Accelerate performance
In part three of our Co-Creating the Future series with GE Digital, we look at how manufacturers can turn data into discovery thanks to optimised and automated decision making
In part two of our Co-Creating the Future series with GE Digital, we looked at the benefits of moving from paper to data. But simply collecting data alone isn’t enough. It’s only through intelligent data analysis, insights and action that manufacturers can fully optimise efficiency and make production more transparent. Data analysis in manufacturing has traditionally been the preserve of senior management. Over weeks or months, insights and decisions are typically filtered down to each department, right back to the factory floor where the data originated. So, without a feedback loop, management often won’t know if these changes have been successful or if they’ve even been implemented. “The digitalisation of manufacturing changes this,” says Josh Bloom, VP of Data & Analytics at GE Digital. “For employees, having access to real-time data means they can be held accountable for the work they do and more easily raise issues or suggest ideas. For management, being able to see aggregate data from many factories in one dashboard – perhaps even merged with financial and marketing data – gives them the power to manage both trends and outliers.” The next step according to Bloom is to use AI and machine learning to help automate this decision-making process. Because as long as the software can be taught which conditions are favourable, it can recommend certain responses or predict consequences to the shop floor before they need to be raised to senior management. It’s this kind of data-driven performance that SIG and GE Digital will enable together – using GE Digital’s industrial applications, Predix Asset Performance Management (APM) and Predix ServiceMax, to turn data into discovery. This means providing operators with the information they need to maintain industrial equipment while balancing maintenance costs, risks, asset life and external factors. And it’s being supported by field service management, dispatching the right engineers to the right job at the right time.
Optimising machines and workflows
This way of handling data will be unique to SIG’s customers since GE Digital’s Predix APM and Predix ServiceMax have never before been integrated together. Predix APM is designed to capture and analyse data – both real-time and historically – to optimise operational assets. Predix ServiceMax, meanwhile, is designed to optimise the teams that maintain these assets, using cloud-based data and scheduling to improve workflows, first-time fix rates, field service productivity and customer satisfaction. “By bringing these two industrial applications together for the first time, we’re going to be able to optimise both the machines and the teams that maintain them,” says Scott Berg, CEO of ServiceMax at GE Digital. “This will allow SIG to open up new business models – such as servitisation – and enable SIG’s customers to boost their productivity and competitiveness as well.” Service is a core part of SIG’s business and helps explain why its market share has been growing year-on-year for the past two decades. But improving service quality also means optimising inefficiencies, which is why SIG considers digital service a key priority. “We wanted to move away from preventative to predictive maintenance,” says Christian Alt, SIG’s Director of Corporate Development and Digital Transformation. “That’s why we looked for a partner that doesn’t just provide Asset Performance Management or Field Service Management, but one integrated solution – which we found with GE Digital’s predictive analytics and machine learning expertise.” To find out where manufacturers can go beyond performance optimisation, don’t miss part four of the Co-Creating the Future series where we’ll discuss the final stage in the digital transformation – utilising intelligent prediction. Want to know more about SIG’s partnership with GE Digital? Contact us now or learn more about SIG’s Smart Factory solutions.
- 9月 11, 2018