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Predicting catastrophic temperature changes based on past events via a CNN-LSTM regression mechanism

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Abstract

The modelling and prediction of extreme temperature changes in enclosed compartments is a domain with applications ranging from residential fire alarms, industrial temperature sensors to search and rescue personnel safety systems. The spread of fire in enclosed compartments is a highly uncertain and nonlinear process. Hence, in safety-critical cases, any false negatives pose a serious threat to the safety of individuals such as firefighters that are engaged in rescue activities. This work aims to model the nonlinear fire spread behaviour as a temporal, deep learning-based regressive methodology. The objective is to efficiently identify abrupt and extreme temperature changes that often result in increases of 300+ °C. A major challenge in such time-series models is that of learning from historic time-series samples which are known to suffer from high noise levels, outliers and data imbalance. This work contributes on the development of a convolutional neural network (CNN)-long short-term memory (LSTM) methodology to handle temperature data originating from body-mounted and fixed sensors and develop a temperature increase warning mechanism. The main contribution exploits the contextualisation ability of CNN-LSTM to predict temperature changes in windows of 5–120 s. The model identifies the spatial temperature change patterns via a CNN encoder, which are then fed into an LSTM network. This regression mechanism is trained and validated against a set of unique fire spread conditions and involved live tests ranging from containers to residential and industrial units. The model’s performance was evaluated with MAPE sensitivity analysis against data originating from body-mounted sensors and third-party NIST datasets. The outcome showed an error ranging from 0.89 to 2.05% to 5.46% and 6.23%, respectively. The model efficacy was also evaluated against a range of input–output temperature ranges from 5, 30 to 120-s windows and showed a FN rate of 2.15% for pre-alarm-to-normal and 3.11% for alarm-to-pre-alarm cases in body-mounted sensors and a higher FN rate of 5.14% reported for pre-alarm-to-normal case for the raised platfor sensor tests.

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References

  1. Tziakos I, Cavallaro A, Xu L-Q (2010) Event monitoring via local motion abnormality detection in non-linear subspace. Neurocomputing 73(10–12):1881–1891

    Article  Google Scholar 

  2. Suo Q et al (2017) A multi-task framework for monitoring health conditions via attention-based recurrent neural networks. In: AMIA annual symposium proceedings. vol 2017, p 1665

  3. Chen X, Wang P, Hao Y, Zhao M (2018) Evidential KNN-based condition monitoring and early warning method with applications in power plant. Neurocomputing 315:18–32

    Article  Google Scholar 

  4. Canizo M, Triguero I, Conde A, Onieva E (2019) Multi-head CNN–RNN for multi-time series anomaly detection: an industrial case study. Neurocomputing 363:246–260

    Article  Google Scholar 

  5. Killourhy KS, Maxion RA (2009) Comparing anomaly-detection algorithms for keystroke dynamics. In: 2009 IEEE/IFIP international conference on dependable systems & networks, pp 125–134

  6. Siris VA, Papagalou F (2004) Application of anomaly detection algorithms for detecting SYN flooding attacks. In: IEEE global telecommunications conference, 2004. GLOBECOM’04, vol 4, pp 2050–2054

  7. Qayyum A, Ahmad I, Mumtaz W, Alassafi MO, Alghamdi R, Mazher M (2020) Automatic segmentation using a hybrid dense network integrated with an 3D-atrous spatial pyramid pooling module for computed tomography (CT) imaging. IEEE Access 8:169794–169803

    Article  Google Scholar 

  8. Longadge R, Dongre S (2013) Class imbalance problem in data mining review. arXiv Prepr. arXiv1305.1707

  9. Kang P, Cho S (2006) EUS SVMs: Ensemble of under-sampled SVMs for data imbalance problems. In: International conference on neural information processing. pp 837–846

  10. Xu K, Xia M, Mu X, Wang Y, Cao N (2018) Ensemblelens: ensemble-based visual exploration of anomaly detection algorithms with multidimensional data. IEEE Trans Vis Comput Graph 25(1):109–119

    Article  Google Scholar 

  11. McNeish DM (2014) Modeling sparsely clustered data: design-based, model-based, and single-level methods. Psychol Methods 19(4):552

