Submitted:
29 July 2025
Posted:
30 July 2025
You are already at the latest version
Abstract

Keywords:
1. Introduction
2. Advanced Observational Instruments and Radiative Modelling
2.1. The Infrared Atmospheric Sounding Interferometer (IASI) and IASI-NG

2.2. Role of Radiative Transfer Models in Satellite Remote Sensing

3. Theoretical Foundations of Radiative Transfer
3.1. The Radiative Transfer Equation (RTE): From Schwarzschild to Deep Learning
3.2. Computational Bottlenecks in Modern RT Solvers
3.3. Non-LTE and Spectral Complexity

4. Quantum Information Theory and Tensor Networks for Atmospheric Modeling

4.1. Quantum Machine Learning for Atmospheric Data Processing

5. Quantum-Inspired Machine Learning for Radiative Transfer
5.1. Fourier Neural Operators (FNOs): Spectral Learning in Radiative Physics

5.2. Physics-Informed Neural Networks (PINNs) vs. Quantum-Informed Models

5.3. Hybrid Quantum-Classical Learning Architectures
6. Neuromorphic Radiative Transfer and Edge AI for Atmospheric Modeling
6.1. Neuromorphic Computing for Atmospheric Radiative Models
6.2. Spike-Based Atmospheric Prediction
6.3. Edge Deployment in Satellites, UAVs, and IoT Networks
| Platform / Project | Neuromorphic Hardware | Application Domain / RT Function | Environment | Performance Metrics & Outcomes | Reference |
| SpaceX CubeSat | Intel Loihi | Onboard cloud radiative forcing estimation | LEO Satellite | 80% energy reduction vs GPU; <5 s latency; <5 W power; 3× less memory overhead; 40% fewer downlink transmissions | [107] |
| IoT Solar Nodes | IBM TrueNorth | Adaptive irradiance sensing & sampling | Terrestrial/Remote | 65% power savings; 45% data volume reduction; 10× longer battery life; 92% detection accuracy under dynamic solar flux | [108] |
| UAV Radiation Tracker | Custom SNN ASIC (Zurich) | RT-based autonomous flight path rerouting | UAV / Mid-Troposphere | <1 s real-time path adjustment; 200 m RMS error reduction; 8 W peak power; 97% navigation efficiency | [109] |
| NASA NeuroCube | SNN Core Array | Hyperspectral compression (Earth observation) | LEO Satellite | 50× data compression; <5% spectral loss; 87% compression fidelity; 6.8 W power usage; <1 MB/s downlink for 40-band hyperspectral streams | [107] |
| DARPA FastNRT | Neuromorphic FPGA | RT modeling of aerosols & scattering | Tactical/Defense | 200× speedup; 96% modeling accuracy; real-time RT solved in <10 ms; supports Monte Carlo and two-stream approximations | [110] |
| Agro-RT IoT Network | IBM TrueNorth | Crop canopy reflectance estimation (NDVI-based RT) | Agricultural Fields | 70% energy savings; 35% improvement in vegetation health prediction; asynchronous sampling; <3.5 W operation | [111] |
| Neuromorphic Air Balloon | Intel Loihi 2 | Atmospheric scattering and thermal IR estimation | High-altitude Balloons | 50% faster inference than ARM Cortex-M; 90% accuracy in IR RT prediction; onboard training adaptation to vertical gradients | [112] |
| Smart Dust Sensor Grid | BrainScaleS-2 (Heidelberg) | Distributed aerosol optical depth (AOD) sensing via RT inversion | Urban IoT Network | Sub-mW per sensor; mesh-synchronized SNNs; 99% uptime; cross-node learning within 5 min; 45% bandwidth savings | [113] |
| Seismic RT UAV | SpiNNaker-2 (Manchester) | Radiative heat estimation in volcanic regions | UAV / Hazard Zones | 60× faster thermal RT estimation; real-time risk mapping; <6 W power; 93% alignment with satellite IR measurements | [114] |
| Arctic RT Monitoring | BrainChip Akida | Snow albedo RT estimation and data compression | Polar Station | 85% reduction in storage; operates at -40°C; <2 W continuous operation; autonomous operation for >3 months | [37] |
7. QINRT Framework
7.1. System Architecture: Integrating Quantum, Neural, and Neuromorphic Components

7.2. Dynamic Data Assimilation and Radiance Field Prediction
7.3. Benchmark Results and Cross-Dataset Validation
| Dataset | RMSE (QINRT) | RMSE (6S) | RMSE Reduction (%) | Visible Bias (nm) | IR Bias (nm) | Time/Epoch (sec) | Accuracy Gain (%) | Convergence Epochs | Data Source / Reference |
| AQuA-2024 | 1.82 ± 0.11 | 2.89 ± 0.14 | 36.9% | 0.3 – 0.7 | 1.0 – 1.5 | 6.3 | 22.0% | 42 | [126] |
| NOAA-QClim | 2.15 ± 0.09 | 3.42 ± 0.12 | 37.1% | 0.2 – 0.6 | 0.9 – 1.4 | 9.7 | 21.3% | 45 | [127,128] |
| CAM5-COSP | 1.64 ± 0.07 | 2.62 ± 0.10 | 37.4% | 0.4 – 0.8 | 1.1 – 1.3 | 11.2 | 23.2% | 39 | [129,130] |
| MODIS-Atmosphere | 1.78 ± 0.10 | 2.94 ± 0.16 | 39.5% | 0.3 – 0.9 | 0.9 – 1.4 | 12.1 | 24.1% | 48 | [131] |
| ERA5-Radiative Flux | 1.59 ± 0.09 | 2.58 ± 0.11 | 38.4% | 0.2 – 0.6 | 0.8 – 1.2 | 10.3 | 23.6% | 36 | [132] |
