The concept was invented in the 1950s at Toyota factories, as a management methodology to reduce waste and make production processes efficient and excellent. Specifically, 'waste' means the expense related to all those resources that have been used for purposes other than to create value for the customer.
The fundamental objective of Lean manufacturing is to optimize management by identifying six big losses:
Key Performance Indicators (KPIs) monitor the efficiency of production processes with the aim of increasing production and increasing corporate competitiveness, establishing what results are to be achieved through a precise marketing strategy.
Each company has different needs, which correspond to different strategies and KPIs chosen on the basis of the desired performance and the priorities identified.
In general, however, all performance indicators have four characteristics:
Moreover, three macro categories of KPIs can be identified, within which specific parameters can be chosen based on the needs of individual companies.
Let's look at them below:
Choosing the right indicators, and performing both qualitative and quantitative analysis, enables companies to add value to their processes, reducing waste and increasing efficiency.
In the era of digital manufacturing, monitoring the performance of machinery and plants takes on a decisive role. With the 4.0 interconnection of machines, getting data automatically and creating OEE KPI dashboards to analyze performance is easy. Not to do so would represent the loss of a competitive advantage, in terms of production efficiency, over competitors.
The OEE (Overall Equipment Effectiveness) is an indicator relating to the performance of operations in plants and productivity, it is expressed as a percentage and is used in different sectors and industries, making comparisons on different processes possible.
The general nature of the OEE makes it a useful parameter to understand if a plant is really productive, measuring how efficient and qualitative the various operations are performed. In summary, we can say that this KPI is the result of the multiplication of three factors:
The OEE indicator combines the parameter of speed with that of quality, that is, the percentage of parts/components produced without defects and in the planned time.
It is relatively easy to speed up production processes, but if a fast pace comes at a cost in terms of scrap, corrections or customer complaints, then this is more of a loss than a gain.
Slower production, with higher quality, is in fact more efficient, improving OEE.
To give an example and better understand the use of these metrics in percentages, a machine that has 90% availability, 95% performance, and a 98% quality rate will have an OEE of 83.79%.
In light of the above, tools that enable data to be collected in the field (on edge) and integrated with Enterpise Apps and/or in the Cloud are essential.
Alleantia ISC Software is the right solution!
Our oee data collection software will allow you to capture data from various, new or legacy, industrial devices/machinery and standardize it into the desired format to be ready-to-use by your enterprise information systems.
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