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dc.contributor.authorHowlader, Abdul Motin, Hamed Mohsenian-Rad-
dc.date.accessioned2019-09-06T21:46:44Z-
dc.date.available2019-09-06T21:46:44Z-
dc.date.issued2019-09-06-
dc.identifier.urihttp://item.bettergrids.org/handle/1001/540-
dc.description.abstract=============================================================================================== Resource Forecasting Abdul Motin HOwlader and Hamed Mohsenian-Rad University of California, Riverside July 2019 =============================================================================================== ---------------------------------4h-ahead of prediction---------------------------------------- Python File: Forecast_CE-CERT_4h_Pred.py To run this Python File: Python Version 3.6.3 and Keras API are required. Deep neural network method such as Long short-term memory (LSTM) was applied to forecast the PV power. The Python File reads all the input parameters from the "CE-CERT_1200_4h.csv" for LSTM network. Output Results: 4h-ahead of PV power forecasting and it will be saved in the "file_path.csv" file. An actual and prediction graph will be displayed. Percentage normalize root mean square error (%nRMSE) will be shown as an output result. In output "file_path.csv", the first column refers as number of data point, second column for actual data, and third column for prediction data. ---------------------------------24h-ahead of prediction---------------------------------------- Python File: Forecast_CE-CERT_24h_Pred.py To run this Python File: Python Version 3.6.3 and Keras API are required. Deep neural network method such as Long short-term memory (LSTM) was applied to forecast the PV power. The Python File reads all the input parameters from the "CE-CERT_1200_24h.csv" for LSTM network. Output Results: 24h-ahead of PV power forecasting and it will be saved in the "file_path.csv" file. An actual and prediction graph will be displayed. Percentage normalize root mean square error (%nRMSE) will be shown as an output result. In output "file_path.csv", the first column refers as number of data point, second column for actual data, and third column for prediction data.en_US
dc.publisherUniversity of California, Riversideen_US
dc.titleResource Forecasting Algorithmen_US
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grid.buses0en_US
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grid.loads0en_US
grid.feeders0en_US
grid.switches0en_US
grid.nodes0en_US
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grid.climateZones0en_US
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grid.language.swpythonen_US
Appears in Collections:Software Algorithm Collection

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