Design of Cognitive Assistance Systems in Manual Assembly Based on Quality Function Deployment
Abstract
:1. Introduction
2. Literature Review
2.1. Manual Assembly and Complexity
- Single workstations (work is performed at one workstation and involves specific or variations of tasks and processes);
- Continuous flow assembly systems (workpiece carrier flows from one station to the next without interruptions using assembly lines, each station being assigned to a specific task);
- Intermittent assembly (multiple workstations are assigned to specific tasks; the product moves from one station to the next in fixed cycle times) [58].
2.2. Cognitive Assistance Systems
2.3. Qualtity Function Deployment
3. Foundations and Methods
- The application of QFD enables the structured documentation of requirements as well as the derivation of assistance potentials and their systematic design;
- The clear differentiation between design attributes and the systematic design of these attributes enables a structured approach by means of the QFD method.
4. Conceptual Adaptation of the QFD Method
4.1. Suitability of the Method
4.2. A New Proposed Conceptual Approach: Cognitive Assistance System-QFD
4.3. Development of the Cognitive Assistance System-QFD (CAS-QFD) Method
4.3.1. Analysis of the Manual Assembly Process and Identification of Requirements
4.3.2. Assistance Concept Design
4.3.3. Assistance Detail Design
5. Results
5.1. Evaluation Method
5.2. Company Profile
5.3. Application of the CAS-QFD
5.3.1. Phase 1: Preparation
- Group 1: 70% of the assembly workers are semi-skilled workers between 26 and 52 years;
- Group 2: 30% of the assembly workers are new employees/beginners between 20 and 25 years.
5.3.2. Phase 2: Analyzing Assembly Process
5.3.3. Phase 3: Cognitive Assistance System Concept
5.3.4. Phase 4: Detail Design
5.3.5. Cognitive Assistance System Planning Summary
- The assistance system is computer-based;
- Workers need to log into the assistance system;
- The orders are displayed to the worker via the touchscreen combined with the defined shipment date (priority ranking);
- The type code is processed by the system and the essential information is made available to the worker in an automated and interpreted format;
- The picking of the parts is supported by a laser projection, which lights up the required boxes for small parts;
- The correct picking (right part in the right quantity) is monitored by a camera. In case of a wrong pick, a visual warning is displayed;
- The configuration is completed according to visual instructions (pictures) via the touch screen and by verification of the settings by the system. For this purpose, the board is connected to the system via USB. If necessary, a visual warning is displayed in the event of incorrect configuration;
- The individual parts are assembled according to visual instructions via the touchscreen and by monitoring the assembly on the system side. For this purpose, the assembly steps are monitored, recorded with a depth camera and the assembly result is compared with a reference/actual comparison. If necessary, a visual warning is displayed in the event of incorrect assembly;
- Detail level of instructions could be based on the experience level of the workers;
- Changes of assembly procedures are displayed and must be confirmed by the worker;
- The isolation and parameter tests are performed according to visual instructions via the touchscreen. If necessary, a visual warning is displayed in the event of non-conformance with target values;
- Confirmation and documentation are performed automatically by the system with the camera via a reference/actual comparison. The user receives visual confirmation of each step via the touchscreen.
5.3.6. Phase 5: Prototype Realization and Testing
6. Discussion and Limitations
6.1. Discussion
6.2. Limitations
6.3. Theoretical Implications
6.4. Managerial Implications
6.5. Conclusions and Outlook
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Levels | Cognitive | Example for Cognitive Assistance Functions in Assembly Processes |
---|---|---|
1 | Totally manual The user creates his/her own understanding of the situation and develops his/her course of action based on his/her earlier experience and knowledge, e.g., the user’s earlier experience and knowledge | No assistance provided. |
2 | Decision-giving The user receives information about what to do or a proposal for how the task can be achieved, e.g., work order | Transparency assistance System provides transparent overview about orders or tasks. |
3 | Teaching The user receives instructions about how the task can be achieved, e.g., checklists, manuals | Coaching assistance System provides (step-by-step) instruction for work task by using text, video, picture, etc. |
4 | Questioning The technology questions the execution if the execution deviates from what the technology considers suitable, e.g., verification before action | Orientation assistance System monitors the execution of work tasks and provides help to solve problems or shows impacts. |
5 | Supervision The technology calls for the users’ attention and directs it to the present task, e.g., alarms | Feedback assistance System detects deviating operations and actively informs workers. |
6 | Intervene The technology takes over and corrects the action if the executions deviate from what the technology considers suitable, e.g., thermostat | Informed execution assistance System takes over task or parts of a task automatically and informs the worker about it, e.g., execution and documentation of tests. |
7 | Totally automatic All information and control are handled by the technology. The user is never involved, e.g., autonomous systems | Takeover assistance System takes over task completely without the worker being involved, e.g., artificial-intelligence-based failure management in closed-loop-assembly stations. |
Step | Methods and Results |
---|---|
Problem identification and motivation |
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Definition of the objectives of a solution |
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Design and Development |
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Demonstration |
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Evaluation Communication |
|
Category | Methods and Techniques |
---|---|
Observational | Case study: In-depth study in a suitable environment. |
Field study: Monitor use in different projects. | |
Analytical | Static analysis: Examine the structure of artefact for static qualities. |
Architecture analysis: Study fit of artefact in technical architecture. | |
Optimization: Demonstrate inherent optimal properties of the artefact or provide optimality bounds on artifact behavior. | |
Dynamic analysis: Study artefact in use for dynamic qualities. | |
Experimental | Controlled experiment: Study artefact in controlled environment. Simulation: Study artefact with artificial data. |
Testing | Functional testing: Black box testing. Look for failures. Structural testing: White box testing. Test holistically by some metric. |
Descriptive | Informed argument: Use knowledge base to build a convincing argument. Scenarios: Construct detailed scenarios around the argument and demonstrate its usefulness. |
Symbol | Definition | Value |
---|---|---|
◯ | weak influence | 1 |
⊙ | medium influence | 5 |
✹ | strong influence | 9 |
Requirement (W: Worker Perspective; E: Engineering Perspective) | Qualitative Feedback from Engineers and Workers | Impact on Business Performance |
---|---|---|
W: Order transparency: overview of orders and shift-based overview |
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E: Clear monitoring of all assembly steps (not realized in prototyping phase) and picking steps |
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Push information regarding changes or special notes |
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Clear work instructions for assembly steps, configuration and test procedures |
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Easy access to additional information |
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Automatic documentation |
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Integrated testing |
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Pokorni, B.; Popescu, D.; Constantinescu, C. Design of Cognitive Assistance Systems in Manual Assembly Based on Quality Function Deployment. Appl. Sci. 2022, 12, 3887. https://doi.org/10.3390/app12083887
Pokorni B, Popescu D, Constantinescu C. Design of Cognitive Assistance Systems in Manual Assembly Based on Quality Function Deployment. Applied Sciences. 2022; 12(8):3887. https://doi.org/10.3390/app12083887
Chicago/Turabian StylePokorni, Bastian, Daniela Popescu, and Carmen Constantinescu. 2022. "Design of Cognitive Assistance Systems in Manual Assembly Based on Quality Function Deployment" Applied Sciences 12, no. 8: 3887. https://doi.org/10.3390/app12083887
APA StylePokorni, B., Popescu, D., & Constantinescu, C. (2022). Design of Cognitive Assistance Systems in Manual Assembly Based on Quality Function Deployment. Applied Sciences, 12(8), 3887. https://doi.org/10.3390/app12083887