[1] Ahmed T (2007) 6.2.11.1 Phase Behavior of Waxes. Equations of State and PVT Analysis-Applications for Improved Reservoir Modeling.Houston: Gulf Publishing Company 498
[2] Al Shakhs MH, Libby C, Chau KJ, Molla S, Sieben VJ (2023) Wax appearance temperature in crude oils measured by surface plasmon resonance. Petroleum Science and Technology 43(4): 408-425. https://doi.org/10.1080/10916466.2023.2293247
[3] Bangert P (2021) 3.3.3 Support Vector Machines. Machine Learning and Data Science in the Oil and Gas Industry-Best Practices, Tools, and Case Studies, Alpharetta: Elsevier 48-49. https://doi.org/10.1016/B978-0-12-820714-7.00003-0
[4] Benamara C, Gharbi K, Nait Amar M, Hamada B (2020) Prediction of wax appearance temperature using artificial intelligent techniques. Arabian Journal for Science and Engineering 45(2): 1319-1330. https://doi.org/10.1007/s13369-019-04290-y
[5] Bekkar M, Djemaa HK, Alitouche TA (2013) Evaluation measures for models assessment over imbalanced data sets. Journal of Information Engineering and Applications 3(10): 28-31
[6] Bian XQ, Huang JH, Wang Y, Liu YB, Kaushika Kasthuriarachchi DT, Huang LJ (2019) Prediction of wax disappearance temperature by intelligent models. Energy & Fuels 33(4): 2934-2949. https://doi.org/10.1021/acs.energyfuels.8b04286
[7] Blanco M, Villarroya I (2002) NIR spectroscopy: a rapid-response analytical tool. TrAC Trends in Analytical Chemistry 21(4): 240-250. https://doi.org/10.1016/S0165-9936(02)00404-1
[8] Broadhurst DI, Kell DB (2006) Statistical strategies for avoiding false discoveries in metabolomics and related experiments. Metabolomics 2(4): 171-196. https://doi.org/10.1007/s11306-006-0037-z
[9] Chen Y, Zhou XS, Huang TS (2001) One-class SVM for learning in image retrieval. Proceedings 2001 international conference on image processing (Cat. No. 01CH37205). Piscataway: IEEE 34-37. https://doi.org/10.1109/ICIP.2001.958946
[10] Ciaburro G, Joshi P (2019) 1.6 Normalization. Python Machine Learning Cookbook (2nd Edition) 19
[11] Cohen G, Hilario M, Sax H, Hugonnet S, Pellegrini C, Geissbuhler A (2004) An application of one-class support vector machines to nosocomial infection detection. Studies in Health Technology and Informatics 107(Pt 1): 716-720
[12] Coutinho JA, Daridon JL (2005) The limitations of the cloud point measurement techniques and the influence of the oil composition on its detection. Petroleum Science and Technology 23(9-10): 1113-1128. https://doi.org/10.1081/LFT-200035541
[13] Cortes C, Vapnik V (1995) Support-vector networks. Machine Learning 20(3): 273-297. https://doi.org/10.1007/BF00994018
[14] de Oliveira MCK, Teixeira A, Vieira LC, de Carvalho RM, de Carvalho ABM, do Couto BC (2012) Flow assurance study for waxy crude oils. Energy & Fuels 26(5): 2688-2695. https://doi.org/10.1021/ef201407j
[15] Ding Z (2011) Diversified ensemble classifiers for highly imbalanced data learning and its application in bioinformatics. Atlanta: Georgia State University 1-18
[16] ExxonMobil (2022) ISO 8217 Marine Fuel Characteristics Definitions. ExxonMobil. Available at: ISO 8217 marine fuel oil characteristic definitions ExxonMobil Marine (Accessed: 16 Sept 2022)
[17] Fanali S, Haddad PR, Poole CF, Riekkola M-L (2017) 21.3.3 Normalization. Liquid Chromatography-Fundamentals and Instrumentation, Volume 1 (2nd Edition) 518-519
[18] Fletcher T (2009) Support vector machines explained. Tutorial Paper 1-19
[19] Guerbai Y, Chibani Y, Hadjadji B (2014) The effective use of the One-Class SVM classifier for reduced training samples and its application to handwritten signature verification. 2014 international conference on multimedia computing and systems (ICMCS). Piscataway: IEEE 362-366
[20] Huang J, Romero-Torres S, Moshgbar M (2010) Practical considerations in data pre-treatment for NIR and raman spectroscopy. American Pharmaceutical Review. http://www.americanpharmaceuticalreview.com/Featured-Articles/116330-Practical-Considerations-in-Data-Pretreatment-for-NIR-and-Raman-Spectroscopy
