Framework for the Development of Affective and Smart Manufacturing Systems Using Sensorised Surrogate Models
Abstract
:1. Introduction
2. Background of Literature
2.1. Conceptual Frameworks and Design Models for Integrating the Human Factor in Smart Manufacturing System
- Activity theory (AT) is a widely known socio-historical approach to the analysis of value creation activities and was initiated by Lev Semyonovich Vygotsky [27,28]. Leont’ev [29] continued with this work, and Engeström expanded this knowledge. Engeström [30] was a key author in the development of AT by designing generic templates to capture data and analyze work, which have found many applications. Activity theory strives to model work and its organization. The key elements of AT are reflected in Figure 2. It distinguishes between operational activity, which integrates the subject who conducts the activity, tools, and tasks with which the worker carries out the action, and the object on which he or she performs the work. The elements of the operational activity are taken together with the context in which it takes place, and it is characterized by the community in which the action is located, the establishment of an organization, and rules of the game for the development of the operational activity.In the social dimension, it is possible to identify the contradictions between its elements. These contradictions, represented by the network structure, relationships, and characteristics of the social elements, are extracted from AT studies and constitute a relationship of conflicting situations of the elements of the social dimension.
- Required Variety Law proposed by Ross Ashby states that “only the variety can absorb the variety” [31]. This determines the existence of a regulator-regulated system where the workplace takes the place of the regulator, and the users represent the regulated side of the system. The adaptation of the required variety of the system is imposed by the requirements and the definition of the workplaces. Adaptation makes possible treatment of the systems, which, in their regulatory and regulated roles, fail to present a comparable variety. The adaptation of varieties consists of reducing one part and increasing the other in such a way that the requirements of the variety law are fulfilled. A variety regulator acts in two directions: amplifying and filtering. The regulation of the relationships between the entities of the AT model increases variety in one direction (amplifier), while in the other direction it decreases variety (filter) as shown in Figure 2, Details “a” and “b”. The variety of competences-capacities, operational routines of the work, and their required organization is embedded in the model of activity theory based on the conception of variety law.
- Enactive paradigm. The social and labor incorporation of humans involves their integration into the socio-technical framework of work systems, and starts with the assessment of their possibilities of articulating a set of competences and capacities in the workplace. New paradigms of embodied or enactive cognition appear from cognitive science [32], in which it is argued that cognition is based on and deeply limited by the nature of the body of human and established from situated knowledge, more specifically the field of manufacturing systems studies aimed at conceiving manual work under the embodied mind [33]. Enactivism stresses that the beginning of intelligence is in the body in action [34]. Its reason, according to Varela et al. [35], is based on the arrangement of the interrelation established between the body and the environment, and more specifically between the body and the mind. Thus, the human body is analyzed, not only the brain, as a source of cognition, where its movements and actions, guided by perception in the world, make much of the effort necessary to achieve the objectives [36]. The enactive theory of cognition provides a paradigm for the design of new biologically inspired cognitive architectures, with an important influence on aspects of self-organization and emerging properties [37], likewise autonomy and adaptability [38], in order to offer improvements in decision making of decisions [39]. The enactive paradigm of acting and knowing is characterized by the following elements [40]:
- Cognition as the creation of meanings by a body agent (worker) through loops of perception-action involving a corporeal brain, located in a context.
- Action as the coupling of the human being to the occupational environment through the body, where active cognition is an emerging form of the changing experience through loops of perception-action.
- Embedded cognition. The agent’s mind is completely and intimately interwoven with the environment.
- Extended cognition: A concept for the integration of the boundaries between mind, brain, body, and environment. Humans take extended cognition to increasingly distant extremes through tools and technologies.
- Socially situated cognition. Socially situated or distributed cognition depends on the communication of ideas and emotions through sight, hearing, touch, and other sensory modalities.
- The affective dimension. The cognitive agent constructs meaning in its context through the proposals or possibilities offered by the environment. A valuable object or context attracts, while the threatening object repels.
