BOSCH Generating Value from AIoT in 4 Proven Steps User Guide
- June 4, 2024
- Bosch
Table of Contents
Generating value from AIoT
in 4 proven steps
A practical guide to IoT and AI maturity
Bosch Global Software Technologies
Executive Summary
Artificial Intelligence of Things (AIoT) offers a new dimension to the
classical value-creation cycle, making it faster, more customer-centric, and
more disruptive. Connected products generate data that can be analyzed using
AI and machine learning. By turning this data into actionable and valuable
insights, functionality and features can be improved constantly. Also, the
identification of promising business models before kicking off an IoT project
is now possible – models that facilitate lasting relationships with customers
and offer them new personalized digital experiences. Beyond that, AIoT players
can join forces in open ecosystems – enabling strong network effects with
value creation on a global scale.
But how do establish new AIoT business models and become a leading player in
an open ecosystem? Which milestones must be reached and what are the benefits
for OEMs? Based on sound experience as a leading AIoT user and provider of
digital services and solutions, Bosch Global Software Technologies has
established a four-step plan for OEMs. It focuses on the value creation at
each maturity level and provides guidelines, on how these steps can best be
reached in a subsequent order.
Welcome to the world of AIoT!
Internet of Things (IoT) has become a major enabler for OEMs to connect
products and services. However, connectivity alone is not enough to keep up
with the fast-paced market. Today, it’s all about knowing and fulfilling
customers’ needs, even before they have realized the need for a certain
feature. AIoT holds enormous potential for creating and capturing additional
value from a single product, both for users and for OEMs. Organizations have a
pressing need to establish new business models. The amalgamation of IoT with
AI will play a pivotal role in this transformation.
Our four-step guide starts with establishing the initial connection with
devices in the field, enabling OEMs to communicate with customers throughout
the product lifecycle and to adapt their offering to suit changing customer
requirements. AI helps to leverage the newly gained data, turn it into
valuable insights, and continuously improve and personalize user experience.
OEMs can offer new business models or enable external service providers to
enhance their existing customer services. The most important transition for
OEMs, however, is to leverage the cross-business AIoT ecosystem with a growing
community and its network effects. They can then become orchestrators of the
ecosystem and help shape the world of AIoT.
Connecting products – the foundational step| Enriching user experience with AIoT| Reinventing AIoT business models| Molding evolving ecosystems
Connecting products – the foundational step
When it comes to adding value to existing solutions, communication is key. In
maturity level 1, we, therefore, start by establishing connectivity that
allows sender and receiver to exchange information regardless of their
location. Connectivity, however, is not merely an interface. Instead, it is a
comprehensively managed cloud service, which lays the foundations for gaining
useful insights. When starting the journey towards full connectivity,
organizations face multiple challenges, such as compatibility issues or
bandwidth limitations.
Once these hurdles have been overcome with the right software and partners,
connected products offer both OEMs and their customer’s significant benefits:
they create new opportunities for interaction and new points of contact
between them. OEMs can increase their value proposition by gaining real-time
information on product status and use, such as time frames and frequency. End
consumers are able to access information about their product at any time and
receive remote technical support if needed. OEMs, in turn, can leverage these
new opportunities to boost sales revenue and to prepare for further maturity
levels.
The Indigo Connect, a robotic lawnmower made by Bosch Power Tools, is a
perfect example of such a connected product. With its embedded SIM card
(eSIM), the Indego Connect transfers data to the cloud via the GSM mobile
communications standard. Its owners can use a smartphone app to control their
lawnmower at their convenience, even from a great distance. Indigo Connect can
then mow without any further need for manual intervention. This digital
service consisting of cloud and app connectivity adds significant value to the
product and makes life easier for its users.
Maturity level 2
Enriching user experience with AI
The second level of maturity concerns the enhancement of manufactured products
to meet customers’ actual requirements. Over-the-air software updates allow
OEMs to deploy new services and software versions on the device and improve
their products during their entire life cycle. In the past, gaining
information about user experience was difficult, and in many cases only
complaints were communicated – the product in its actual field of application
was a black box.
AIoT now makes it much easier to incorporate the user perspective into the
value creation process. But how to translate the incoming data from thousands
of connected products into valuable information? Here, analyzing tools using
AI and machine learning algorithms help gain the insights needed to complete
the value creation cycle faster and in a more disruptive way. Moreover,
insights derived from data on product use can help OEMs to identify problems
at an early stage and respond quickly.
