Building the Sun4Cast System: Improvements in Solar Power ForecastingSource: Bulletin of the American Meteorological Society:;2017:;volume 099:;issue 001::page 121Author:Haupt, Sue Ellen
,
Kosović, Branko
,
Jensen, Tara
,
Lazo, Jeffrey K.
,
Lee, Jared A.
,
Jiménez, Pedro A.
,
Cowie, James
,
Wiener, Gerry
,
McCandless, Tyler C.
,
Rogers, Matthew
,
Miller, Steven
,
Sengupta, Manajit
,
Xie, Yu
,
Hinkelman, Laura
,
Kalb, Paul
,
Heiser, John
DOI: 10.1175/BAMS-D-16-0221.1Publisher: American Meteorological Society
Abstract: AbstractAs integration of solar power into the national electric grid rapidly increases, it becomes imperative to improve forecasting of this highly variable renewable resource. Thus, a team of researchers from the public, private, and academic sectors partnered to develop and assess a new solar power forecasting system, Sun4Cast. The partnership focused on improving decision-making for utilities and independent system operators, ultimately resulting in improved grid stability and cost savings for consumers. The project followed a value chain approach to determine key research and technology needs to reach desired results.Sun4Cast integrates various forecasting technologies across a spectrum of temporal and spatial scales to predict surface solar irradiance. Anchoring the system is WRF-Solar, a version of the Weather Research and Forecasting (WRF) numerical weather prediction (NWP) model optimized for solar irradiance prediction. Forecasts from multiple NWP models are blended via the Dynamic Integrated Forecast (DICast) System, which forms the basis of the system beyond about 6 h. For short-range (0?6 h) forecasts, Sun4Cast leverages several observation-based nowcasting technologies. These technologies are blended via the Nowcasting Expert System Integrator (NESI). The NESI and DICast systems are subsequently blended to produce short- to midterm irradiance forecasts for solar array locations. The irradiance forecasts are translated into power with uncertainties quantified using an analog ensemble approach and are provided to the industry partners for real-time decision-making. The Sun4Cast system ran operationally throughout 2015 and results were assessed.This paper analyzes the collaborative design process, discusses the project results, and provides recommendations for best-practice solar forecasting.
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contributor author | Haupt, Sue Ellen | |
contributor author | Kosović, Branko | |
contributor author | Jensen, Tara | |
contributor author | Lazo, Jeffrey K. | |
contributor author | Lee, Jared A. | |
contributor author | Jiménez, Pedro A. | |
contributor author | Cowie, James | |
contributor author | Wiener, Gerry | |
contributor author | McCandless, Tyler C. | |
contributor author | Rogers, Matthew | |
contributor author | Miller, Steven | |
contributor author | Sengupta, Manajit | |
contributor author | Xie, Yu | |
contributor author | Hinkelman, Laura | |
contributor author | Kalb, Paul | |
contributor author | Heiser, John | |
date accessioned | 2019-09-19T10:06:37Z | |
date available | 2019-09-19T10:06:37Z | |
date copyright | 6/16/2017 12:00:00 AM | |
date issued | 2017 | |
identifier other | bams-d-16-0221.1.pdf | |
identifier uri | http://yetl.yabesh.ir/yetl1/handle/yetl/4261638 | |
description abstract | AbstractAs integration of solar power into the national electric grid rapidly increases, it becomes imperative to improve forecasting of this highly variable renewable resource. Thus, a team of researchers from the public, private, and academic sectors partnered to develop and assess a new solar power forecasting system, Sun4Cast. The partnership focused on improving decision-making for utilities and independent system operators, ultimately resulting in improved grid stability and cost savings for consumers. The project followed a value chain approach to determine key research and technology needs to reach desired results.Sun4Cast integrates various forecasting technologies across a spectrum of temporal and spatial scales to predict surface solar irradiance. Anchoring the system is WRF-Solar, a version of the Weather Research and Forecasting (WRF) numerical weather prediction (NWP) model optimized for solar irradiance prediction. Forecasts from multiple NWP models are blended via the Dynamic Integrated Forecast (DICast) System, which forms the basis of the system beyond about 6 h. For short-range (0?6 h) forecasts, Sun4Cast leverages several observation-based nowcasting technologies. These technologies are blended via the Nowcasting Expert System Integrator (NESI). The NESI and DICast systems are subsequently blended to produce short- to midterm irradiance forecasts for solar array locations. The irradiance forecasts are translated into power with uncertainties quantified using an analog ensemble approach and are provided to the industry partners for real-time decision-making. The Sun4Cast system ran operationally throughout 2015 and results were assessed.This paper analyzes the collaborative design process, discusses the project results, and provides recommendations for best-practice solar forecasting. | |
publisher | American Meteorological Society | |
title | Building the Sun4Cast System: Improvements in Solar Power Forecasting | |
type | Journal Paper | |
journal volume | 99 | |
journal issue | 1 | |
journal title | Bulletin of the American Meteorological Society | |
identifier doi | 10.1175/BAMS-D-16-0221.1 | |
journal fristpage | 121 | |
journal lastpage | 136 | |
tree | Bulletin of the American Meteorological Society:;2017:;volume 099:;issue 001 | |
contenttype | Fulltext |