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Characterising the uncertainty in potential large rapid changes in wind power generationCutler, Nicholas Jeffrey, Electrical Engineering & Telecommunications, Faculty of Engineering, UNSW January 2009 (has links)
Wind energy forecasting can facilitate wind energy integration into a power system. In particular, the management of power system security would benefit from forecast information on plausible large, rapid change in wind power generation. Numerical Weather Prediction (NWP) systems are presently the best available tools for wind energy forecasting for projection times between 3 and 48 hours. In this thesis, the types of weather phenomena that cause large, rapid changes in wind power in southeast Australia are classified using observations from three wind farms. The results show that the majority of events are due to horizontal propagation of spatial weather features. A study of NWP systems reveals that they are generally good at forecasting the broad large-scale weather phenomena but may misplace their location relative to the physical world. Errors may result from developing single time-series forecasts from a single NWP grid point, or from a single interpolation of proximate grid points. This thesis presents a new approach that displays NWP wind forecast information from a field of multiple grid points around the wind farm location. Displaying the NWP wind speeds at the multiple grid points directly would potentially be misleading as they each reflect the estimated local surface roughness and terrain at a particular grid point. Thus, a methodology was developed to convert the NWP wind speeds at the multiple grid points to values that reflect surface conditions at the wind farm site. The conversion method is evaluated with encouraging results by visual inspection and by comparing with an NWP ensemble. The multiple grid point information can also be used to improve downscaling results by filtering out data where there is a large chance of a discrepancy between an NWP time-series forecast and observations. The converted wind speeds at multiple grid points can be downscaled to site-equivalent wind speeds and transformed to wind farm power assuming unconstrained wind farm operation at one or more wind farm sites. This provides a visual decision support tool that can help a forecast user assess the possibility of large, rapid changes in wind power from one or more wind farms.
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Computations of tomorrow's rain.Davies, David. January 1970 (has links)
No description available.
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Spatial truncation errors in a filtered barotropic model.Chouinard, Clément January 1971 (has links)
No description available.
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Evolution of horizontal truncation errors in a primitive equations model.Béland, Michel January 1973 (has links)
No description available.
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Characterising the uncertainty in potential large rapid changes in wind power generationCutler, Nicholas Jeffrey, Electrical Engineering & Telecommunications, Faculty of Engineering, UNSW January 2009 (has links)
Wind energy forecasting can facilitate wind energy integration into a power system. In particular, the management of power system security would benefit from forecast information on plausible large, rapid change in wind power generation. Numerical Weather Prediction (NWP) systems are presently the best available tools for wind energy forecasting for projection times between 3 and 48 hours. In this thesis, the types of weather phenomena that cause large, rapid changes in wind power in southeast Australia are classified using observations from three wind farms. The results show that the majority of events are due to horizontal propagation of spatial weather features. A study of NWP systems reveals that they are generally good at forecasting the broad large-scale weather phenomena but may misplace their location relative to the physical world. Errors may result from developing single time-series forecasts from a single NWP grid point, or from a single interpolation of proximate grid points. This thesis presents a new approach that displays NWP wind forecast information from a field of multiple grid points around the wind farm location. Displaying the NWP wind speeds at the multiple grid points directly would potentially be misleading as they each reflect the estimated local surface roughness and terrain at a particular grid point. Thus, a methodology was developed to convert the NWP wind speeds at the multiple grid points to values that reflect surface conditions at the wind farm site. The conversion method is evaluated with encouraging results by visual inspection and by comparing with an NWP ensemble. The multiple grid point information can also be used to improve downscaling results by filtering out data where there is a large chance of a discrepancy between an NWP time-series forecast and observations. The converted wind speeds at multiple grid points can be downscaled to site-equivalent wind speeds and transformed to wind farm power assuming unconstrained wind farm operation at one or more wind farm sites. This provides a visual decision support tool that can help a forecast user assess the possibility of large, rapid changes in wind power from one or more wind farms.