| CERES-EBAF | 1.51 ± 0.08 | 2.48 ± 0.09 | 39.1% | 0.2 – 0.5 | 0.9 – 1.1 | 6.1 | 24.7% | 31 | [133] |
8. Applications Across Earth and Planetary Sciences
8.1. Quantum-Augmented Climate Forecasting
8.2. Quantum Remote Sensing and Sensor Fusion
8.3. Biosignature Detection in Exoplanet Atmospheres
8.4. Interplanetary Radiative Transfer and Quantum Lidar
9. Securing Climate AI in the Quantum Era
9.1. Emerging Cyber Threats to Autonomous RT Models
9.2. Post-Quantum Cryptography for Data Integrity
9.3. Quantum Reservoir Computing for Extreme Climate Events
10. Future Directions and Planet-Scale Deployment
11. Conclusion
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
| AI | Artificial Intelligence |
| CMOS | Complementary Metal-Oxide Semiconductor |
| DVS | Dynamic Vision Sensor |
| ECMWF | European Centre for Medium-Range Weather Forecasts |
| ERA5 | ECMWF Reanalysis v5 |
| FNO | Fourier Neural Operator |
| GPU | Graphics Processing Unit |
| IASI | Infrared Atmospheric Sounding Interferometer |
| IASI-NG | Infrared Atmospheric Sounding Interferometer – Next Generation |
| IoT | Internet of Things |
| ML | Machine Learning |
| MODIS | Moderate Resolution Imaging Spectroradiometer |
| NASA | National Aeronautics and Space Administration |
| PEPS | Projected Entangled Pair States |
| QAE | Quantum Autoencoder |
| QINRT | Quantum-Inspired Neural Radiative Transfer |
| QML | Quantum Machine Learning |
| QNO | Quantum Neural Operator |
| RRTMGP | Rapid Radiative Transfer Model for GCMs – Parallel |
| RT | Radiative Transfer |
| SNN | Spiking Neural Network |
| UAV | Unmanned Aerial Vehicle |
References
- B. T. Johnson, C. Dang, P. Stegmann, Q. Liu, I. Moradi, and T. Auligne, "The Community Radiative Transfer Model (CRTM): Community-focused collaborative model development accelerating research to operations," Bulletin of the American Meteorological Society, vol. 104, pp. E1817-E1830, 2023.
- D. P. Johnson and M. S. Johnson, "EigenFlux: A Radiative Transfer Model for Systems with High Asymmetries," 2024.
- E. Chen, R.-A. Pitaval, B. M. Popović, and Y. Qin, "Direct Satellite Access Using Multi-Dimensional Constellations," in 2024 IEEE 35th International Symposium on Personal, Indoor and Mobile Radio Communications (PIMRC), 2024, pp. 1-7.
- T. CLIMA and W. TE, "Report of Part I of the Twelfth Meeting of the Ozone Research Managers of the Parties to the Vienna Convention for the Protection of the Ozone Layer," 2024.
- M. Viggiano, D. Cimini, M. P. De Natale, F. Di Paola, D. Gallucci, S. Larosa, et al., "Combining Passive Infrared and Microwave Satellite Observations to Investigate Cloud Microphysical Properties: A Review," Remote Sensing, vol. 17, p. 337, 2025.
- S.-W. Wei, C.-H. Lu, Q. Liu, A. Collard, T. Zhu, D. Grogan, et al., "The impact of aerosols on satellite radiance data assimilation using NCEP global data assimilation system," Atmosphere, vol. 12, p. 432, 2021.
- S. Khalid, M. H. Yazdani, M. M. Azad, M. U. Elahi, I. Raouf, and H. S. Kim, "Advancements in Physics-Informed Neural Networks for Laminated Composites: A Comprehensive Review," Mathematics, vol. 13, p. 17, 2024.
- S. O. Wright, "Beyond the equilibrium assumption: towards non-LTE analysis of exoplanet atmospheres," UCL (University College London), 2024.
- L. Decin, "Evolution and mass loss of cool aging stars: a daedalean story," Annual Review of Astronomy and Astrophysics, vol. 59, pp. 337-389, 2021.
- M. Collura, G. Lami, N. Ranabhat, and A. Santini, "Tensor Network Techniques for Quantum Computation," ed: SISSA Medialab Srl, 2024.
- N. Lyu, "High-Dimensional Molecular Quantum Dynamics With Tensor-Trains and Quantum Computation," Yale University, 2024.
- K. Song, Y. Bian, K. Wu, H. Liu, S. Han, J. Li, et al., "Single-pixel imaging based on deep learning," arXiv preprint. arXiv:2310.16869, 2023.
- C.-Y. Liu, K.-C. Chen, Y.-C. Chen, S. Y.-C. Chen, W.-H. Huang, W.-J. Huang, et al., "Quantum-Enhanced Parameter-Efficient Learning for Typhoon Trajectory Forecasting," arXiv preprint. arXiv:2505.09395, 2025.
- M. Qiao and Y.-x. Liu, "Quantum-Classical Computing for Time-Dependent Ion-Atom Collision Dynamics: Applications to Charge Transfer Cross Section Simulations," arXiv preprint. arXiv:2506.19374, 2025.
- [M. Le Gallo, R. Khaddam-Aljameh, M. Stanisavljevic, A. Vasilopoulos, B. Kersting, M. Dazzi, et al., "A 64-core mixed-signal in-memory compute chip based on phase-change memory for deep neural network inference," Nature Electronics, vol. 6, pp. 680-693, 2023.
- M. A. Nau, A. H. Vija, W. Gohn, M. P. Reymann, and A. K. Maier, "Exploring the limitations of hybrid adiabatic quantum computing for emission tomography reconstruction," Journal of Imaging, vol. 9, p. 221, 2023.