[21] Japper-Jaafar A, Bhaskoro PT, Mior ZS (2016) A new perspective on the measurements of wax appearance temperature: Comparison between DSC, thermomicroscopy and rheometry and the cooling rate effects. Journal of Petroleum Science and Engineering 147: 672-681. https://doi.org/10.1016/j.petrol.2016.09.041
[22] Kok MV, Létoffé JM, Claudy P, Martin D, Garcin M, Volle JL (1996) Comparison of wax appearance temperatures of crude oils by differential scanning calorimetry, thermomicroscopy and viscometry. Fuel 75(7): 787-790. https://doi.org/10.1016/0016-2361(96)00046-4
[23] Kök MV, Varfolomeev MA, Nurgaliev DK (2018) Wax appearance temperature (WAT) determinations of different origin crude oils by differential scanning calorimetry. Journal of Petroleum Science and Engineering 168: 542-545. https://doi.org/10.1016/j.petrol.2018.05.045
[24] Kuligowski J, Pérez-Guaita D, Quintás G (2016) Application of discriminant analysis and cross-validation on proteomics data. Statistical Analysis in Proteomics 1362: 175-184. https://doi.org/10.1007/978-1-4939-3106-4_11
[25] Lammoglia T, de Souza Filho CR (2011) Spectroscopic characterization of oils yielded from Brazilian offshore basins: Potential applications of remote sensing. Remote Sensing of Environment 115(10): 2525-2535. https://doi.org/10.1016/j.rse.2011.04.038
[26] Lang R, Lu R, Zhao C, Qin H, Liu G (2020) Graph-based semisupervised one class support vector machine for detecting abnormal lung sounds. Applied Mathematics and Computation 364: 124487. https://doi.org/10.1016/j.amc.2019.06.001
[27] Li K, Wu M, Gu X, Yuen KF, Xiao Y (2020) Determinants of ship operators’ options for compliance with IMO 2020. Transportation Research Part D: Transport and Environment 86: 102459
[28] Li H, Chen H, Li Y, Chen Q, Fan X, Li S, Ma M (2023) Prediction of the optical properties in photonic crystal fiber using support vector machine based on radial basis functions. Optik 275: 170603. https://doi.org/10.1016/j.ijleo.2023.170603
[29] Liu Y (2020a) 3.1.2 Scenario 2-Determining the Optimal Hyperplane. Python Machine Learning by Example (3rd Edition). Birmingham: Packt Publishing 78-79
[30] Liu Y (2020b) 3.1.3 Scenario 3-Handling Outliers. Python Machine Learning by Example (3rd Edition). Birmingham: Packt Publishing 80-81
[31] Long J, Buyukozturk O (2014) Automated structural damage detection using one-class machine learning. Dynamics of Civil Structures. Luembourg: Springer 117-128. http://hdl.handle.net/1721.1/90062
[32] MathWorks (2022a) Cvpartition. Available at: Partition data for cross-validation-MATLAB-MathWorks United Kingdom (Accessed: 07 June 2022)
[33] MathWorks (2022b) Fitcsvm. Available at: Train support vector machine (SVM) classifier for one-class and binary classification-MATLAB fitcsvm-MathWorks United Kingdom (Accessed: June 06 2022)
[34] MathWorks (2023) OneClassSVM. Available at: One-class support vector machine (SVM) for anomaly detection-MATLABMathWorks United Kingdom (Accessed: 25 July 2023)
[35] MathWorks (2024) ResubPredict. Available at: resubPredict-Classify training data using trained classifier-MATLAB-MathWorks United Kingdom
[36] Martí L, Sanchez-Pi N, Molina JM, Garcia ACB (2015) Anomaly detection based on sensor data in petroleum industry applications. Sensors 15(2): 2774-2797. https://doi.org/10.3390/s150202774
[37] Mansourpoor M, Azin R, Osfouri S, Izadpanah AA (2019) Study of wax disappearance temperature using multi-solid thermodynamic model. Journal of Petroleum Exploration and Production Technology 9(1): 437-448. https://doi.org/10.1007/s13202-018-0480-1
[38] Meyer D, Leisch F, Hornik K (2003) The support vector machine under test. Neurocomputing 55(1-2): 169-186. https://doi.org/10.1016/S0925-2312(03)00431-4
[39] Nguyen TBT, Liao TL, Vu TA (2023) Anomaly detection using oneclass SVM for logs of juniper router devices. arXiv. https://doi.org/10.1007/978-3-030-30149-1_24