Let’s take a closer look at an example. A renowned tire OEM was looking for an
intelligent tire management system that could be beneficial for both the OEM
and fleet operators. The main goals: diagnose and predict wear and tear ahead
of time; improve product efficiency with proactive maintenance; reduce
operational costs; provide the end-user with a positive user experience
through predictive analytics. The solution: a sensory system that monitors the
tire operating parameters and performance using a cloud-based AIoT
application.
Dashboards for vehicle performance monitoring, as well as statistics and
analytics, create the ideal environment for AI-based predictive maintenance
insights. Real-time data of the actual tire usage helps the OEMs to examine
and improve existing specifications. For example, they can compare the life
expectancy of their tires depending on vehicle performance, driving patterns
or road/terrain conditions, allowing them to adjust existing and new products
to specific customer circumstances. Moreover, failures can be predicted much
earlier, which shortens response times for product recalls. In our tire
example, this also increases safety, as a defective lot can be identified
early on, before human life could be in danger. This, in turn, leads to an
enhanced end-user experience.
Maturity level 3
Reinventing AIoT business models
A lot of organizations are already using AIoT. Organizations who want to
differentiate themselves from the competition, need to reinvent business
models or tap into the latest ones from other players. This way, connected
machines, devices, or components can evolve from being traditional capital
assets to fully integrated parts of new business approaches – or even become
as-a-service assets in the long run. Our own experience as an AIoT OEM, as
well as research from the Bosch IoT Lab, enable us to recommend newer business
models. Examples are physical freemiums (free trial usage of services with
some premium customers), digital lock-in (to ensure only original components),
object self-services (items can order supplies independently), or products as
a point of sales (the physical product offers further digital sales and
marketing services). They offer best possibilities to unlock maximum value
across the entire product life cycle and have already been tried and tested.
Predictive maintenance is an optimal starting point to the world of AIoT
business models and a good example to explain a digital addon pattern. While
corrective and preventive maintenance can reduce costs and boost customer
satisfaction, predictive maintenance requires intelligent algorithms to
analyze data over a longer period, learn from it, and make the best possible
forecasts. Take the current way of operating industrial pumps. Too often, they
do not work at the best efficiency point (BEP), which leads to a reduced
lifespan, as well as unplanned downtimes and higher operational expenditure.
Once maturity levels 1 and 2 are reached, intelligent connected pumps can be
monitored regarding their performance and efficiency in real-time, thus
ensuring the BEP. Moreover, solutions are in place to create insights from the
collected data, e.g., on wear and tear, cavitation, and health condition of
the pump and its vetted parts. This information, as well as the derived
optimizations, are important for both OEMs and the companies that handle
installation and maintenance for customers. In maturity level 3, we are
therefore turning data and assets into services and new revenue streams across
the product life cycle.
A portal allows authorized maintenance companies to connect to their
customers’ pumping systems, enabling them to offer better customer service,
reduce unplanned downtimes, and most importantly, improve the pump’s lifespan.
In case of a malfunction, the portal provides technicians with information
such as error code, cause, measures, and replacement parts, as well as time
and cost estimates. Equipped with all this data, the technicians can contact
the equipment owner and schedule proactive troubleshooting. OEMs can
furthermore offer complete pumps-as-service packages, relieving small and
medium-sized companies from the investment risk by providing a pay-per-hour
system, including maintenance, spare parts management, and repairs tasks. By
using additional data from the cloud, predictive maintenance can turn into
prescriptive maintenance in the future: historical data, customer behavior,
market analyses, and economic forecasts are used to predict the optimal
timeframe to maintain every item individually.
While every physical product can only be sold once, associated digital
services like smart maintenance can be multiplied and represent a new
potential recurring revenue stream. Hence, OEMs need the end customers to
connect their pumps to the cloud solution to make them accessible for these
smart services. Additional incentives like free portal access and useful apps,
e.g., for energy management, make the services more appealing and maximize the
chance of long-term usage and brand loyalty. For example, maintenance
companies not even owning a pump from the OEM might reach out to participate,
offering even more benefits to their customers. This makes AIoT solutions
interesting for all parties in the value chain.
Maturity level 4
Molding evolving ecosystems
The first three maturity levels have enabled connectivity, communication, data
analyses, and digital services for different players based on cloud solutions.