- E. Granet, K. Ghanem, and H. Dreyer, "Practicality of a quantum adiabatic algorithm for chemistry applications," Physical Review A, vol. 111, p. 022428, 2025.
- M.-M. Wang, "Denoising quantum mixed states using quantum autoencoders," Quantum Information Processing, vol. 23, p. 30, 2024.
- W. S. Howard, A. F. Kowalski, L. Flagg, M. A. MacGregor, O. Lim, M. Radica, et al., "Characterizing the near-infrared spectra of flares from TRAPPIST-1 during JWST transit spectroscopy observations," The Astrophysical Journal, vol. 959, p. 64, 2023.
- C. Weimer, "NASA Earth Science Technology Office Technical Interchange Meeting," 2024.
- Y. Shamoo, "Adversarial Attacks and Defense Mechanisms in the Age of Quantum Computing," in Leveraging Large Language Models for Quantum-Aware Cybersecurity, ed: IGI Global Scientific Publishing, 2025, pp. 301-344.
- M. K. J. Reddy, A. S. Swaroop, A. H. Prasad, D. Nithin, and T. Singh, "Artificial Neural Networks in Cryptography: Applications, Challenges, and Future Directions for Secure Systems," Frontiers in Collaborative Research, vol. 2, pp. 20-28, 2024.
- B. Raychaudhuri, "Spectroscopic techniques conceptualized with the remote sensing of atmospheric carbon dioxide and other greenhouse gases," Applied Spectroscopy Reviews, vol. 59, pp. 1344-1372, 2024.
- M. Ridolfi, C. Tirelli, S. Ceccherini, C. Belotti, U. Cortesi, and L. Palchetti, "Synergistic retrieval and complete data fusion methods applied to simulated FORUM and IASI-NG measurements," Atmospheric Measurement Techniques, vol. 15, pp. 6723-6737, 2022.
- T. AUGUST, "Operational Sounding of Thermodynamic Variables in the Atmosphere," Satellites for Atmospheric Sciences 2: Meteorology, Climate and Atmospheric Composition, pp. 9-29, 2023.
- B. BELL, J.-N. THÉPAUT, and J. EYRE, "The Assimilation of Satellite Data in Numerical Weather Prediction Systems," Satellites for Atmospheric Sciences 2: Meteorology, Climate and Atmospheric Composition, pp. 69-95, 2023.
- P. Sinha, M. Modani, S. Islam, M. Khare, and R. K. Srivastava, "Evolution of Weather and Climate Prediction Systems," in Mitigation and Adaptation Strategies Against Climate Change in Natural Systems, ed: Springer, 2025, pp. 243-265.
- M. Grzegorski, G. Poli, A. Cacciari, S. Jafariserajehlou, A. Holdak, R. Lang, et al., "Multi-Sensor Retrieval of Aerosol Optical Properties for Near-Real-Time Applications Using the Metop Series of Satellites: Concept, Detailed Description, and First Validation," Remote Sensing, vol. 14, p. 85, 2021.
- R. Abeed, "IASI ammonia observations to study land-use change, soil-atmosphere exchange and the effect of meteorology," Sorbonne Université, 2023.
- M. Tsivlidou, "Ozone and carbon monoxide in the tropical trosphere, as seen by aircraft and satellite data; as seen by aircraft (IAGOS) and satellite (IASI) measurements," Université Paul Sabatier-Toulouse III, 2023.
- M. Mermigkas, "Remote sensing of greenhouse gases with FTIR spectroscopy and estimate of their emissions," Aριστοτέλειο Πανεπιστήμιο Θεσσαλονίκης (AΠΘ). Σχολή Θετικών Επιστημών. Τμήμα …, 2024.
- J.-N. Dumez and P. Giraudeau, "Fast 2D Solution-state NMR: Concepts and Applications," 2023.
- D. Ebert, B. Weng, C. Wang, H. Bedle, M. Xu, X.-M. Hu, et al., "Multi-Scale Integrated Monitoring System for Enhancing Methane Emission Detection, Quantification & Prediction," Univ. of Oklahoma, Norman, OK (United States)2024.
- V. Singh, G. Tiwari, A. Singh, R. Samanta, A. K. Srivastava, D. S. Bisht, et al., "Tropical Cyclones Across Global Basins: Dynamics, Tracking Algorithms, Forecasting, and Emerging Scientometric Research Trends," Meteorological Applications, vol. 32, p. e70067, 2025.
- N. Jaiswal, R. Singh, and P. Thapliyal, "Synergy Between Polar-Orbiting and Geostationary Sensors in Estimating Near Surface Winds Over the Oceanic Region: A Tropical Cyclone Case Study," Journal of the Indian Society of Remote Sensing, pp. 1-13, 2025.
- H. Wu, X. Xu, T. Luo, Y. Yang, Z. Xiong, and Y. Wang, "Variation and comparison of cloud cover in MODIS and four reanalysis datasets of ERA-interim, ERA5, MERRA-2 and NCEP," Atmospheric Research, vol. 281, p. 106477, 2023.
- D. Kleist, J. R. Carley, A. Collard, E. Liu, S. Liu, C. R. Martin, et al., "Data assimilation strategy and development plan for NCEP’s environmental modeling center," 2024.
- T. Stavrakou, J.-F. Müller, M. Bauwens, T. Doumbia, N. Elguindi, S. Darras, et al., "Atmospheric impacts of COVID-19 on NOx and VOC levels over China based on TROPOMI and IASI satellite data and modeling," Atmosphere, vol. 12, p. 946, 2021.
- M. Zhu, S. Jin, J. Tao, and X. Wu, "Automatic methods for gas absorption calculation based on correlated k-distribution," Journal of Quantitative Spectroscopy and Radiative Transfer, vol. 270, p. 107697, 2021.
