SlideShare a Scribd company logo
Preventive and Predictive Maintenance and
Edge Computing
Have you ever heard the words “preventive maintenance” or “predictive maintenance”? Regarding
the maintenance of equipment in production lines, the Internet of Things (IoT) has recently attracted
attention. Also, these two words seem to be similar and have different meanings. This section
explains the overall definition of conservation activities such as preventive maintenance and
predictive maintenance, the difference between preventive maintenance and predictive maintenance,
the benefits of predictive maintenance, and the relationship between predictive maintenance and edge
computing.
What are Conservation activities?
What is a conservation activity? JIS (Japanese Industrial Standard) defines maintenance activities as
“a general term for activities that eliminate failures and keep equipment in normal and good
condition, including planning, inspection, adjustment, repair, replacement, etc.”.
In other words, it can be thought of as a human influence on the production line to maintain the
performance of the production line. As defined in the JIS, conservation activities are divided into
maintenance activities and improvement activities.
Maintenance activities are activities to maintain the quality of products and the performance of
production equipment, that is, activities to maintain the perfect condition of production facilities.
This includes preventive and reactive maintenance. On the other hand, improvement activities refer
to activities such as “improvement maintenance” that reviews machinery to prevent recurrence when
it breaks down, and “maintenance prevention” that replaces machinery and equipment to prevent
breakdowns and mistakes.
Preventive maintenance is the prevention of failure by daily inspections and replacement of
deteriorated parts before they occur. It includes predictive and periodic maintenance. Follow-up
maintenance refers to restoring the function of equipment when a failure is discovered in the
equipment due to a malfunction or the like. In other words, it is assumed that it will be “repaired”
when the equipment is broken.
Periodic maintenance is the act of determining the cycle based on fault records and equipment
characteristics, and replacing and inspecting parts for each cycle. It can also be rephrased as
maintenance performed based on elapsed time. Generally, “preventive maintenance” refers to
periodic maintenance.
On the other hand, predictive maintenance is to detect or predict deterioration from the state of
equipment measured continuously, and to take the best measures at the optimal time before a failure
occurs. It is based on the condition of the device.
The main difference between periodic maintenance and predictive maintenance is that preventive
maintenance is performed at a certain time cycle regardless of the condition of the equipment,
whereas predictive maintenance constantly monitors the condition of the equipment and responds
when signs of failure are detected.
Conservation Activities to Date
Conventional conservation activities mainly include periodic maintenance, predictive maintenance,
and post-mortem maintenance. Improvement activities (such as modifications and upgrades) may be
carried out to extend the life of the equipment, but the response is limited, such as in the case of
expensive equipment.
Periodic maintenance, as already mentioned, involves the replacement of parts on a regular basis,
regardless of the condition of the equipment. In addition, predictive maintenance was carried out by
on-site workers and engineers relying on the intuition cultivated through many years of experience
that “it is about time to replace that part.”
Periodic maintenance time intervals are tailored to the most important and shortest-lived parts, but
other parts are often replaced during this replacement. The reason is that the life of the parts varies
depending on the type, so if the equipment is stopped and replaced each time, the operation rate of
the equipment will deteriorate. For this reason, parts that have not yet reached the end of their useful
life will also be replaced, and there is a problem that there is a lot of waste in periodic maintenance.
Predictive maintenance
Predictive maintenance conducts is based on the signs between anticipation of a failure and the actual
failure. This means that you can think of a maintenance plan at the expected stage and act, such as
replacing parts before a failure occurs. This minimizes the condition that the machine is in an
emergency stop due to failure.
In addition, if predictive maintenance is automated using IoT, an alarm is issued when there is a sign
of failure. Since it is only possible to think about response when an alarm is issued, it does not take
time and effort, and it leads to a reduction in labor costs in this aspect.
Specific examples of Predictive maintenance
In manufacturing equipment, motors are frequently used. There is a component called “bearing” that
supports the “shaft” (drive shaft) that transmits power from this motor. If the bearing fails, the axis
may not turn or the load on the shaft cannot be distributed, which can lead to serious accidents.
Therefore, this bearing is very important.
Bearings themselves are inherently highly reliable, but when higher reliability is required, for
example, in the process of stretching heated iron at a steel mill (rolling process), bearing monitoring
is often performed.
The bearing monitoring system installs a vibration sensor on the bearing to detect the waveform,
frequency, and amplitude conditions of the vibration. Then, an alarm is issued when the state of
vibration indicates a sign of failure.
For example, if a bearing is damaged in one place, the load applied to the bearing changes. As the
load changes, the distance between the vibration sensor and the bearing changes, but the vibration
sensor detects a minute change in distance. Then, since the rotating part of the bearing rotates at a
constant period, the change in the distance will occur every rotation. This causes vibration, and it is
possible to detect this vibration and make it a sign of failure. Skilled engineers took this vibration
from changes in machine sound and used it as a sign of damage.
This example is simplified for clarity but predicting failures from sound requires experience because
there is no change in vibration even if multiple places are damaged or damaged. For this reason, it
was not possible to make such a judgment unless from a skilled engineer. Unfortunately, the number
of skilled technicians is decreasing. Artificial intelligence (AI) is considered as a solution. Artificial
intelligence, which has been attracting attention in recent years, enables “deep learning” to learn by
itself by a structure modeled on human actions. Of course, although it is necessary to have learning
first, artificial intelligence can learn and execute like humans who have captured signs of failure from
experience. With the number of skilled engineers decreasing, it can be said that it is one effective
means to respond to the shortage of human resources.
Predictive maintenance and edge computing
In this way, automation of predictive maintenance is an effective means of eliminating the shortage
of human resources and optimizing maintenance activities. However, there are some things to be
aware of when automating predictive maintenance.
The structure that imitates human actions of artificial intelligence described earlier is called “neural
network” and contributes greatly to the realization of deep learning. However, neural networks are a
very complex mechanism. Therefore, it is a practical issue to realize predictive maintenance while
maintaining the speed necessary for predictive maintenance.
There is also a method called “neurochip” that realizes neural networks with hardware, but it is not a
very common method. The problem here is speed, so cloud computing, which always sends and
receives from servers on the Internet, is impractical. So, let’s think about deploying edge
computing and putting artificial intelligence on edge servers. This is called edge AI. As a result, it
can be said that the best answer at this time is to automate predictive maintenance while maintaining
the speed as much as possible.
Possibility of predictive maintenance and artificial intelligence
This paper mainly describes the difference between predictive maintenance and preventive
maintenance, and the merits of predictive maintenance. With the development of artificial
intelligence, the possibilities for predictive maintenance are greatly expanding. And enabling
predictive maintenance using artificial intelligence with edge computing is the most ideal figure at
present.
Follow Stratus ztC Edge
Follow Stratus ztC Edge

