Artificial intelligence: Construction technology’s next frontier
Engineering
and construction is behind the curve in implementing artificial intelligence
solutions. Based on extensive research, we survey applications and algorithms
to help bridge the technology gap.
The engineering and
construction (E&C) sector is worth more than $10 trillion a year. And while
its customers are increasingly sophisticated, it remains severely
underdigitized. To lay out the landscape of technology, we conducted a comprehensive study of current and potential use cases in every stage of E&C,
from design to preconstruction to construction to operations and asset
management. Our research revealed a growing focus on technological solutions
that incorporate artificial intelligence (AI)-powered algorithms. These
emerging technologies focus on helping players overcome some of the E&C
industry’s greatest challenges, including cost and schedule overruns and safety
concerns.
In the immediate
future, we expect AI’s proliferation in the E&C sector to be modest.
Indeed, despite proven high return on investment (ROI) and widespread
management interest in AI solutions, few E&C firms or owners currently have the capabilities—including the personnel,
processes, and tools—to implement them.
However, a shift is
coming. Stakeholders across the project lifecycle—including contractors,
operators, owners, and service providers—can no longer afford to conceive of AI
as technology that’s pertinent only to other industries. Indeed, adjacent
industries, such as transportation and manufacturing, are already in the
process of breaking down the barriers between one another and operating more as ecosystems (for example, solutions, tools, and algorithms
that were industry-specific are more likely to become effective having impact
across industries)—increasing the threat of competition from market entrants
that have not traditionally been capital project players.
These lowered market
barriers are compounded by the increasing ability of AI methods to work across
industries. These advances will be seen in the mid- to long-term, but to play a
role in future ecosystems—and to compete with incoming market entrants—E&C
will need to catch up in its adoption of AI applications and techniques. We
predict this effort will lead to the allocation of more resources to build the
necessary capabilities, and to AI playing a more significant role in
construction in the coming years.
So where should E&C
leaders begin? Building on last year’s report, we offer predictions for where
and how AI can infiltrate construction across three categories:
·
Examining where AI
solutions are beginning to emerge in construction today.
·
Exploring AI-powered
applications and use cases that have already made an impact in other sectors
and that can be applied in the construction industry.
·
Assessing additional
machine learning algorithms and their potential E&C applications.
The current state of AI in engineering and construction
AI use cases in
construction are still relatively nascent, though a narrow set of start-ups are
gaining market traction and attention for their AI-focused approaches. There
are a few early-stage examples construction firms can evaluate:
·
Project schedule
optimizers can consider millions of alternatives for project delivery and
continuously enhance overall project planning.
·
Image recognition and
classification can assess video data collected on work sites to identify unsafe
worker behavior and aggregate this data to inform future training and education
priorities.
·
Enhanced analytics
platforms can collect and analyze data from sensors to understand signals and
patterns to deploy real-time solutions, cut costs, prioritize preventative
maintenance, and prevent unplanned downtime.
Still, adoption of AI
solutions is quite low in E&C, particularly compared with other industries. McKinsey research compared building materials and construction to 12 other industries; ten of those industries are
further along in current AI adoption, and all 12 are projected to increase
spending on AI at a faster pace over the next three years.
Of course, any AI
algorithm is based on learning from the past. This means that AI needs a
certain critical mass of data to deliver on its promise so scale will matter;
as such, firms will need a significant amount of data (in this case projects)
to train an AI algorithm. Therefore, the largest companies are likely to
benefit more, particularly in the short term.
It is possible that an
external third party enters and leverages E&C data to train its models—a
scenario that would likely result in improvement across the industry as a whole
but limited competitive advantage for individual firms—but this seems unlikely
given the enormous restrictions on data sharing and data ownership.
Five AI-powered applications from other industries
transferrable to construction
AI encompasses a large universe of possibilities and use cases, including
machine learning, natural language processing, and robotics. Our research has
homed in on five AI applications used in other industries that have direct
application in the construction sector:
Transportation route optimization algorithms
for project planning optimization
Currently available
technology already offers transportation companies the ability to optimize
routes and improve traffic navigation. In the future an AI technique called
reinforcement learning, which allows algorithms to learn based on trial and
error, could provide even more effective optimization as well as solve for
objective functions (e.g. duration or cost of fuel). Such technology could be
directly applicable to E&C project planning and scheduling, as it has the
potential to assess endless combinations and alternatives based on similar
projects, optimizing the best path and correcting themselves over time.