2.2. Cyber-Physical Environments and Work Systems with Key Enabling Technologies (KETs)
3. Conceptual Framework
4. Methods, Techniques, and Tools
- Questionnaire design. Operationalization, understood as the process of building the instrument, consists of translating the dimensions of the worker construct into measurable elements, that is, moving from the dimensions to the indicators and from the indicators to the questions. From the characteristic features of the enactive paradigm and through the use of Norman’s theory, it is possible to characterize the worker for the purposes of the demands of a workplace. In this case, five dimensions have been established, described, and justified in Section 2.1 of the background as (1) cognitive processing; (2) movement, proprioception, and contact with work; (3) social interaction and communication; (4) flexibility to change; and (5) environmental sensibility and security. The multidimensional conception worker construct ensures that the content of the questionnaire was designed to identify the potential for the enactive coupling of workers to the workplace, by structuring it into 48 questions on the five dimensions that characterize the previous. The items are evaluated on a Likert scale from 1 to 5. The psychometric characteristics of the questionnaire were obtained through different types of statistical analyses performed with the help of the IBM SPSS Statistics program.
- Validity analysis. Validity is analyzed in terms of content and construction. Content validity of the questionnaire is carried out by an expert opinion procedure involving three psychotherapists and three occupational ergonomics technicians. There is agreement among them and hence no determination of the content validity index is required. With regard to construct validity, the orthogonality of the dimensions and the optimal number of factors or dimensions are determined by means of an exploratory factorial analysis, while maintaining the same number, that is, the five dimensions established. The KMO and significance level value of Bartlett’s test of sphericity are significant and therefore determine the validity of the instrument.
- Reliability. The reliability of the questionnaire in the different orthogonal dimensions according to the factorial analysis is ascertained by (1) an analysis of internal consistency to give meaning to the questions of the questionnaire and (2) an analysis of the discrimination capacity of the items, in order to reinforce the one-dimensional character of the test. First, Cronbach’s alpha coefficient is calculated, which is based on the average inter-element correlation and assumes that the items (measured on a Likert-type scale) measure the same construct. It is concluded that they are highly correlated, with a value of 0.785 in the questionnaire. Secondly, the Student’s t-test is used to contrast the null hypothesis that indicates the non-existence of differences between the means of the established groups, as well as indicating the homogeneity index of each item, that is, Pearson’s correlation coefficient between the score in the item and the sum of the scores in the remaining items. The reliability index of the questionnaire for the items in the different dimensions is above 0.82, a value that is considered to be good.
4.1. Variety Evaluation of Workers: Competences-Capacities Profile (CCP)
- Cognitive processing. The worker’s competence and capacity are evaluated with reference to aspects such as planning, decision-making, understanding verbal or written instructions, and the recognition of elements within the work environment.
- Movement, proprioception, and contact with work. This area analyzes the worker’s competences-capacities that can influence the tasks and physical activities required in the workplace, and all aspects of manual work and direct contact with the product. The use of tools and contact with materials, as well as movements and safety risks present in the workplace, must also be considered in this competence area.
- Social interaction and communication. This area assesses the worker’s competences and capacities in the social environment and his/her response to interaction with colleagues or supervisors.
- Flexibility to change. This area assesses the worker’s difficulties in adapting to change and his/her response to changes in the work routine.
- Environmental sensitivity and security. This area evaluates the response of the worker to the characteristics of the environment where the workplace is located. It includes the reaction to the presence of noise from outside the workplace, moving elements, and changes in the areas around the workplace, etc. Safety questions, such as the worker’s responses to emergency situations, are also considered in this section.
4.2. Workplace Variety Evaluation: Required Competences-Capacities (RCC)
4.3. Adapted Workplace Map and Interpretation
4.4. Variety Filters and Amplifiers
4.5. Implementation of Proposed Model for Self-Regulation Embodied in the Workplace. Execution Matrix of Embodied Emotion in Workers
- Principle 1. Co- and self-regulation are structured in the form of stepwise navigation depending on worker diagnosis.
- Principle 2. A limited set of messages (in visual code, emoticons, etc.) is shown regarding simplification, predictability of behavior, and clarity.
