IIC Journal of Innovation 7th Edition | Page 25

Outcomes, Insights and Best Practices from IIC Testbeds: MQM Testbed process and maintain a non-intrusive approach to test the product; 2. An automated objective measure for quality check shall be used; 3. The result must be at least 30% better than the status quo. A LTERNATE S OLUTION It is typical that when a factory process is not significantly broken, it is often left intact as long as the throughput of the products met the minimum requirement: Changing the layout or moving the equipment around will cause direct impact on the production flow and production schedule. Although the team found outdated quality control processes were used to detect defects making it an obvious target for improvement, the design team felt a different tactic was needed to convince the client the change was necessary and that the new solution would greatly improve the status quo. The team was surprised to see the quality check of the whole process relied on the judgement from experienced professional examiners to listen to the noise when the air-conditioner was turned on at the end of the assembly line. The decision whether to pass or fail each air- conditioner was made by the listener’s subjective decision. Although the method looked obsolete, the client seemed to be content with a three-listener rotation team to perform the task. That made the proposed change more challenging as the new solution needed to be easily understood by the client and the results would be required to be significantly better. The only complaint the existing process drew was, sometimes, the fail/pass (faulty product being passed) rate was higher than normal and, as a result, the management and the logistic team was not happy when many products were returned after shipment. Furthermore, it is necessary to find a quick solution to meet the timeline of the MQM Testbed deliverable dates since three months had gone by. The task seemed straightforward, replacing the listeners with a machine, but the devil was in the details. Although the most discrete characteristic of the manufacturing lines involves welding, the new focus of the MQM Testbed was on improving the quality control through acoustics analysis and analytics of the end products. The core of the experimentation was around how IoT could be applied to this environment and how analytics for acoustics could improve the accuracy rate of correctly detection of defected products. The design team went back to the lab and start redesigning the MQM Testbed based on three requirements: There are three major sections in the IIRA: sensors and sensory network, analytic platform and management. The MQM Testbed uses an analytic engine to perform the computation and assessment of quality control to determine the pass/fail of the product. Data must be collected in the field to train the artificial intelligence (AI)-based analytic engine. The process needed to be fine-tuned to ensure it can be used for the design of the production line. While designing the MQM Testbed, picking up the acoustic signal and the data presentation for control and management were straightforward. However, it may have been problematic to find a useful analytic engine that can be trained for acoustic noise detection. 1. The testbed shall minimize the disruption of the current production Fortunately, there was an AI-based analytic engine solution, based on technology from - 24 - March 2018