Contribution to the forecast skill of meteorological and air pollution numerical predictions at mesoscale and urban scale with post-processing algorithms ; Συμβολή στην προγνωστική ικανότητα των μετεωρολογικών και ατμοσφαιρικών αριθμητικών προβλέψεων σε μέση και αστική κλίμακα με αλγόριθμους μετα-επεξεργασίας
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| Titel: | Contribution to the forecast skill of meteorological and air pollution numerical predictions at mesoscale and urban scale with post-processing algorithms ; Συμβολή στην προγνωστική ικανότητα των μετεωρολογικών και ατμοσφαιρικών αριθμητικών προβλέψεων σε μέση και αστική κλίμακα με αλγόριθμους μετα-επεξεργασίας |
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| Autoren: | Pappa, Areti, Παππά, Αρετή |
| Verlagsinformationen: | University of Patras Πανεπιστήμιο Πατρών |
| Publikationsjahr: | 2024 |
| Bestand: | National Archive of PhD Theses (National Documentation Centre Greece) |
| Schlagwörter: | Αριθμητική πρόγνωση καιρού, Δίκτυα μακράς-βραχείας μνήμης, Αλγόριθμοι μετα-επεξεργασίας, Αέρια ρύπανση, Numerical weather prediction, Long short-term memory networks, Post-processing algorithms, Air pollution, Φυσική, Φυσικές Επιστήμες, Εφαρμοσμένη φυσική, Μαθηματικά, Μοντελοποίηση και Προσομοίωση, Physical Sciences, Natural Sciences, Applied Physics, Mathematics, Modeling and Simulation |
| Beschreibung: | Significant scientific and technological breakthroughs in the last century have enabled the quantification of uncertainty in unstable nonlinear dynamic systems, such as the atmosphere. Complex atmospheric processes, including atmospheric dynamics, energy transfers, and chemical reactions have been successfully simulated by Numerical Weather Prediction (NWP) models. The ability of these models to accurately represent phenomena across a diverse range of scales, from the microscale to the global scale, has established them as a fundamental component in atmospheric studies. Their pivotal role has, in turn, spurred an increased focus in scientific research on enhancing the accuracy of numerical forecasts. This entails refining NWP models for a more precise representation of atmospheric processes and applying advanced statistical methods to improve model outputs. This dual approach - advancing model sophistication while also developing robust statistical techniques - has been instrumental in elevating the precision and reliability of weather forecasting. The subject of this dissertation focuses on developing and assessing advanced statistical techniques aimed at enhancing the accuracy of weather and air quality numerical predictions. These approaches aim to tackle the inherent uncertainties in weather and air quality modeling by correcting errors in NWP outputs, showcasing a comprehensive methodology for improving forecasting in these vital domains. As a preliminary step, a comprehensive assessment is carried out to evaluate the accuracy and effectiveness of the numerical weather and air quality predictions. This is followed by an analysis of how inaccuracies in meteorological forecasts impact air quality forecasting. The study culminates in the employment of state-of-the-art statistical methods. These include post-processing filters, analytically optimized multi-model ensemble techniques, and the generation of neural networks, all aimed at enhancing the accuracy of numerical predictions. The versatility of these ... |
| Publikationsart: | doctoral or postdoctoral thesis |
| Sprache: | English |
| Relation: | https://hdl.handle.net/10442/hedi/56805 |
| DOI: | 10.12681/eadd/56805 |
| Verfügbarkeit: | https://hdl.handle.net/10442/hedi/56805 https://doi.org/10.12681/eadd/56805 |
| Dokumentencode: | edsbas.EB24CFDD |
| Datenbank: | BASE |
| Abstract: | Significant scientific and technological breakthroughs in the last century have enabled the quantification of uncertainty in unstable nonlinear dynamic systems, such as the atmosphere. Complex atmospheric processes, including atmospheric dynamics, energy transfers, and chemical reactions have been successfully simulated by Numerical Weather Prediction (NWP) models. The ability of these models to accurately represent phenomena across a diverse range of scales, from the microscale to the global scale, has established them as a fundamental component in atmospheric studies. Their pivotal role has, in turn, spurred an increased focus in scientific research on enhancing the accuracy of numerical forecasts. This entails refining NWP models for a more precise representation of atmospheric processes and applying advanced statistical methods to improve model outputs. This dual approach - advancing model sophistication while also developing robust statistical techniques - has been instrumental in elevating the precision and reliability of weather forecasting. The subject of this dissertation focuses on developing and assessing advanced statistical techniques aimed at enhancing the accuracy of weather and air quality numerical predictions. These approaches aim to tackle the inherent uncertainties in weather and air quality modeling by correcting errors in NWP outputs, showcasing a comprehensive methodology for improving forecasting in these vital domains. As a preliminary step, a comprehensive assessment is carried out to evaluate the accuracy and effectiveness of the numerical weather and air quality predictions. This is followed by an analysis of how inaccuracies in meteorological forecasts impact air quality forecasting. The study culminates in the employment of state-of-the-art statistical methods. These include post-processing filters, analytically optimized multi-model ensemble techniques, and the generation of neural networks, all aimed at enhancing the accuracy of numerical predictions. The versatility of these ... |
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| DOI: | 10.12681/eadd/56805 |
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