不同环境策略下加工行业人工智能模型的分析研究:工业4.0方法

Mohammad Seraj , Osama Khan , Mohd Zaheen Khan , Mohd Parvez , Bhupendra Kumar Bhatt , Amaan Ullah , Md Toufique Alam
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引用次数: 14

摘要

自工业4.0引入以来,制造业采用了更智能的自动化系统,使生产行业的各个方面之间能够更好地互连。工业4.0的应用提供了更好的性能和效率,提高了可靠性和鲁棒性。目前的研究提供了一个新的框架,考虑到工厂内工作环境的复杂性和灵活性,以前没有探索过。配备传感器和通信器的智能系统负责监测信息并预先检测故障,最终提高系统性能。此外,该研究还探讨了工业4.0设置中的预测性维护概念,该概念可以根据大气相关变化了解任何系统故障。本研究探索了一种新的算法,该算法考虑了基于不同环境条件的多源多样化数据集,同时为工业4.0实施中的预测性维护提供输入,从而提供了一种透明有效的制造方法。通过与之前的预测模型进行定量比较,工业4.0的框架得到了验证,并被认为是可行的,这些模型可以进一步预测工业机器未来的任何故障。利用自适应神经模糊推理系统(ANFIS)和响应面法(RSM)等智能混合预测技术开发的模型验证了生产率值。考虑的输入参数是大气条件,而所需的输出响应是机器的生产率。对两种加工模型的最小错误率三角隶属函数进行了评估。
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Analytical research of artificial intelligent models for machining industry under varying environmental strategies: An industry 4.0 approach

Since the introduction of Industry 4.0, manufacturing industries have adopted smarter automation systems enabling better interconnection amongst various aspects of the production industry. Application of industry 4.0 furnishes better performance and efficiency with improved reliability and robustness. The present research provides a novel framework which takes in consideration the complexity and flexibility of the working environment within the factory premises, previously not explored. Smart systems equipped with sensors and communicators are responsible for monitoring information and detecting malfunctions pre-hand which eventually boosts the system performance. Furthermore, the research explores the concept of predictive maintenance in industry 4.0 setup which apprehends any system failure based on atmospheric related changes. A novel algorithm is explored in this research which takes in consideration multisource diverse dataset based on varying environmental conditions and simultaneously furnishing inputs for predictive maintenance in Industry 4.0 implementation, thereby providing a transparent and effective manufacturing method. The framework for Industry 4.0 is validated and deemed feasible with quantitative comparison with previous prediction models which can further predict any future malfunctions in the industrial machines. The productivity values are validated with models developed with the help of intelligent hybrid prediction techniques such as adaptive neuro-fuzzy inference system (ANFIS) and response surface methodology (RSM). The input parameters considered are atmospheric conditions whereas the required output response is productivity of the machines. Error rates were evaluated lowest error rate for triangular membership functions for both machining models.

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