More Related Content

Similar to Preventive and Predictive Maintenance and Edge Computing.docx (20)

PPTX
Predictive_Maintenance technique ppt.pptx
AsimAwan27
 
PPTX
Predictive Maintenance in the Industrial Internet of Things
Tibbo
 
PPTX
Predictive Maintenance with Machine Learning.pptx
rahulkuduthini
 
PDF
How AI is Revolutionizing Predictive Maintenance in Manufacturing
Lilly Gracia
 
PPTX
The Impact of AI on Predictive Maintenance for Manufacturing
Diagsense ltd
 
PPTX
What is Predictive Maintenance? Learn Its Benefits & Role of Industrial IoT
Embitel Technologies - A VOLKSWAGEN GROUP COMPANY
 
PDF
Detailed Maintenance plan in the industry
prasad207
 
PDF
Why Predictive Maintenance Is the Key to Future-Proofing Your Operations
Diagsense ltd
 
PPTX
How IoT and Machine Learning Revolutionize the Predictive Maintenance
Emorphis Technologies
 
PPTX
Understanding Maintenance Process For C&I Engineer.pptx
DebyenduChakroborty
 
PDF
IMS Project Portfolio - 2015
Jay Lee
 
PPTX
IEM -Types of Maintenance -KAVI.pptx______
kdemersal
 
PDF
Study on Predictive Maintenance for Controller Failure
IJAEMSJORNAL
 
PDF
Presentation predictive maintenance solution with IoT and machine learning_SE...
Larbi OUIYZME
 
