The next horizon for industrial manufacturing: Adopting disruptive
digital technologies in making and delivering PART I
The key to continued performance and
productivity improvement for advanced industrial companies is the use of disruptive
technology in the manufacturing value chain.
In the past few years, advanced
industrial companies have made solid progress in improving productivity along
the manufacturing value chain. In the US, for instance, the productivity of
industrial workers has increased by 47 percent over the past 20 years. But the
traditional levers that have driven these gains, such as lean operations, Six
Sigma, and total quality management, are starting to run out of steam, and the
incremental benefits they deliver are declining.
As a result, leading
companies are now looking to disruptive technologies for their next horizon of
performance improvement. Many are starting to experiment with technologies such
as machine-to-machine digital connectivity (the Industrial Internet of Things,
or IIoT), artificial intelligence (AI), machine learning, advanced automation,
robotics, and additive manufacturing. The impact of this shift is expected to
be so transformative that it is commonly referred to as the fourth industrial revolution,
or Industry 4.0.
This new wave of
technology and innovation offers companies opportunities not only to drive a
step-change in productivity and efficiency, but also to capture strategic
business value by establishing competitive advantage in the way they operate
their entire “make to deliver” value chain. The nature and scale of the
opportunities will vary from sector to sector and company to company, depending
on factors such as value drivers, market dynamics, and operational maturity.
However, we routinely see successful technology-enabled transformations
dramatically shifting individual value drivers. For example, an aerospace
manufacturer with a reputation for high quality but suffering from high labor
costs and slow production implemented augmented-reality work instructions for
complex assemblies to decrease error rates from 3 percent to nearly 0 percent
while increasing productivity by 2530 percent. Similarly, an auto manufacturer
that needed to maximize its already highly automated process began analyzing
available data for micro-losses in capacity to unlock an additional 3 percent
of overall equipment effectiveness. Finally, an electronics manufacturer
operating in a high-cost country virtually eliminated material handling labor
using automated vehicles for material delivery and robots for palletizing.
For companies that aim
well and execute effectively, the resulting cost reductions could be
transformational. We estimate that productivity gains and cost savings alone
could deliver near-term impact of 200 to 600 basis points of margin expansion
across advanced industries, worth $200 billion to $500 billion (Exhibit 1). In
the mid- to long-term, even more value could be unlocked through greenfield
plants, network reconfiguration, and upgrades to core IT and
operating-technology (OT) architecture.
Exhibit 1 SEE THE ORIGINAL ARTICLE
Substantial though
these cost reductions are, we expect them to be overshadowed by new revenue
opportunities arising from increased speed to market, product customization,
and new services. How much strategic business value they will generate remains
to be seen, but we can expect the lion’s share of it to go to first movers.
Unlocking the value
To capture the value of
digital in manufacturing and throughout the supply chain, leading industrial
companies are developing use cases in three main areas: connectivity,
intelligence, and automation (Exhibit 2).
Exhibit 2 SEE THE ORIGINAL ARTICLE
Connectivity
After rapidly expanding
through the Internet of Things, connectivity has reached global scale,
extending to some 8.4 billion connected devices. The ability to link digital
devices—shop-floor monitors, remote computers, smartphones, tablets, and so
on—to IT platforms and systems enables decision makers to access a flow of
relevant information in real time. In production environments, only 15 percent
of assets are connected as yet, but change is taking off. Advanced applications
now being introduced in industrial manufacturing include digital performance
management and the use of augmented-reality smart glasses to communicate
instructions and standard operating procedures. In the supply chain, parts are
being tracked digitally across supplier networks, and trucks are providing
real-time data to enable just-in-time delivery, optimize work planning, and
minimize inventory. The technology industry is working on more than 700 IoT
platforms for industrial use, and major tech companies are investing heavily in
platforms that extend beyond individual companies to whole industries.
