[1] CHEN S B, LV N. Research evolution on intelligentized technologies for arc welding process [J]. Journal of Manufacturing Processes, 2014, 16(1): 109-122.
[2] RYAZANTSEV V I, FEDOSEEV V A. Metallurgical and technological porosity of aluminium alloys in arc welding [J]. Welding International, 2002, 16(4): 320-324.
[3] KUTSUNA M, YAN Q. Study on porosity formation in laser welds in aluminium alloys (Report 1): Effects of hydrogen and alloying elements [J]. Welding International, 1998, 12(12): 937-949.
[4] CHEN Q H, GE H L, YANG C L, et al. Study on pores in ultrasonic-assisted TIG weld of aluminum alloy [J]. Metals, 2017, 7(2): 53.
[5] XIAO R S, ZHANG X Y. Problems and issues in laser beam welding of aluminum-lithium alloys [J]. Journal of Manufacturing Processes, 2014, 16(2): 166-175.
[6] ALAKNANDA, ANAND R S, KUMAR P. Flaw detection in radiographic weld images using morphological approach [J]. NDT & E International, 2006, 39(1): 29-33.
[7] ZHANG Z F, CHEN H B, XU Y L, et al. Multisensorbased real-time quality monitoring by means of feature extraction, selection and modeling for Al alloy in arc welding [J]. Mechanical Systems and Signal Processing, 2015, 60/61: 151-165.
[8] MIRAPEIX J, RUIZ-LOMBERA R, VALDIANDE J J, et al. Defect detection with CCD-spectrometer and photodiode-based arc-welding monitoring systems [J]. Journal of Materials Processing Technology, 2011, 211(12): 2132-2139.
[9] LI Z Y, WANG B, DING J B. Detection of GTA welding quality and disturbance factors with spectral signal of arc light [J]. Journal of Materials Processing Technology, 2009, 209(10): 4867-4873.
[10] ZHAO Z, GUO Y T, BAI L F, et al. Quality monitoring in wire-arc additive manufacturing based on cooperative awareness of spectrum and vision [J]. Optik, 2019, 181: 351-360.
[11] YU H W, XU Y L, LV N, et al. Arc spectral processing technique with its application to wire feed monitoring in Al-Mg alloy pulsed gas tungsten arc welding [J]. Journal of Materials Processing Technology, 2013, 213(5): 707-716.
[12] YU H W, XU Y L, SONG J Q, et al. On-line monitor of hydrogen porosity based on arc spectral information in Al-Mg alloy pulsed gas tungsten arc welding [J]. Optics & Laser Technology, 2015, 70: 30-38.
[13] HUANG Y M, WU D, LV N, et al. Investigation of porosity in pulsed GTAW of aluminum alloys based on spectral and X-ray image analyses [J]. Journal of Materials Processing Technology, 2017, 243: 365-373.
[14] ZHANG Z F, YU H W, LV N, et al. Real-time defect detection in pulsed GTAW of Al alloys through online spectroscopy [J]. Journal of Materials Processing Technology, 2013, 213(7): 1146-1156.
[15] ZHANG Z F, YANG Z, REN W J, et al. Random forest-based real-time defect detection of Al alloy in robotic arc welding using optical spectrum [J]. Journal of Manufacturing Processes, 2019, 42: 51-59.
[16] SUN L X, YU H B. Automatic estimation of varying continuum background emission in laser-induced breakdown spectroscopy [J]. Spectrochimica Acta Part B: Atomic Spectroscopy, 2009, 64(3): 278-287.
[17] SUN X L, LIU M X, SIMA Z Q. A novel cryptocurrency price trend forecasting model based on LightGBM [J]. Finance Research Letters, 2020, 32: 101084.
[18] TANG M Z, ZHAO Q, DING S X, et al. An improved LightGBM algorithm for online fault detection of wind turbine gearboxes [J]. Energies, 2020, 13(4): 807.
[19] ZHANG Y Y, ZHU C F, WANG Q R. LightGBMbased model for metro passenger volume forecasting [J]. IET Intelligent Transport Systems, 2020, 14(13): 1815-1823.
[20] MA M H, ZHAO G, HE B S, et al. XGBoost-based method for flash flood risk assessment [J]. Journal of Hydrology, 2021, 598: 126382.
[21] CHEN K, CHEN H B, LIU L, et al. Prediction of weld bead geometry of MAG welding based on XGBoost algorithm [J]. International Journal of Advanced Manufacturing Technology, 2019, 101(9/10/11/12): 2283-2295.
[22] HUANG G M, WU L F, MA X, et al. Evaluation of CatBoost method for prediction of reference evapotranspiration in humid regions [J]. Journal of Hydrology, 2019, 574: 1029-1041.
[23] LEE S, VO T P, THAI H T, et al. Strength prediction of concrete-filled steel tubular columns using Categorical Gradient Boosting algorithm [J]. Engineering Structures, 2021, 238: 112109.
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