Volume 14 , Issue 1 , PP: 252-262, 2024 | Cite this article as | XML | Html | PDF | Full Length Article
Fabricio Lozada Torres 1 * , Sharon Álvarez Gómez 2 , Diego Palma Rivero 3 , Christian F. Tantaleán Odar 4 , Sayfuddinov Shukhrat 5
Doi: https://doi.org/10.54216/FPA.140118
This research focuses on the identification of passengers, in dimensions using information fusion as a tool. We recognize the challenges involved in identifying individuals who have been transferred to alternate dimensions and in this study we make use of CatBoost, an open source machine learning algorithm to address this problem. Our approach includes a preprocessing strategy that involves filling in missing values using techniques like priori distribution terms, which helps ensure the reliability of our dataset. By leveraging CatBoosts ability to handle variables and prevent overfitting we achieve results in accurately predicting passenger movement across dimensions. Our analysis highlights CatBoosts effectiveness in identifying patterns within data leading to more precise predictions for interdimensional passenger transportation. Additionally we incorporate techniques, like Greedy TS augmentation to enhance the adaptability of the algorithm and improve precision while reducing bias in modeling. Proof-of-concept experiments demonstrate that the proposed fusion system not only advances predictive modeling in niche domains but also paves the way for broader applications of machine learning in deciphering complex phenomena beyond traditional realms, marking a significant stride in understanding and addressing unconventional challenges.
Interdimensional Travel , information fusion, Alternate Realms , Predictive Analytics Dimensional Transportation , Machine Learning , Passenger Identification , Parallel Universes , Artificial Intelligence , Multiverse Exploration
[1] Shanthi, N, Sathishkumar VE, K Upendra Babu, P Karthikeyan, Sukumar Rajendran, Shaikh Muhammad Allayear, and others. 2022. “Analysis on the Bus Arrival Time Prediction Model for Human-Centric Services Using Data Mining Techniques.” Computational Intelligence and Neuroscience 2022.
[2] Singh, Nisha, and Kranti Kumar. 2022. “A Review of Bus Arrival Time Prediction Using Artificial Intelligence.” Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery 12 (4): e1457.
[3] Gaytan, Jesus Cuauhtemoc Tellez, Karamath Ateeq, Aqila Rafiuddin, Haitham M Alzoubi, Taher M Ghazal, Tariq Ahamed Ahanger, Sunita Chaudhary, and G K Viju. 2022. “Ai-Based Prediction of Capital Structure: Performance Comparison of Ann Svm and Lr Models.” Computational Intelligence and Neuroscience 2022.
[4] Shaygan, Maryam, Collin Meese, Wanxin Li, Xiaoliang George Zhao, and Mark Nejad. 2022. “Traffic Prediction Using Artificial Intelligence: Review of Recent Advances and Emerging Opportunities.” Transportation Research Part C: Emerging Technologies 145: 103921.
[5] Zeng, Guangmiao, Rongjie Wang, Wanneng Yu, Anhui Lin, Huihui Li, and Yifan Shang. 2023. “A Transfer Learning-Based Approach to Maritime Warships Re-Identification.” Engineering Applications of Artificial Intelligence 125: 106696.
[6] Tang, Ruifan, Lorenzo De Donato, Nikola Besinović, Francesco Flammini, Rob M P Goverde, Zhiyuan Lin, Ronghui Liu, Tianli Tang, Valeria Vittorini, and Ziyulong Wang. 2022. “A Literature Review of Artificial Intelligence Applications in Railway Systems.” Transportation Research Part C: Emerging Technologies 140: 103679.
[7] Jan, Zohaib, Farhad Ahamed, Wolfgang Mayer, Niki Patel, Georg Grossmann, Markus Stumptner, and Ana Kuusk. 2022. “Artificial Intelligence for Industry 4.0: Systematic Review of Applications, Challenges, and Opportunities.” Expert Systems with Applications, 119456.
[8] Khalil, N., Elkholy, M. and Eassa, M. (2023) “A Comparative Analysis of Machine Learning Models for Prediction of Chronic Kidney Disease”, Sustainable Machine Intelligence Journal, 5. doi: 10.61185/SMIJ.2023.55103.
[9] Degas, Augustin, Mir Riyanul Islam, Christophe Hurter, Shaibal Barua, Hamidur Rahman, Minesh Poudel, Daniele Ruscio, et al. 2022. “A Survey on Artificial Intelligence (Ai) and Explainable Ai in Air Traffic Management: Current Trends and Development with Future Research Trajectory.” Applied Sciences 12 (3): 1295.
[10] Bharadiya, Jasmin. 2023. “Artificial Intelligence in Transportation Systems A Critical Review.” American Journal of Computing and Engineering 6 (1): 34–45.