    Article  Google Scholar 

  12. James GM, Sugar CA (2003) Clustering for sparsely sampled functional data. J Am Stat Assoc 98(462):397–408

    Article  MathSciNet  MATH  Google Scholar 

  13. Tenenbaum JB, De Silva V, Langford JC (2000) A global geometric framework for nonlinear dimensionality reduction. Science (80-.) 290(5500):2319–2323

    Article  Google Scholar 

  14. Tu JV (1996) Advantages and disadvantages of using artificial neural networks versus logistic regression for predicting medical outcomes. J Clin Epidemiol 49(11):1225–1231

    Article  Google Scholar 

  15. Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural Comput 9(8):1735–1780

    Article  Google Scholar 

  16. Cong J, Xiao B (2014) Minimizing computation in convolutional neural networks. In: International conference on artificial neural networks. pp 281–290

  17. Gu J et al (2018) Recent advances in convolutional neural networks. Pattern Recognit 77:354–377

    Article  Google Scholar 

  18. Ji S, Xu W, Yang M, Yu K (2012) 3D convolutional neural networks for human action recognition. IEEE Trans Pattern Anal Mach Intell 35(1):221–231

    Article  Google Scholar 

  19. Molchanov P, Gupta S, Kim K, Kautz J (2015) Hand gesture recognition with 3D convolutional neural networks. In: Proceedings of the IEEE conference on computer vision and pattern recognition workshops. pp 1–7

  20. Payan A, Montana G (2015) Predicting alzheimer’s disease: a neuroimaging study with 3D convolutional neural networks. arXiv Prepr. arXiv1502.02506

  21. Dou Q et al (2016) Automatic detection of cerebral microbleeds from MR images via 3D convolutional neural networks. IEEE Trans Med Imaging 35(5):1182–1195

    Article  Google Scholar 

  22. Jiménez J, Skalic M, Martinez-Rosell G, De Fabritiis G (2018) K deep: protein–ligand absolute binding affinity prediction via 3d-convolutional neural networks. J Chem Inf Model 58(2):287–296

    Article  Google Scholar 

  23. Ji S, Zhang C, Xu A, Shi Y, Duan Y (2018) 3D convolutional neural networks for crop classification with multi-temporal remote sensing images. Remote Sens 10(1):75

    Article  Google Scholar 

  24. Garcia-Garcia A, Gomez-Donoso F, Garcia-Rodriguez J, Orts-Escolano S, Cazorla M, Azorin-Lopez J (2016) Pointnet: a 3d convolutional neural network for real-time object class recognition. In: 2016 International joint conference on neural networks (IJCNN). pp 1578–1584

  25. Huang AS et al (2017) Visual odometry and mapping for autonomous flight using an RGB-D camera. In: Christensen HI, Khatib O (eds) Robotics Research. Springer, New York, pp 235–252

    Chapter  Google Scholar 

  26. K Sozykin S Protasov A Khan R Hussain J Lee (2018) Multi-label class-imbalanced action recognition in hockey videos via 3D convolutional neural networks. In: 2018 19th IEEE/ACIS international conference on software engineering, artificial intelligence, networking and parallel/distributed computing (SNPD). pp 146–151

  27. Wolf T, Babaee M, Rigoll G (2016) Multi-view gait recognition using 3D convolutional neural networks In: 2016 IEEE international conference on image processing (ICIP). pp 4165–4169

  28. Sakkos D, Liu H, Han J, Shao L (2018) End-to-end video background subtraction with 3d convolutional neural networks. Multimed Tools Appl 77(17):23023–23041

    Article  Google Scholar 

  29. Rußwurm M, Korner M (2017) Temporal vegetation modelling using long short-term memory networks for crop identification from medium-resolution multi-spectral satellite images. In: Proceedings of the IEEE conference on computer vision and pattern recognition workshops. pp 11–19

  30. Khaki S, Wang L, Archontoulis SV (2020) A cnn-rnn framework for crop yield prediction. Front Plant Sci 10:1750

    Article  Google Scholar 

  31. Qiu M et al (2017) A short-term rainfall prediction model using multi-task convolutional neural networks. In: 2017 IEEE international conference on data mining (ICDM). pp 395–404