One aerospace company
struggling with supply issues combined data from purchasing, part tracking, and
inventory monitoring in a single platform to enable real-time visibility of
each part across the entire supply chain. The results exceeded expectations, with
a 20 percent improvement in procurement productivity and a 5 percent
improvement in on-time delivery. Another aerospace company took part
traceability to the next level by introducing digital tagging. Parts were
automatically scanned for minute differences in surface texture at key points
in the supply chain, virtually eliminating counterfeiting and ensuring
regulatory adherence.
Intelligence
Advanced analytics and
artificial intelligence can be applied to large data sets to generate new
insights and enable better decision making in predictive maintenance, quality
management, demand forecasting, and other areas. Machine-learning algorithms
are growing more powerful as computing power advances and big data
proliferates. However, the full potential of artificial intelligence has yet to
be captured in production environments, which at present use only a small
fraction of data for decision making.
One auto manufacturer
had difficulty managing growing complexity in its product variants, and sought
to improve and automate its decision making. To do so, it installed an
enterprise manufacturing intelligence (EMI) system that ingested data from more
than 400 IoT sensors, enabling predictive intelligence to be applied to
maintenance, quality, and parts supply. Introducing the new system improved
overall equipment effectiveness by 10 percent and first-time-right delivery by
15 percentage points.
Flexible automation
Robotics and automation
have been commonplace in industrial manufacturing for decades, but we are
seeing a new wave of opportunity driven by declining technology costs, growing
functionality, and an expanding range of environments in which robotics can be
safely and effectively deployed. Introducing new robotic technologies in
product assembly, warehousing, and logistics can improve the productivity,
quality, and safety of operational processes. Applications include autonomous
guided vehicles in distribution centers, automated warehouse management
systems, and cobots (collaborative robots) working on assembly processes in
conjunction with humans. Estimates suggest that 60 percent of manufacturing
tasks could be automated, but industrial robots have yet to achieve widespread
penetration even among early adopters. South Korea, for instance, has only 530
robots for every 10,000 production workers.
Deploying automation
across the entire product assembly process from material handling to quality
testing and packaging enabled one electronics company to reduce direct and
indirect labor costs by more than 80 percent. These savings in turn allowed the
company to manufacture its product in higher-cost countries located close to
attractive markets, thereby reducing shipping costs while increasing customer
responsiveness and speed to market.
Examples of what
connectivity, intelligence, and automation might look like at an aerospace
manufacturer are illustrated in Exhibit 3.
Exhibit 3 SEE THE ORIGINAL ARTICLE
Overcoming pilot purgatory
McKinsey’s research
shows that most advanced industrial companies are conducting pilots in all
three of these areas (Exhibit 4). In the aerospace and defense sector, for
example, all of the top 10 companies and two-thirds of the top 50 have
announced digital initiatives of some kind. Most of the business leaders we
spoke to recognize that technology can help them navigate complex risk and
regulatory environments, make their operations more efficient, and enhance the
customer experience they offer.
Exhibit 4 SEE THE ORIGINAL ARTICLE
However, advancing
beyond the pilot phase is still a big challenge for most manufacturing
companies. Even among those reporting significant numbers of pilots, most
struggled to achieve broader rollout. In fact, the gap between piloting and
rollout is considerably larger than that between perceived relevance and piloting,
suggesting that scaling is a bigger hurdle than getting the ball rolling in the
first place (Exhibit 5).
Exhibit 5 SEE THE ORIGINAL ARTICLE
By Kevin Goering, Richard Kelly, and Nick
Mellors
https://www.mckinsey.com/business-functions/digital-mckinsey/our-insights/the-next-horizon-for-industrial-manufacturing?cid=other-eml-alt-mip-mck-oth-1811&hlkid=4677593a878646529137da15dd8100cb&hctky=1627601&hdpid=40950bab-bdef-4ff9-9eb4-9ea21456999b
CONTINUED IN PART II
1 comment:
Great post to read. The manufacturing sector is undergoing a huge transformation due to the disruptive technologies of InApp that improve the business process and operations.
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