Abstract

In the industrial production scenario, the goal of engineering is focused on the continuous improvement of the process performance by maximizing the effectiveness of the manufacturing and the quality of the products. In order to address these aims, the advanced robust process optimization techniques have been designed, implemented, and applied to the manufacturing process of ultrasound (US) probes for medical imaging. The suggested guideline plays a key role for improving a complex multi-stage manufacturing process; it consists of statistical methods applied for improving the product quality, and for achieving a higher productivity, jointly with engineering techniques oriented to problem solving. Starting from the Six Sigma approach, the high definition of the production process was analyzed through a risk analysis, and thus providing a successful implementation of the PDCA (plan-do-check-act) methodology. Therefore, the multidisciplinary analysis is carried out by applying statistical models and by detecting the latent failures by means of NDT (non-destructive testing), i.e., scanning acoustic microscopy (SAM). The presented approach, driven by the statistical analysis, allows the engineers to distinguish the potential weak points of the complex manufacturing, in order to implement the corrective actions. Furthermore, in this paper we illustrate this approach by considering a pilot study, e.g., a process of US probes for medical imaging, by detailing all the guideline steps.

Highlights

  • IntroductionAdvanced robust process optimization techniques are widely adopted in the manufacturing field, in order to enhance the productivity and to improve the quality of the processes by limiting the effect of fluctuations, noises, and scraps

  • The robust process optimization will be useful for improving the quality of the products, and for measuring the responses that are relevant for improving the manufacturing process

  • The analysis proposes a ranking of risk levels based on the combination between fault tree analysis (FTA) and the PFMEA study (multiplication of occurrence (O), detection (D), and severity (S) devoted to the general evaluation of risk priority number, RPN), and considering the internal knowledge of facing the process stage, the workers’ background

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Summary

Introduction

Advanced robust process optimization techniques are widely adopted in the manufacturing field, in order to enhance the productivity and to improve the quality of the processes by limiting the effect of fluctuations, noises, and scraps. Every existing company must be able to maintain and increase the efficiency and the effectiveness with the aim to maintain their competency and competitiveness at high level [2]. Quality control methodologies, such as Six Sigma, created at Motorola in the 1980s, have been adopted by leading companies throughout the world for quality and process improvement aiming to enhance an organization’s competitiveness. Six Sigma [3,4,5]

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