Recent Automation Trends in Portugal: Implications on Industrial Productivity and Employment in Automotive Sector
Abstract
:1. Introduction
2. Automating Our Intelligence
3. Methodological Approach
- Project A developed an automated robotic system of universal application for different control philosophies to overcome the challenges posed by a new generation of production lines for the automotive industry: more durable in the face of constant changes, with lower costs and adaptation times, simple reconfiguration, and flexibility for product changes. Results: two demonstration cells at the industrial level. The cells are now back in the company’s facilities and are used to give training.
- Project B used computational vision and predictive analysis in the quality inspection of structural glue bead application in doors. It developed a quality inspection system for the automotive industry to improve its strict level of quality so that the safety of the driver and passengers of vehicles is guaranteed. Results: industrial prototype, demonstrated at the industrial level, of a non-destructive testing and predictive maintenance system with customizable solutions, covering all parts manufactured in a production line, integrated into the production process, and aiming for a zero-defect strategy, without neglecting the productive capacity of the current production lines, as well as continuous and systematic evaluation of the quality of parts manufactured on the production line and the condition of the machinery that contributes to their manufacture.
- Project C, currently being developed, intends to create a generic automation platform that integrates and harmonizes standardized and emerging methods, processes, and systems in the world of automation. The project includes open-source structures for the introduction and integration of technology in production lines, investing in the reuse of processes and machines, in the reconfiguration and optimization of parameters, in the digitalization and virtual representation of industrial automation equipment, and in zero-defect quality manufactured products, allowing the industry to keep up with the customer’s needs and expectations, namely in terms of product customization and the constant creation of new offers.
4. Results and Discussion
4.1. Productivity
“using computational vision and predictive analysis in the quality inspection of the structural glue bead application in doors, one of the most important manufacturing processes in the automotive parts assembly line, it was possible to increase process efficiency, improve product quality and reduce waste resulting in savings and, thus, contributing to an increase in productivity of the car manufacturer.”
“there are areas within the factory that are more receptive to the introduction of new technologies than others; the decision makers themselves may be more open; contextual conditions can act as a constraint, such as the closure of the activity in which the solution would be implemented.”
“in the specific case of large OEMs, with several factories around the world, there is great resistance to the introduction of solutions that are not absolutely standard or are consistent with other solutions already introduced in other factories,”
“the project took place during a period in which the solution was developed and demonstrated on one of the most advanced and relevant lines in the factory, at that time, but when negotiating the contract, this production line was being discontinued and did not make sense the additional investment.”
“After the project finished and we went to pick up the demonstrator installed in the line they said it would be very good if it stayed in the line. This shows its added value was recognized, namely, in the greater efficiency of the process by reducing the number of non-compliant products, reducing waste, and increasing quality of the final product.”
Investment in AI in the Automotive Sector
“this is true for robotics, automation, and predictive analysis, and we can expect this type of technology to be adopted in a couple of years. However, technologies (e.g., cloud, plug & produce, blockchain, artificial intelligence) that may involve connectivity, monitoring, data collection and automated decision making, will take longer to be implemented.”
“We see interest from companies in inspection systems with computer vision. We have created computer vision as a new business area, since we have verified the industry’s great receptivity for these systems given that the issue of efficiency and productivity is a topic across all industries.”
“We have made strong investments in other areas, some of which are complementary to computer vision. Currently, all projects that are contracted by the industry have a mechanical component and a computer vision part. In the commercial pipeline for a total of 12 to 13 M€ under negotiation, 3 M€ are for vision systems.”
“Based on the technology of Project B we are now developing several contracted projects with Portuguese companies, in the automotive components industry (exhaust pipes), in the automotive industry (final assembly department), in a textile supplier (zippers) for the automotive industry and in the food industry.”
“this company has existed since 1946 with production systems dating from 1970/80. The challenge of integrating new technologies into these systems is as big as it is to introduce a completely new system (stand-alone) on a customer’s shop floor.”
4.2. Employment
“In the zipper production plant there are many nuances of what is ok or not ok. Especially in the situation where there are many characteristics to be analyzed and difficulty in defining requirements (what is considered a stain, from what size on, different tones, etc.). When there is a lot of data available, as is the case because the factory produces a lot of zippers, the AI/Machine Learning is a solution. It allows to analyze situations that are too fast for the operator to notice, identifying defects that are not visible to the naked eye and is consistent in the decision to reject a non-conforming product. On the other hand, operator intervention is still necessary. It may have to unlock the system.”
“In another project, which is based in human-machine interaction (….) to pick and place the parts, the human presence is essential. In case the parts are inaccessible because, for example, they came from logistics in a wrong position and the robot cannot perform its function, the operator must stop the line, put the part in the correct position, and start the line again.”