- Principle 3. Co- and self-regulation strategies are trained in the home and school environment. Indo-democratic strategies are included.
- Principle 4. Information media oriented towards the visual channel are used, under analogies of an intensity-type thermometer (analogical) that enables the intensity of the emotion and the strategy of confrontation adapted to the intensity to be selected.
- Principle 5. The level of emotional intensity communicated must be oriented towards the promotion of the selection of a coping strategy, and not towards the communication of the type of emotion.
- Principle 6. The effect of the content of the media that embodies the strategy that takes shape has to coincide with the level of intensity of the emotions.
- Principle 7. A tailored self-regulatory and co-regulatory tool should be designed for workers with different conditions who share the same functional needs.
5. Case Study
6. Discussion
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Key n° | Questions |
---|---|
(1) Cognitive processing | |
CCP(1)1 | The worker has difficulty planning a sequence of tasks |
CCP(1)2 | The worker has difficulty making decisions regarding the task being performed (outside of work instruction) |
CCP(1)3 | The worker has difficulty understanding instructions and executing them |
CCP(1)4 | The worker has difficulty finding objects in the environment |
CCP(1)5 | The worker has difficulty recognizing objects that are distributed arbitrarily |
CCP(1)6 | The worker has difficulty understanding numbers and symbols |
CCP(1)7 | The worker has difficulty following the instructions of other people |
CCP(1)8 | The worker has difficulty expressing his/her needs |
CCP(1)9 | The worker has difficulty in agreeing with other people |
CCP(1)10 | The worker has difficulty identifying the defects caused (mistakes in execution). |
CCP(1)11 | The worker experiences difficulty in identifying the mistakes in execution |
(2) Movement, proprioception, and contact with work | |
CCP(2)12 | The worker presents spasmodic and repetitive movements |
CCP(2)13 | The worker finds it difficult to manipulate small objects |
CCP(2)14 | The worker presents hypersensitivity to forced postures |
CCP(2)15 | The worker has difficulty using tools |
CCP(2)16 | The worker is easily disoriented |
CCP(2)17 | The worker has apparent difficulty in keeping his/her balance |
CCP(2)18 | The worker tends to lean on nearby objects |
CCP(2)19 | The worker is hyposensitive to pain or heat |
CCP(2)20 | The worker does not tolerate strong smells |
CCP(2)21 | The worker tends to taste unknown substances |
CCP(2)22 | The worker avoids contact with particular materials/textures |
CCP(2)23 | The worker loses his/her balance if he walks with objects in his/her hand |
(3) Social interaction and communication | |
CCP(3)24 | The worker has difficulty reacting when appointed |
CCP(3)25 | The worker has difficulty interacting with strangers |
CCP(3)26 | The worker tries to avoid interaction with other people |
CCP(3)27 | The worker responds in a negative way to the proximity of persons who are not part of the environment |
CCP(3)28 | The worker shows signs of stress when exposed to other people (invasion of personal or proxemic space) |
CCP(3)29 | The worker responds negatively to physical contact with other people |
CCP(3)30 | The worker presents symptoms of stress when feeling judged |
(4) Flexibility to change | |
CCP(4)31 | The worker has difficulty adapting to improvised changes |
CCP(4)32 | The worker has difficulty adapting to changes in the established routine |
CCP(4)33 | The worker has difficulty changing tasks |
CCP(4)34 | The worker subscribes to routines and protocols. |
(5) Environmental sensitivity and safety | |
CCP(5)35 | The worker is distracted by the surrounding noise |
CCP(5)36 | The worker responds negatively to unusual sounds in the environment (e.g., occasional use of machines, unloading trucks, etc.) |
