Artificial intelligence (AI) in the automotive industry is assumed to cause profound disruption by optimizing production capabilities and increasing Industry growth. The design and deployment of novel technologies including autonomous mobility, vehicle simulations, rapid prototyping, and AI-enabled automotive factories are creating a positive outlook for the autonomous technologies market.
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How artificial intelligence influence in automotive industry
1. How Artificial Intelligence Influence In Automotive Industry
Image Source: futurebridge
Artificial intelligence (AI) in the automotive industry is assumed to cause profound
disruption by optimizing production capabilities and increasing Industry growth. The
design and deployment of novel technologies including autonomous mobility, vehicle
simulations, rapid prototyping, and AI-enabled automotive factories are creating a
positive outlook for the autonomous technologies market.
Automotive companies are rapidly increasing their existing production systems by
integrating artificial intelligence ways and are increasingly focusing on the
development of self-drive vehicles to increase passenger mobility. For example, in
October 2019, Tesla announced the early launch of its fully autonomous vehicles for
the first quarter of 2020 to capture the advantage of the former.
Impact of artificial intelligence on the automotive industry:
Artificial intelligence (AI) is impacting the way we do business and the way we live.
You're making progress every day, from healthcare to finance, data security, travel
and transportation, and social media. Speaking of the auto industry, Artificial
Intelligence Applications in the automotive industry will bring a massive
transformation.
Driving functions with AI:
When it comes to driving, artificial intelligence provides many functionalities,
including fully autonomous and driver assistance modes.
One of the main concerns of the auto industry is ensuring that drivers are safe while
driving. AI provides advanced safety features that can identify dangerous situations
2. and alert the driver if it detects a potential mishap. It can also take emergency control
of the vehicle if the driver can no longer drive.
It consists of multiple sensors, cross traffic detectors, emergency braking,
driver-assisted steering, blind spot monitoring, and other features that track
passenger safety.
Although Artificial Intelligence Development Services has reached a stage where
it can help humans drive, there is plenty of time to see roads littered with self-driving
cars. It's because driving isn't limited to a specific set of rules. Some algorithms
cannot understand the nitty-gritty of driving. It is a complex process that requires
monitoring multiple conditions and forecasting various scenarios. The processing
power required for a driverless car is not yet available. Companies like Google and
Tesla are making several breakthroughs in artificial intelligence and machine
learning, and the day is not far off when self-driving cars become a reality.
AI in car manufacturing:
Image Source: amfg.ai
According to research, 92 million cars were produced in the last year. No wonder the
robots on the assembly line have proven their worth. And they have been doing it
since the sixties.
But AI in the auto industry will completely change the way we operate. Smart robots
not only accept humans but also work with them. Like the Hyundai Vest Exoskeleton
(H-VEX) and Hyundai Saddleless Exoskeleton (H-CEX), they provide extra mobility
and strength for delicate jobs. They sense what their human counterparts are doing
and help protect their knees, neck, back, and other sensitive areas.
3. Automated Guided Vehicles (AVGs) are used to move heavy materials and
machines. Artificial intelligence can detect your path and adjust the path accordingly.
Artificial Intelligence in the Automotive Industry is used for painting and welding
jobs. In addition to color filling and cutting window, door, hood, roof and windshield
glass, it can also detect irregularities and defects and alert quality control personnel.
Driver identification, recognition and monitoring:
The AI can detect who is driving the vehicle using advanced facial recognition
algorithms. You can adjust the mirrors, the temperature and the seat according to the
individual preferences of the driver. It can alert the driver to keep his eyes on the
road by observing head position, gaze and eye-opening. It can detect the driver's
posture and adjust the seat accordingly. You can also change the head-up display
(HUD) according to where the driver's eyes are focused. Furthermore, it can also
deploy airbags in a way that will minimize injury based on the driver's posture.
AI in the automotive industry is making significant advancements and developments.
Together with the power of Machine Learning Development solutions Services
and big data, it will revolutionize the way we reach our destinations. Not only will it
streamline the movement of traffic and control traffic jams, it will also increase driver
safety.
AI Transforming Automotive Industry:
Image Source: expleogroup
4. Make no mistake, we are only at the beginning of exploring the full potential of AI
across all industries. Data science, machine learning, artificial neural networks, text
mining - all these technologies, which are already partially mature in the world of
finance and online marketing, have a lot to offer to manufacture in general and the
automotive industry in particular.
From the design and development phase to testing and production and marketing, AI
has applications throughout the entire life cycle of the car. The data generated by the
many sensors that are now integrated into vehicles, extracted from production lines
and compiled from customer feedback are powerful sources of information. Their
analysis and interpretation provide equally powerful levers for improving the design,
testing, and maintenance; as well as to understand the needs and expectations of
users. Looking ahead, the challenge, as complicated as it is inspiring, is naturally the
development of autonomous vehicles and the complete delegation of all
safety-related decisions to the vehicle itself.
Leverage customer knowledge:
If there is one area where the effects of big data are particularly well known, it is
end-customer insight. Consumer data analytics applications are among some of the
most mature and are used by brands to identify their target audiences and the
expectations of those audiences.
This approach is a direct response to the growing demand for customization of
products and services. In the manufacturing industry, customer knowledge can be
applied to increase component reliability. For example, Text Mining allows you to
analyze free-text data contained in customer reviews collected through e-commerce
websites, forums, etc. Recurring failure data can be used to review the design of
particular components and avoid the need for recovery campaigns.