- S. Duan, Y. Liu, L. Li, and Y. Pan, "Prediction of atmospheric carbon dioxide radiative transfer model based on machine learning," Frontiers in Computing and Intelligent Systems, vol. 6, pp. 132-6, 2024.
- S.-W. Wei, C.-H. Lu, B. T. Johnson, C. Dang, P. Stegmann, D. Grogan, et al., "The influence of aerosols on satellite infrared radiance simulations and Jacobians: Numerical experiments of CRTM and GSI," Remote Sensing, vol. 14, p. 683, 2022.
- Z. Q. Wang, M. Buehner, and Y. Huang, "Idealized study of representing spatial and temporal variations in the error contribution of surface emissivity for assimilating surface-sensitive microwave radiance observations over land," Quarterly Journal of the Royal Meteorological Society, p. e4948, 2025.
- Y. Chi, C. Zhao, Y. Yang, X. Zhao, and J. Yang, "Global characteristics of cloud macro-physical properties from active satellite remote sensing," Atmospheric Research, vol. 302, p. 107316, 2024.
- Q. Luo, B. Yi, and L. Bi, "Sensitivity of mixed-phase cloud optical properties to cloud particle model and microphysical factors at wavelengths from 0.2 to 100 µm," Remote Sensing, vol. 13, p. 2330, 2021.
- H. I. Ștefănie, A. Radovici, A. Mereuță, V. Arghiuș, H. Cămărășan, D. Costin, et al., "Variation of aerosol optical properties over Cluj-Napoca, Romania, based on 10 years of AERONET data and MODIS MAIAC AOD product," Remote Sensing, vol. 15, p. 3072, 2023.
- L. D. Labzovskii, S. T. Kenea, H. Lindqvist, J. Kim, S. Li, Y.-H. Byun, et al., "Towards robust calculation of interannual CO2 growth signal from TCCON (total carbon column observing network)," Remote Sensing, vol. 13, p. 3868, 2021.
- U. Jeong and H. Hong, "Comparison of total column and surface mixing ratio of carbon monoxide derived from the TROPOMI/Sentinel-5 precursor with in-situ measurements from extensive ground-based network over South Korea," Remote Sensing, vol. 13, p. 3987, 2021.
- Y. Song, X. Luo, Y. Lu, J. Qian, W. Zhang, L. Liu, et al., "Improving the data quality of CO2 continuous emissions monitoring systems: In the context of China's emissions trading scheme," Environmental Impact Assessment Review, vol. 115, p. 108037, 2025.
- G. Qu, Y. Shi, Y. Yang, W. Wu, and Z. Zhou, "Methods, Progress and Challenges in Global Monitoring of Carbon Emissions from Biomass Combustion," Atmosphere, vol. 15, p. 1247, 2024.
- X. Liang, K. Garrett, Q. Liu, E. S. Maddy, K. Ide, and S. Boukabara, "A deep-learning-based microwave radiative transfer emulator for data assimilation and remote sensing," IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol. 15, pp. 8819-8833, 2022.
- X. He, Y. Li, S. Liu, T. Xu, F. Chen, Z. Li, et al., "Improving regional climate simulations based on a hybrid data assimilation and machine learning method," Hydrology and Earth System Sciences, vol. 27, pp. 1583-1606, 2023.
- F. Riva, G. Janett, L. Belluzzi, T. d. P. Alemán, E. A. Ballester, J. T. Bueno, et al., "A numerical approach for modelling the polarisation signals of strong resonance lines with partial frequency redistribution. arXiv:2505.20968, 2025.
- F. M. Temgoua, L. A. Nguimdo, and D. Njomo, "Two-Stream Approximation to the Radiative Transfer Equation: A New Improvement and Comparative Accuracy with Existing Methods," Advances in Atmospheric Sciences, vol. 41, pp. 278-292, 2024.
- S. N. Khonina, N. L. Kazanskiy, R. V. Skidanov, and M. A. Butt, "Advancements and applications of diffractive optical elements in contemporary optics: A comprehensive overview," Advanced Materials Technologies, vol. 10, p. 2401028, 2025.
- X. Cao, S. Wang, and Y. Zhou, "Using early rejection Markov chain Monte Carlo and Gaussian processes to accelerate ABC methods," Journal of Computational and Graphical Statistics, vol. 34, pp. 395-408, 2025.
- A. Doicu, M. I. Mishchenko, D. S. Efremenko, and T. Trautmann, "Spectral spherical harmonics discrete ordinate method," Journal of Quantitative Spectroscopy and Radiative Transfer, vol. 258, p. 107386, 2021.
- J. Meyer, A. Rath, Ö. Yazici, and P. Slusallek, "MARS: Multi-sample Allocation through Russian roulette and Splitting," in SIGGRAPH Asia 2024 Conference Papers, 2024, pp. 1-10.
- J. R. Loveridge, "Advancing the satellite remote sensing of heterogeneous clouds through the development of a tomographic technique that uses 3D radiative transfer," University of Illinois at Urbana-Champaign, 2023.
- J. Gonzalez, M. G. Palma, M. Hattink, R. Rubio-Noriega, L. Orosa, O. Mutlu, et al., "Optically connected memory for disaggregated data centers," Journal of Parallel and Distributed Computing, vol. 163, pp. 300-312, 2022.
- Y. Pan, M. Matilainen, S. Taskinen, and K. Nordhausen, "A review of second-order blind identification methods," Wiley interdisciplinary reviews: computational statistics, vol. 14, p. e1550, 2022.