CCP(5)37 | The worker is alarmed by unexpected sounds |
CCP(5)38 | The worker is slow to react to alarm sounds |
CCP(5)39 | The worker expresses discomfort at bright lights |
CCP(5)40 | Worker is distracted by warning lights (e.g., flashing beacon on a wheelbarrow) |
CCP(5)41 | The worker expresses discomfort at bright colors |
CCP(5)42 | The worker is shocked by the movement of objects in the environment (e.g., movement of the bridge crane) |
CCP(5)43 | The worker becomes disoriented if objects in the environment are moved |
CCP(5)44 | The worker has a high tolerance for pain and does not react immediately object is hurting him |
CCP(5)45 | The worker may have compulsive movements that may cause injuries to himself or to people in the environment |
CCP(5)46 | The worker has difficulty interpreting warning indicators and relating them to the actual danger |
CCP(5)47 | The worker manifests fatigue after performing tasks involving repeated movements (e.g., sanding) |
CCP(5)48 | The worker needs to escape temporarily to avoid sensory overload |
Key n° | Questions |
---|---|
(1) Cognitive processing | |
RCC(1)1 | The workplace does not require planning and organization of activities by the worker |
RCC(1)2 | The workplace does not require decision-making on activities (outside of work instruction) |
RCC(1)3 | The documentation presents simple and perfectly sequenced instructions |
RCC(1)4 | Documentation is clearly identified and located |
RCC(1)5 | The tools have a defined location and can be easily sorted |
RCC(1)6 | The workplace does not require written information (forms, records, etc.) |
RCC(1)7 | The supervisor’s verbal instructions are clear and concise |
RCC(1)8 | The workplace does not require interaction with the supervisor |
RCC(1)9 | The workplace is independent of other workers |
RCC(1)10 | A bad execution of the work can be detected/corrected without consequences on the final product |
RCC(1)11 | Visual aids are used to execute certain tasks (e.g., projections) |
(2) Movement, proprioception, and contact with work | |
RCC(2)12 | The workplace does not require manual precision |
RCC(2)13 | The workplace does not require precision tools |
RCC(2)14 | The workplace is ergonomic (height, etc.) |
RCC(2)15 | The tools to be used are ergonomic and easy to use |
RCC(2)16 | The job does not require moving to other production areas |
RCC(2)17 | The workplace does not require moving with severe safety risks |
RCC(2)18 | The worktables, trolleys, and elements that make up the post are robust and stable |
RCC(2)19 | The workplace does not expose the worker to irritating substances |
RCC(2)20 | The workplace does not expose the worker to substances with a strong odor |
RCC(2)21 | The workplace does not expose the worker to toxic substances |
RCC(2)22 | The workplace does not involve contact with viscous substances or dust |
RCC(2)23 | The workplace does not require moving objects with hands |
(3) Social interaction and communication | |
RCC(3)24 | The workplace does not require supervision (high autonomy) |
RCC(3)25 | The workplace does not require rotation of personnel |
RCC(3)26 | The workplace does not require constant interaction with co-workers |
RCC(3)27 | The workplace is visible to other staff |
RCC(3)28 | The workplace is not located in a confined space |
RCC(3)29 | The workplace does not require proximity to other colleagues, not even sporadic physical contact |
RCC(3)30 | The activities are not subject to severe inspections with the possibility of rejection (trial) |
(4) Flexibility to change | |
RCC(4)31 | The work is fully planned at the beginning of the shift |
RCC(4)32 | Work is planned in the medium term (e.g., weekly) |
RCC(4)33 | The nature of the work varies frequently, in form or cadence (not constant) |
RCC(4)34 | The work is routine and repetitive |
(5) Environmental sensitivity and security | |
RCC(5)35 | The environment of the workplace is quiet and free from background noise (machinery, hammering, tapping, etc.) |