  32. Zhao B, Li X, Lu X, Wang Z (2018) A CNN–RNN architecture for multi-label weather recognition. Neurocomputing 322:47–57

    Article  Google Scholar 

  33. Elleuch M, Maalej R, Kherallah M (2016) A new design based-SVM of the CNN classifier architecture with dropout for offline Arabic handwritten recognition. Procedia Comput Sci 80:1712–1723

    Article  Google Scholar 

  34. Dutta K, Krishnan P, Mathew M, Jawahar CV (2018) Improving cnn-rnn hybrid networks for handwriting recognition. In: 2018 16th international conference on frontiers in handwriting recognition (ICFHR). pp 80–85

  35. Deng L, Platt JC (2014) Ensemble deep learning for speech recognition. In: Fifteenth annual conference of the international speech communication association, Singapore, pp 14–18

  36. Chawla A, Lee B, Fallon S, Jacob P (2018) Host based intrusion detection system with combined CNN/RNN model. In: Joint European conference on machine learning and knowledge discovery in databases. pp 149–158

  37. Selvin S, Vinayakumar R, Gopalakrishnan EA, Menon VK, Soman KP (2017) Stock price prediction using LSTM, RNN and CNN-sliding window model. In: Advances in computing, communications and informatics (ICACCI), 2017 international conference on. pp 1643–1647

  38. Wu K, Chen Z, Li W (2018) A novel intrusion detection model for a massive network using convolutional neural networks. IEEE Access 6:50850–50859

    Article  Google Scholar 

  39. Risman A, Chen S (2019) Anomaly detection in volumetric medical images using sequential convolutional and recurrent neural networks. Google Patents

  40. Lee K, Kim J-K, Kim J, Hur K, Kim H (2018) CNN and GRU combination scheme for bearing anomaly detection in rotating machinery health monitoring. In: 2018 1st IEEE International conference on knowledge innovation and invention (ICKII). pp 102–105

  41. Ide H, Kurita T (2017) Improvement of learning for CNN with ReLU activation by sparse regularization. In: 2017 International joint conference on neural networks (IJCNN). pp 2684–2691

  42. Talathi SS, Vartak A (2015) Improving performance of recurrent neural network with relu nonlinearity. arXiv Prepr. arXiv1511.03771

  43. Lu L, Shin Y, Su Y, Karniadakis GE (2019) Dying relu and initialization: theory and numerical examples. arXiv Prepr. arXiv1903.06733

  44. Shah A, Kadam E, Shah H, Shinde S, Shingade S (2016) Deep residual networks with exponential linear unit. In: Proceedings of the third international symposium on computer vision and the internet. pp 59–65

  45. Veit A, Wilber MJ, Belongie S (2016) Residual networks behave like ensembles of relatively shallow networks. In: Advances in neural information processing systems. pp 550–558

  46. Kaiser Ł, Sutskever I (2015) Neural gpus learn algorithms. arXiv Prepr. arXiv1511.08228

  47. Tan HH, Lim KH (2019) Vanishing gradient mitigation with deep learning neural network optimization. In: 2019 7th International conference on smart computing & communications (ICSCC). pp. 1–4

  48. Hochreiter S, Schmidhuber J (1997) LSTM can solve hard long time lag problems. In Advances in neural information processing systems. pp 473–479

  49. Sundermeyer M, Schlüter R, Ney H (2012) LSTM neural networks for language modeling

  50. Putorti JAD, McElroy J (1998) interFIRE, A site dedicated to improving fire investigation worldwide

  51. Huang CJ, Kuo PH (2018) A deep cnn-lstm model for particulate matter (PM2. 5) forecasting in smart cities. Sensors 18(7):2220

    Article  Google Scholar 

  52. Fu J, Chu J, Guo P, Chen Z (2019) Condition monitoring of wind turbine gearbox bearing based on deep learning model. Ieee Access 7:57078–57087

    Article  Google Scholar 

  53. Zhao R, Yan R, Wang J, Mao K (2017) Learning to monitor machine health with convolutional bi-directional LSTM networks. Sensors 17(2):273

    Article  Google Scholar 

  54. Yoshimatsu O, Satou Y, Shibasaki K (2018) Rolling bearing diagnosis based on CNN-LSTM and various condition dataset. In: Annual conference of the PHM society. vol 10, no 1