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Volcanism, climate change, and prehistoric cultural succession in southern Washington and north-central Idaho /Davis, Loren G. January 1995 (has links)
Thesis (M.A.I.S.)--Oregon State University, 1996. / Typescript (photocopy). Includes bibliographical references (leaves 191-211). Also available via the World Wide Web.
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Integrating technology into a grade five resource-based weather unit /Pope, Ellis Abel, January 1999 (has links)
Thesis (M.Ed.)--Memorial University of Newfoundland, 1999. / Bibliography: leaves [145-148].
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Impact of GFO satellite and ocean nowcast/forecast systems on Naval antisubmarine warfare (ASW) /Amezaga, Guillermo R. January 2006 (has links) (PDF)
Thesis (M.S. in Meteorology and Physical Oceanography)--Naval Postgraduate School, March 2006. / Thesis Advisor(s): Peter C. Chu. Includes bibliographical references (p. 131-132). Also available online.
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Numerical methods for data assimilation in weather forecastingYan, Hanjun 20 August 2018 (has links)
Data assimilation plays an important role in weather forecasting. The purpose of data assimilation is try to provide a more accurate atmospheric state for future forecast. Several existed methods currently used in this field fall into two categories: statistical data assimilation and variational data assimilation. This thesis focuses mainly on variational data assimilation. The original objective function of three dimensional data assimilation (3D-VAR) consists of two terms: the difference between the pervious forecast and analysis and the difference between the observations and analysis in observation space. Considering the inaccuracy of previous forecasting results, we replace the first term by the difference between the previous forecast gradients and analysis gradients. The associated data fitting term can be interpreted using the second-order finite difference matrix as the inverse of the background error covariance matrix in the 3D-VAR setting. In our approach, it is not necessary to estimate the background error covariance matrix and to deal with its inverse in the 3D-VAR algorithm. Indeed, the existence and uniqueness of the analysis solution of the proposed objective function are already established. Instead, the solution can be calculated using the conjugate gradient method iteratively. We present the experimental results based on WRF simulations. We show that the performance of this forecast gradient based DA model is better than that of 3D-VAR. Next, we propose another optimization method of variational data assimilation. Using the tensor completion in the cost function for the analysis, we replace the second term in the 3D-VAR cost function. This model is motivated by a small number of observations compared with the large portion of the grids. Applying the alternating direction method of multipliers to solve this optimization problem, we conduct numerical experiments on real data. The results show that this tensor completion based DA model is competitive in terms of prediction accuracy with 3D-VAR and the forecast gradient based DA model. Then, 3D-VAR and the two model proposed above lack temporal information, we construct a third model in four-dimensional space. To include temporal information, this model is based on the second proposed model, in which introduce the total variation to describe the change of atmospheric state. To this end, we use the alternating direction method of multipliers. One set of experimental results generates a positive performance. In fact, the prediction accuracy of our third model is better than that of 3D-VAR, the forecast gradient based DA model, and the tensor completion based DA model. Nevertheless, although the other sets of experimental results show that this model has a better performance than 3D-VAR and the forecast gradient based DA model, its prediction accuracy is slightly lower than the tensor completion based model.
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Prevalence of Severe Weather Phobia in High School Students Who Experienced a Traumatic Weather EventMason, Tera Cecile 01 May 2010 (has links)
The current study examined the prevalence of severe weather phobia in high school students who had experienced a traumatic weather event and considered possible predictor variables to distinguish between students who did and did not develop severe weather phobia after experiencing the traumatic weather event. Participants (N = 17) completed a diagnostic interview and various questionnaires. Severe weather phobia symptoms (e.g., excessive fear, avoidance, anticipatory anxiety, realization that fear is excessive, distress or dysfunction) were common in the sample. Higher levels of PTSD symptoms and certain coping styles distinguished between those with phobia or subclinical phobia and those without, indicating that traumatic responses to severe weather and coping with severe weather by using social support or restraint predicts the development of severe weather phobia.
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