数据科学文献研究,以最大限度地提高制造业的性能

A. Sasongko
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引用次数: 2

摘要

当前,制造业面临着日益复杂多样的挑战。为了应对这一挑战,公司需要一种基于数据科学的方法来提高生产性能和效率。本文提出了数据科学在制造业中的概念和实施。介绍了数据科学中的几个重要概念,包括预测分析、规范分析和优化。它还强调了用于最大化生产性能和降低成本的算法和数据分析技术。在制造业中实施数据科学涉及数据收集、数据处理、数据分析和决策等步骤。本文讨论了数据科学在制造业中的几个用例,包括用于预测机器故障的预测分析、用于提高生产率的规范分析以及用于优化生产计划的优化。本文的研究结果表明,在制造业中实施数据科学可以显著提高生产绩效和效率。这篇科学论文为制造业中对将数据科学应用于生产过程感兴趣的从业者、研究人员和政策制定者提供了有用的见解
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Studi Literatur Konsep dan Implementasi Sains Data untuk Memaksimalkan Kinerja Industri Manufaktur
The manufacturing industry is currently faced with increasingly complex and diverse challenges. To address this challenge, companies need an approach based on data science to improve production performance and efficiency. This paper proposes the concept and implementation of data science in the manufacturing industry. Several important concepts in data science, including predictive analysis, prescriptive analysis, and optimization, are introduced. It also highlights the algorithms and data analysis techniques used to maximize production performance and reduce costs. Implementing data science in the manufacturing industry involves steps such as data collection, data processing, data analysis, and decision-making. Several use cases of data science in the manufacturing industry, including predictive analytics to forecast machine failures, prescriptive analysis to increase productivity, and optimization to optimize production schedules, are discussed here. The results of this scientific paper show that implementing data science in the manufacturing industry can significantly improve production performance and efficiency. This scientific paper provides useful insights for practitioners, researchers, and policymakers in the manufacturing industry who are interested in applying data science to production processes
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