Typically, monitoring quality characteristics of very personalized products is a difficult task due to the lack of experimental data. This is the typical case of processes where the production volume continues to shrink due to the growing complexity and customization of products, thus requiring low-volume productions. This paper presents a novel approach to statistically monitor Defects-Per-Unit (DPU) of assembled products based on the use of defect prediction models. The innovative aspect of such DPU-chart is that, unlike conventional SPC charts requiring preliminary experimental data to estimate the control limits (phase I), it is constructed using a predictive model based on a priori knowledge of DPU. This defect prediction model is base...
Due to the character of the original source materials and the nature of batch digitization, quality ...
Due to the character of the original source materials and the nature of batch digitization, quality ...
We present a case study in monitoring a high-volume production process with a high yield. Testing th...
The prediction of defects occurring during manufacturing processes is one of the strategies to be im...
Abstract Assembly processes in low-volume productions, i.e., single-units or small-sized-lots, are o...
The increasing complexity of manufacturing processes requires even more accurate quality inspections...
In many processes and, in particular, those related to electronics packaging and assembly, the amoun...
Recent advances in process monitoring technology have introduced an influx of exceptionally large da...
Product metrics, such as size or complexity, are often used to identify defect-prone parts or to foc...
In the manufacturing field, the assembly process heavily affects product final quality and cost. Spe...
YesQuality control has long been one of the most challenging fields of manufacturing. The developmen...
Manufacturing companies are increasingly focused on producing high-quality, fault-free products that...
Purpose – The purpose of this paper is to develop a statistical control chart based model for ear...
STRUCTURED ABSTRACT Purpose – Defining a method for evaluating the robustness of models for defecti...
This paper presents a methodology to diagnose sources of dimensional variation for compliant parts f...
Due to the character of the original source materials and the nature of batch digitization, quality ...
Due to the character of the original source materials and the nature of batch digitization, quality ...
We present a case study in monitoring a high-volume production process with a high yield. Testing th...
The prediction of defects occurring during manufacturing processes is one of the strategies to be im...
Abstract Assembly processes in low-volume productions, i.e., single-units or small-sized-lots, are o...
The increasing complexity of manufacturing processes requires even more accurate quality inspections...
In many processes and, in particular, those related to electronics packaging and assembly, the amoun...
Recent advances in process monitoring technology have introduced an influx of exceptionally large da...
Product metrics, such as size or complexity, are often used to identify defect-prone parts or to foc...
In the manufacturing field, the assembly process heavily affects product final quality and cost. Spe...
YesQuality control has long been one of the most challenging fields of manufacturing. The developmen...
Manufacturing companies are increasingly focused on producing high-quality, fault-free products that...
Purpose – The purpose of this paper is to develop a statistical control chart based model for ear...
STRUCTURED ABSTRACT Purpose – Defining a method for evaluating the robustness of models for defecti...
This paper presents a methodology to diagnose sources of dimensional variation for compliant parts f...
Due to the character of the original source materials and the nature of batch digitization, quality ...
Due to the character of the original source materials and the nature of batch digitization, quality ...
We present a case study in monitoring a high-volume production process with a high yield. Testing th...