However, everything is still centered around a specific asset from a specific
company. One OEM alone cannot connect every type of device, sensor, or
equipment in various fleets or factories, and implement digital services on
that basis. There are simply too many technologies at play. In maturity level
4, it’s therefore time to zoom out and think bigger by evolving towards an
ecosystem-based business model.
The first step consists in being open to different collaboration
possibilities, such as providing open access to application programming
interfaces (APIs). By doing so, key ecosystem participants do not need to
implement all services themselves. If an ecosystem provider uses an API,
service or solution integration is simplified for developers from third-party
providers and cross-industry players. A “value network” is born. Each new
contributor who joins the ecosystem increases the network effects. This leads
to a better and more personalized customer experience, but also to new
opportunities to build on operational expertise. But what exactly is a network
effect and how is it linked to value creation?
Let’s refer to our tire example. Each new user in the network provides more
insightful and valuable data, resulting in optimized products that, in turn,
attract additional users – a classical same-side network effect. The increased
use of a specific element like a tire can further augment the value of other
elements in the ecosystem, such as services for truck maintenance and fleet
management. Thanks to these cross-side network effects, the ecosystem is
opened up for other business areas and invites even more cross-industry
players to join in.
If OEMs take the opportunity now to become ecosystem orchestrators, they will
be able to reap the full benefits of such value networks. They can also
oversee key control points along the value chain and play an active role in
the development and growth of the network. In the long term, this will result
in new benefits for both the OEMs and their customers, putting OEMs the
decisive step in front of the competition.
Six stumbling blocks to avoid in your organization’s AIoT journey
Our practical tips
If you consider launching an AIoT project along the four maturity levels, there are some important obstacles that need to be considered and overcome. Trust us, we know from experience!
1. Initial investment
Achieving the first maturity level is the highest obstacle from a monetary
perspective. Do not underestimate the costs of hardware and connectivity and
have a good business plan with ROI and KPI calculations in place.
2. Life-cycle costs
Each product or device that is connected to the cloud will involve further
costs during its service life. Don’t forget to consider these operating costs
in your initial calculation of new potential business models.
3. Business model
Test and evaluate your business model thoroughly. Optimizing maintenance and
improving products is not enough. The added value must cover the costs of
connectivity for AI applications (ROI). Winning in AIoT involves quick value
creation and use case testing, which will require your organization to change.
4. A company in transition
Organizations must undergo a digital transformation, and everybody must
embrace a new mindset. This includes building new capabilities and skills,
good change management, and an open marketing approach with the corresponding
expertise.
5. Need for scale
The objective of AIoT implementation is to capture a clear value. AIoT is not
just another digital initiative; it is a true enabler for comprehensive
operating model transformation. Therefore, scalability is one of the most
important prerequisites that should be carefully thought through.
6. Ecosystem management
Your role as an orchestrator of AIoT ecosystems must appeal to partners and
third-party providers. This includes establishing a balanced usage model to
ensure the interoperability of use cases and solutions.
Leading the way to a successful AIoT transformation
AIoT has immense potential to create and capture value across the product
lifecycle. By following the four-step maturity plan, OEMs can not only defend
their market position; they can excel in global competition. If OEMs recognize
this unique opportunity, they will be ready to transform their stake across
the value chain.
Once connectivity has been established, flexibility is paramount: use cases
must be adapted to specific user groups. Referring to our examples: it might
be beneficial for OEMs to move from connected pumps to an infrastructure-
as-a-service model, or from connected tires to a fleet management offer.
Whatever business model seems suitable, validation and scale-up are especially
important.
When engaging in an AIoT ecosystem, OEMs are well-advised to promote
interoperability to ensure sustainable success. But most importantly, AIoT-led
digital transformation is still about people, both customers and OEM staff.
Only when new business models and product offerings are accepted by those who
work or live with them every day, will AIoT transformation really succeed.
When turning these stumbling blocks into opportunities, OEMs can leverage
important – and maybe even vital – business opportunities from AIoT
ecosystems.
Learn more
Contact our AIoT experts for further information and vital tips.
Schedule a call with one of our
experts
Learn more about AIoT-led digital transformation
Manage your devices and analyze data with Bosch IoT Suite
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Generating value from AIoT in 4 proven steps
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References
- Bosch Digital – we drive digital and AIoT business
- Transformation through Sensors, Software and Services | Bosch Global Software Technologies PVT LTD
- Bosch Digital – we drive IT and digital business
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