved, and schedule, cost and technical risk can be reduced through analysis of the quantitative data generated by the model runs and actions taken as a result of the analysis.
Model components at various levels of the above-described framework allow for a system to be modeled and analyzed from vertical and/or horizontal perspectives, thereby providing an ability for a user to “drill down” and focus on an area of concern while maintaining an ability to understand impact(s) of lower level change(s) on an overarching model environment. A modeling environment can be provided that supports both an individual system model and system-of-systems modeling. Such an environment facilitates analysis and design and provides system-of-systems visualization, validation and testing capabilities, since some of the correctness of a system can be built into the modeling tools themselves.
Using COGS enables the rapid creation and modification of models as well as the rapid execution of “what-if” scenarios based on the models. The ability to overlay multiple model views, whether operational or logical, on top of a logical model of the system architecture provides the capability to determine the impact of scenarios associated with these models on the current representation of the system and/or the system-of-systems architecture. This capability allows for a complete representation of the end-to-end horizontal and top-to-bottom vertical view of the modeled environment. The ability provided by embodiments of the present invention to determine impacts on disparate systems from both an operational and a logical system perspective can provide significant insight early in a design process and thus can reduce time, cost and risk associated with system design projects. The ability to quickly and easily update models throughout the life of a development program to reflect a current view of a system and/or system of systems as a means of minimizing risk provides continual insight into the system behavior as design and/or technology decisions are being considered.
While various preferred embodiments have been described, those skilled in the art will recognize modifications or variations which might be made without departing from the inventive concept. The examples illustrate the invention and are not intended to limit it. Therefore, the description and claims should be interpreted liberally with only such limitation as is necessary in view of the pertinent prior art.
This application is a continuation-in-part of U.S. patent application Ser. No. 10/277,455 filed on Oct. 22, 2002, the disclosure of which is incorporated herein by reference in its entirety.
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Number | Date | Country | |
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Parent | 10277455 | Oct 2002 | US |
Child | 11124947 | US |