New features for the needs of new users:
Research on the development of smart vehicle technology is particularly focused on
the issue of environmental perception: infrastructure, other vehicles, pedestrians or
any other object that can be considered an obstacle for a car. Radar, sensors,
cameras, weather conditions, road works and other extraordinary events: the
machine must be able to recognize all kinds of external influences and evaluate their
possible effect on the vehicle's trajectory to make the appropriate corrections in the
driving control system in real-time.
One of the Artificial Intelligence Development Company is presently working on
this problem through the development of an automatic parking solution called AVP
(Automated Valet Parking). Using an application that connects the car, the driver and
the infrastructure, this solution allows the vehicle to enter, exit and park without
5. assistance in an underground parking lot. This internal innovation is based on image
processing technologies based on Deep Learning, two Yolo-like algorithms and
semantic segmentation. The combination of these components enables the vehicle
to recognize its surroundings, detect obstacles and behave appropriately in
autonomous operation.
Uses of Artificial Intelligence in Automotive Industry:
Image Source: the-sieve
Artificial intelligence means that the cars themselves will be able to inform you when
there is a problem, constantly examining for problems and predicting future problems
and service costs. Drivers will not be allowed to forget about upcoming check-ups or
ignore any issues, making trips safer and more predictable.
In today's world, voice commands are commonly used at homes, such as Amazon
Alexa and Google Home. However, vehicles will soon use AI to react to various
commands made by drivers. Commands such as making calls and reading texts
aloud are currently used, but soon we will be able to adjust the lighting, temperature
and music, and use the sat nav simply through voice recognition.
Recommended: Cost of Artificial Intelligence in the Automotive Industry
6. Manufacturing process reform:
Artificial intelligence has the power to completely reshape car manufacturing and
make processes faster and more efficient. The growing intelligence of robots may
soon lead to the replacement of workers in many factories.
The Internet of Things (IoT) enables machinery to transmit operational information to
all business partners so that managers can manage factories remotely. It also
enables complete monitoring of production lines from start to finish, reducing waste
and allowing workers to keep a close eye on the entire process.
Self-Driving cars:
Image Source: machinedesign
Driverless vehicles cannot yet circulate on public roads, however the concept is
certainly approaching a reality. The UK has invested especially large amounts of
money in self-driving cars, aiming to be the leader in driverless cars on the road by
2021. Many companies, including Tesla, Google and Uber, have invested millions, if
not billions, in production. autonomous cars. They use lasers, sensors, and
360-degree cameras to make driving much safer and fewer accidents on the road by
eliminating the human element that is responsible for 90% of vehicle accidents.
The Use Cases of Artificial Intelligence in Manufacturing Industry will lead to
supply chains becoming much leaner; By tracking inventory, an accurate forecast so
that supply equals demand and stocks are not wasted, while handling unexpected
spikes in demand.
7. Prevent problems:
Artificial Intelligence in the Manufacturing Industry can directly help the car
owner. For example, car maintenance used to be preventive, something that was
done on a schedule. Drivers had their oil changed approximately every 3,000 miles
and their tires rotated every 8,000 miles.
With machine learning, maintenance becomes "predictive." Rather than basing
service on mileage or waiting until a car breaks down, sensors can detect damage
and predict problems before they occur and notify drivers via the dashboard or their
phones. Drivers can schedule service at a time convenient to them. With predictive
maintenance, recalls or road service may become a thing of the past.
AI use cases in automotive:
Predictive Maintenance:
Predictive maintenance allows companies to predict when machines need
maintenance with high precision, rather than guessing or performing preventive
maintenance. Predictive maintenance avoids unplanned downtime through machine
learning. Technologies such as sensors and advanced analytics built into
manufacturing equipment enable predictive maintenance by responding to alerts and
troubleshooting the machine. An excerpt from Deloitte's report The Digital Advantage
in Life Sciences explains how the IoT contributes to predictive maintenance.
Making use of data:
This sounds very general, but in reality, there are a wide variety of ways to use Big
Data in manufacturing. Manufacturers collect large amounts of data related to
operations, processes and other matters, and this data combined with advanced
analytics can provide valuable information to improve business. Supply chain
management, risk management, sales volume predictions, product quality
maintenance, recall problem prediction - these are just a few examples of how big
data can be used to benefit manufacturers . This Types of Artificial Intelligence
application can unlock information that was previously unreachable.
Quality controls:
Some product flaws are too small to be noticed with an open eye, even if the
inspector is very experienced. However, artificial intelligence can be provided with
cameras many times more sensitive than our eyes and, thanks to this, detect even
the smallest defects.
8. Machine vision allows machines to "see" the products on the production line and
detect any imperfections. The next logical step could be to send the images of such
defects to a human expert, but it is no longer mandatory, the process can be fully
automated. Landing.ai, a company founded by Andrew Ng, offers an automated
visual inspection tool to find even microscopic defects in products. The AI system
accepts defects, marks them and sends alerts.
Generative design:
Generative design is a process that involves a program that generates a series of
results to meet specific criteria. Designers or engineers enter design goals and
parameters, such as materials, manufacturing methods, and cost constraints, into
generative design software to explore design alternatives. The solution uses
machine learning techniques to learn from each iteration what works and what
doesn't.
USM Business Systems is the best company for Artificial Intelligence Development,
Human Resource Management Systems, Mobile Application Development,
Chatbot Development, data quality solutions, workforce service to create interactive
experiences for major platforms. USM also provides Artificial Intelligence in Retail
and Artificial Intelligence in Manufacturing.
WRITTEN BY
Koteshwar Reddy
I'm a tech assistant. and content researcher at USM. I share my knowledge about
information in modern technologies.