  55. Zhou J, Shan Y, Liu J, Xu Y, Zheng Y (2020) Degradation tendency prediction for pumped storage unit based on integrated degradation index construction and hybrid CNN-LSTM model. Sensors 20(15):4277

    Article  Google Scholar 

  56. Pan H, He X, Tang S, Meng F (2018) An improved bearing fault diagnosis method using one-dimensional CNN and LSTM. J Mech Eng 64(7–8):443–452

    Google Scholar 

  57. Song X, Yang F, Wang D, Tsui K-L (2019) Combined CNN-LSTM network for state-of-charge estimation of lithium-ion batteries. IEEE Access 7:88894–88902

    Article  Google Scholar 

  58. Li J, Li X, He D (2019) A directed acyclic graph network combined with CNN and LSTM for remaining useful life prediction. IEEE Access 7:75464–75475

    Article  Google Scholar 

  59. Xu L, Li Y, Yu J, Li Q, Shi S (2020) Prediction of sea surface temperature using a multiscale deep combination neural network. Remote Sens Lett 11(7):611–619

    Article  Google Scholar 

  60. Hu P, Tong J, Wang J, Yang Y, de Oliveira Turci L (2019) A hybrid model based on CNN and Bi-LSTM for urban water demand prediction. In: 2019 IEEE Congress on evolutionary computation (CEC). pp 1088–1094

  61. Yan K, Li W, Ji Z, Qi M, Du Y (2019) A hybrid LSTM neural network for energy consumption forecasting of individual households. IEEE Access 7:157633–157642

    Article  Google Scholar 

  62. Kim T-Y, Cho S-B (2019) Predicting residential energy consumption using CNN-LSTM neural networks. Energy 182:72–81

    Article  Google Scholar 

  63. Le T, Vo MT, Vo B, Hwang E, Rho S, Baik SW (2019) Improving electric energy consumption prediction using CNN and Bi-LSTM. Appl Sci 9(20):4237

    Article  Google Scholar 

  64. Sremac S, Tanackov I, Kopić M, Radović D (2018) ANFIS model for determining the economic order quantity. Decis Mak Appl Manag Eng 1(2):81–92

    Article  Google Scholar 

  65. Stojčić M, Stjepanović A, Stjepanović Đ (2019) ANFIS model for the prediction of generated electricity of photovoltaic modules. Decis Mak Appl Manag Eng 2(1):35–48

    Article  Google Scholar 

  66. Barak S, Sadegh SS (2016) Forecasting energy consumption using ensemble ARIMA–ANFIS hybrid algorithm. Int J Electr Power Energy Syst 82:92–104

    Article  Google Scholar 

  67. Boyacioglu MA, Avci D (2010) An adaptive network-based fuzzy inference system (ANFIS) for the prediction of stock market return: the case of the Istanbul stock exchange. Expert Syst Appl 37(12):7908–7912

    Article  Google Scholar 

  68. Lei Y, He Z, Zi Y, Hu Q (2007) Fault diagnosis of rotating machinery based on multiple ANFIS combination with GAs. Mech Syst Signal Process 21(5):2280–2294

    Article  Google Scholar 

  69. Şahin M, Erol R (2017) A comparative study of neural networks and ANFIS for forecasting attendance rate of soccer games. Math Comput Appl 22(4):43

    Google Scholar 

  70. Ekhtiari A, Dassios I, Liu M, Syron E (2019) A novel approach to model a gas network. Appl Sci 9(6):1047

    Article  Google Scholar 

  71. Van Gestel T et al (2001) Financial time series prediction using least squares support vector machines within the evidence framework. IEEE Trans neural netw 12(4):809–821

    Article  Google Scholar 

  72. Ni T, Zhai J (2016) A matrix-free smoothing algorithm for large-scale support vector machines. Inf Sci (Ny) 358:29–43

    Article  MATH  Google Scholar 

  73. Mellit A, Pavan AM, Benghanem M (2013) Least squares support vector machine for short-term prediction of meteorological time series. Theor Appl Climatol 111(1–2):297–307

