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Article: Capturing Spatio-Temporal Dependencies in the Probabilistic Forecasting of Distribution Locational Marginal Prices

TitleCapturing Spatio-Temporal Dependencies in the Probabilistic Forecasting of Distribution Locational Marginal Prices
Authors
Keywordsbidirectional long short-term memory
deep learning
Electricity price forecasting
multistep-ahead time series forecasting
space-time correlation
Issue Date2021
Citation
IEEE Transactions on Smart Grid, 2021, v. 12, n. 3, p. 2663-2674 How to Cite?
AbstractThis article presents a new spatio-temporal framework for the day-ahead probabilistic forecasting of Distribution Locational Marginal Prices (DLMPs). The approach relies on a recurrent neural network, whose architecture is enriched by introducing a deep bidirectional variant designed to capture the complex time dynamics in multi-step forecasts. In order to account for nodal price differentiation (arising from grid constraints) within a procedure that is scalable to large distribution systems, nodal DLMPs are predicted individually by a single model guided by a generic representation of the grid. This strategy offers the additional benefit to enable cold-start forecasting for new nodes with no history. Indeed, in case of topological changes, e.g., building of a new home or installation of photovoltaic panels, the forecaster intrinsically leverages the statistical information learned from neighbouring nodes to predict the new DLMP, without needing any modification of the tool. The approach is evaluated, along with several other methods, on a radial low voltage network. Outcomes highlight that relying on a compact model is a key component to boost its generalization capabilities in high-dimensionality, while indicating that the proposed tool is effective for both temporal and spatial learning.
Persistent Identifierhttp://hdl.handle.net/10722/308839
ISSN
2023 Impact Factor: 8.6
2023 SCImago Journal Rankings: 4.863
ISI Accession Number ID

 

DC FieldValueLanguage
dc.contributor.authorToubeau, Jean Francois-
dc.contributor.authorMorstyn, Thomas-
dc.contributor.authorBottieau, Jeremie-
dc.contributor.authorZheng, Kedi-
dc.contributor.authorApostolopoulou, Dimitra-
dc.contributor.authorDe Greve, Zacharie-
dc.contributor.authorWang, Yi-
dc.contributor.authorVallee, Francois-
dc.date.accessioned2021-12-08T07:50:14Z-
dc.date.available2021-12-08T07:50:14Z-
dc.date.issued2021-
dc.identifier.citationIEEE Transactions on Smart Grid, 2021, v. 12, n. 3, p. 2663-2674-
dc.identifier.issn1949-3053-
dc.identifier.urihttp://hdl.handle.net/10722/308839-
dc.description.abstractThis article presents a new spatio-temporal framework for the day-ahead probabilistic forecasting of Distribution Locational Marginal Prices (DLMPs). The approach relies on a recurrent neural network, whose architecture is enriched by introducing a deep bidirectional variant designed to capture the complex time dynamics in multi-step forecasts. In order to account for nodal price differentiation (arising from grid constraints) within a procedure that is scalable to large distribution systems, nodal DLMPs are predicted individually by a single model guided by a generic representation of the grid. This strategy offers the additional benefit to enable cold-start forecasting for new nodes with no history. Indeed, in case of topological changes, e.g., building of a new home or installation of photovoltaic panels, the forecaster intrinsically leverages the statistical information learned from neighbouring nodes to predict the new DLMP, without needing any modification of the tool. The approach is evaluated, along with several other methods, on a radial low voltage network. Outcomes highlight that relying on a compact model is a key component to boost its generalization capabilities in high-dimensionality, while indicating that the proposed tool is effective for both temporal and spatial learning.-
dc.languageeng-
dc.relation.ispartofIEEE Transactions on Smart Grid-
dc.subjectbidirectional long short-term memory-
dc.subjectdeep learning-
dc.subjectElectricity price forecasting-
dc.subjectmultistep-ahead time series forecasting-
dc.subjectspace-time correlation-
dc.titleCapturing Spatio-Temporal Dependencies in the Probabilistic Forecasting of Distribution Locational Marginal Prices-
dc.typeArticle-
dc.description.naturelink_to_subscribed_fulltext-
dc.identifier.doi10.1109/TSG.2020.3047863-
dc.identifier.scopuseid_2-s2.0-85099081321-
dc.identifier.volume12-
dc.identifier.issue3-
dc.identifier.spage2663-
dc.identifier.epage2674-
dc.identifier.eissn1949-3061-
dc.identifier.isiWOS:000641976000069-

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