Transfer Learning for Detection of Combustion Instability Via Symbolic Time-Series Analysis

IF 1.3 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS
C. Bhattacharya, A. Ray
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引用次数: 2

Abstract

Transfer learning (TL) is a machine learning (ML) tool where the knowledge, acquired from a source domain, is “transferred” to perform a task in a target domain that has (to some extent) a similar setting. The underlying concept does not require the ML method to analyze a new problem from the beginning, and thereby both the learning time and the amount of required target-domain data are reduced for training. An example is the occurrence of thermoacoustic instability (TAI) in combustors, which may cause pressure oscillations, possibly leading to flame extinction as well as undesirable vibrations in the mechanical structures. In this situation, it is difficult to collect useful data from industrial combustion systems, due to the transient nature of TAI phenomena. A feasible solution is the usage of prototypes or emulators, like a Rijke tube, to produce largely similar phenomena. This paper proposes symbolic time-series analysis (STSA)-based TL, where the key idea is to develop a capability of discrimination between stable and unstable operations of a combustor, based on the time-series of pressure oscillations from a data source that contains sufficient information, even if it is not the target regime, and then transfer the learnt models to the target regime. The proposed STSA-based pattern classifier is trained on a previously validated numerical model of a Rijke-tube apparatus. The knowledge of this trained classifier is transferred to classify similar operational regimes in: (i) an experimental Rijke-tube apparatus and (ii) an experimental combustion system apparatus. Results of the proposed TL have been validated by comparison with those of two shallow neural networks (NNs)-based TL and another NN having an additional long short-term memory (LSTM) layer, which serve as benchmarks, in terms of classification accuracy and computational complexity.
基于符号时间序列分析的燃烧不稳定性检测迁移学习
迁移学习(TL)是一种机器学习(ML)工具,其中从源领域获得的知识被“转移”到具有(某种程度上)相似设置的目标领域中执行任务。底层概念不需要机器学习方法从一开始就分析新问题,从而减少了学习时间和所需的目标域数据量。一个例子是燃烧室中热声不稳定性(TAI)的发生,它可能引起压力振荡,可能导致火焰熄灭以及机械结构中的不良振动。在这种情况下,由于TAI现象的瞬态性质,很难从工业燃烧系统中收集有用的数据。一个可行的解决方案是使用原型或模拟器,如Rijke管,来产生大致相似的现象。本文提出了基于符号时间序列分析(STSA)的TL,其关键思想是开发一种区分燃烧器稳定和不稳定运行的能力,基于来自包含足够信息的数据源的压力振荡时间序列,即使它不是目标区域,然后将学习到的模型转移到目标区域。提出的基于stsa的模式分类器在Rijke-tube装置的先前验证的数值模型上进行训练。这种训练分类器的知识被转移到分类相似的操作制度:(i)实验rijke管装置和(ii)实验燃烧系统装置。通过与两种基于浅层神经网络(NN)和另一种具有额外长短期记忆(LSTM)层的神经网络(作为基准)在分类精度和计算复杂度方面的比较,验证了所提出的TL的结果。
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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来源期刊
CiteScore
3.90
自引率
11.80%
发文量
79
审稿时长
24.0 months
期刊介绍: The Journal of Dynamic Systems, Measurement, and Control publishes theoretical and applied original papers in the traditional areas implied by its name, as well as papers in interdisciplinary areas. Theoretical papers should present new theoretical developments and knowledge for controls of dynamical systems together with clear engineering motivation for the new theory. New theory or results that are only of mathematical interest without a clear engineering motivation or have a cursory relevance only are discouraged. "Application" is understood to include modeling, simulation of realistic systems, and corroboration of theory with emphasis on demonstrated practicality.
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