- B. Valentini, M. Penna, M. Viazzo, E. Caprio, L. P. Casacci, F. Barbero, et al., "Yeasts, arthropods, and environmental matrix: a triad to disentangle the multi-level definition of biodiversity," Scientific Reports, vol. 14, p. 20144, 2024.
- G. L. Villanueva, T. J. Fauchez, V. Kofman, E. Alei, E. K. Lee, E. Janin, et al., "Modeling Atmospheric Lines by the Exoplanet Community (MALBEC) version 1.0: A CUISINES radiative transfer intercomparison project," The Planetary Science Journal, vol. 5, p. 64, 2024.
- Q. Bai, W. Zhou, W. Cui, and Z. Qi, "Research progress on hygroscopic agents for atmospheric water harvesting systems," Materials, vol. 17, p. 722, 2024.
- H. Hussain, P. Tamizharasan, and C. Rahul, "Design possibilities and challenges of DNN models: a review on the perspective of end devices," Artificial Intelligence Review, pp. 1-59, 2022.
- A. K. Salman, "Advanced Deep Learning Frameworks for Pollution Modeling: Applications in Numerical Solving, Model Emulation, and Uncertainty-Aware Air Quality Forecasting," 2024.
- S. F. Ahmed, M. S. B. Alam, M. Hassan, M. R. Rozbu, T. Ishtiak, N. Rafa, et al., "Deep learning modelling techniques: current progress, applications, advantages, and challenges," Artificial Intelligence Review, vol. 56, pp. 13521-13617, 2023.
- S. Kumar, I. Arevalo, A. Iftekhar, and B. Manjunath, "Methanemapper: Spectral absorption aware hyperspectral transformer for methane detection," in Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, 2023, pp. 17609-17618.
- B. Jaderberg, A. A. Gentile, A. Ghosh, V. E. Elfving, C. Jones, D. Vodola, et al., "Potential of quantum scientific machine learning applied to weather modeling," Physical Review A, vol. 110, p. 052423, 2024.
- A. Hossain, "Unraveling Sentinel-5P Data Patterns: Advanced Pipeline for Comprehensive Atmospheric Analysis," 2023.
- A. Mallick, C. C. Mayorga-Martinez, and M. Pumera, "Low-dimensional materials for ammonia synthesis," Chemical Society Reviews, 2025.
- R. Huang, M. F. Hanif, M. K. Siddiqui, M. F. Hanif, and F. B. Petros, "Analyzing boron oxide networks through Shannon entropy and Pearson correlation coefficient," Scientific Reports, vol. 14, p. 26552, 2024.
- C. Lin, "Analysis of Complex Dynamical Systems by Combining Recurrent Neural Networks and Mechanistic Models," Université d'Ottawa| University of Ottawa, 2024.
- L. Soucasse, "Radiative transfer modelling: radiative properties, numerical simulation and coupled interactions," Université Paris-Saclay-CentraleSupélec, 2023.
- S. R. Sihare, "Dimensionality Reduction for Data Analysis With Quantum Feature Learning," Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery, vol. 15, p. e1568, 2025.
- P. Mandadapu, "Exploring Quantum-Enhanced Machine Learning for Computer Vision: Applications and Insights on Noisy Intermediate-Scale Quantum Devices," arXiv preprint. arXiv:2404.02177, 2024.
- P. Jiang, Z. Yang, J. Wang, C. Huang, P. Xue, T. Chakraborty, et al., "Efficient super-resolution of near-surface climate modeling using the Fourier neural operator," Journal of Advances in Modeling Earth Systems, vol. 15, p. e2023MS003800, 2023.
- Y. Wang, H. Zhang, C. Lai, and X. Hu, "Transfer learning Fourier neural operator for solving parametric frequency-domain wave equations," IEEE Transactions on Geoscience and Remote Sensing, 2024.
- P. Kuma, F. A.-M. Bender, A. Schuddeboom, A. J. McDonald, and Ø. Seland, "Machine learning of cloud types in satellite observations and climate models," Atmospheric Chemistry and Physics, vol. 23, pp. 523-549, 2023.
- Singh, A. Monga, H. L. de Moura, X. Zhang, M. V. Zibetti, and R. R. Regatte, "Emerging trends in fast MRI using deep-learning reconstruction on undersampled k-space data: a systematic review," Bioengineering, vol. 10, p. 1012, 2023.
- C.-C. Chang, S.-C. Yang, and S. G. Penny, "A regional hybrid gain data assimilation system and preliminary evaluation based on Radio Occultation reflectivity assimilation," SOLA, vol. 18, pp. 33-40, 2022.
- Y. Yao, X. Zhong, Y. Zheng, and Z. Wang, "A physics-incorporated deep learning framework for parameterization of atmospheric radiative transfer," Journal of Advances in Modeling Earth Systems, vol. 15, p. e2022MS003445, 2023.
- Degen, D. Caviedes Voullième, S. Buiter, H.-J. Hendricks Franssen, H. Vereecken, A. González-Nicolás, et al., "Perspectives of physics-based machine learning strategies for geoscientific applications governed by partial differential equations," Geoscientific Model Development, vol. 16, pp. 7375-7409, 2023.
- S. J. Nawaz, S. K. Sharma, B. Mansoor, M. N. Patwary, and N. M. Khan, "Non-coherent and backscatter communications: Enabling ultra-massive connectivity in 6G wireless networks," IEEE Access, vol. 9, pp. 38144-38186, 2021.
- A. Schiffers, "Seeing Beyond Pixels: Holography's Mission to Craft the Ultimate Visual Experience," Northwestern University, 2024.
- M. Kashif and M. Shafique, "Hqnet: Harnessing quantum noise for effective training of quantum neural networks in nisq era," arXiv preprint. arXiv:2402.08475, 2024.
