2024
DOI: 10.3390/pr12010221
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Enhancing LightGBM for Industrial Fault Warning: An Innovative Hybrid Algorithm

Shuai Li,
Nan Jin,
Azadeh Dogani
et al.

Abstract: The reliable operation of industrial equipment is imperative for ensuring both safety and enhanced production efficiency. Machine learning technology, particularly the Light Gradient Boosting Machine (LightGBM), has emerged as a valuable tool for achieving effective fault warning in industrial settings. Despite its success, the practical application of LightGBM encounters challenges in diverse scenarios, primarily stemming from the multitude of parameters that are intricate and challenging to ascertain, thus c… Show more

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Cited by 4 publications
(5 citation statements)
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“…The reliance on OpenCV equips the system with sophisticated tools for navigating diverse environmental conditions and capturing nuanced facial expressions, establishing a robust basis for understanding and interpreting the student's emotional states. The precision achieved in this initial step enhances the overall accuracy and effectiveness of the subsequent emotion classification process [22], [23], [24], [25].…”
Section: A Emotion Classification Systemmentioning
confidence: 94%
“…The reliance on OpenCV equips the system with sophisticated tools for navigating diverse environmental conditions and capturing nuanced facial expressions, establishing a robust basis for understanding and interpreting the student's emotional states. The precision achieved in this initial step enhances the overall accuracy and effectiveness of the subsequent emotion classification process [22], [23], [24], [25].…”
Section: A Emotion Classification Systemmentioning
confidence: 94%
“…This division ratio aims to ensure that the model has good generalization ability, while allowing us to fairly evaluate the performance of the model. The data normalisation we used is shown in Equation (35) and some of the data collection pages are shown in Figure 2.…”
Section: Data Sourcementioning
confidence: 99%
“…We chose the IPSO [15], GWO [34], and improved arithmetic optimization algorithm (SAOA) [35] as benchmark algorithms. These algorithms demonstrate an excellent performance.…”
mentioning
confidence: 99%
“…A feed loss (s1) XMEAS (6) Reactor feed rate (s6) IDV (7) C header pressure loss (s4) XMEAS (7) Reactor pressure IDV (8) A, B, C feed composition (s4) XMEAS (8) Reactor level IDV (9) D feed temperature (s2) XMEAS ( 9) Reactor temperature IDV (10) C feed temperature (s4) XMEAS (10) Purge rate (s9) IDV (11) Reactor cooling water inlet temperature XMEAS (11) Product separator temperature IDV (12) Condenser cooling water inlet temperature XMEAS (12) Product separator level IDV (13) Reaction kinetics XMEAS (13) Product separator pressure IDV (14) Reactor cooling water valve XMEAS ( 14) Product separator underflow (s10) IDV (15) Condenser cooling water valve XMEAS (15) Stripper level IDV (16) Unknown XMEAS (16) Stripper pressure IDV (17) Unknown XMEAS (17) Stripper underflow (s11) IDV (18) Unknown XMEAS (18) Stripper temperature IDV (19) Unknown XMEAS (19) Stripper steam flow IDV (20) Unknown XMEAS (20) Compressor work IDV (21) The valve for s4 was fixed at steady state XMEAS (21) Reactor cooling water outlet temperature XMEAS (22) Separator cooling water outlet temperature Input Variables XMEAS (23) Reactor feed analysis (s6) Comp. A Name Description XMEAS (24) Reactor feed analysis (s6) Comp.…”
Section: Process Faults Output Variablesmentioning
confidence: 99%
“…Neural networks [11] and fuzzy logic [12,13] are alternative approaches to FDI and pattern recognition that do not rely on explicit mathematical models. These techniques can be applied to both quantitative and qualitative models and have been successfully implemented in different practical applications [14][15][16]. Qualitative model approaches for FDI include techniques such as signed directed graph [17], fault tree [18], K-nearest neighbor [19], qualitative trend analysis [20,21], artificial immune systems [22], Bayesian networks [23], and hybrid strategies [24,25].…”
Section: Introductionmentioning
confidence: 99%