RCC(5)36 | No exceptional external noises (e.g., occasional use of machines, unloading trucks, etc.) are usually produced in the workplace environment |
RCC(5)37 | There are no loud audible signals around the station (e.g., door open warning) |
RCC(5)38 | The security system (e.g., fire alarm) has other means than the audible alarm to transmit the alert |
RCC(5)39 | There are no constant light signals (flashing, projections, etc.) in the vicinity of the station |
RCC(5)40 | The lighting of the station is adequate, there are no dazzling light bulbs or flickering lights (fluorescent) |
RCC(5)41 | In the workplace environment, the colors are neutral and unobtrusive |
RCC(5)42 | In the workplace environment, there are objects that are not part of the work in progress (conveyor belt, overhead crane, etc.) |
RCC(5)43 | The environment of the station is fixed and always maintains the same configuration (there are no elements that can change place) |
RCC(5)44 | There are elements in the surroundings of the post that can be harmful (edges, corners, etc.) |
RCC(5)45 | There are either no tools in the vicinity of the station that could cause injury or, if there are, they are kept under supervision |
RCC(5)46 | There are no moving elements in the surroundings of the station that could lead to entrapment |
RCC(5)47 | Around the post there are benches that allow for occasional rest |
RCC(5)48 | There are rest areas around the post |
FILTERS (DPiF) | AMPLIFIERS (DPiA) |
---|---|
Lighting (DP1) | |
DP1(F1): Place windows and skylights that increase the availability of natural light. DP1(F2): Replace fluorescent lamps with LEDs, which also reduces energy consumption by 60%. DP1(F3): Use more points of light distributed over the working area by reducing the intensity of each point. DP1(F4): Avoid glossy finishes that may cause glare on furniture surfaces, walls, or floors. | DP1(A1): Place curtains or blinds so that light passes through but still prevents distractions. DP1(A2): Use dimmers to adjust the lighting conditions to the needs of the worker. DP1(A3): Place crystals that attenuate the incidence of the sun’s rays inside the room. |
Color Usage (DP2) | |
DP2(F1): Use neutral colors in the workplace. DP2(F2): Avoid elements with bright colors, especially if they are large. DP2(F3): Use colors in harmony with the rest of the elements. DP2(F4): Use color to highlight positive space. | DP2(A1): Use bright colors on visual devices. |
Workspace organization (DP3) | |
DP3(F1): Delimit areas of activity. DP3(F2): Use contrast in divisions or windows. DP3(F3): Organize the elements of the work area symmetrically. DP3(F4): Use repetitive patterns in the arrangement of objects. DP3(F5): Encourage linearity. DP3(F6): Avoid dispersion of the elements, group them together to form a weighty entity. | DP3(A1): Avoid large, open spaces. DP3(A2): Place organizers that facilitate order and avoid having objects in sight (by using drawers, cupboards, etc.). |
Environmental Noise (DP4) | |
DP4(F1): Fit acoustic panels to ceilings and walls. DP4(F2): Use sound-absorbing floors. DP4(F3): Isolate work areas from noise. DP4(F4): Set up a piped music system that plays sounds that improve concentration. | DP4(A1): Wear headphones that protect against noise and allow music to be heard. |
Manual Contact (DP5) | |
DP5(F1): Use soft finishes. DP5(F2): Avoid surfaces that are rough or unpleasant to touch. | DP5(A1): Wear soft gloves. |
Temperature (DP6) | |
DP6(F1): Maintain control of temperature and humidity levels. | DP6(A1): Keep temperature low, never above 22 °C. |
Contact between people (DP7) | |
DP7(F1): Develop large work areas that respect personal space. DP7(F2): Widen passages to prevent unwanted clashes. | DP7(A1): Maintain fixed templates in work areas. DP7(A2): Minimize staff turnover. DP7(A3): Employ specialized worker supervisors (training/recruitment programs). |
