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  • 1. Contreras, Eva
    et al.
    Herrero, Javier
    Crochemore, Louise
    SMHI, Research Department, Hydrology.
    Pechlivanidis, Ilias
    SMHI, Research Department, Hydrology.
    Photiadou, Christiana
    SMHI, Research Department, Hydrology.
    Aguilar, Cristina
    Jose Polo, Maria
    Advances in the Definition of Needs and Specifications for a Climate Service Tool Aimed at Small Hydropower Plants' Operation and Management2020In: Energies, E-ISSN 1996-1073, Vol. 13, no 7, article id 1827Article in journal (Refereed)
    Download full text (pdf)
    fulltext
  • 2. de la Vega, David
    et al.
    Matthews, James C. G.
    Norin, Lars
    SMHI, Research Department, Atmospheric remote sensing.
    Angulo, Itziar
    Mitigation Techniques to Reduce the Impact of Wind Turbines on Radar Services2013In: Energies, E-ISSN 1996-1073, Vol. 6, no 6, p. 2859-2873Article, review/survey (Refereed)
    Abstract [en]

    Radar services are occasionally affected by wind farms. This paper presents a comprehensive description of the effects that a wind farm may cause on the different radar services, and it compiles a review of the recent research results regarding the mitigation techniques to minimize this impact. Mitigation techniques to be applied at the wind farm and on the radar systems are described. The development of thorough impact studies before the wind farm is installed is presented as the best way to analyze in advance the potential for interference, and subsequently identify the possible solutions to allow the coexistence of wind farms and radar services.

  • 3. Hallgren, Christoffer
    et al.
    Arnqvist, Johan
    Ivanell, Stefan
    Körnich, Heiner
    SMHI, Research Department, Meteorology.
    Vakkari, Ville
    Sahlee, Erik
    Looking for an Offshore Low-Level Jet Champion among Recent Reanalyses: A Tight Race over the Baltic Sea2020In: Energies, E-ISSN 1996-1073, Vol. 13, no 14, article id 3670Article in journal (Refereed)
    Download full text (pdf)
    Looking for an Offshore Low-Level Jet Champion among Recent Reanalyses
  • 4. Janzon, Erik
    et al.
    Körnich, Heiner
    SMHI, Research Department, Meteorology.
    Arnqvist, Johan
    Rutgersson, Anna
    Single Column Model Simulations of Icing Conditions in Northern Sweden: Sensitivity to Surface Model Land Use Representation2020In: Energies, E-ISSN 1996-1073, Vol. 13, no 16, article id 4258Article in journal (Refereed)
    Download full text (pdf)
    fulltext
  • 5. Molinder, Jennie
    et al.
    Scher, Sebastian
    Nilsson, Erik
    Körnich, Heiner
    SMHI, Research Department, Meteorology.
    Bergstrom, Hans
    Sjoblom, Anna
    Probabilistic Forecasting of Wind Turbine Icing Related Production Losses Using Quantile Regression Forests2021In: Energies, E-ISSN 1996-1073, Vol. 14, no 1, article id 158Article in journal (Refereed)
    Download full text (pdf)
    fulltext
  • 6. Nilsson, Erik
    et al.
    Rutgersson, Anna
    Dingwell, Adam
    Bjorkqvist, Jan-Victor
    Pettersson, Heidi
    Axell, Lars
    SMHI, Research Department, Oceanography.
    Nyberg, Johan
    Stromstedt, Erland
    Characterization of Wave Energy Potential for the Baltic Sea with Focus on the Swedish Exclusive Economic Zone2019In: Energies, E-ISSN 1996-1073, Vol. 12, no 5, article id 793Article in journal (Refereed)
    Download full text (pdf)
    fulltext
  • 7. Prabahar, Nimal Sudhan Saravana
    et al.
    Fredriksson, Sam
    SMHI, Research Department, Oceanography.
    Brostrom, Goran
    Bergqvist, Bjorn
    Validation of Actuator Line Modeling and Large Eddy Simulations of Kite-Borne Tidal Stream Turbines against ADCP Observations2023In: Energies, E-ISSN 1996-1073, Vol. 16, no 16, article id 6040Article in journal (Refereed)
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    Validation of Actuator Line Modeling and Large Eddy Simulations of Kite-Borne Tidal Stream Turbines against ADCP Observations
  • 8. van Noord, Michiel
    et al.
    Landelius, Tomas
    SMHI, Research Department, Atmospheric remote sensing.
    Andersson, Sandra
    SMHI, Core Services.
    Snow-Induced PV Loss Modeling Using Production-Data Inferred PV System Models2021In: Energies, E-ISSN 1996-1073, Vol. 14, no 6, article id 1574Article in journal (Refereed)
    Abstract [en]

    Snow-induced photovoltaic (PV)-energy losses (snow losses) in snowy and cold locations vary up to 100% monthly and 34% annually, according to literature. Levels that illustrate the need for snow loss estimation using validated models. However, to our knowledge, all these models build on limited numbers of sites and winter seasons, and with limited climate diversity. To overcome this limitation in underlying statistics, we investigate the estimation of snow losses using a PV system's yield data together with freely available gridded weather datasets. To develop and illustrate this approach, 263 sites in northern Sweden are studied over multiple winters. Firstly, snow-free production is approximated by identifying snow-free days and using corresponding data to infer tilt and azimuth angles and a snow-free performance model incorporating shading effects, etc. This performance model approximates snow-free monthly yields with an average hourly standard deviation of 6.9%, indicating decent agreement. Secondly, snow losses are calculated as the difference between measured and modeled yield, showing annual snow losses up to 20% and means of 1.5-6.2% for winters with data for at least 89 sites. Thirdly, two existing snow loss estimation models are compared to our calculated snow losses, with the best match showing a correlation of 0.73 and less than 1% bias for annual snow losses. Based on these results, we argue that our approach enables studying snow losses for high numbers of PV systems and winter seasons using existing datasets.

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    Snow-Induced PV Loss Modeling Using Production-Data Inferred PV System Models
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