PDF
Predictive Maintenance vs Preventive Maintenance
Mobility Work
 
PPT
maintenance-management-UNIT-I-and-II-1.ppt
YunusEmreKarabacak2
 
PPTX
Building Maintenance Program for engineers.pptx
saru92sarathsivadas
 
PPT
Maintenance strategies
SHIVAJI CHOUDHURY
 
PPTX
Engineered Maintenance by Waqas Ali Tunio
Waqas Ali Tunio
 
PDF
Developing Algorithm for Fault Detection and Classification for DC Motor Usin...
IRJET Journal
 
Predictive_Maintenance technique ppt.pptx
AsimAwan27
 
Predictive Maintenance in the Industrial Internet of Things
Tibbo
 
Predictive Maintenance with Machine Learning.pptx
rahulkuduthini
 
How AI is Revolutionizing Predictive Maintenance in Manufacturing
Lilly Gracia
 
The Impact of AI on Predictive Maintenance for Manufacturing
Diagsense ltd
 
What is Predictive Maintenance? Learn Its Benefits & Role of Industrial IoT
Embitel Technologies - A VOLKSWAGEN GROUP COMPANY
 
Detailed Maintenance plan in the industry
prasad207
 
Why Predictive Maintenance Is the Key to Future-Proofing Your Operations
Diagsense ltd
 
How IoT and Machine Learning Revolutionize the Predictive Maintenance
Emorphis Technologies
 
Understanding Maintenance Process For C&I Engineer.pptx
DebyenduChakroborty
 
IMS Project Portfolio - 2015
Jay Lee
 
IEM -Types of Maintenance -KAVI.pptx______
kdemersal
 
Study on Predictive Maintenance for Controller Failure
IJAEMSJORNAL
 
Presentation predictive maintenance solution with IoT and machine learning_SE...
Larbi OUIYZME
 
Predictive Maintenance vs Preventive Maintenance
Mobility Work
 
maintenance-management-UNIT-I-and-II-1.ppt
YunusEmreKarabacak2
 
Building Maintenance Program for engineers.pptx
saru92sarathsivadas
 
Maintenance strategies
SHIVAJI CHOUDHURY
 
Engineered Maintenance by Waqas Ali Tunio
Waqas Ali Tunio
 
Developing Algorithm for Fault Detection and Classification for DC Motor Usin...
IRJET Journal
 

Recently uploaded (20)

PDF
HubSpot Main Hub: A Unified Growth Platform
Jaswinder Singh
 
PDF
Chris Elwell Woburn, MA - Passionate About IT Innovation
Chris Elwell Woburn, MA
 
PDF
Newgen 2022-Forrester Newgen TEI_13 05 2022-The-Total-Economic-Impact-Newgen-...
darshakparmar
 
PDF
New from BookNet Canada for 2025: BNC BiblioShare - Tech Forum 2025
BookNet Canada
 
PDF
The Builder’s Playbook - 2025 State of AI Report.pdf
jeroen339954
 
PDF
Blockchain Transactions Explained For Everyone
CIFDAQ
 
PDF
"Beyond English: Navigating the Challenges of Building a Ukrainian-language R...
Fwdays
 
PDF
Using FME to Develop Self-Service CAD Applications for a Major UK Police Force
Safe Software
 
PPTX
MSP360 Backup Scheduling and Retention Best Practices.pptx
MSP360
 
PDF
Reverse Engineering of Security Products: Developing an Advanced Microsoft De...
nwbxhhcyjv
 
PDF
SFWelly Summer 25 Release Highlights July 2025
Anna Loughnan Colquhoun
 
PDF
Python basic programing language for automation
DanialHabibi2
 
PDF
Fl Studio 24.2.2 Build 4597 Crack for Windows Free Download 2025
faizk77g
 
PDF
DevBcn - Building 10x Organizations Using Modern Productivity Metrics
Justin Reock
 
PDF
Exolore The Essential AI Tools in 2025.pdf
Srinivasan M
 
PDF
Presentation - Vibe Coding The Future of Tech
yanuarsinggih1
 
PDF
Agentic AI lifecycle for Enterprise Hyper-Automation
Debmalya Biswas
 
PDF
Achieving Consistent and Reliable AI Code Generation - Medusa AI
medusaaico
 
PDF
Building Real-Time Digital Twins with IBM Maximo & ArcGIS Indoors
Safe Software
 
PDF
HCIP-Data Center Facility Deployment V2.0 Training Material (Without Remarks ...
mcastillo49
 