“For example, in terms of production management, using people is more flexible, if there is less product outflow, instead of having two people checking product quality, the manager will only have one. These are situations known to the manager and which the manager knows how to deal with. Or, if he has three features to check on the product and he needs to add a fourth, he just goes to the people who are doing the inspection and tells them what to look for from that moment on. However, if he is using the vision system, although the system is prepared to be customized and it is possible to add new features, if necessary, there are no people with knowledge to do this at the outset. Even though the systems are designed with easy-to-interact interfaces, being integrated in cyber-physical systems, in a data network through which it is possible to receive support from anywhere in the world, it is nevertheless, a challenge for a person without basic knowledge/training, to program the system to incorporate a new requirement.”
“Companies want to invest in new solutions, but they do not have people with knowledge/skills to work with the new systems (in their workforce or in the market). Or even if they have one or two people and they get training, there is always a set of unforeseen events (illness, change of job, retirement, etc.) that can affect availability and access to knowledge/skills.”
“The final assembly is the area that creates jobs in a car factory because most of the systems for assembling and assembling components inside a vehicle continue to be executed by people today. For example, at a car manufacturer, about 80% of human resources are allocated to the area of final assembly. So, it is here that there is an interest in investing in technologies.”
“Contrary to what one might think, it is not a question of people going out of work, but because it is difficult to attract and retain people to do the functions that are associated with it in the final assembly.”
“The quality inspection has to be done by a human-machine system in the final assembly, where all the characteristics are inspected before the car is released. Currently, technological limitations related with robot’s limited time cycle prevent this task to be done by the robot alone. However, when performed through human-machine collaboration it augments workers capacity and increases the process efficiency.”
“Do I earn more for doing it automatically or do I have savings from being done automatically? This is the logic that is inherent to the implementation of technology. And this logic may not be competitive in view of labor costs in Portugal. In the country, the minimum salary is very low, and the trend is to continue to be low.”
“robotics, automation, and computer vision will have widespread adoption in one to two years. However, cloud, plug & produce, blockchain and artificial intelligence will take longer to be implemented as they involve connectivity, monitoring, data collection and automated decision making.”
5. Conclusions
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
1 | These services, provided by capital goods to the production process, are known as capital services. Capital services provided by each type of capital goods are estimated by the rate of change of the productive capital stock, taking into account wear and tear, retirements, and other sources of reduction in the productive capacity of fixed capital goods. The overall volume measure of capital services (i.e., capital input) is computed by aggregating the volume change of capital services of all individual assets using asset-specific user cost shares as weights. |
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Group 1—By Technologies | Group 2—Automotive Sector |
---|---|
Keywords: algorithm, artificial intelligence, augmented reality, automated decision-making, computational vision, machine learning, predictive analysis, robot | Keywords: manufacturing, Industry 4.0, automotive, car Keywords: Auto Europa, Volkswagen, Caetano, PSA, Peugeot, Citroen, Renault, Toyota NACE 29.10 and 29.32 |
Years | 2010 | 2011 | 2012 | 2013 | 2014 | 2015 | 2016 | 2017 |
---|---|---|---|---|---|---|---|---|
Gross fixed capital formation (EUR M) | 455 | 339 | 310 | 256 | 293 | 391 | 557 | 775 |
2008–2020 | Total | AI | Automotive Sector | AI in Automotive Sector |
---|---|---|---|---|
No. of projects | 3151 | 543 | 275 | 50 |
Project budget (EUR M) | 3 422 | 655 | 518 | 225 |
Qualifications | Manufacturing (%) | Automotive (%) |
---|---|---|
Primary school | 61 | 48 |
Secondary school | 27 | 37 |
Technical school | 2 | 2 |
Graduate | 9 | 10 |
Master’s | 2 | 2 |
Ph.D. | 0 | 0 |
Seniority | Manufacturing (%) | Automotive (%) |
---|---|---|
<1 year | 16 | 13 |
1–4 years | 31 | 36 |
5–9 years | 15 | 15 |
10–14 years | 11 | 9 |
15–19 years | 9 | 10 |
20 years or above | 18 | 18 |
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Boavida, N.; Candeias, M. Recent Automation Trends in Portugal: Implications on Industrial Productivity and Employment in Automotive Sector. Societies 2021, 11, 101. https://doi.org/10.3390/soc11030101
Boavida N, Candeias M. Recent Automation Trends in Portugal: Implications on Industrial Productivity and Employment in Automotive Sector. Societies. 2021; 11(3):101. https://doi.org/10.3390/soc11030101
Chicago/Turabian StyleBoavida, Nuno, and Marta Candeias. 2021. "Recent Automation Trends in Portugal: Implications on Industrial Productivity and Employment in Automotive Sector" Societies 11, no. 3: 101. https://doi.org/10.3390/soc11030101
APA StyleBoavida, N., & Candeias, M. (2021). Recent Automation Trends in Portugal: Implications on Industrial Productivity and Employment in Automotive Sector. Societies, 11(3), 101. https://doi.org/10.3390/soc11030101