scholarly journals Tropical systematic and random error energetics based on NCEP (MRF) analysis-forecast system — A barotropic approach

2004 ◽  
Vol 113 (2) ◽  
pp. 167-195 ◽  
Author(s):  
S. De ◽  
D. R. Chakraborty
2020 ◽  
Author(s):  
Alper Onen ◽  
Mehdi H. Afshar ◽  
Burak Bulut

<p>This study investigates the performance of short term daily hydrological forecasts utilizing Global Forecast System (GFS) and Hydrologiska Byrans Vattenbalansavdelning (HBV) model over a major sub-region (~25000 km<sup>2</sup>) located in Euphrates River Basin, Turkey. The test basin, over which the forecast algorithm is implemented, is home to five (four operational and another almost-complete) dams with 3 three more planned; all eight located within last 300 km reach of 730 km-long Murat River. The algorithm is aimed to operate through a user-friendly and reliable commercially available forecast interface for decision makers working on fields such as energy production scheme optimization and flood mitigation. In the development of this forecast strategy, the main basin was divided into multiple subbasins that are bordered with corresponding facilities and each subbasin is independently modelled & calibrated by HBV model and meteorological records using available stream gauge and weather station data collected in the region. The Global Forecast System (GFS) that provides 16-day meteorological forecast is then applied to model as the input for hydrological predictions. By implementing and clustering daily operation records of inflow and outflow data received directly from related regional SCADA system, volumetric hydrograph corrections are applied on the model output as a final corrective filter to maximize the temporal performance over the 16-day forecast period. As the system has been in use for nearly 20 months (as of January 2020), our results have shown that a calibrated data cluster performance nearing 0.98 has been reached in correlation and 0.90 in Nash-Sutcliffe index:  cluster-independent average weekly inspected forecast performance of almost 0.87 in correlation and 0.85 in Nash-Sutcliffe index has been obtained.</p>


10.28945/3062 ◽  
2007 ◽  
Author(s):  
Jim Everett

Bauxite is mined and transported by conveyor to a processing plant, screened and washed, then placed into blended stockpiles to feed the alumina refinery. While being stacked to the stockpile, the ore is sampled. Completed stockpiles must be acceptably close to target grade (composition), not only in alumina, but also in residual silica, carbon and sodium carbonate. The mine is an open-cut pit. Each day the choice of ore to mine, from multiple locations in the pit, is based upon estimates of grade. Estimated grade, from exploration drilling of the area before mining, has both systematic and random error. This paper describes an information system to guide the daily choice of ore to mine. Continually updating the comparison between forecasts and sampled product, the system provides adjusted forecasts. Ore is selected to bring the exponentially smoothed grade to target, in each of the control minerals.


Author(s):  
Mayuresh Virkar ◽  
N Arul Kumar ◽  
Pranav Chadha ◽  
Reuben Jake Rodrigues ◽  
Anup Kharde

Introduction: The aim of the present study was to compare two immobilization systems for comparison of setup errors in targeted radiotherapy. Methods: Retrospective analysis was done for the patients undergoing radiotherapy from May 2012 to December 2018 at our institution. Immobilization was performed on 30 patients sessions (Vacuum cushion i.e., Vac-Lok™ = 15; Thermoplastic mould i.e., Pelvicast pelvic masks = 15). A total of 763 cone-beams were analysed. The target lesion location was verified by cone-beam computed tomography (CBCT) prior to each session, with displacements assessed by CBCT simulation prior to each treatment session. Systematic setup errors, random setup errors, isocenter deviations in the Medio-lateral (ML), Supero-inferior (SI), Antero-posterior (AP), Rotation (yaw) directions of the patient position was calculated. Results: On comparing the Vac-Lok™ and Pelvicast pelvic masks group with respect to Systematic and random error in the lateral, longitudinal, vertical and YAW direction, no statistically significant difference was seen except the random error in YAW direction (P=0.037, Unpaired t-test). There was no difference observed in comparing the isocentric deviation. Conclusion: It was inferred and concluded that using a vacuum cushion for pelvic radiotherapy provides no added benefit compared to using a thermoplastic mould. Thermoplastic mould is recommended for patients receiving pelvic radiotherapy to improve overall reproducibility.Keywords: Rotational therapy; Radiotherapy; Systematic, random error; Thermoplastic mould; Vacuum cushion.


2008 ◽  
Vol 2008 (1) ◽  
pp. 1023-1029
Author(s):  
ANA J. Abasca ◽  
Sonia Castanedo ◽  
A. David Gutierrez ◽  
Raul Medina ◽  
Inigo J. Losada ◽  
...  

ABSTRACT In the framework of the ESEOO Project (Spanish Operational Oceanography System) a complete set of models has been developed to simulate oil spills transport and fate processes. These models have been integrated in a user friendly operational system called TESEO. The main objective of the TESEO system is to integrate the meteorological and oceanographic data as well as the oil properties data required by the oil spill model to provide the evolution of contaminating spills at a regional scale. The system is linked with the operational winds and currents forecast system and, consequently, is able to provide useful information to decision-makers in a crisis situation. The performance of TESEO system has been successfully tested during four operational oil spills exercises organized by the Spanish Maritime Safety and Rescue Agency (SASEMAR) with the collaboration of the ESEOO Group. In these exercises, the TESEO system was used to provide forecast spill trajectories and fate processes to decision-makers in real time. Detailed information regarding the operational requirements of the system and its utilization during the Finisterre-2006 exercise is presented in this paper. The Finisterre-2006 exercise, as well as the other operational exercises performed, shows the TESEO system'S capability as a useful tool in an oil spill response.


2015 ◽  
Vol 30 (6) ◽  
pp. 1623-1643 ◽  
Author(s):  
Badrinath Nagarajan ◽  
Luca Delle Monache ◽  
Joshua P. Hacker ◽  
Daran L. Rife ◽  
Keith Searight ◽  
...  

Abstract Recently, two analog-based postprocessing methods were demonstrated to reduce the systematic and random errors from Weather Research and Forecasting (WRF) Model predictions of 10-m wind speed over the central United States. To test robustness and generality, and to gain a deeper understanding of postprocessing forecasts with analogs, this paper expands upon that work by applying both analog methods to surface stations evenly distributed across the conterminous United States over a 1-yr period. The Global Forecast System (GFS), North American Mesoscale Forecast System (NAM), and Rapid Update Cycle (RUC) forecasts for screen-height wind, temperature, and humidity are postprocessed with the two analog-based methods and with two time series–based methods—a running mean bias correction and an algorithm inspired by the Kalman filter. Forecasts are evaluated according to a range of metrics, including random and systematic error components; correlation; and by conditioning the error distributions on lead time, location, error magnitude, and day-to-day error variability. Results show that the analog methods are generally more effective than time series–based methods at reducing the random error component, leading to an overall reduction in root-mean-square error. Details among the methods differ and are elucidated upon in this study. The relative levels of random and systematic error in the raw forecasts determine, to a large extent, the effectiveness of each postprocessing method in reducing forecast errors. When the errors are dominated by random errors (e.g., where thunderstorms are common), the analog-based methods far outperform the time series–based methods. When the errors are strictly systematic (i.e., a bias), the analog methods lose their advantage over the time series methods. It is shown that slowly evolving systematic errors rarely dominate, so reducing the random error component is most effective at reducing the error magnitude. The results are shown to be valid for all seasons. The analog methods show similar performance to the operational model output statistics (MOS) while showing greater reduction of random errors at certain lead times.


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