HubSpot Main Hub: A Unified Growth Platform
Jaswinder Singh
 
Chris Elwell Woburn, MA - Passionate About IT Innovation
Chris Elwell Woburn, MA
 
Newgen 2022-Forrester Newgen TEI_13 05 2022-The-Total-Economic-Impact-Newgen-...
darshakparmar
 
New from BookNet Canada for 2025: BNC BiblioShare - Tech Forum 2025
BookNet Canada
 
The Builder’s Playbook - 2025 State of AI Report.pdf
jeroen339954
 
Blockchain Transactions Explained For Everyone
CIFDAQ
 
"Beyond English: Navigating the Challenges of Building a Ukrainian-language R...
Fwdays
 
Using FME to Develop Self-Service CAD Applications for a Major UK Police Force
Safe Software
 
MSP360 Backup Scheduling and Retention Best Practices.pptx
MSP360
 
Reverse Engineering of Security Products: Developing an Advanced Microsoft De...
nwbxhhcyjv
 
SFWelly Summer 25 Release Highlights July 2025
Anna Loughnan Colquhoun
 
Python basic programing language for automation
DanialHabibi2
 
Fl Studio 24.2.2 Build 4597 Crack for Windows Free Download 2025
faizk77g
 
DevBcn - Building 10x Organizations Using Modern Productivity Metrics
Justin Reock
 
Exolore The Essential AI Tools in 2025.pdf
Srinivasan M
 
Presentation - Vibe Coding The Future of Tech
yanuarsinggih1
 
Agentic AI lifecycle for Enterprise Hyper-Automation
Debmalya Biswas
 
Achieving Consistent and Reliable AI Code Generation - Medusa AI
medusaaico
 
Building Real-Time Digital Twins with IBM Maximo & ArcGIS Indoors
Safe Software
 
HCIP-Data Center Facility Deployment V2.0 Training Material (Without Remarks ...
mcastillo49
 
