Holistic Context-Sensitivity for Run-Time Optimization of Flexible Manufacturing Systems
Abstract
:1. Introduction
2. Research Question
- Monitoring of changes during run-time within a FMS (e.g., changing process parameters, environment in which the system is operating etc.), which can be used for further processing.
- Extraction of a current context based on monitored data to be used for knowledge creation, which can be used for (self-) optimization of manufacturing processes.
2.1. Hypothesis
2.2. Approach
3. State of the Art
3.1. Context Sensitivity and Context Modelling
3.2. Cyber-Physical Systems
3.3. Service Oriented Architectures
3.4. Self-Learning
4. Concept for Context Sensitivity
5. Implementation
- System Monitor, Context Extractor (including the Context Model) and Context Sensitive Optimizer—see Section 5.1, Section 5.2, Section 5.3 and Section 5.4 for detailed explanation of these services.
- Adaptation Learner and Context Learner: These services allow the system to learn. Key factor for the learning are the results of the Validator Services (operator’s feedback). These results are analyzed using data mining techniques and are used to improve the operation of the Context Extractor and the Context Sensitive Optimizer during run time (see also Section 5.4).
- Validator (for Context and Adaptation): These services are measuring the performance of optimization and context extraction. The measurement is either based on the manual feedback of the operator (e.g., acceptance of optimization proposals) or on statistical analysis in case the system operates in automatic mode. The results of the validator services are the key input for the learning services.
5.1. Context Model
- the generic device context model
- the domain specific and/or
- application-specific context model(s).
5.2. Context System Monitor
- Monitoring system/sensor module, which contains all services to monitor legacy systems and devices in enterprises vie the Data Access Layer. The distributed monitoring services also call back to this module with their gathered information. The monitoring services can be extended and configured for different data sources.
- Parser module, which contains content parser for the different possible data captured by the monitoring services. This module is parsing the content provided by the monitoring services so that it can be analyzed by the analyzer module. The parser can be extended and configured for different content provided by the monitoring services.
- Analyzer builder module, which correlates the monitored content and constructs the “Monitoring Data” to be stored and handed over to the Context Extractor or any other service that needs this information. The analyzer can be extended and configured for different content provided by the parser module.
5.3. Context Extractor
- Context Model—see Section 5.1 above. All features in the Context Extractor are based on this model.
- Context Monitoring—see Section 5.2 above. The Context Monitoring acts as a proxy between System Monitor and Context Identification.
- Context Identification module, which analyses the Monitoring Data handed over by the Context System Monitor and extracts knowledge context such as what products or components are involved, what resources are used, and what items, parts or units are referenced or manipulated in the current on-going context (see the text to follow).
- Context reasoning module, a rule based system which reasons on the context provided by the Context Identification module, and refines current identified contexts. This module also compares the similarity between the current on-going contexts and historical contexts in the model repository.
- System optimizer interface, which provides the results of the context extraction modules to other up-stream modules/services.
5.3.1. Context Identification
5.3.2. Context Reasoning
- Ontological Reasoning: based on the semantics of the ontology language and the definitions in the Context Model ontology the deductive reasoning is carried out, such as transitive reasoning and subsumption.
- Rule-based Reasoning: uses the deductive techniques as in the Ontological Context Reasoning, but with application-specific rules provided by users. Such application- or domain-specific rules could be provided by a domain expert or constructed based on a statistical analysis of historical data.
- Statistical Reasoning: does not rely on strict logical rules but instead tries to correlate information into possible relations, as suggested by the empirical data, to determine the most possible current context.
- sensori TRUE has value 1 or 0 depending is the value of the current signal at sensor i (e.g., temperature) satisfying the sub-rules associated to the sensori or not,
- n is the number of sensors relevant for the definition of concept j
- wi is the weighing of the sensor value in identification of the context concept j,
- mj is the margin to claim that the context concept j is true or not
- IF sensor1 true (a processing device has a valve attached to it), +
- sensor2 true (the valve is observed by pressure sensor which provides a resource identified as pressure in Bar) >2 THEN
- “The processing device is of type Mixing-Head” (w is 1 for both sensors in this case).
5.3.3. Context Similarity Measurement
- Current Context (CC): The Context (current situation) for which similarity with the context situations (cases) already stored in the database will be computed.
- Stored Context (SC): any of the previously stored context cases which are stored in the database, used for computing the similarity with CC.
- Raw Similarity (RS): the value of the absolute similarity between two entities before being weighted.
- Weighted Similarity (WS): the relative, i.e., weighted value of the similarity. The following equality stands: WS = RS * weight.
5.4. Optimizer and Self-Learning
6. Experimental Results
6.1. Energy Consumption Optimization
6.2. Availability and Efficiency Optimization at CPS Based FMS
7. Conclusions
- The time/efforts spent for building the both above described applications is estimated to be more than 60% less than time/efforts needed to build individual solution for each optimization.
- The biggest advantages are seen in maintenance and extensibility of the solution: if the processes and conditions change (which is often in FMS processes) the solution can be easily maintained/updated by extending the context model and perhaps adding/modifying certain monitoring services and rules for better context extraction and adaptation, but the overall structure of the optimization solution needs not to be changed. It is estimated that the costs for maintenance of such solution is more than 80% lower than for maintenance of classical solutions.
- The benefit is that the proposed solution can be applied for a number (all) of optimization processes within a factory, i.e., the company does not need to apply a high number of various solutions, which in turn may radically reduce development and maintenance costs of such solutions.
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Scholze, S.; Barata, J.; Stokic, D. Holistic Context-Sensitivity for Run-Time Optimization of Flexible Manufacturing Systems. Sensors 2017, 17, 455. https://doi.org/10.3390/s17030455
Scholze S, Barata J, Stokic D. Holistic Context-Sensitivity for Run-Time Optimization of Flexible Manufacturing Systems. Sensors. 2017; 17(3):455. https://doi.org/10.3390/s17030455
Chicago/Turabian StyleScholze, Sebastian, Jose Barata, and Dragan Stokic. 2017. "Holistic Context-Sensitivity for Run-Time Optimization of Flexible Manufacturing Systems" Sensors 17, no. 3: 455. https://doi.org/10.3390/s17030455
APA StyleScholze, S., Barata, J., & Stokic, D. (2017). Holistic Context-Sensitivity for Run-Time Optimization of Flexible Manufacturing Systems. Sensors, 17(3), 455. https://doi.org/10.3390/s17030455