Clothing and Individual Protection Equipment (IPE) (DP8) | |
DP8(A1): Provide cotton work clothes. DP8(A2): Provide long-sleeved uniforms. DP8(A3): Provide comfortable, lightweight safety shoes. DP8(A4): Provide lightweight, non-tightening glasses and masks. | |
Delimitation (DP9) | |
DP9(F1): Dimension spaces with partitions, furniture, and floor markings. DP9(F2): Use color contrasts between the floor and other surrounding elements (wall, partitions, furniture, etc.). | DP9(A1): Develop individual jobs. |
Signaling (DP10) | |
DP10(F1): Use route marking on the floor. DP10(F2): Differentiate passage work zones by clearly marking the contours. DP10(F3): On stairs, mark the contour of the steps with bright colors. | DP10(A1): Use stairs with wide treads and handrails on both sides. |
Layout (DP11) | |
DP11(F1): Define short and direct passageways between sections. DP11(F2): Arrange related work areas in a contiguous manner. | |
Furniture (DP12) | |
DP12(F1): Use appropriately proportioned furniture (ergonomic). DP12(F2): Use stable and robust furniture. DP12(F3): Use safety elements in drawers and doors to prevent trapping. DP12(F4): Avoid furniture with parts that protrude from the general volume (wheels, legs, etc.). DP12(F5): Use self-braking wheels. | DP12(A1): Place organizers that facilitate order and avoid having objects in sight (by using drawers, cupboards, etc.). DP12(A2): Arrange positions where it is possible to work in a seated position. DP12(A3): Use height-adjustable seats. DP12(A4): Use height and tilt adjustable tables. |
Instructions (DP13) | |
DP13(F1): Provide panels in front of the working areas as a visual aid. DP13(F2): Provide simple, easy-to-understand graphic instructions. DP13(F3): Employ stepwise sequencing. | DP13(A1): Provide specialized training programs. DP13(A2): Provide specialist worker supervisors (training/recruitment programs). DP13(A3): Encourage working with support. Include warning devices for the supervisor such as light beacons. |
Documentation (DP14) | |
DP14(F1): Migrate paper documentation to digital systems. DP14(F2): Employ stepwise sequencing. | |
Key Enabling Technologies, KETs (DP15) | |
Sensors; Wearables; Robotics; Interactive whiteboards; Self-monitoring; Artificial vision; Artificial intelligence; Virtual reality; Augmented reality; Simulation and virtualization; Learning machines; Biometric devices; Temporal and spatial models; Virtual Avatars. | |
Training, coaching and workplace support (DP16) | |
Workers; Supervisor; Tutor; Technological operator; Collaborative robot; Education and training programs. |
Occupational Interaction | Occupational Context | Intervention | |
---|---|---|---|
Objective: Sensor-motor coupling in the workplace | Objective: Social practice located in the workplace | Objective: Emotional attachment to the job and work environment | Types and levels of intervention in self-regulation |
Operational Feedback Strategies in the workplace | Strategies for Social Interaction in the workplace | Strategies with emotional content | The steps for interaction are: Step 1. Identification of emotions by facial recognition, biometric wearables, etc. Step 2. Emotional correction by the support partner or self-regulation by the workers. Levels of Intervention: Relaxation methods. Self-regulation strategies with photos. Self-regulation strategies with videos. Rest strategy of the workers. |
Explicit representations in visual language preferred. Message with an analogical one-dimensional signal (shape) that changes. Empty signals (as content receivers) in which meaning emerges through interaction in the workplace and working environment. | Impose social practice in accordance with established standards. Create new social practices in accordance with the new rules. Use and strengthen existing social practices in a way through which a whole new meaning of interaction emerges. | Measurement, prediction, and prevention with predefined solutions by behavioral models. Predefine support of co-regulation and self-regulation with different options. Empty support strategies (as content receivers) that are formed in accordance with the welfare objective. |