    Article  Google Scholar 

  74. Xu W, Fan Z, Cai M, Shi Y, Tong X, Sun J (2015) Soft sensing method of LS-SVM using temperature time series for gas flow measurements. Metrol Meas Syst 22(3):383–392

    Article  Google Scholar 

  75. Ding-cheng W, Chun-xiu W, Yong-hua X, Tian-yi Z (2010) Air temperature prediction based on EMD and LS-SVM. In 2010 Fourth international conference on genetic and evolutionary computing. pp 177–180

  76. Xu G, Tian W, Jin Z, Qian L (2007) Temperature drift modelling and compensation for a dynamically tuned gyroscope by combining WT and SVM method. Meas Sci Technol 18(5):1425

    Article  Google Scholar 

  77. Farber JA, Cole DG (2019) Using multiple-model adaptive estimation and system identification for fault detection in nuclear power plants. In: ASME international mechanical engineering congress and exposition. American Society of Mechanical Engineers. https://doi.org/10.1115/IMECE2018-87616

  78. . Yusuf S, Brown DJ, Mackinnon A, Papanicolaou R (2013) Fault classification improvement in industrial condition monitoring via hidden markov models and Na{\"\i}ve bayesian modeling. In: 2013 IEEE Symposium on industrial electronics & applications. pp 75–80

  79. Daroogheh N, Baniamerian A, Meskin N, Khorasani K (2017) Prognosis and health monitoring of nonlinear systems using a hybrid scheme through integration of PFs and neural networks. IEEE Trans Syst MAN Cybern 47(8):1990–2004. https://doi.org/10.1109/TSMC.2016.2597272

    Article  Google Scholar 

  80. Wu Y, Yuan M, Dong S, Lin L, Liu Y (2018) Remaining useful life estimation of engineered systems using vanilla LSTM neural networks. Neurocomputing 275:167–179. https://doi.org/10.1016/j.neucom.2017.05.063

    Article  Google Scholar 

  81. Taylor SW, Pike RG, Alexander ME (1996) Field Guide to the Canadian forest fire behaviour prediction (FBP) system

  82. Wang X et al (2017) cffdrs: an R package for the Canadian forest fire danger rating system. Ecol Process 6(1):5

    Article  Google Scholar 

  83. Wallscheid O, Kirchgässner W, Böcker J (2017) Investigation of long short-term memory networks to temperature prediction for permanent magnet synchronous motors. In: 2017 International joint conference on neural networks (IJCNN). pp 1940–1947

  84. Liu H, Zhu G, Pan R, Yu M, Liang Z (2019) Experimental investigation of fire temperature distribution and ceiling temperature prediction in closed utility tunnel. Case Stud Therm Eng 14:100493

    Article  Google Scholar 

  85. He L, Xu Z, Chen H, Liu Q, Wang Y, Zhou Y (2018) Analysis of entrainment phenomenon near mechanical exhaust vent and a prediction model for smoke temperature in tunnel fire. Tunn Undergr Sp Technol 80:143–150

    Article  Google Scholar 

  86. Muhammad K, Ahmad J, Baik SW (2018) Early fire detection using convolutional neural networks during surveillance for effective disaster management. Neurocomputing 288:30–42

    Article  Google Scholar 

  87. Zhang Y, Wang X, Tang H (2019) An improved elman neural network with piecewise weighted gradient for time series prediction. Neurocomputing 359:199–208

    Article  Google Scholar 

  88. Yusuf SA, Alshdadi AA, Alghamdi R, Alassafi MO, Garrity DJ (2020) An autoregressive exogenous neural network to model fire behaviour via a Na{\"\i}ve bayes filter. IEEE Access. https://doi.org/10.1109/ACCESS.2020.2997016

    Article  Google Scholar 

  89. Kolaitis DI, Asimakopoulou EK, Founti MA (2017) Fire behaviour of gypsum plasterboard wall assemblies: CFD simulation of a full-scale residential building. Case Stud Fire Saf 7:23–35

    Article  Google Scholar 

  90. Rossa CG, Fernandes PM (2017) On the effect of live fuel moisture content on fire-spread rate. For Syst 26(3):12

    Google Scholar 

  91. Cortés D, Gil D, Azorín J, Vandecasteele F, Verstockt S (2020) A review of modelling and simulation methods for flashover prediction in confined space fires. Appl Sci 10(16):5609

