SUCCESS STORIES
Discover how Exceltic accelerates product and service innovation with the latest technologies.
Discover how Exceltic accelerates product and service innovation with the latest technologies.
Predictive modelling and part quality
Big Data & Analytics
Predictive modelling and part quality
PROBLEMS
In the manufacturing process of parts for the automotive sector, the assembly by welding of certain mechanical components can be affected by deformations that could be detrimental to quality.
Until then, the result could only be determined by manual inspection, resulting in a significant loss of raw material and time.
RESULTS
SOLUTION
Predictive model of part deformation:
TOOLS
Performance Dashboards
IOT-Industry 4.0: Pharma
Performance Dashboards
PROBLEMS
SOLUTION
Creation of a platform that receives data from the manufacture of medicines, displaying them in real time and providing different types of graphs and statistical data. of medicines, displaying them in real time and providing different types of graphs and statistical data in order to check the evolution of processes and quality controls.
RESULTS
TOOLS
Identifying Treatment Adherence
Big Data & Analytics
Identifying Treatment Adherence
PROBLEMS
Hospitals do not have an optimal method to transform all the data already recorded into relevant information, so the ability to identify patients at risk of non-adherence to their treatment increases considerably.
RESULTS
SOLUTION
It is proposed to create a predictive model to predict the risk of non-adherence to oral antineoplastic therapy. The aim is to identify, from the outset, those patients on whom it will be necessary to focus interventions and resources individually, without having to wait for possible clinical and/or economic consequences.
TOOLS
Reading of number plates and classification of vehicles
Image processing: AI
Reading of number plates and classification of vehicles
OBJECTIVE
The client requires a solution that allows him to automate the reading of license plates and the identification of vehicles (make/model) in order to be able to invoice the corresponding tariff.
RESULTS
Development of a tool that by means of Artificial Vision-Deep Learning (convolutional neural networks), allows the reading of license plates.
Development of a vehicle category classification system.
Some of the advantages gained are:
SOLUTION
TOOLS
Monitoring of presses and generators: IOT
INDUSTRY 4.0
Monitoring of presses and generators: IOT
OBJECTIVE
The customer has several hydraulic presses for the manufacture of parts in the automotive sector, each of which has a sensor to monitor its correct operation.
Another of our customers, with a similar case, has a combined cycle electric generator that monitors the air fuel flow parameters as well as the electrical parameters of the power generated and has a series of alarms that warn if anything is outside the operating limits considered as normal.
The need for these customers lies in anticipating any problems that might occur with the machines, with the intention of preventing unscheduled downtime.
SOLUTION
It is proposed to develop a data acquisition system for the more than 700 sensors, centralised in a platform that allows us not only to measure their operation in real time, but also to develop a predictive model.
RESULTS
TOOLS
Automatic identification of deteriorating elements
Image processing: AI
Automatic identification of deteriorating elements
OBJECTIVE
The customer requires a solution to optimise the costs and maintenance time of the Spanish railway infrastructure.
RESULTS
SOLUTION
Artificial vision model using neural networks that allows:
TOOLS
Analysis and Extraction of Information between aircraft and control centres
Application development
Analysis and Extraction of Information between aircraft and control centres
OBJECTIVE
The customer requires a tool that allows it to exploit the data from the Data Link of the air traffic control system to facilitate the analysis and monitoring of the data.
Therefore, it is proposed to automate the processing and exploitation of log data from the air traffic control system to monitor the occurrence and frequency of different types of messages.
SOLUTION
The main objective of the project is the analysis, design, development and implementation of a data processing and exploitation tool that facilitates the reading and analysis of air traffic control system messages, ensuring their quality control.
RESULTS
TOOLS
Tracking and Optimising the Selling Price of Company Assets
AUTOMOTION
Tracking and Optimising the Selling Price of Company Assets
OBJECTIVE
The main objective of the project is the construction of an information extraction process, mainly from the ERP, for the monitoring of commercial information from the second-hand vehicle department and its subsequent consultation, ensuring the quality control of the information.
SOLUTION
To cover the main needs of information analysis and automatic generation of information, guaranteeing scalability and future maintenance.
RESULTS
TOOLS
Basic information on Data Protection
Responsible
EXCELTIC S.L.
Purpose
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Send you commercial communications about our products or services.
Legitimation
On the basis of the management, development and fulfilment of the commercial relationship.
Legitimate interest or consent of the data subject with regard to the sending of commercial communications.
Addressees
Official bodies where there is a legal obligation.
Persons who may have access to your personal data as a result of services provided to EXCELTIC S.L.
No international transfers are foreseen.
Rights
Access, rectify and delete data, as well as other rights, as explained in the additional information.
Additional Information
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