The HKSQ
seminar named “Reliability & Maintenance: Enablers of Industry 4.0” co-organized
by Hong Kong Society for Quality (HKSQ), ASQ Hong Kong and Dept., of Industrial
and System Engineering, PolyU. Industry
4.0 principles not only demand the availability of machines, they also
recommend collection and analysis of machine data through shop-floor
communication and cloud computing to enable optimization of reliability and
maintenance (R&M) management. This
seminar would present the way in which asset management decisions could be
optimized by resolving the conflicts of a decision situation. Dr. Albert Tsang (Former chairman, HKSQ; ASQ
Country Counselor (HK), author of “WeibullSoft” and co-author of “Maintenance,
Replacement, and Reliability: Theory and Application”) was our guest speaker to
share this topic.
In the beginning, Dr. Albert Tsang briefed the implications of Industry 4.0 to the Value Chain. It indicated on demand approach (e.g. lean production), high level of flexibility, data from central library and IoT, etc. He said that without effective asset management, Industry 4.0 is only a dream. The definition of Asset Management was “Systematic and coordinated activities and practices through which an organization optimally manages its assets, and their associated performance, risks and expenditures over their lifecycle for the purpose of achieving its organizational strategic plan. Then he briefed the objectives on sustainable manner at an optimal whole-life cost.
Then Dr.
Tsang mentioned ISO 55000 family of standards and Reliability Centred
Maintenance (RCM) which focused on failure modes and assuring system
function.
For
simplified version, we could read Dr. Tsang’s previous booklet named “Reliability
Centred Maintenance: A Key to Maintenance Excellence”. (http://www.hksq.org/qts.htm )
Then Dr.
Tsang discussed the Bathtub Model to explain the Early Failures, Chance Failures
and Wear-out Failures as follow:
a)
Early Failures – caused by poor workmanship
b)
Chance Failures – caused by higher than expected random loads / Act of
God
c)
Wear-out Failures – caused by Aging, Wearing, Degradation, Creep,
Fatigue, Poor service & maintenance / repairing, and short designed-in
life, etc.
After that
Dr. Tsang briefed the optimizing maintenance decisions that we want
Evidence-based arguments (data driven decisions) but not Intuition-based
pronouncements (strength of personalities, number of mechanics’ complaints).
Finally,
Dr. Tsang considered the optimizing preventive replacement costs and avoided “Data
Rich, Information Poor”. Then he briefed
the reliability function included Weibull Analysis and Maximum Likelihood
Estimation. He concluded that there was
no the best model but mode helped us to make decision could be a good model.
Q&A
We took
a group photo of HKSQ exco members at the end.
Reference:
HKSQ – www.hksq.org
20160827:
HKSQ Seminar on Future Manufacturing - https://qualityalchemist.blogspot.hk/2016/08/hksq-seminar-on-future-manufacturing.html
20090220:
Engineering Asset Management - https://qualityalchemist.blogspot.hk/2009/02/engineering-asset-management.html
沒有留言:
發佈留言