Pharmaceutical outcomes prediction for
constructability issues
The pharmaceutical
industry has emerged as a leader in investing its large R&D budgets into
predictive AI solutions, which lower R&D costs in the long run, chiefly by
forecasting medical trial outcomes. These applications can be directly applied
to the construction industry—particularly in major projects with R&D
budgets as large as those of Big Pharma—in two ways to forecast outcomes.
First, predictive applications can forecast project risks, constructability,
and the structural stability of various technical solutions, providing insight
during the decision-making phase and potentially saving millions of dollars
down the road. And second, these applications can enable testing of various
materials, limiting the downtime of certain structures during inspection.
Retail supply chain optimization for
materials and inventory management
AI has changed the game
for the retail supply chain by reducing manufacturing downtime, reducing
oversupply, and increasing predictability of shipments—all resulting in
impressive reductions in costs, logistical burdens, and variability. Supervised
learning applications (e.g., gradient-boosting trees) will become directly
applicable to E&C as modularization and prefabrication become more
prevalent. More projects are using off-site construction for large quantities
of materials, and the need for enhanced supply chain coordination will become
critical to control costs and overall cash flows.
Robotics for modular or prefabrication
construction and 3-D printing
While use of
modularization and 3-D printing is advancing in construction today, there could
be a longer-term opportunity to maximize the benefits of these approaches
through machine learning. For example, robotics industry researchers have
successfully trained robotic arms to move by learning from simulations. In E&C, this
application might someday be applied to prefabrication techniques and
maintenance operations for oil and gas as well as other industrial sectors.
Healthcare image recognition for risk and
safety management
In the healthcare
industry, machine-learning methods are creating breakthroughs in image
recognition to support the diagnosis of illnesses (e.g., detecting known
markers for various conditions). Down the road, this technology could be
applied to drone imagery and 3-D-generated models to assess issues with quality
control, such as defects in execution (both structural and aesthetic) and early
detection of critical events (e.g., bridge failure). These techniques could
help engineers compare developing and final products against initial designs,
or train an unsafe-behaviors detection algorithm to identify safety risks in
project sites based on millions of drone-collected images.
Additional machine learning algorithms with potential to
disrupt E&C
The number of AI
solutions applicable to E&C are potentially endless. To scratch the
surface, we offer a focused look at a few of the possibilities in machine
learning. While machine learning
is but one branch of AI, its breadth of supervised and unsupervised learning
techniques, as well as deep learning convolutional and recurrent neural
networks, offer myriad business cases for investment.
Several use cases will
be applicable across the broad spectrum of E&C stakeholders, including
owners, contractors, and operators:
Refining quality control and claims
management
Firms can use
deep-learning techniques to enhance quality control. Neural networks can, for
example, assess drone-collected images to compare construction defects against
existing drawings. These networks are also capable of helping owners and firms
alike understand the likelihood that a contractor or subcontractor will file a
claim, enabling owners and firms to proactively allocate contingencies and
deploy targeted mitigation plans.
Increasing talent retention and development
One major challenge the
E&C industry will face over the coming years is attracting and retaining top talent. Leaders can tackle this issue by applying both
unsupervised machine learning algorithms such as Gaussian mixture models, which
can segment employees based on likelihood of attrition, and developing targeted
plans to retain them. K-means clustering can identify potential candidate pools
and tailor recruiting strategies to attract the right talent. AI algorithms can
also help leaders locate and predict overarching talent pain points such as
turnover, skill or labor shortages, and flaws in organizational design. For
example, it might help forecast labor shortages for skilled craft in specific
geographies, or plan for hiring or locking contracts to limit costs or project
delays.
Boosting project monitoring and risk
management
E&C stakeholders
can use neural networks, using drone-generated images and laser generated data
capturing project progress, to teach an AI how to create 3-D “twin models” to
match BIM-generated models. These applications would dramatically reduce
decision-making cycles in a construction project from a monthly basis to a
daily basis—through full automation of the project scheduling and budgeting
update on the combination of BIM, AI, drone, and laser capabilities.
Constant design optimization
Owners and contractors
can employ a recommender system approach (supervised learning) that uses
cluster behavior production to identify the important data necessary for making
a recommendation. These applications can recommend to engineers and architects
the use of a specific design, such a structural solution (for example, type of
connections—welded or bolted) or an architectural finishes (for example,
curtain walls vs window walls) based on various criteria (for example, total
cost of ownership, timeline to complete execution, likelihood of defective
constructions-mistakes during execution). The end result is that owners and
contractors have more information with which to make an informed decision.
Several other applications
have a specific use case for E&C contracting firms:
Building commercial excellence and a
competitive edge
By assessing previous
project bids and replicating elements of the successes while avoiding elements
of the failures, supervised and unsupervised learning algorithms can boost an
E&C firm’s project win rate, enhance margins, and ensure project value.
