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Statistical Process Control (SPC) is simply
using statistical methods to monitor and control a process.
Statistics have been used in operations of all types for ages,
just for the most part, in the past, they were only used to
monitor the output, as a report and feedback tool. SPC takes
statistics to the next level, namely it becomes a proactive
tool, capable of identifying a potential problem before it
occurs.
This new, proactive ability of statistics
has come about due to the power and capability of today’s
computer hardware and software. Since it is now very easy to
collect and analyze large amounts of data in real time,
statistical methods can be used to identify trends that will
lead to problems in the future. Knowing that a problem is going
to occur, but as yet has not. We can cut down the defect rates
by taking preventive action, thus saving our economies vast
fortunes in wasted resources, while keeping costs down for the
consumer.
SPC is not a tool for getting your process
under control, but can be extremely useful tool to keep your
process under control.
On this page we are not going to go into it
very deep, as SPC takes some serious training and time to really
learn. Instead, we will give you a simple explanation of what it is and what it can
do for you. Then you will know why you need to use it and you
can start to learn how to use it.
When is a process under control? When 99.7%
of the time the only out of process limit products (see below an
explanation of a process limit) are the result of some special
identifiable cause.
Additionally those special causes have to occur rarely.
SPC deals with what is called Common
Process Variation. For example, while operating under normal
conditions, a machine drilling holes will drill a hole a certain
depth, but each hole will vary within a certain, narrow range.
This condition may be caused by the gradual wear of the drill,
thus causing a smaller/shallower hole.
Once you have gotten your processes under
relatively good control, and you know how to adjust them in
order to keep them producing as required, how do you know when
to make the required offsets, or when to change the tool?
If you wait until your process starts
making bad product then you end up wasting resources by creating
either scrap or rework for no valid reason. At the same time, in
these tight economic conditions you cannot afford to waste
dollars adjusting a process until it really needs it.
That is where Statistical Process Control
comes to the rescue. Since, in modern operations, we can easily
track and record what is happening in any process, and store
that data in a database (and most business already store the
data they need), why not use that data to help us control the
process?
With the aid of basic statistical analysis
software we can easily setup routines that monitor what is
happening in our process. As long as that process remains safely in a range of
acceptable results, we have no need to tinker with the process.
Instead, we can use that time and those resources to tackle real
problems.
Additionally, you can use this same
software and these same programs to recognize a trend in the
process that, if continued, would put production outside of the
desire specifications. By spotting this trend we can make the
necessary adjustment to the process in a plan able and
controlled fashion without ever having created any defective
product.
We start by identifying Key Process
Variables, both input and output if possible, we collect data on
these variables and determine if our process meets the
in-control requirement of SPC, using process control limits that
are narrower than those required by our customer’s
specifications.
A process control limit that is tighter
then the customer’s specifications keeps us from ever producing
defective parts due to our processes’ natural variation. This
also allows use greater flexibility to plan for the adjustments
so that they do not adversely affect production.
Determining which variables to track will
depend on your process. For example we have two plastic
injection molding companies:
- Company A can track the amount of
plastic going into the moulds very easily so it may choose
to use input data, so if their data shows a steady trend
toward either using more or less plastic they know they
could be facing a problem in the near future.
- Company B already weighs the parts as
they come out of the moulds, thus for them it may be easier
to track this output weight as the variable to find a trend
that would indicate a problem was starting to develop.
- Although, in the long run, tracking the
inputs gives you a faster response, especially if your
processes use longer time frames, but not every process will
allow for good input control.
Then, by using Key Process Variables we are
tracking, we are able to see what is happening with our process.
Although, the ideal situation is the input side as we get
earlier process data, which means we can act sooner. When a
trend develops that indicates we are heading out of the process
control limits, we can take proactive action before creating
defective product.
Let’s go back to our drill bit example for
a second. As the drill
wears, the holes will start to trend toward a shallower depth.
By monitoring the depth of the hole and recording it we will see
as the drill approaches the end of its life a steady trend
toward shallower holes that does not occur when it is brand new.
This trend shows us that we should plan to replace the drill bit
at some convenient point in time before it starts making parts
that no longer meet customer requirements.
You surely understand your need for
Statistical Process Control and what it can do for you if you
use it properly. If you want to start learning about it so you
can start using it, we offer our
SPC presentation that will help you
get started down the right path.
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