In the “new normal” of manufacturing, a system for tracking accurate quality metrics and key performance indicators (KPIs) is essential. In several industry sectors, such as pharmaceutical and automotive, the tracking of every single data point along the manufacturing line is critical.
In the early years, some manufacturers created home-grown versions of MI-type data collection systems. But, the speed of change in manufacturing spurred by market demand and competitiveness, soon outgrew the capabilities and robust reporting requirements of the custom systems.
There were major problems with custom MI systems:
The end result was somewhat predictable. Manufacturers felt like they had been oversold and under-delivered on the use and results. Even though systems were touted as giving manufacturers more flexibility, the data collected didn’t provide any real-time action.
To realize the value of an MI after data is collected, it has to be displayed, turned into knowledge and then acted upon in order to contribute to a flexible manufacturing environment. When acted upon, the data a MI system collects helps drive business decisions that lead to a more flexible and productive facility.
Now, industry standard MI systems have had a resurgence and are developed to integrate with Enterprise Resource Planning (ERP) systems. Here’s what has happened:
Most proprietary systems are now being replaced with off-the-shelf industry standard software which allows full integration and robust reporting. Now,manufacturers have well supported options backed by the biggest players in the industry. Integrators and manufacturers can train their engineers for certification to ensure their investment is properly deployed and integrated into the overall manufacturing process.
As MI data helps to drive better business decisions, manufacturers will further invest in system upgrades and expansions, but MI is still not for everyone. Many manufacturers find themselves asking whether an MI system would make sense for their operation.
There is a mantra among engineers that many people are familiar with, “You can get something fast, good or cheap. Pick two.” The thought process is actually a formal concept known as the project management triangle which describes competing project qualities of scope (quality), time and cost. An MI system makes it possible to improve product quality on a line without sacrificing efficiency (speed). Even though quality doesn’t have to come at the expense of time with a MI system, the integration process is still an investment, so there is a cost. There are 3 increasingly common situations where manufacturers are finding an MI system is a worthwhile investment.
1.) Customers require quality reports. Traditionally, FDA regulated industries like pharmaceuticals, food and cosmetic goods required quality reports by law, but the marketplace is also driving trends in quality reporting. Manufacturers who create finished products, are requiring suppliers to provide quality reports especially in industries with potentially large liabilities such as the automotive industry.
2.) You need real-time KPI and OEE data. Those who adopt MI before their competition will have an advantage in the marketplace. MI systems enable real-time KPI and OEE data that give manufacturers new abilities like knowing exactly which products to produce on a specific line to maximize efficiency.
3.) You need real-time quality reports. Some manufacturers still warehouse products while waiting on lab testing and paper reports. With as MES you get test data before products leave the line. Quality is monitored during production so that if quality degrades, real-time adjustments can be made.
Manufacturing Intelligence is now a key component that manufacturers won’t leave out of operational performance planning. The improvements in operational efficiency that result from an MI are already beginning to fuel more widespread adoption. As manufacturers increase operational efficiency by using real-time quality, KPI and OEE data, their small MI projects quickly take on a life of their own.
We recently assisted an auto component manufacturer who was experiencing a common manufacturing problem. Over the years, they had developed a quality reporting system in-house. The reporting was detailed enough to meet their objectives, but maintaining and upgrading the patchworked MI system became costly and difficult. Upgrading to a standardized quality control and data tracking would give them the ability to meet their current objectives while offering a path for upgrades and enhancements well into the future. Upon completing their integration, they realized that they had received more than they bargained for.
The auto component manufacturer’s need for flexible quality reports is driven by their clients, automotive manufacturers. The automotive manufacturers needed to know if their specifications were met with each delivery, and each client needs reports with different information matching their specific parts. To make sure the reports were accurate, they also wanted to see how the quality reports were being generated and recorded.
The component manufacturer had a good (but proprietary) process in place to ensure quality was maintained. In each work cell, at each station where the components were assembled there were pass/fail tests and certain thresholds to meet. But the records were isolated to each work cell and quality control had no central reporting to monitor the production. Also the OEE data at each work cell was gathered by hand and compiled and published long after it was useful. They needed to centralize and automate their quality reporting to meet the automotive manufacturer’s needs and their OEE reporting to be able to make real time production decisions.
An industry standardized data collection and quality control management system was implemented. Data collection is now centrally automated and information is visible in real-time on dashboards and reports. The reports are robust, flexible and easy for operations to create or change as needed. The system is expandable and maintainable allowing the manufacturer to meet future needs. Quality standards are consistent and overall production has improved.
The solution we implemented for the automotive component manufacturer proved to be more successful than they had anticipated. Originally, they only had one specific production area in mind, but they quickly wanted to expand the system into other areas once they saw the results. Expanding the quality control data management solution across an entire facility or multiple facilities standardizes the architecture and increases operational efficiency even further. Quality monitoring and product adjustment is done in real-time, reducing product throwaway and ensuring customer satisfaction.
The new solution has had a fast impact on current operations and we are currently in the process of expanding the auto component manufacturer’s data collection for quality control across their facility. The solution will eventually be replicated in other plants. If you would like to see what an updated data management solution can do for you, give us a call today.
Manufacturing Intelligence (MI) projects improve manufacturing operations by turning data into actionable information that drives business results. An MI can provide unparalleled insight into manufacturing systems anddrive improvements in:
These projects have to deliver the promised business improvements if they’re going to have long-term support within an organization. Yet, many MI projects fall short of meeting expectations. There are too many examples of MI projects that provide manufacturers with reams of unusable data and little else.
Technological advances in automation, instrumentation and networking over the past several decades has resulted in a tremendous amount of diagnostic data being available for consumption. A typical manufacturing system can easily contain millions of data points. Sorting through this data to determine how to best use it creates unique challenges, including:
The reality of these challenges prompts the question: What can manufacturers do to extract maximum value out of manufacturing data?
A well-thought-out plan should focus on how to convert the data into useful information. But, who determines what information is useful? This in turn leads us to ask each manufacturer what information they require to enable better decision-making. This approach focuses the effort on the users’ needs, not the endless data points available.
A typical plan should consist of the following steps:
Manufacturing Intelligence is a critical tool for driving operational improvements, but committing to a disciplined plan for executing these projects is crucial for success. If you would like to learn more download our free whitepaper, Using Data-Driven Decisions to Improve Operations.