OCLGSYMLJan 27, 2020

Optimization of Passive Chip Components Placement with Self-Alignment Effect for Advanced Surface Mounting Technology

arXiv:2001.09612v113 citations
Originality Synthesis-oriented
AI Analysis

This work addresses misalignment issues in surface mount technology for electronic manufacturing, but it is incremental as it applies existing machine learning methods to a specific domain problem.

The study tackled the problem of predicting and optimizing the placement of passive chip components on printed circuit boards to minimize misalignment during reflow soldering, using machine learning algorithms like support vector regression and random forest regression, with results showing a minimum Euclidean distance of 25.57 μm from the ideal position after optimization.

Surface mount technology (SMT) is an enhanced method in electronic packaging in which electronic components are placed directly on soldered printing circuit board (PCB) and are permanently attached on PCB with the aim of reflow soldering process. During reflow process, once deposited solder pastes start melting, electronic components move in a direction that achieve their highest symmetry. This motion is known as self-alignment since can correct potential mounting misalignment. In this study, two noticeable machine learning algorithms, including support vector regression (SVR) and random forest regression (RFR) are proposed as a prediction technique to (1) diagnose the relation among component self-alignment, deposited solder paste status and placement machining parameters, (2) predict the final component position on PCB in x, y, and rotational directions before entering in the reflow process. Based on the prediction result, a non-linear optimization model (NLP) is developed to optimize placement parameters at initial stage. Resultantly, RFR outperforms in terms of prediction model fitness and error. The optimization model is run for 6 samples in which the minimum Euclidean distance from component position after reflow process from ideal position (i.e., the center of pads) is outlined as 25.57 (μm) regarding defined boundaries in model.

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