Performance of a sampling stochastic dynamic programming algorithm with various inflow scenario generation methods ...

We present the implementation of a Sampling Stochastic Dynamic Programming (SSDP) algorithm to maximize water value, while meeting consumer demand for the BC Hydro hydroelectric system in British Columbia, Canada. The implementation includes power generation facilities on the Columbia and Peace Rive...

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Main Author: Schaffer, Jennifer Lynn
Format: Text
Language:English
Published: University of British Columbia 2015
Subjects:
Online Access:https://dx.doi.org/10.14288/1.0135659
https://doi.library.ubc.ca/10.14288/1.0135659
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spelling ftdatacite:10.14288/1.0135659 2024-04-28T08:35:25+00:00 Performance of a sampling stochastic dynamic programming algorithm with various inflow scenario generation methods ... Schaffer, Jennifer Lynn 2015 https://dx.doi.org/10.14288/1.0135659 https://doi.library.ubc.ca/10.14288/1.0135659 en eng University of British Columbia article-journal Text ScholarlyArticle 2015 ftdatacite https://doi.org/10.14288/1.0135659 2024-04-02T09:28:28Z We present the implementation of a Sampling Stochastic Dynamic Programming (SSDP) algorithm to maximize water value, while meeting consumer demand for the BC Hydro hydroelectric system in British Columbia, Canada. The implementation includes power generation facilities on the Columbia and Peace River systems. Variability of natural streamflow into a reservoir is a major source of uncertainty when developing reservoir operation policies and determining the value of water within a system. This study investigates SSDP model performance with various hydrologic inputs. Sixty years of historical data are used to generate hydrologic scenarios comprised of inflow and forecast sequences as input to the SSDP model. Scenario types studied include historical record data, inflows and forecasts generated from an autoregressive lag-1 model, and BC Hydro ensemble streamflow prediction forecasts. We present results of our implementation of the SSDP algorithm including a discussion on improved reservoir operation policy and ... Text Peace River DataCite Metadata Store (German National Library of Science and Technology)
institution Open Polar
collection DataCite Metadata Store (German National Library of Science and Technology)
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language English
description We present the implementation of a Sampling Stochastic Dynamic Programming (SSDP) algorithm to maximize water value, while meeting consumer demand for the BC Hydro hydroelectric system in British Columbia, Canada. The implementation includes power generation facilities on the Columbia and Peace River systems. Variability of natural streamflow into a reservoir is a major source of uncertainty when developing reservoir operation policies and determining the value of water within a system. This study investigates SSDP model performance with various hydrologic inputs. Sixty years of historical data are used to generate hydrologic scenarios comprised of inflow and forecast sequences as input to the SSDP model. Scenario types studied include historical record data, inflows and forecasts generated from an autoregressive lag-1 model, and BC Hydro ensemble streamflow prediction forecasts. We present results of our implementation of the SSDP algorithm including a discussion on improved reservoir operation policy and ...
format Text
author Schaffer, Jennifer Lynn
spellingShingle Schaffer, Jennifer Lynn
Performance of a sampling stochastic dynamic programming algorithm with various inflow scenario generation methods ...
author_facet Schaffer, Jennifer Lynn
author_sort Schaffer, Jennifer Lynn
title Performance of a sampling stochastic dynamic programming algorithm with various inflow scenario generation methods ...
title_short Performance of a sampling stochastic dynamic programming algorithm with various inflow scenario generation methods ...
title_full Performance of a sampling stochastic dynamic programming algorithm with various inflow scenario generation methods ...
title_fullStr Performance of a sampling stochastic dynamic programming algorithm with various inflow scenario generation methods ...
title_full_unstemmed Performance of a sampling stochastic dynamic programming algorithm with various inflow scenario generation methods ...
title_sort performance of a sampling stochastic dynamic programming algorithm with various inflow scenario generation methods ...
publisher University of British Columbia
publishDate 2015
url https://dx.doi.org/10.14288/1.0135659
https://doi.library.ubc.ca/10.14288/1.0135659
genre Peace River
genre_facet Peace River
op_doi https://doi.org/10.14288/1.0135659
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