Please use this identifier to cite or link to this item: http://elar.urfu.ru/handle/10995/111797
Title: Adaptive Ensemble Models for Medium-Term Forecasting of Water Inflow When Planning Electricity Generation under Climate Change
Authors: Matrenin, P.
Safaraliev, M.
Dmitriev, S.
Kokin, S.
Eshchanov, B.
Rusina, A.
Issue Date: 2022
Publisher: Elsevier Ltd
Elsevier BV
Citation: Adaptive Ensemble Models for Medium-Term Forecasting of Water Inflow When Planning Electricity Generation under Climate Change / P. Matrenin, M. Safaraliev, S. Dmitriev et al. // Energy Reports. — 2022. — Vol. 8. — P. 439-447.
Abstract: Medium-term forecasting of water inflow is of great importance for small hydroelectric power plants operating in remote power supply areas and having a small reservoir. Improving the forecasting accuracy is aimed at solving the problem of determining the water reserve for the future generation of electricity at hydroelectric power plants, taking into account the regulation in the medium term. Medium-term regulation is necessary to amplify the load in the peak and semi-peak portions of the load curve. The solution to such problems is aggravated by the lack of sufficiently reliable information on water inflow and prospective power consumption, which is of a stochastic nature. In addition, the mid-term planning of electricity generation should consider the seasonality of changes in water inflow, which directly affects the reserves and the possibility of regulation. The paper considers the problem of constructing a model for medium-term forecasting of water inflow for planning electricity generation, taking into account climatic changes in isolated power systems. Taking into account the regularly increasing effect of climate change, the current study proposes using an approach based on machine learning methods, which are distinguished by a high degree of autonomy and automation of learning, that is, the ability to self-adapt. The results showed that the error (RMSE) of the model based on the ensemble of regression decision trees due to constant self-adaptation decreased from 4.5 m3/s to 4.0 m3/s and turned out to be lower than the error of a more complex multilayer recurrent neural network (4.9 m3/s). The research results are intended to improve forecasting reliability in the planning, management, and operation of isolated operating power systems. © 2021 The Author(s).
Keywords: ELECTRIC POWER SYSTEM
ENSEMBLE MODELS
ISOLATED POWER SYSTEM
MEDIUM-TERM FORECASTING
SMALL HYDROPOWER PLANT
WATER INFLOW
CLIMATE CHANGE
CLIMATE MODELS
DECISION TREES
ELECTRIC POWER SYSTEM PLANNING
FORECASTING
HYDROELECTRIC POWER PLANTS
MULTILAYER NEURAL NETWORKS
RECURRENT NEURAL NETWORKS
RESERVOIRS (WATER)
STOCHASTIC SYSTEMS
ELECTRICITY-GENERATION
ENSEMBLE MODELS
FORECASTING ACCURACY
ISOLATED POWER SYSTEM
POWER SUPPLY
REMOTE POWER
SMALL HYDRO POWER PLANTS
SMALL HYDROELECTRIC POWER PLANTS
SMALL RESERVOIRS
WATER INFLOWS
HYDROELECTRIC POWER
URI: http://elar.urfu.ru/handle/10995/111797
Access: info:eu-repo/semantics/openAccess
SCOPUS ID: 85120341646
WOS ID: 000744124800006
PURE ID: 29138924
ISSN: 2352-4847
DOI: 10.1016/j.egyr.2021.11.112
metadata.dc.description.sponsorship: The reported study was funded by RFBR, Sirius University of Science and Technology, JSC Russian Railways and Educational Fund “Talent and success”, project number 20-38-51007.
Appears in Collections:Научные публикации ученых УрФУ, проиндексированные в SCOPUS и WoS CC

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