Additional vibration analysis with accelerometer.pptx
1.
2. INTRODUCTION
Problem
Manual Monitoring Inefficiencies: Manual
monitoring of automobile performance
and maintenance is time consuming and error-
prone.
Costly Downtime: Inadequate monitoring leads to
higher costs and potential downtime in critical situations
and on-road situations.
9. Predictive Maintenance
• Predictive maintenance is the strategy that
organizations use to estimate and plan their
operational equipment's maintenance
schedule.
• The strategy is designed to optimize
equipment performance and lifespan.
• Predictive maintenance solutions integrate
sensor data with business operational data
and apply analytics based on artificial
intelligence (AI)
• Predictive maintenance involves monitoring,
analysis, and action based upon gathered
insights.
10. Prescriptive Maintenance
• Prescriptive maintenance represents a cutting-
edge approach to asset management, utilizing
advanced analytics and machine learning to
predict maintenance needs and optimize
equipment performance by prescribing
suggestions
• Advanced asset condition monitoring solutions,
like vibration sensors, help enable pattern
detection and bring reliability teams closer to
prescriptive maintenance
• Leverage historical data and real-time data
• Optimize maintenance operations
• Minimize downtime and increase efficiency.
11. MOST COMMON
FAULTS
Noisy Engine: Splattering,
knocking, or rattling sound,
it could be a signal for
trouble.
Bad Wheel Bearings: You
can identify a bad wheel
bearing by listening to the
road sound while turning
slowly
Electrical Faults: Affects
vehicle’s performance and
may be detected through
irregular vibrations.
Fuel Injector Issues:
Problems with the fuel
system can also cause the
vehicle to vibrate unusually.
Cooling System Problems:
Issues with the cooling
system can lead to
overheating, which might
cause the vehicle to
vibrate.
Malfunctioning Sensors: If
sensors malfunction, it can
lead to a variety of
problems, including unusual
vibrations.
12. DATA ACQUISITION
• Data collection: Vibration data is derived from
sensors placed on machinery or vehicle parts,
measuring their vibration patterns and translating
them into electrical signals.
• Signal conditioning: The electrical signals generated
by the sensors are amplified and filtered to remove
any noise or interference. This process is known as
signal conditioning.
• Data acquisition: The conditioned signals are then
digitized and recorded using a data acquisition system
that converts the analog signals into digital signals
that can be stored and processed by a computer.
• Data processing: The digitized signals are then
processed to create datasets in the format of x, y
values such that time vs amplitude and analyzing
the vibration patterns of the machinery and identifying
any anomalies or faults.
• Data storage: The datasets are stored in a database
or file system for further analysis and processing. The
datasets can be used to train machine learning
models or to perform predictive maintenance on the
13. ANALYSIS
1. Time series analysis:
2. FFT (fast Fourier transform)
3. Extreme event
4. Recurrence
5. Forecasting(ML)
14. VIRTUAL REALITY
Harnessing VR technology to provide a virtually
immersive experience that grants users a virtual, 3D
view of the vehicle's internal workings.
This goes beyond mere data interpretation; it
empowers technicians to navigate within a virtual
environment, visually pinpointing the exact location of
faults with unprecedented precision.
This immersive approach not only streamlines the
identification process but also significantly reduces
the margin for error.
Moreover, the VR representation offers an intuitive
interface that facilitates easier communication of
complex issues, enabling even non-experts to grasp
and collaborate on resolving intricate mechanical
problems within the electrical vehicle system.
15. HOLISTIC FAULT IMPACT
ANALYSIS
Unlike traditional AI fault prediction systems that limits the
prediction to fault occurrence, we aim to analyze the
phases as well as impact of a fault occurring.
This holistic approach allows for a more comprehensive
understanding of the fault and its potential implications,
leading to more effective preventive measures and
maintenance strategies.
This is a significant novelty as it moves beyond isolated
fault predictions to a more interconnected and systemic
view of fault impacts. This could potentially lead to
improvements in overall system resilience and reliability.
16. Prospects for Advancement
Integration with AI and IoT: Collaborative Utilization of artificial intelligence (AI) and Internet of
Things (IoT) capabilities to create smart systems. These communicate real-time data condition to
the vehicle's dashboard providing detailed analytics and maintenance reminders.
Sensor Fusion Technology: Combine various sensor technologies to create a more comprehensive and
accurate monitoring system. This fusion of sensors can provide a holistic view of system health.
Self-Diagnosis and Reporting: Develop a self-diagnostic system that continuously evaluates and
automatically generates detailed reports for both the driver and service centers thus improving
safety.
Wireless Monitoring: Possibility to introduce wireless monitoring systems that transmit data to the
cloud. This data can be accessed by the driver, service centers, or even manufacturers
Customizable Alerts: Allow drivers to customize their alert preferences based on their driving
habits, preferences, or urgency levels, giving them more control and personalization.
17. Early Detection of Faults – Allows early intervention and
repair.
Reduced Downtime- Allows scheduled repairs during
planned downtime
Improved Safety - Identifying potential safety hazards
before accidents.
Increased Equipment Lifespan - Extends lifetime by
addressing issues at minor stage.
Cost Effective- Maintenance costs can be reduced.
Increased Safety - Need for manually checking
dangerous machinery parts is reduced.
Advanced VR Integration - advanced method of fault
spotting.
User Friendly Interface – An intuitive user interface that
not only alerts the users but also educated them about the
maintence habits
Unique Selling Points
19. APPLICATION
S
1.Manufacturing plants: Vibration analysis can
be used to monitor the health of machines and
equipment in manufacturing plants.
2.Automotive industry: Vibration analysis can
be used to monitor the health of vehicles and their
components.
3.Aerospace industry: Vibration analysis can
be used to monitor the health of aircraft and their
components.
4.Power generation plants: Vibration
analysis can be used to monitor the health of
turbines, generators, and other equipment in power
generation plants.
5.Oil and gas industry: Vibration analysis can
be used to monitor the health of equipment used in oil
and gas exploration and production.
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