Ad

Preventive and Predictive Maintenance and Edge Computing.docx

  • 1. Preventive and Predictive Maintenance and Edge Computing Have you ever heard the words “preventive maintenance” or “predictive maintenance”? Regarding the maintenance of equipment in production lines, the Internet of Things (IoT) has recently attracted attention. Also, these two words seem to be similar and have different meanings. This section explains the overall definition of conservation activities such as preventive maintenance and predictive maintenance, the difference between preventive maintenance and predictive maintenance, the benefits of predictive maintenance, and the relationship between predictive maintenance and edge computing. What are Conservation activities? What is a conservation activity? JIS (Japanese Industrial Standard) defines maintenance activities as “a general term for activities that eliminate failures and keep equipment in normal and good condition, including planning, inspection, adjustment, repair, replacement, etc.”. In other words, it can be thought of as a human influence on the production line to maintain the performance of the production line. As defined in the JIS, conservation activities are divided into maintenance activities and improvement activities. Maintenance activities are activities to maintain the quality of products and the performance of production equipment, that is, activities to maintain the perfect condition of production facilities. This includes preventive and reactive maintenance. On the other hand, improvement activities refer to activities such as “improvement maintenance” that reviews machinery to prevent recurrence when it breaks down, and “maintenance prevention” that replaces machinery and equipment to prevent breakdowns and mistakes. Preventive maintenance is the prevention of failure by daily inspections and replacement of deteriorated parts before they occur. It includes predictive and periodic maintenance. Follow-up maintenance refers to restoring the function of equipment when a failure is discovered in the equipment due to a malfunction or the like. In other words, it is assumed that it will be “repaired” when the equipment is broken. Periodic maintenance is the act of determining the cycle based on fault records and equipment characteristics, and replacing and inspecting parts for each cycle. It can also be rephrased as maintenance performed based on elapsed time. Generally, “preventive maintenance” refers to periodic maintenance. On the other hand, predictive maintenance is to detect or predict deterioration from the state of equipment measured continuously, and to take the best measures at the optimal time before a failure occurs. It is based on the condition of the device. The main difference between periodic maintenance and predictive maintenance is that preventive maintenance is performed at a certain time cycle regardless of the condition of the equipment,
  • 2. whereas predictive maintenance constantly monitors the condition of the equipment and responds when signs of failure are detected. Conservation Activities to Date Conventional conservation activities mainly include periodic maintenance, predictive maintenance, and post-mortem maintenance. Improvement activities (such as modifications and upgrades) may be carried out to extend the life of the equipment, but the response is limited, such as in the case of expensive equipment. Periodic maintenance, as already mentioned, involves the replacement of parts on a regular basis, regardless of the condition of the equipment. In addition, predictive maintenance was carried out by on-site workers and engineers relying on the intuition cultivated through many years of experience that “it is about time to replace that part.” Periodic maintenance time intervals are tailored to the most important and shortest-lived parts, but other parts are often replaced during this replacement. The reason is that the life of the parts varies depending on the type, so if the equipment is stopped and replaced each time, the operation rate of the equipment will deteriorate. For this reason, parts that have not yet reached the end of their useful life will also be replaced, and there is a problem that there is a lot of waste in periodic maintenance. Predictive maintenance Predictive maintenance conducts is based on the signs between anticipation of a failure and the actual failure. This means that you can think of a maintenance plan at the expected stage and act, such as replacing parts before a failure occurs. This minimizes the condition that the machine is in an emergency stop due to failure. In addition, if predictive maintenance is automated using IoT, an alarm is issued when there is a sign of failure. Since it is only possible to think about response when an alarm is issued, it does not take time and effort, and it leads to a reduction in labor costs in this aspect. Specific examples of Predictive maintenance In manufacturing equipment, motors are frequently used. There is a component called “bearing” that supports the “shaft” (drive shaft) that transmits power from this motor. If the bearing fails, the axis may not turn or the load on the shaft cannot be distributed, which can lead to serious accidents. Therefore, this bearing is very important. Bearings themselves are inherently highly reliable, but when higher reliability is required, for example, in the process of stretching heated iron at a steel mill (rolling process), bearing monitoring is often performed. The bearing monitoring system installs a vibration sensor on the bearing to detect the waveform, frequency, and amplitude conditions of the vibration. Then, an alarm is issued when the state of vibration indicates a sign of failure.
  • 3. For example, if a bearing is damaged in one place, the load applied to the bearing changes. As the load changes, the distance between the vibration sensor and the bearing changes, but the vibration sensor detects a minute change in distance. Then, since the rotating part of the bearing rotates at a constant period, the change in the distance will occur every rotation. This causes vibration, and it is possible to detect this vibration and make it a sign of failure. Skilled engineers took this vibration from changes in machine sound and used it as a sign of damage. This example is simplified for clarity but predicting failures from sound requires experience because there is no change in vibration even if multiple places are damaged or damaged. For this reason, it was not possible to make such a judgment unless from a skilled engineer. Unfortunately, the number of skilled technicians is decreasing. Artificial intelligence (AI) is considered as a solution. Artificial intelligence, which has been attracting attention in recent years, enables “deep learning” to learn by itself by a structure modeled on human actions. Of course, although it is necessary to have learning first, artificial intelligence can learn and execute like humans who have captured signs of failure from experience. With the number of skilled engineers decreasing, it can be said that it is one effective means to respond to the shortage of human resources. Predictive maintenance and edge computing In this way, automation of predictive maintenance is an effective means of eliminating the shortage of human resources and optimizing maintenance activities. However, there are some things to be aware of when automating predictive maintenance. The structure that imitates human actions of artificial intelligence described earlier is called “neural network” and contributes greatly to the realization of deep learning. However, neural networks are a very complex mechanism. Therefore, it is a practical issue to realize predictive maintenance while maintaining the speed necessary for predictive maintenance. There is also a method called “neurochip” that realizes neural networks with hardware, but it is not a very common method. The problem here is speed, so cloud computing, which always sends and receives from servers on the Internet, is impractical. So, let’s think about deploying edge computing and putting artificial intelligence on edge servers. This is called edge AI. As a result, it can be said that the best answer at this time is to automate predictive maintenance while maintaining the speed as much as possible. Possibility of predictive maintenance and artificial intelligence This paper mainly describes the difference between predictive maintenance and preventive maintenance, and the merits of predictive maintenance. With the development of artificial intelligence, the possibilities for predictive maintenance are greatly expanding. And enabling predictive maintenance using artificial intelligence with edge computing is the most ideal figure at present. Follow Stratus ztC Edge Follow Stratus ztC Edge