Prognostics & Diagnostics with Big Data
Damage prognostic’s is the future of structural health monitoring. Damage
prognosis (DP) attempts to forecast system performance by assessing the current
damage state of the system, which looks at the future loading environments for
that system, and predicting through simulation and past experience the
remaining useful life of the system according to the Philosophical
Transactions of The Royal Society (http://rsta.royalsocietypublishing.org/content/365/1851/623.full). To
fully maximize the potential, damage prognostics model will require further
development and the integration of measurement/processing/telemetry hardware
with deterministic and probabilistic predictive models. While DP is in its
infancy there is tremendous potential for life-safety and economic benefits.
DP has
applications that could be used in most engineered structures and mechanical
systems including civil infrastructure, civil defense hardware, and commercial
aerospace systems. Airframe and jet
engine manufacturers are using a business model to allow the customer to assess
damage and predict when the damage will reach some critical level that will
require corrective action. The owners can better plan scheduled maintenance
tasks. Within Civil infrastructure,
there is a great need for prognosis of large building and bridges after a
large-scale event such as an earthquake, flood, or tornado. The structural
condition assessments will help confidently predict how these structures can be
repaired and offer a safe condition for public use. The helicopter industry has
used vibration testing and data trending for predictive maintenance for several
years and has been proven to increase the rotor component life up to 15%. One
factor that allows for rotor blades to be accurately tested is that the rotor
speed is typically held at a nominal speed. Other prognostic examples in
aircraft include the T55 engine in the CH-45 helicopter. This paper (http://www.impact-tek.com/Resources/TechnicalPublicationPDFs/MaintenanceManagement/Impact_MM_MR_ADEPTFinal_color.pdf)
identifies innovative diagnostic, prognostic and maintenance reasoning
technologies focused on significantly reducing operational and support
requirements.
Another
avenue for prognostics and diagnostics can be found with Condition Based
Maintenance (http://www.arl.army.mil/www/default.cfm?page=980) (CBM). CBM is increasing the Army’s weapon system readiness and
is resulting in huge maintenance costs savings for the Army. The Army can save
millions in eliminating maintenance test flights and corrective maintenance
tasks. Reliability Web.com expounds on how cloud technology can be used for Condition-Based
Monitoring (http://reliabilityweb.com/index.php/articles/cloud-technology_condition_based_monitoring/). Condition Based Monitoring is the core of how you can perform
condition-based maintenance. Vibration analysis, motor current signature,
ultrasound and oil analysis, can be used to help assess the help of machinery
and predict future failures. Some advantages of condition-based monitoring
include improved system reliability, increased production, decreased
maintenance costs, and less human intervention with less human error influence.
Using cloud technology with condition based monitoring will allow anyone with
approved access rights to the data from anywhere in the world, without having
to add additional expensive infrastructure. It also makes it easier to monitor
remote installations – pipelines, offshore drilling rigs, small facilities with
limited resources. Types of cloud services include: Software as a Service
(SaaS), Platform as a Service (PaaS), or Infrastructure as a Service (IaaS). Each
form of cloud services are different based on the support requirements.
As the
Army and private sector businesses with large machines expound the technology
of Condition-Based Maintenance, this will allow smaller businesses to reap the
benefits as well. The future is bright when it comes to automobile maintenance,
lawn-mower, and other small machine preventative maintenance. Hopefully big businesses
and the automatic preventative maintenance tasks that the automobile industry
mandates will stand in the way. There is a lot of money to be saved by the
consumer without having to risk the reliability of the vehicle when
implementing Condition-Based Maintenance.
Other Condition Based Maintenance articles - http://alvarestech.com/temp/milton2012/rcm.pdf
Thank you for sharing. Condition Based Maintenance is a major component of Predictive Maintenance (PdM) and asset health
ReplyDeleteHi! nice post. Thank you for sharing. Cheers!
ReplyDelete- The Condition Based Maintenance
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