Periodic Reporting for period 3 - HyperCOG (Hyperconnected Architecture for High Cognitive Production Plants)
Période du rapport: 2022-03-01 au 2023-08-31
The HyperCOG project aims to show that cyber-physical systems (CPS) and data analytics can be used to drive transformation within the European process industry, improving efficiency and competitiveness by harnessing the power of data.
The CPS architecture developed by HyperCOG enables the concept of cognitive manufacturing, combining cognitive computing techniques (such as artificial intelligence), the Industrial Internet of Things, and advanced data analytics to optimise manufacturing processes.
HyperCOG architecture has been validated in three use cases of process industry (steel, cement and chemical) showing benefits in terms of environmental aspects (reduction of waste, CO2, and raw materials mainly) and productivity. Transferability of the solutions has also been demonstrated to other industries such as glass manufacturing. Training for workers helped the adoption of the solution.
HyperCOG is deeply grounded in the last advances in AI such as modelling for twin factories, decision-support systems for human-machine interaction. As a first step, industrial data was collected, in order to investigate data analysis methods that distill knowledge hidden in the data and make it usable for optimizing processes that occur in the three use cases (steel, cement and chemical). Models and optimization algorithms have been developed for the production planning optimization of the use cases. A monitoring tool has been developed with the aim of monitoring the acquired data, analysing the correct communication between the different nodes or the status of these nodes, reporting logs with the indication of possible mistake, showing them in a colour scale in function of the level of the error. Also, with this tool it is possible to verify the value of data and to estimate the correct operation of the system. Additionally, a blockchain tool for supply chain management and traceability has been developed to use steel manufacturing waste as raw material in cement manufacturing site. LCA concept was integrated in the HyperCOG solution by developing Dynamic LCA approach and a LCA node that was tested as a proof-of-concept in the steel use case.
The human perspective was integrated by identifying the existing competence gaps in the workers, creating ad-hoc training content and training a total of 20 workers in the three sites. Moreover, training material on CPS for Master degree students was prepared.
The following KPIs were obtained:
-Steel use case: reduction of 14% waste, 3,752 ton CO2 and 189 ton of raw materials
-Cement use case: reduction of 2,8 tons/h water, 1,69 kWh/ ton energy, and 2.820 ton CO2
-Chemical use case: use of 50% less solvent
As a result 2 market-ready key exploitable results were obtained (A software suite for implementing industrial cyber-physical system, blockchain tool for supply chain management and traceability), which were included in the Innovation Radar, plus an additional exploitable result (hyperspectral camera system for white slags chemical characterization). A business plan has been defined for them.
Several dissemination activities were carried out: 15 papers published, 15 workshops/conferences/fairs, 5 films, 14 newsletters, presence in magazines and press, 461 followers in social media, and clustering activities.
1. Development of a platform that converts manufacturing industries into more flexible environments
2. Implementation of advanced data analytics for extracting knowledge from production databases
3. Development of a decision support system to make the best possible decision in a specific situation.
4. Leverage cybersecurity concerns about cyber-physical systems and Internet of Things devices as a business enabler
5. Development of strategies for training and re-skilling human resources.
6. Integration of LCA aspects in the software architecture
Potential impacts:
As a result of the implementation of its technical objectives, HyperCOG contributes to the digitalisation of process industry towards better productivity and less environmental impact. Society will get profit of this project not only throughout the environmental impact, but through the lifelong learning of workers and vocational training for digitisation.