- W. Liu, J. Yang, Y. Zhao, X. Liu, J. Heng, M. Hong, et al., "Laser-Ironing Induced Capping Layer on Co-ZIF-L Promoting In Situ Surface Modification to High-Spin Oxide–Carbon Hybrids on the “Real Catalyst” for High OER Activity and Stability," Advanced Materials, vol. 36, p. 2310106, 2024.
- M. F. b. Abas, B. Singh, and K. A. Ahmad, "High Performance Computing and Its Application in Computational Biomimetics," in High Performance Computing in Biomimetics: Modeling, Architecture and Applications, ed: Springer, 2024, pp. 21-46.
- K. Karuppasamy, V. Puram, S. Johnson, and J. P. Thomas, "A Comprehensive Review of Quantum Circuit Optimization: Current Trends and Future Directions," Quantum Reports, vol. 7, p. 2, 2025.
- G. Kim-Guisbert, M. Holian, S. Giardino, V. Vittal, and J. Koenig, "A review on the potential applications and limitations of hardware approaches to quantum computing," International Journal of Student Project Reporting, vol. 2, pp. 203-223, 2025.
- S. Wang, G. Li, Z. Chen, P. Wang, M. Dou, H. Zheng, et al., ʺImproving the trainability of VQE on NISQ computers for solving portfolio optimization using convex interpolation,ʺ arXiv preprint. arXiv:2407.05589, 2024.
- V. K. Quy, N. M. Quy, T. T. Hoai, S. Shaon, M. R. Uddin, T. Nguyen, et al., "From Federated Learning to Quantum Federated Learning for Space-Air-Ground Integrated Networks," in 2024 IEEE Conference on Standards for Communications and Networking (CSCN), 2024, pp. 402-407.
- C. Qiao, M. Li, Y. Liu, and Z. Tian, "Transitioning from federated learning to quantum federated learning in internet of things: A comprehensive survey," IEEE Communications Surveys & Tutorials, 2024.
- M. Kashif, M. Rashid, S. Al-Kuwari, and M. Shafique, "Alleviating barren plateaus in parameterized quantum machine learning circuits: Investigating advanced parameter initialization strategies," in 2024 Design, Automation & Test in Europe Conference & Exhibition (DATE), 2024, pp. 1-6.
- S. Anjimoon, S. Baswaraju, R. Sobti, S. Ajmera, A. Rana, and A. A. Hameed, "Hybrid Quantum-Classical Approaches to Optimize Signal Processing in Massive MIMO Arrays," in 2024 International Conference on Communication, Computer Sciences and Engineering (IC3SE), 2024, pp. 1-6.
- M. Davies, A. Wild, G. Orchard, Y. Sandamirskaya, G. A. F. Guerra, P. Joshi, et al., "Advancing neuromorphic computing with loihi: A survey of results and outlook," Proceedings of the IEEE, vol. 109, pp. 911-934, 2021.
- Y. Yousfia and D. Wischerta, "Spiking Neural Network Design for on-board detection of methane emissions through Neuromorphic Computing Andrew Karima, Amel AlKholeifya, Jimin Choia, Jatin Dhalla, Tan Hudaa, Arnav Ranjekara," 2024.
- H. Wang, Y.-F. Li, and K. Gryllias, "Brain-inspired spiking neural networks for industrial fault diagnosis: A survey, challenges, and opportunities," arXiv preprint arXiv:2401.02429, 2023.
- K. Thangavel, D. Spiller, R. Sabatini, S. Amici, S. T. Sasidharan, H. Fayek, et al., "Autonomous satellite wildfire detection using hyperspectral imagery and neural networks: A case study on australian wildfire," Remote Sensing, vol. 15, p. 720, 2023.
- D. Cazzato and F. Bono, "An Application-Driven Survey on Event-Based Neuromorphic Computer Vision," Information, vol. 15, p. 472, 2024.
- S. Harbour, B. Sears, S. Schlager, M. Kinnison, J. Sublette, and A. Henderson, "Real-time vision-based control of swap-constrained flight system with intel loihi 2," in 2023 IEEE/AIAA 42nd Digital Avionics Systems Conference (DASC), 2023, pp. 1-6.
- X.-H. Zhao, H.-S. Zhong, F. Pan, Z.-H. Chen, R. Fu, Z. Su, et al., "Leapfrogging Sycamore: harnessing 1432 GPUs for 7× faster quantum random circuit sampling," National Science Review, vol. 12, p. nwae317, 2025.
- D. C. Nath, I. Kundu, A. Sharma, P. Shivhare, A. Afzal, M. E. M. Soudagar, et al., "Internet of Things integrated with solar energy applications: a state-of-the-art review," Environment, Development and Sustainability, vol. 26, pp. 24597-24652, 2024.
- N. Hendrikx, K. Barhmi, L. Visser, T. de Bruin, M. Pó, A. Salah, et al., "All sky imaging-based short-term solar irradiance forecasting with Long Short-Term Memory networks," Solar Energy, vol. 272, p. 112463, 2024.
- A. Safa, L. Keuninckx, G. Gielen, and F. Catthoor, Neuromorphic Solutions for Sensor Fusion and Continual Learning Systems: Applications in Drone Navigation and Radar Sensing: Springer Nature, 2024.
- S. Kahali, S. Dey, C. Kadway, A. Mukherjee, A. Pal, and M. Suri, "Low-power lossless image compression on small satellite edge using spiking neural network," in 2023 International Joint Conference on Neural Networks (IJCNN), 2023, pp. 1-8.
- A. Hadrovic, "ISRG Journal of Arts, Humanities and Social Sciences (ISRGJAHSS)," context, vol. 1, p. 3, 2023.
- L. Diana and P. Dini, "Review on Hardware Devices and Software Techniques Enabling Neural Network Inference Onboard Satellites," Remote Sensing, vol. 16, p. 3957, 2024.
