Posts Tagged ‘continuous improvement’
Visibility in Manufacturing
Posted by gdalleave in Machine Truth Blog Tuesday, 9 August 2011 14:06 1 Comment
Manufacturing Leaders are asked to meet strategic goals set by corporate leaders. These goals are often stated in financial terms concerning cost control and margin increase. To accomplish this, Manufacturing Leaders initiate numerous programs to keep the cost of goods under control and improve production efficiency. Often times their methods involve gathering production data from the plant floor and manually inputting the data into an Enterprise Resource Planning (ERP) system or Excel spreadsheets. Manufacturing Leaders keep track of factors such as total downtime, downtime reasons, setup time, run speeds, and Overall Equipment Effectiveness (OEE), among others. This data is then used to determine where to invest continuous improvement dollars.
And you know what. It works…well, kind of.
Manufacturing Leaders are finding that they cannot get the anticipated return on their continuous improvement investment since some programs work, while others miss the mark altogether. It is a drunken walk. You may get where you want to go, but it takes a very long time and you fall down more than once. Often times you never make it. Unfortunately, this means that the task is then left to a new Manufacturing Leader. What is needed is a way to get to where you need to be as quickly and efficiently as possible.
To analyze where the problem is, we need to step back to the driving strategy. To improve their competitive position, corporate leaders often define strategic goals such as improving return on capital deployed or improving margins. A positive change in these types of financial measures often indicates that a company is managing its business well. If margins continually rise then profits go up, stock prices rise, and shareholder wealth is created.
Once the corporate strategy is in place, it becomes the Manufacturing Leader’s responsibility to manage their performance in a manner that results in meeting the strategic goal. For example, if the goal is to increase margins, the Manufacturing Leader will look at ways to keep costs per unit under control and decrease them over time. This can be done by reducing the costs of raw materials, labour and energy. This brings us back to our previous discussion: Manufacturing Leaders need to look for the right places to invest their continuous improvement dollars, in order to achieve these strategic goals.

Leaders need to take effective action. Unfortunately, it is not completely clear what that effective action is. Their recourse is to fall back to rules of thumb or groping around in the dark. It becomes ‘hit’ or ‘miss’. The hope is to ‘hit’ more often than not; there has to be a better way.
In talking with manufacturers and looking at leading industry research, the inability to make the best investment decisions comes from a lack of visibility to the plant floor. Manufacturing Leaders understand the strategic goal but cannot see into the plant floor to take effective action. The plant is a ‘black box’, raw material, energy and labour go in, finished goods and scrap come out.
Collecting data manually and inputting it into ERP systems, Business Intelligence (BI) tools or spreadsheets is one attempt at seeing into the ‘black box’. Unfortunately the data results are is Aggregated, Inaccurate and Lagging; we call it “AILing,” as in “to cause pain”, “uneasiness”, or “feeling unwell.”

Aggregated data is a problem because the Manufacturing Leader cannot view details of what is actually happening. For example, the Manufacturing Leader may know exactly how much product his plants are producing and exactly how much money, in terms of raw material, labour, and energy, is being used, but that is all he knows. He cannot break it down any further, or determine the contribution to unit costs by shift, asset, product or operator. Manufacturing Leaders have the data but they lack the visibility to determine what the corrective course of action is to impact their key metrics.
Inaccurate data is a direct result of the data gathering process. Manually collected data cannot possibly be correct. Besides the normal input errors, manually collected data suffers from an immediacy problem, since when an operator is asked to log reasons for downtime and the time taken to resolve them; the data is often entered in at the end of the shift. This is due to the immediate problem of having a stopped machine super ceding the need to collect data accurately. The operator, rightly, needs to get the machine up and running as quickly as possible – accurate data be damned. The end result is that continuous improvement programs are using inaccurate data to determine where to invest in order to meet strategic objectives. Unfortunately, inaccurate data means investment decisions in the wrong programs, causing the return on the manufacturer’s investment to suffer. We call this chasing Continuous Improvement Ghosts.
Lagging data is money poured down the drain. Even if the data is accurate, by the time the Manufacturing Leader sees the data, it is too late to do anything about the problem. The money has been lost, swept away at the end of the day. What is needed is a way to get the right data into the hands of Manufacturing Leaders and their staff in real-time, to correct a problem as it is happening. If you are waiting for the end of the shift, the end of the day, the end of the week or heaven forbid, the end of the month; it is too late. The money is lost.

