Comprehensive forecasting based analysis using stacked stateless and
stateful Gated Recurrent Unit models
- URL: http://arxiv.org/abs/2008.05575v2
- Date: Fri, 14 Aug 2020 15:19:53 GMT
- Title: Comprehensive forecasting based analysis using stacked stateless and
stateful Gated Recurrent Unit models
- Authors: Swayamjit Saha, Niladri Majumder and Devansh Sangani
- Abstract summary: Photovoltaic power is a renewable source of energy which is highly used in industries.
In economically struggling countries it can be a potential source of electric energy as other non-renewable resources are already exhausting.
This paper explores forecasting of solar irradiance on four such regions, out of which three is in West Bengal and one outside to depict with using stacked Gated Recurrent Unit (GRU) models.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Photovoltaic power is a renewable source of energy which is highly used in
industries. In economically struggling countries it can be a potential source
of electric energy as other non-renewable resources are already exhausting. Now
if installation of a photovoltaic cell in a region is done prior to research,
it may not provide the desired energy output required for running that region.
Hence forecasting is required which can elicit the output from a particular
region considering its geometrical coordinates, solar parameter like GHI and
weather parameters like temperature and wind speed etc. Our paper explores
forecasting of solar irradiance on four such regions, out of which three is in
West Bengal and one outside to depict with using stacked Gated Recurrent Unit
(GRU) models. We have checked that stateful stacked gated recurrent unit model
improves the prediction accuracy significantly.
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