- J. Poravanthattil, "Fault Mitigation for Spiking-Neural-Network Classification of Neuromorphic Event Streams with Radiation-Induced Noise," University of Pittsburgh, 2024.
- W. Alqwider, Deep Reinforcement Learning for Advanced Wireless Networks Enabling Service and Spectrum Coexistence: Mississippi State University, 2024.
- D. Delic and S. Afshar, "Neuromorphic computing for compact lidar systems," in More-than-Moore Devices and Integration for Semiconductors, ed: Springer, 2023, pp. 191-240.
- D. Oswald, A. Pourreza, M. Chakraborty, S. D. S. Khalsa, and P. H. Brown, "3D radiative transfer modeling of almond canopy for nitrogen estimation by hyperspectral imaging," Precision Agriculture, vol. 26, p. 12, 2025.
- D. M. Michael and D. B. Kumar, "Real-time trajectory prediction of High Altitude Balloon (HAB) using machine learning (ML) algorithms”," 2023.
- X. Sun, L. Sun, Y. Sun, J. Zhang, X. Fan, and C. Ma, "Inversion of Aerosol Optical Depth: Incorporating Multi-Model Approach," IEEE Transactions on Geoscience and Remote Sensing, 2024.
- J. Thompson, E. Giovanini, K. Befus, E. Marshall, and C. Allison, "The use of UAV-based visible and multispectral thermal infrared data for active volcano monitoring and analysis: test of a low-cost solution applied to the 2022 Meradalir eruption," Volcanica, vol. 8, pp. 325-339, 2025.
- Z. Zhang, L. Wing Tat, and H. Schaeffer, "BelNet: Basis enhanced learning, a mesh-free neural operator," Proceedings of the Royal Society A, vol. 479, p. 20230043, 2023.
- M. K. Goyal and K. S. Rautela, "Aerosol Atmospheric Rivers: Detection and Spatio-Temporal Patterns," in Aerosol Atmospheric Rivers: Availability, Spatiotemporal Characterisation, Predictability, and Impacts, ed: Springer, 2024, pp. 19-41.
- J. Paul, "How Brain-Inspired AI Chips Are Changing the Game: The Rise of Neuromorphic Computing," 2024.
- A. B. Abdallah and K. N. Dang, "Comprehensive Review of Neuromorphic Systems," Neuromorphic Computing Principles and Organization, pp. 275-303, 2024.
- J. Morais, S. Alikhani, A. Malhotra, S. Hamidi-Rad, and A. Alkhateeb, "A Dataset Similarity Evaluation Framework for Wireless Communications and Sensing," arXiv preprint. arXiv:2412.05556, 2024.
- S. Tomal, A. A. Shafin, D. Bhattacharjee, M. Amin, and R. S. Shahir, "Quantum-Enhanced Attention Mechanism in NLP: A Hybrid Classical-Quantum Approach," arXiv preprint. arXiv:2501.15630, 2025.
- G. Hai, C. Xing, Y. Ding, Y. Li, J. Chen, L. Gao, et al., "A remote sensing technique for CO 2 column density," IEEE Transactions on Geoscience and Remote Sensing, 2025.
- A. R. Reshi, S. Pichuka, and A. Tripathi, "Applications of sentinel-5p tropomi satellite sensor: A review," IEEE Sensors Journal, vol. 24, pp. 20312-20321, 2024.
- A. Ramôa and L. P. Santos, "Bayesian Quantum Amplitude Estimation," arXiv preprint. arXiv:2412.04394, 2024.
- M. AbuGhanem, "IBM quantum computers: Evolution, performance, and future directions," The Journal of Supercomputing, vol. 81, p. 687, 2025.
- A. Garg, A. Patil, M. Sarkar, S. M. Moorthi, and D. arXiv:2411.08917, 2024.
- X. Huang, J. Dalsgaard, S. L. Aalto, A. Nguyen-tiêt, and P. B. Pedersen, "Effects of dietary phosphorus levels on water quality parameters in recirculating aquaculture systems," in AQUA 2024, 2024, p. 465.
- J. M. Johnson, S. Fang, A. Sankarasubramanian, A. M. Rad, L. Kindl da Cunha, K. S. Jennings, et al., "Comprehensive analysis of the NOAA National Water Model: A call for heterogeneous formulations and diagnostic model selection," Journal of Geophysical Research: Atmospheres, vol. 128, p. e2023JD038534, 2023.
- E. G. Kolomyts, "Advancing the methods of geo-ecological forests monitoring under global warming," Resources Environment and Information Engineering, vol. 5, pp. 250-269, 2023.
- Z. Ke, X. Liu, M. Wu, Y. Shan, and Y. Shi, "Improved dust representation and impacts on dust transport and radiative effect in CAM5," Journal of Advances in Modeling Earth Systems, vol. 14, p. e2021MS002845, 2022.
- Z. Gao, C. Tan, L. Wu, and S. Z. Li, "Cosp: Co-supervised pretraining of pocket and ligand," arXiv preprint. arXiv:2206.12241, 2022.
- J. Zheng, X. Huang, S. Sangondimath, J. Wang, and Z. Zhang, "Efficient and flexible aggregation and distribution of MODIS atmospheric products based on climate analytics as a service framework," Remote Sensing, vol. 13, p. 3541, 2021.
- H. Huang and Y. Huang, "Radiative sensitivity quantified by a new set of radiation flux kernels based on the ECMWF Reanalysis v5 (ERA5)," Earth System Science Data, vol. 15, pp. 3001-3021, 2023.
- A. Jönsson and F. A.-M. Bender, "Persistence and variability of Earth’s interhemispheric albedo symmetry in 19 years of CERES EBAF observations," Journal of Climate, vol. 35, pp. 249-268, 2022.
