SAPPA: Service Architecture for Product and Production Availability
The SAPPA project is about innovative cloud-based predictive and preventive maintenance systems, improving availability of products and production systems.
2014 – 2016
Project time: 2021 – 2021
Budget: 12 000 000 kr
Prediktivt underhåll med internet-of-things och digitala tvillingar
Predictive maintenance is one of the major thrust areas for many global manufacturing companies. Artificial intelligence, big data analytics and industrial internet of things (IoT) have already shown great potential in the area of maintenance. However, as more companies adopt these technologies, several key challenges have emerged hindering the progress towards complete digitalization of maintenance operations.
The aim of this project is to develop an Integrated Manufacturing Analytics Platform (IMAP) that combines core Industry 4.0 technologies of industrial IoT, digital twins and analytics to realize the full potential of predictive maintenance and pave the way towards prescriptive maintenance. The core idea of IMAP is to supplement and validate data from existing IoT infrastructure with simulated data from lean digital twins, preprocess and integrate these multiple sources of data into the CMMS, and use machine learning, analytics and optimization techniques to monitor the health of equipment, thereby predicting the need for maintenance in advance, generating automated maintenance actions and corresponding maintenance work orders.
The project is expected to bring the following targeted improvements to production and maintenance KPIs:
Industry-wide studies have shown that predictive maintenance can increase equipment uptime and availability by 10-20%, reduce the time required to plan maintenance by 20-50%, and reduce overall maintenance costs by up to 25%.
The project will be executed over a period of 3 years, from 01 December 2021 to 30 November 2024. This period consists of six work packages, each involving all project partners.
The SAPPA project is about innovative cloud-based predictive and preventive maintenance systems, improving availability of products and production systems.
2014 – 2016
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