REAL-TIME STRUCTURAL ANALYSIS BASED ON MACHINE LEARNING FOR CUSTOM PRODUCT DESIGN: A CASE STUDY OF ORTHOPEDIC FIXATOR PRODUCT

Aji Digdoyo, A. Karno, Widi Hastomo, Agita Tunjungsari, Nada Kamilia, Indra Sari Kusuma Wardhana, Nia Yuningsih
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Abstract

Mass customization is related to increasing the balance between the needs of companies that are focused on customers on conditions of production flexibility and efficiency. Product adjustment according to customer needs can increase the company's competitiveness. However, special production processes and adjustments are time consuming and cost inefficient. Parametric product modeling is a fairly popular technique for dealing with this problem. However, it still has challenges related to the high cost of software and a workforce that has special expertise in the field of quality control. In addition, product-specific designs cannot be tested quickly, resulting in a long production time. This study proposes a machine learning (ML) method that aims to obtain a fast time structure to analyze the production of orthopedic fixators. This research process requires a collection of training data with product attributes, physical characteristics, quality, selected ML techniques, and determination of the appropriate set of hyperparameters. Optimization results were obtained using the gradient boosting method with a value of . With these results, the orthopedic fixation device can be used in the case study of developing this machine learning model.
基于机器学习的定制产品设计实时结构分析:以骨科固定架产品为例
大规模定制涉及到在生产灵活性和效率的条件下增加以客户为中心的公司需求之间的平衡。根据客户需求调整产品,增加公司的竞争力。然而,特殊的生产过程和调整既耗时又低成本。参数化产品建模是处理该问题的一种相当流行的技术。然而,它仍然面临着与软件的高成本和在质量控制领域具有特殊专业知识的劳动力相关的挑战。此外,特定产品的设计无法快速测试,导致生产时间长。本研究提出了一种机器学习(ML)方法,旨在获得快速的时间结构来分析骨科固定架的生产。该研究过程需要收集具有产品属性、物理特征、质量、选择的ML技术和确定适当的超参数集的训练数据。采用梯度增强法得到优化结果,其值为。有了这些结果,骨科固定装置可以用于开发该机器学习模型的案例研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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