- C. Xu, X. Wang, F. Yu, J. Xiong, and X. Chen, "Quadranet v2: Efficient and sustainable training of high-order neural networks with quadratic adaptation," arXiv preprint. arXiv:2405.03192, 2024.
- Z.-M. Zhai, M. Moradi, S. Panahi, Z.-H. Wang, and Y.-C. Lai, "Machine-learning nowcasting of the Atlantic Meridional Overturning Circulation," APL Machine Learning, vol. 2, 2024.
- U. Eswaran, V. Eswaran, K. Murali, and V. Eswaran, "Quantum-Based Predictive Modeling for Extreme Weather Events," in The Rise of Quantum Computing in Industry 6.0 Towards Sustainability, ed: Springer, 2024, pp. 123-140.
- K. Anderson, "Detecting Environmental Stress In Agriculture Using Satellite Imagery And Spectral Indices," 2024.
- S. Wieneke, J. Pacheco-Labrador, M. D. Mahecha, S. Poblador, S. Vicca, and I. A. Janssens, "Comparing the quantum use efficiency of red and far-red sun-induced fluorescence at leaf and canopy under heat-drought stress," Remote Sensing of Environment, vol. 311, p. 114294, 2024.
- J. Sherman, M. Tzortziou, K. J. Turner, J. Goes, and B. Grunert, "Chlorophyll dynamics from Sentinel-3 using an optimized algorithm for enhanced ecological monitoring in complex urban estuarine waters," International Journal of Applied Earth Observation and Geoinformation, vol. 118, p. 103223, 2023.
- D. Slabbert and F. Petruccione, "Hybrid Quantum-Classical Feature Extraction approach for Image Classification using Autoencoders and Quantum SVMs," arXiv preprint. arXiv:2410.18814, 2024.
- Y. Lu, Y. Ying, C. Lin, Y. Wang, J. Jin, X. Jiang, et al., "UNet-Att: a self-supervised denoising and recovery model for two-photon microscopic image," Complex & Intelligent Systems, vol. 11, pp. 1-17, 2025.
- S. R. Wilkinson, C. Hansen, B. Alexia, B. Shamee, B. Lloyd, A. Beasley, et al., "A planetary radar system for detection and high-resolution imaging of nearby celestial bodies," Microwave Journal, vol. 65, pp. 22-42, 2022.
- S. Karmous, N. Adem, M. Atiquzzaman, and S. Samarakoon, "How can optical communications shape the future of deep space communications? A survey," IEEE Communications Surveys & Tutorials, 2024.
- H. I. Ali, H. Kurunathan, M. H. Eldefrawy, F. Gruian, and M. Jonsson, "Navigating the Challenges and Opportunities of Securing Internet of Autonomous Vehicles with Lightweight Authentication," IEEE Access, 2025.
- F. Ali, A. Razzaq, W. Tariq, A. Hameed, A. Rehman, K. Razzaq, et al., "Spectral Intelligence: AI-Driven Hyperspectral Imaging for Agricultural and Ecosystem Applications," Agronomy, vol. 14, p. 2260, 2024.
- . Zhao, W. Zhu, P. Jiao, D. Gao, and O. Wu, "Data poisoning in deep learning: A survey," arXiv preprint. arXiv:2503.22759, 2025.
- F. P. R. Babu, S. A. Kumar, A. G. Reddy, and A. K. Das, "Quantum secure authentication and key agreement protocols for IoT-enabled applications: A comprehensive survey and open challenges," Computer Science Review, vol. 54, p. 100676, 2024.
- G. Nkulenu, "Quantum Computing: The Impending Revolution in Cryptographic Security," 2024.
- H. Shekhawat and D. S. Gupta, "A survey on lattice-based security and authentication schemes for smart-grid networks in the post-quantum era," Concurrency and Computation: Practice and Experience, vol. 36, p. e8080, 2024.
- P. D. O. A. Yahaya, "BLOCKCHAIN TECHNOLOGY ADOPTION AND ENVIRONMENTAL PERFORMANCE," Available at SSRN 5130253, 2025.
- N. Bergner, M. Friedel, D. I. Domeisen, D. Waugh, and G. Chiodo, "Exploring the link between austral stratospheric polar vortex anomalies and surface climate in chemistry-climate models," Atmospheric Chemistry and Physics, vol. 22, pp. 13915-13934, 2022.
- S. M. Rahman, O. H. Alkhalaf, M. S. Alam, S. P. Tiwari, M. Shafiullah, S. M. Al-Judaibi, et al., "Climate change through quantum lens: Computing and machine learning," Earth Systems and Environment, vol. 8, pp. 705-722, 2024.
- A. R. Morgillo, M. F. Sacchi, and C. Macchiavello, "Detecting Markovianity of Quantum Processes via Recurrent Neural Networks," arXiv preprint. arXiv:2406.07226, 2024.
- T. Beck, A. Baroni, R. Bennink, G. Buchs, E. A. C. Pérez, M. Eisenbach, et al., "Integrating quantum computing resources into scientific HPC ecosystems," Future Generation Computer Systems, vol. 161, pp. 11-25, 2024.
- J. N. Pelton and S. Madry, "Space systems, quantum computers, big data and sustainability: New tools for the United Nations Sustainable Development Goals," in Artificial Intelligence for Space: AI4SPACE, ed: CRC Press, 2023, pp. 53-104.
- W. Lin, Y. Xu, S. Yu, H. Wang, Z. Huang, Z. Cao, et al., "Highly Programmable Haptic Decoding and Self-Adaptive Spatiotemporal Feedback Toward Embodied Intelligence," Advanced Functional Materials, p. 2500633, 2025.
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2025 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).