Big Data pose challenge to fourth Industrial Revolution
The global manufacturing business is on verge of what some are calling the fourth Industrial Revolution or Industry 4.0, an era of highly efficient, flexible and customizable mass production. However, Industry 4.0 faces a major challenge before it can live up to its promise, according to a white paper from IHS Technology.
The challenge for the fourth Industrial Revolution is the development of software and analytical systems that turn the deluge of data produced by intelligent factories into useful and valuable information, said Mark Watson, associate director for industrial automation at IHS.
The potential stakes are enormous, with the global industrial automation industry amounting to $170.2 billion in 2013, $182.7 billion in 2014 and an expected $209.4 billion in 2016.
"The term Industry 4.0 was coined by the German government to describe the intelligent factory, a vision of computerized manufacturing with processes all interconnected by the Internet of Things (IOT)," Watson said. "Some believe that Industry 4.0 is expected to spur fundamental changes on the order of the steam-powered first Industrial Revolution, the mass production of the second, and the electronics and proliferation of information technology (IT) that characterized the third."
Industry 4.0 carries many meanings, but early developments in this area have involved adding more flexibility and individualization to manufacturing processes.
Examples include electronics contract manufacturer Foxconn of Taiwan, which is producing one million iPhones per day for Apple. However, Apple makes frequent changes to electronic components in the iPhone line, taxing Foxconn's capability to adjust. To be more flexible in order to fulfill demand from Apple, Foxconn is adapting its manufacturing lines and processes, making extensive use of computer numerical control (CNC) machines that perform automated management of machine tools.
Another example is from a leading food and beverage machinery provider, which is working on enabling the individualization of mass production by personalizing labels on the bottles of shampoo.
Along with electronics manufacturers, IHS expects the food and beverage industry will be an early adopter of flexible, individualized manufacturing processes, Watson noted. Another area where this approach is likely to find rapid acceptance is the auto-making industry, where manufacturers need to tailor their cars to the needs of individual customers.
With new industrial automation equipment increasingly integrating sensors and wireless communications capabilities, factories are gaining the capability to gather sufficient data. While the penetration of wireless is currently very low, adoption will see a robust increase in the coming years.
But to achieve actual improvements in manufacturing efficiency and flexibility, manufacturers must be able to manage and analyze huge amounts of data. Because of this, the biggest challenge in implementing individualized manufacturing systems will be on the software side, IHS predicted.
One solution to this challenge may be distributed intelligence, i.e., making pieces of factory equipment intelligent and autonomous enough to determine on their own which pieces of information are valuable and reporting that data to decision makers in the organization.
In light of the challenge of big data and the need to implement new factory automation equipment, companies are likely to implement changes gradually over time. This will give organizations opportunity to develop expertise in managing and analyzing large amounts of data.
In some ways, the trend of manufacturers using technology to add flexibility to industrial processes has been ongoing for a number of years. Companies slowly have been adding more communications and data-gathering technology to their processes.
Still, these trends are likely to gain momentum in the coming years, as the need for more individualized production increases.
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