Linear/quadratic discriminant algorithms, for example, can enhance a firm’s
forecasting ability to estimate a lead’s likelihood of being accepted (i.e.
go/no-go ratio) and likelihood of closing (i.e. get/no-get ratio). Simple
neural network algorithms can be used to assess the rates or lump-sum price
discounts clients may be willing to pay for a project, while in the future,
reinforcement learning could help optimize bids and designs based on prior
successful bid decisions. These algorithms can also predict what combination of
services might be most attractive to clients, particularly as firms move toward
offering integrated solutions rather than traditional one-off projects.
Firm reputation and risk management
Given the recent wave
of earnings misses and project write-offs in the E&C industry, the
confidence of the market and individual clients in a given firm’s ability to
meet commitments has dropped. Because of this shift, firms are losing project
bids and the market is penalizing stock prices. Firms can apply machine
learning to rapidly address market and client concerns. For example, Naïve
Bayes algorithms can be employed to perform sentiment analysis on a firm’s
market perception and inform the launch of targeted, reputation-building
efforts needed to preserve its backlog and stock price. Algorithms can also be
used to profile customers based on their characteristics and desires to better
target business development efforts and improve retention.
What leaders can do to get ahead of the curve and take
advantage of AI
There are several steps
that all stakeholders can take to get ahead of the curve in AI:
Identify high-impact use cases based on a
firm’s starting points
Firms need to identify
the areas of major need and what AI-powered use cases can have the most impact
in the short term. Without a clear business case, ROI, and burning platform,
E&C firms will be inefficient in the use of time and resources, which can
create frustration, increase skepticism in the organization, and cause firms to
lose momentum. Leaders should prioritize their investments based on the areas
where AI can have the most impact on the firm’s unique situation and need—for
example, safety or talent retention—and where it will be easiest to implement
in the firm’s current stage of digital maturity.
Dedicate a significant portion of R&D
investment to digital capabilities immediately
Today, the E&C
industry is investing roughly 1 percent overall into technology—a significantly
smaller proportion than other industries, such as financial services and
manufacturing. Because the impact of AI is contingent on having the right data,
E&C leaders cannot take advantage of AI without first undertaking sustained digitization efforts. This includes investing in the
right tools and capabilities for data collection and processing, such as cloud
infrastructure and advanced analytics. McKinsey research finds that companies
with a strong track record of digitization are 50 percent more likely to
generate profit from using AI.
Embrace the ecosystem concept and understand
solutions from other industries
For too long, the
E&C sector has operated within a vacuum. Given the move toward ecosystems
discussed above, industry insiders need to look beyond sector borders to
understand where incumbents are becoming more vulnerable and to identify white
space for growth. Both owners and E&C firms can explore nontraditional
partnerships with organizations outside the industry to pool advanced R&D
efforts that have multiple applications across industries (for example,
start-ups, universities, or even major players in other sectors where AI is
more evolved). For E&C firms that can pursue unsolicited bids or
real-estate development, such partnerships could be a way to increase data
points and generate value. In addition, owners and firms can ensure corporate
development teams have the talent and topical expertise to assess potential
technologies with the entire ecosystem in mind.
Adapt the talent capabilities of the company
The industry will need
to reverse its trend of underinvesting in developing talent and place
significant focus on hiring people from other industries with backgrounds and
skill sets in AI and digital technologies. In addition, firms will need
to reskill their current workforces to acquire the necessary
capabilities to thrive in the digital age and provide training in necessary
concepts, such as machine learning algorithms.
Change internal processes to accommodate the
innovation that AI will bring
Today, the processes
critical to actualizing AI solutions—such as how to propose and implement a new
idea—are handled several levels below the CEO. But top leadership needs to be
involved in developing these processes and bolstering employees’ flexibility to
innovate. While seemingly a simple step to take, ensuring the C-suite is
influencing process development is a key enabler of preparing to embrace AI.
First movers and fast followers will be rewarded
The concrete steps
outlined above can serve as an immediate starting point for firms to pursue AI.
Indeed, early movers will set the direction of the industry and reap both
short- and long-term benefits. Though E&C tends to lag behind by measure of
technology adoption, now is the time for owners and firms to act and secure
their places at the vanguard of pulling AI applications and techniques into the
sector.
https://www.mckinsey.com/industries/capital-projects-and-infrastructure/our-insights/artificial-intelligence-construction-technologys-next-frontier?cid=other-eml-alt-mip-mck-oth-1804&hlkid=9cffea706869405a958e0695fbaa6785&hctky=1627601&hdpid=af68edb8-20a1-45a9-a41e-015991519e06
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