[11] Katreddi, Sasanka, Sujan Kasani, and Arvind Thiruvengadam. 2022. “A Review of Applications of Artificial Intelligence in Heavy Duty Trucks.” Energies 15 (20): 7457.
[12] Pan, Jeng-Shyang, Pei Hu, Václav Snášel, and Shu-Chuan Chu. 2023. “A Survey on Binary Metaheuristic Algorithms and Their Engineering Applications.” Artificial Intelligence Review 56 (7): 6101–67.
[13] Cansiz, Omer Faruk, Kevser Unsalan, and Fatih Unes. 2022. “Prediction of CO2 Emission in Transportation Sector by Computational Intelligence Techniques.” International Journal of Global Warming 27 (3): 271–83.
[14] Ramos, Ana, Alexandre Castanheira-Pinto, Aires Colaço, Jesús Fernández-Ruiz, and Pedro Alves Costa. 2023. “Predicting Critical Speed of Railway Tracks Using Artificial Intelligence Algorithms.” Vibration 6 (4): 895–916.
[15] Olugbade, Samuel, Stephen Ojo, Agbotiname Lucky Imoize, Joseph Isabona, and Mathew O Alaba. 2022. “A Review of Artificial Intelligence and Machine Learning for Incident Detectors in Road Transport Systems.” Mathematical and Computational Applications 27 (5): 77.
[16] Nalbandian, Lucia. 2022. “An Eye for an ‘I:’A Critical Assessment of Artificial Intelligence Tools in Migration and Asylum Management.” Comparative Migration Studies 10 (1): 1–23.
[17] Soori, Mohsen, Behrooz Arezoo, and Roza Dastres. 2023. “Artificial Intelligence, Machine Learning and Deep Learning in Advanced Robotics, A Review.” Cognitive Robotics.
[18] Gawronska, Elzbieta, Maria Zych, Robert Dyja, and Grzegorz Domek. 2023. “Using Artificial Intelligence Algorithms to Reconstruct the Heat Transfer Coefficient during Heat Conduction Modeling.” Scientific Reports 13 (1): 15343.
[19] Szaruga, Elżbieta, and Elżbieta Załoga. 2022. “Sustainable Development Programming of Airports by Identification of Non-Efficient Units.” Energies 15 (3): 932.
[20] Yue, Min, and Shuhong Ma. 2023. “LSTM-Based Transformer for Transfer Passenger Flow Forecasting between Transportation Integrated Hubs in Urban Agglomeration.” Applied Sciences 13 (1): 637.
[21] Wang, Xi, Shukai Li, Yuan Cao, Tianpeng Xin, and Lixing Yang. 2022. “Dynamic Speed Trajectory Generation and Tracking Control for Autonomous Driving of Intelligent High-Speed Trains Combining with Deep Learning and Backstepping Control Methods.” Engineering Applications of Artificial Intelligence 115: 105230.
[22] Utku, An\il, and Sema Kayapinar Kaya. 2023. “New Deep Learning-Based Passenger Flow Prediction Model.” Transportation Research Record 2677 (3): 1–17.
[23] Ineza Havugimana, Landry Frank, Bolan Liu, Fanshuo Liu, Junwei Zhang, Ben Li, and Peng Wan. 2023. “Review of Artificial Intelligent Algorithms for Engine Performance, Control, and Diagnosis.” Energies 16 (3): 1206.
[24] Chen, Gen, and Jiawan Zhang. 2022. “Applying Artificial Intelligence and Deep Belief Network to Predict Traffic Congestion Evacuation Performance in Smart Cities.” Applied Soft Computing 121: 108692.
[25] Zeng, Xiangrui. 2022. “Length of Stay Prediction Model of Indoor Patients Based on Light Gradient Boosting Machine.” Computational Intelligence and Neuroscience 2022.
[26] Yazdani-Asrami, Mohammad, Lurui Fang, Xiaoze Pei, and Wenjuan Song. 2023. “Smart Fault Detection of HTS Coils Using Artificial Intelligence Techniques for Large-Scale Superconducting Electric Transport Applications.” Superconductor Science and Technology 36 (8): 85021.
[27] Hassija, Vikas, Vinay Chamola, Atmesh Mahapatra, Abhinandan Singal, Divyansh Goel, Kaizhu Huang, Simone Scardapane, Indro Spinelli, Mufti Mahmud, and Amir Hussain. 2023. “Interpreting Black-Box Models: A Review on Explainable Artificial Intelligence.” Cognitive Computation, 1–30.
[28] Feng, Hongqing, Zundong Zhang, and others. 2022. “Rail Transit Passenger Counter Based on TOF.” Journal of Artificial Intelligence Practice 5 (2): 1–11.
[29] Jiang, Yirui, Trung Hieu Tran, and Leon Williams. 2023. “Machine Learning and Mixed Reality for Smart Aviation: Applications and Challenges.” Journal of Air Transport Management 111