Competences-Capacities Areas (C-C Areas) | Evaluation * | |||||
---|---|---|---|---|---|---|
Worker with ASD | Workplace 1 | Worker with ASD | Workplace 2 | Worker with ASD | Workplace 3 | |
(1) Cognitive Processing | 1.6 | 4.1 | 2 | 1.7 | 1.6 | 2.1 |
(2) Movement, Proprioception, and Contact with Work | 1.6 | 2.1 | 1.8 | 2.8 | 1.6 | 2.2 |
(3) Social Interaction and Communication | 1.3 | 3.1 | 1.3 | 1.7 | 1.3 | 1.4 |
(4) Flexibility to change | 1.3 | 3.8 | 1.8 | 1.5 | 1.3 | 1.5 |
(5) Environmental sensitivity and safety | 1.8 | 2.4 | 1.9 | 3.3 | 1.8 | 3.1 |
CCP(1)1 | CCP(1)2 | CCP(1)3 | CCP(1)4 | CCP(1)5 | CCP(1)6 | CCP(1)7 | CCP(1)8 | CCP(1)9 | CCP(1)10 | CCP(1)11 | |||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Worker Evaluation (1.6) * | |||||||||||||||
Key | DPs | 1 | 2 | 2 | 1 | 1 | 3 | 1 | 2 | 1 | 2 | 2 | |||
RCC (1)1 | Scheduling | Workplace Evaluation (2.1)* | 2 | 1 | X | X | X | X | X | X | X | X | X | X | Filter |
RCC (1)2 | Instructions | 2 | X | 0 | X | X | X | X | X | X | X | X | X | ||
RCC (1)3 | Sequencing | 2 | X | X | 0 | X | X | X | X | X | X | X | X | ||
RCC (1)4 | Space organization | 4 | X | X | X | 1 | X | X | X | X | X | X | X | Amplifier | |
RCC (1)5 | Space organization | 3 | X | X | X | X | 1 | X | X | X | X | X | X | Amplifier | |
RCC (1)6 | Documentation | 2 | X | X | X | X | X | 0 | X | X | X | X | X | ||
RCC (1)7 | Instructions | 2 | X | X | X | X | X | X | 1 | X | X | X | X | Amplifier | |
RCC (1)8 | Instructions | 1 | X | X | X | X | X | X | X | 0 | X | X | X | ||
RCC (1)9 | Contact with people | 1 | X | X | X | X | X | X | X | X | 0 | X | X | ||
RCC (1)10 | Instructions | 1 | X | X | X | X | X | X | X | X | X | 0 | X | ||
RCC (1)11 | Signaling | 3 | X | X | X | X | X | X | X | X | X | X | 1 | Filter |
C-C. Areas | Evaluation | Adaptation | Adapted Competences-Capacities Map | ||
---|---|---|---|---|---|
Worker with ASD | Workplace 3 | Worker with ASD | Workplace 3 | ||
(1) | 1.6 | 2.1 | 2 | 1.5 | |
(2) | 1.6 | 2.2 | 1.8 | 1.3 | |
(3) | 1.3 | 1.4 | 1.3 | 1 | |
(4) | 1.3 | 1.5 | 1.8 | 1.5 | |
(5) | 1.8 | 3.1 | 1.9 | 1.6 | |
Objective | Description | Layer | Machine Learning Frameworks |
---|---|---|---|
Affective-Rational Objective | Construction of surrogate models for the long-term management and control of work environment parameters based on the variety filters and the activity developed by the worker. | Cloud |
|
Affective instinctive objective | Adjustment of parameters and variety filters in the surrogate model in real time and short term. | Fog |
|
Rational Affective Instinctive Objective | Personalization and self-adjustment of parameters of the worker-subrogated model, supervised by machine learning. | Edge |
|
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Ávila-Gutiérrez, M.J.; Aguayo-González, F.; Lama-Ruiz, J.R. Framework for the Development of Affective and Smart Manufacturing Systems Using Sensorised Surrogate Models. Sensors 2021, 21, 2274. https://doi.org/10.3390/s21072274
Ávila-Gutiérrez MJ, Aguayo-González F, Lama-Ruiz JR. Framework for the Development of Affective and Smart Manufacturing Systems Using Sensorised Surrogate Models. Sensors. 2021; 21(7):2274. https://doi.org/10.3390/s21072274
Chicago/Turabian StyleÁvila-Gutiérrez, María Jesús, Francisco Aguayo-González, and Juan Ramón Lama-Ruiz. 2021. "Framework for the Development of Affective and Smart Manufacturing Systems Using Sensorised Surrogate Models" Sensors 21, no. 7: 2274. https://doi.org/10.3390/s21072274
APA StyleÁvila-Gutiérrez, M. J., Aguayo-González, F., & Lama-Ruiz, J. R. (2021). Framework for the Development of Affective and Smart Manufacturing Systems Using Sensorised Surrogate Models. Sensors, 21(7), 2274. https://doi.org/10.3390/s21072274