[40] Nie J, Dong Y, Zuo R (2022) Construction land information extraction and expansion analysis of Xiaogan City using one-class support vector machine. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 15: 3519-3532. https://doi.org/10.1109/JSTARS.2022.3170495
[41] Sandak J, Sandak A, Meder R (2016) Assessing trees, wood and derived products with near infrared spectroscopy: hints and tips. Journal of Near Infrared Spectroscopy 24(6): 485-505. https://doi.org/10.1255/jnirs.1255
[42] Schiilkop P, Burgest C, Vapnik V (1995) Extracting support data for a given task. Proceedings of the 1st International Conference on Knowledge Discovery & Data Mining. Reston: AIAA 252-257
[43] Schölkopf B, Platt JC, Shawe-Taylor J, Smola AJ, Williamson RC (2001) Estimating the support of a high-dimensional distribution. Neural Computation 13(7): 1443-1471. https://doi.org/10.1162/089976601750264965
[44] Seo K-K (2007) An application of one-class support vector machines in content-based image retrieval. Expert Systems with Applications 33(2): 491-498. https://doi.org/10.1016/j.eswa.2006.05.030
[45] Speight JG (2016) 5.4.6 Wax Analysis and Wax Appearance Temperature. Introduction to Enhanced Recovery Methods for Heavy Oil and Tar Sands (2nd Edition) 222-224
[46] Sun DW (2009) 4.3 Evaluation of Classification Performances. Infrared Spectroscopy for Food Quality Analysis and Control 92-93. https://doi.org/10.1016/B978-0-12-374136-3.X0001-6
[47] Taheri-Shakib J, Shekarifard A, Kazemzadeh E, Naderi H, Rajabi-Kochi M (2020) Characterization of the wax precipitation in Iranian crude oil based on wax appearance temperature (WAT): The influence of ultrasonic waves. Journal of Molecular Structure 1202: 127239. https://doi.org/10.1016/j.molstruc.2019.127239
[48] Thomas B (2019) An automatic test method for wax appearance temperatures of VLSFOs. Available at: Riviera-Whitepapers-An automatic test method for wax appearance temperature of VLSFOS (rivieramm.com) (Accessed: 24 October 2022)
[49] Thijssen P, Hadjiloucas S (2020) 12.3.2 Advances in Support Vector Machine Classifiers. State Estimation in Chemometrics-The Kalman Filter and Beyond (2nd Edition) 237. https://doi.org/10.1016/C2017-0-02894-X
[50] Uba E, Ikeji K, Onyekonwu M (2004) Measurement of wax appearance temperature of an offshore live crude oil using laboratory light transmission method. Nigeria Annual International Conference and Exhibition. Abuja Paper Number: SPE-88963-MS. https://doi.org/10.2118/88963-MS
[51] VPO (2019) VPS launches automatic test method for wax appearance temperature of VLSFOs. Available at: https://vpoglobal. com/2019/10/18/vps-launches-automatic-test-method-for-wax-appearancetemperature-of-vlsfos/(Accessed: 24 October 2022)
[52] Westerhuis JA, Hoefsloot HC, Smit S, Vis DJ, Smilde AK, van Velzen EJ, van Duijnhoven JP, van Dorsten FA (2008) Assessment of PLSDA cross validation. Metabolomics 4(1): 81-89. https://doi.org/10.1007/s11306-007-0099-6
[53] Xiao Y, Wang H, Xu W (2015) Parameter selection of Gaussian Kernel for one-class SVM. IEEE Transactions on Cybernetics 45(5): 941-953. https://doi.org/10.1109/TCYB.2014.2340433
[54] Yau K, Chow KP, Yiu SM (2020) Detecting attacks on a water treatment system using oneclass support vector machines. IFIP Advances in Information and Communication Technology. 16th Annual IFIP WG 11.9 International Conference on Digital Forensics, 2020. New Delhi: Springer Science and Business Media Deutschland GmbH 95-108
[55] Zhang S, Sun X, Liu C, Zhang H, Miao X, Zhao K (2022) Characterization of wax appearance temperature of model oils using laser-induced voltage. Physics of Fluids 34(6): 067123. https://doi.org/10.1063/5.0098727
[56] Zhang T (2001) An introduction to support vector machines and other kernel-based learning methods. AI Magazine 22(2): 103-103
[57] Zhao K, Li C, Xia X, Fang K, Yao B, Yang F (2022) Optical techniques for determining wax appearance temperature of waxy crude oil. 2021 International Conference on Optical Instruments and Technology: Optoelectronic Measurement Technology and Systems. Bellingham: SPIE 492-500. https://doi.org/10.1117/12.2620320