    Article  Google Scholar 

  92. Wękegrzyński W, Lipecki T (2018) Wind and fire coupled modelling—part I: literature review. Fire Technol 54(5):1405–1442

    Article  Google Scholar 

  93. Karri RR, Heibati B, Yusup Y, Rafatullah M, Mohammadyan M, Sahu JN (2018) Modeling airborne indoor and outdoor particulate matter using genetic programming. Sustain Cities Soc 43:395–405

    Article  Google Scholar 

  94. Yusuf SA, Garrity DJ (2018) A predictive decision-aid device to warn firefighters of catastrophic temperature increases using a time-series algorithm. Safety Sci 138:105–119. https://doi.org/10.1016/j.ssci.2021.105237

    Article  Google Scholar 

  95. Stec AA, Hull TR (2011) Assessment of the fire toxicity of building insulation materials. Energy Build 43(2–3):498–506. https://doi.org/10.1016/j.enbuild.2010.10.015

    Article  Google Scholar 

  96. Yusuf SA, Garrity D (2019) Predicting temperature rise event

  97. Mahmoud S, Lotfi A, Langensiepen C (2013) Behavioural pattern identification and prediction in intelligent environments. Appl Soft Comput 13(4):1813–1822

    Article  Google Scholar 

  98. Graves A (2013) Generating sequences with recurrent neural networks. arXiv Prepr. arXiv1308.0850

  99. LeCun Y, Bengio Y, Hinton G (2015) Deep learning. Nature 521(7553):436–444. https://doi.org/10.1038/nature14539

    Article  Google Scholar 

  100. Socher R, Huval B, Bath B, Manning CD, Ng AY (2012) Convolutional-recursive deep learning for 3d object classification. Adv neural inf process syst 25:656–664

    Google Scholar 

  101. Gong Y, Zhang (2016) Hashtag recommendation using attention-based convolutional neural network. In: IJCAI. pp 2782–2788

  102. Chen T, Xu R, He Y, Wang X (2017) Improving sentiment analysis via sentence type classification using BiLSTM-CRF and CNN. Expert Syst Appl 72:221–230

    Article  Google Scholar 

  103. Karpathy A, Toderici G, Shetty S, Leung T, Sukthankar R, Fei-Fei L (2014) Large-scale video classification with convolutional neural networks. In: Proceedings of the IEEE conference on computer vision and pattern recognition. pp 1725–1732

  104. Cheng HT et al (2016) Wide & deep learning for recommender systems. In: Proceedings of the 1st workshop on deep learning for recommender systems. pp 7–10

  105. Bai Z, Cai B, ShangGuan W, Chai L (2018) Deep learning based motion planning for autonomous vehicle using spatiotemporal LSTM network. In: 2018 Chinese Automation Congress (CAC) pp 1610–1614

  106. Hoseinzade E, Haratizadeh S (2019) CNNpred: CNN-based stock market prediction using a diverse set of variables. Expert Syst Appl 129:273–285. https://doi.org/10.1016/j.eswa.2019.03.029

    Article  Google Scholar 

  107. Wang Y, Long M, Wang J, Gao Z, Philip SY (2017) Predrnn: recurrent neural networks for predictive learning using spatiotemporal lstms. In: Advances in neural information processing systems. pp 879–888

  108. Yusuf SA, Garrity DJ, Harrison D, Savage C (2019) Compartmental fire temperature data from body and platform-mounted sensors in live fire-suppression exercises. Mendeley Ltd., Southampton. doi: https://doi.org/10.17632/pn7y7sskc7.3

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Acknowledgements

This work was supported by the Deanship of Scientific Research (DSR), King Abdulaziz University, Jeddah, under Grant No. (DF-139-611-1441). The authors, therefore, gratefully acknowledge DSR technical and financial support.

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Yusuf, S.A., Alshdadi, A.A., Alassafi, M.O. et al. Predicting catastrophic temperature changes based on past events via a CNN-LSTM regression mechanism. Neural Comput & Applic 33, 9775–9790 (2021). https://doi.org/10.1007/s00521-021-06033-3

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