In order to meet the financial strategic goals established by the corporation, Manufacturing Leaders need the right visibility to determine what the effective action needs to be. The key to this, is having visibility directly into the plant through accurate, real-time, high resolution information. Manufacturing Leaders need to see into the ‘black box,’ that is their plants, and shine a light directly on the problem areas to eliminate them.
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George Dalle AveGeorge Dalle Ave is the Director of Solutions Development at Shoplogix Inc. |
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Fareva rolls out Shoplogix™ Plantnode® across its contract packaging operations
In the competitive world of contract manufacturing, reducing costs, improving efficiencies and maintaining margins is essential. Leading European contract cosmetic and pharmaceutical manufacturer, Fareva, is committed to improving productivity at its operations with a Continuous Improvement program supported by Shoplogix™ Performance Management Solution Plantnode®. “There’s more and more pressure from our customers to cut costs, decrease the lead time and improve the service level,” says Marc Spiniella, Fareva’s Continuous Improvement and Methods Director. “If we want to lower costs, we really need to be extremely efficient in our manufacturing. You cannot improve performance if you don’t measure it.”
That’s where Plantnode comes in. The Plantnode Performance Suite provides manufacturers with an accurate, uniform and automated source of plant level performance data which is critical to strategic and operational decision making. At Fareva, Plantnode is being used to measure run speed, downtime, OEE, scraps helping to uncover opportunities for improvement. “This project is an important step for Fareva in our goal to achieve ‘industrial excellence’,” says Spiniella.
ABOUT FAREVA
Fareva is a high-volume contract manufacturer in cosmetics, pharmaceuticals and household goods. The family-owned business, which employs 5,000 people at 27 plants in Europe and around the world, offers customers impeccable service by providing tailored R&D, production and packaging facilities. Fareva has more than 800 customers worldwide. For more information about Fareva, visit the company’s web site at www.fareva.com.
What You Don’t Know Can Hurt You – Manufacturing Software
Posted by jhyam in Machine Truth Blog Tuesday, 2 November 2010 18:14 1 Comment
In some cases “ignorance is bliss,” but when it comes to running a lean and profitable manufacturing operation, not knowing the truth can greatly hinder your business. Some manufacturers feel they have a good pulse on plant metrics. Manually recorded data (pen & paperr), provides them with OEE, Downtime and Productivity measurements. The reality is when plants move to an automated data collection process, it tells the opposite of what you thought.
Our research shows that manually collected data can lead to the wrong continuous improvement decisions. In the process of automating plant floor data collection for our customers, a common theme we hear is that their manually collected data had led them to believe the machines were not running fast enough, so obviously they asked their operators to run faster. The automated data actually showed there was a lot of unrecorded downtime, so rather than address the real problem of down time they were focusing on the wrong area. We see this time and again – don’t continue to chase ‘CI ghosts!’ Don’t focus your valuable CI dollars in the wrong area!

Building from Machine Truth
Posted by gdalleave in Machine Truth Blog Wednesday, 22 September 2010 03:30 No Comments
Machine TruthTM is very simply the automated gathering of data directly from the factory floor machine in a manner that accurately describes what that machine is doing at that time. Types of Machine TruthTM data include the run speed, production count, scrap count, etc. Machine TruthTM can be gathered from sensors or directly from the PLC. The important thing is that it is automatically gathered, it is accurate and unbiased, and it is the absolute truth of what the machine is doing at all times.
Why is this important? Often times we hear from Plant Managers that they know what is going on at the factory floor because they gather data manually and record it in their ERP system or their Excel Spreadsheet for processing. They feel this gives them the visibility they need. Unfortunately they are wrong. Our experience has been that manually collected data is invariably inaccurate and this inaccuracy is costing the plants real money.
Here is a straight forward example. This diagram shows what was collected by the operator – the blue area is the set up time, the green the time running time and the red the downtime. Now the production manager realized they were not producing what they should have been. His conclusion was that they were not running fast enough. So he asked his team to run the machines faster.

In this next diagram, the automatically collected data, for the exact same time period, is shown. The difference is immediate. The setup time was longer; there same two major areas of downtime are visible but more importantly there were a number of smaller slivers of downtime that were not recorded. There problem was not run speed, it was downtime. This customer was spending real CI dollars on trying to improve in the wrong area. They were spending money on improving run speed http://www.shoplogix.com/wp-admin/post.php?post=768&action=edit when they should have been focused on downtime. They were chasing CI ghosts.

Why was the incorrect data manually recorded? Was it the operator deliberately attempting to protect himself? Possibly, but this hasn’t been our experience. Another plant was in a similar situation. They were packaging gum and they believed they could produce more but were unsure as to why they could not. In a similar manner to the above, they collect data automatically and found they had more downtime than expected – their shift was littered with slivers of downtime. When the operator was approached as to why he did not record these slivers of downtime, he responded it was because the machine jams and it had always jammed and he never recorded it because he thought that was just how the machine operated. When they investigated as to why it was jamming, they determined it was because the gum was too big. The plant manager moved up the line to ask why they were making the gum too big. The operator responded that they were making the gum to the specification provided. When asked if they could make the specification tighter, the simple answer was, yes of course. The result: the slivers of downtime disappeared and production increased. Machine Truth TM provides the visibility necessary to make the right decision.
Having Machine Truth TM enables key personnel to ask the right questions and to stop spending CI dollars in wrong area.
Shoplogix Enables Robust OEE and Labour Analysis with Plantnode® Enhancements
Posted by trobertson in News Room Wednesday, 30 June 2010 04:48 2 Comments
In our ongoing commitment to helping manufacturers improve operational efficiency and bottom line savings, we are pleased to announce the release of Plantnode® Enterprise 1.1 and Plantnode® 11.6.
The Plantnode® Performance Suite supplies real-time Machine TruthTM data, allowing manufacturing companies to base strategic and operational decisions on reliable and truthful production data. Plantnode Enterprise brings operational excellence to the entire corporation by providing standardized visibility into all assets.
Reporting Enhancements:
Our proprietary OEE Rollup Reporting is enhanced to to better include the unique characteristics of individual jobs and machines. Plantnode’s innovative algorithms provides you with the best understanding of OEE across all your assets.

Expected production can be compared against actual production to ensure standards are being met allow you to determine the best place to invest your continuous improvement dollars.

Labour Analysis reporting shows production per man hour to give a clear understanding of production costs.

Standardized company-wide reporting with “Favourites Enhancements”:
We are now making it even easier for multi-plant manufacturers to deploy standards across the entire organization with enhanced ‘favourites sharing’, report bookmarking and import / export capabilities which make it easy to deploy chosen reports across multiple machines, areas and plants.

