Time-series signal analysis of sustainable process intensification: Characterization method development of gas-solid fluidized bed hydrodynamics towards AI-enhanced algorithms

Yue Yuan , Silu Chen , Meifeng Li , Jesse Zhu , Lihui Feng , Tinghui Zhang , Kaiqiao Wu , Donovan Chaffart
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Abstract

Sustainable manufacturing is pivotal to promoting societal advancements that balance the progressive growth of human needs with the gradual exhaustion of natural resources and the environmental impact of current manufacturing technologies. Gas-solid fluidization, a key process intensification technique, has advanced sustainability for over a century. The complex nature of these systems has led to numerous analysis algorithms for assessing time-series signals critical to observe the fluidization hydrodynamics. This work reviews widely used signal analysis methods for processing the commonly-measured time-series signals for fluidization, specifically focusing on pressure drop and optical signals. Despite their widespread implementation, these methods have limited potential due to the limited visibility of optical signals and the inability of pressure signals to provide localized fluidization system information. Veritably, the traditional algorithms cannot consider all influencing factors and handle flawed, large-scale signals.
Artificial intelligence (AI) has emerged as a promising solution to overcome these limitations. Nevertheless, AI-enhanced methods for fluidization signal analysis are still nascent. This work emphasizes the potential of AI to enhance understanding of complex fluidization behavior, particularly heterogeneous agglomerations, through reviewing signal analysis methods from traditional numerical methods to AI-driven approaches. Furthermore, this study highlights the future steps necessary to adequately expand upon machine learning-based analysis methodologies and extends a call to arms for future research establishment within this field. These advancements will support the development of sustainable manufacturing technologies that balance industrial progress with environmental responsibility.

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可持续过程强化的时间序列信号分析:气固流化床流体力学向ai增强算法的表征方法发展
可持续制造是促进社会进步的关键,它平衡了人类需求的逐步增长与自然资源的逐渐枯竭以及当前制造技术对环境的影响。气固流化技术作为一项重要的工艺强化技术,已经发展了一个多世纪。这些系统的复杂性导致了许多分析算法来评估对观察流化流体动力学至关重要的时间序列信号。本文综述了常用的流态化时间序列信号处理方法,重点介绍了压降和光信号。尽管这些方法得到了广泛的应用,但由于光信号的可见性有限以及压力信号无法提供局部流化系统信息,这些方法的潜力有限。诚然,传统的算法无法考虑到所有的影响因素,也无法处理有缺陷的大规模信号。人工智能(AI)已经成为克服这些限制的有希望的解决方案。然而,人工智能增强的流化信号分析方法仍处于萌芽阶段。这项工作强调了人工智能的潜力,通过回顾从传统数值方法到人工智能驱动方法的信号分析方法,增强了对复杂流化行为的理解,特别是异质团聚。此外,本研究强调了充分扩展基于机器学习的分析方法所需的未来步骤,并为该领域未来的研究建立发出了呼吁。这些进步将支持可持续制造技术的发展,平衡工业进步与环境责任。
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