Modeling Climate Change Impact on Wind Power Resources Using Adaptive
Neuro-Fuzzy Inference System
- URL: http://arxiv.org/abs/2001.04279v1
- Date: Thu, 9 Jan 2020 17:35:56 GMT
- Title: Modeling Climate Change Impact on Wind Power Resources Using Adaptive
Neuro-Fuzzy Inference System
- Authors: Narjes Nabipour, Amir Mosavi, Eva Hajnal, Laszlo Nadai, Shahab
Shamshirband, Kwok-Wing Chau
- Abstract summary: Middle and northern parts of the Caspian Sea are placed with the highest values of wind power.
Results of study indicated that the middle and northern parts of the Caspian Sea are placed with the highest values of wind power.
- Score: 1.293050392312921
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Climate change impacts and adaptations are the subjects to ongoing issues
that attract the attention of many researchers. Insight into the wind power
potential in an area and its probable variation due to climate change impacts
can provide useful information for energy policymakers and strategists for
sustainable development and management of the energy. In this study, spatial
variation of wind power density at the turbine hub-height and its variability
under future climatic scenarios are taken under consideration. An ANFIS based
post-processing technique was employed to match the power outputs of the
regional climate model with those obtained from the reference data. The
near-surface wind data obtained from a regional climate model are employed to
investigate climate change impacts on the wind power resources in the Caspian
Sea. Subsequent to converting near-surface wind speed to turbine hub-height
speed and computation of wind power density, the results have been investigated
to reveal mean annual power, seasonal, and monthly variability for a 20-year
period in the present (1981-2000) and in the future (2081-2100). The findings
of this study indicated that the middle and northern parts of the Caspian Sea
are placed with the highest values of wind power. However, the results of the
post-processing technique using adaptive neuro-fuzzy inference system (ANFIS)
model showed that the real potential of the wind power in the area is lower
than those of projected from the regional climate model.
Related papers
- FengWu-W2S: A deep learning model for seamless weather-to-subseasonal forecast of global atmosphere [53.22497376154084]
We propose FengWu-Weather to Subseasonal (FengWu-W2S), which builds on the FengWu global weather forecast model and incorporates an ocean-atmosphere-land coupling structure along with a diverse perturbation strategy.
Our hindcast results demonstrate that FengWu-W2S reliably predicts atmospheric conditions out to 3-6 weeks ahead, enhancing predictive capabilities for global surface air temperature, precipitation, geopotential height and intraseasonal signals such as the Madden-Julian Oscillation (MJO) and North Atlantic Oscillation (NAO)
Our ablation experiments on forecast error growth from daily to seasonal timescales reveal potential
arXiv Detail & Related papers (2024-11-15T13:44:37Z) - Efficient Localized Adaptation of Neural Weather Forecasting: A Case Study in the MENA Region [62.09891513612252]
We focus on limited-area modeling and train our model specifically for localized region-level downstream tasks.
We consider the MENA region due to its unique climatic challenges, where accurate localized weather forecasting is crucial for managing water resources, agriculture and mitigating the impacts of extreme weather events.
Our study aims to validate the effectiveness of integrating parameter-efficient fine-tuning (PEFT) methodologies, specifically Low-Rank Adaptation (LoRA) and its variants, to enhance forecast accuracy, as well as training speed, computational resource utilization, and memory efficiency in weather and climate modeling for specific regions.
arXiv Detail & Related papers (2024-09-11T19:31:56Z) - Turbine location-aware multi-decadal wind power predictions for Germany using CMIP6 [0.0]
Climate models can provide insights and should be used for long-term power planning.
In this work we use Gaussian processes to predict power output given wind speeds from a global climate model.
Our results indicate that wind energy will likely remain a reliable energy source in the future.
arXiv Detail & Related papers (2024-08-27T09:04:08Z) - VegeDiff: Latent Diffusion Model for Geospatial Vegetation Forecasting [58.12667617617306]
We propose VegeDiff for the geospatial vegetation forecasting task.
VegeDiff is the first to employ a diffusion model to probabilistically capture the uncertainties in vegetation change processes.
By capturing the uncertainties in vegetation changes and modeling the complex influence of relevant variables, VegeDiff outperforms existing deterministic methods.
arXiv Detail & Related papers (2024-07-17T14:15:52Z) - Incorporating climate change effects into the European power system
adequacy assessment using a post-processing method [0.0]
The demand-supply balance of electricity systems is fundamentally linked to climate conditions.
The present study aims to model the effect of climate change on the European electricity system, specifically on its long-term reliability.
arXiv Detail & Related papers (2024-02-26T21:44:36Z) - FengWu-GHR: Learning the Kilometer-scale Medium-range Global Weather
Forecasting [56.73502043159699]
This work presents FengWu-GHR, the first data-driven global weather forecasting model running at the 0.09$circ$ horizontal resolution.
It introduces a novel approach that opens the door for operating ML-based high-resolution forecasts by inheriting prior knowledge from a low-resolution model.
The hindcast of weather prediction in 2022 indicates that FengWu-GHR is superior to the IFS-HRES.
arXiv Detail & Related papers (2024-01-28T13:23:25Z) - Multi-scale Digital Twin: Developing a fast and physics-informed
surrogate model for groundwater contamination with uncertain climate models [53.44486283038738]
Climate change exacerbates the long-term soil management problem of groundwater contamination.
We develop a physics-informed machine learning surrogate model using U-Net enhanced Fourier Neural Contaminated (PDENO)
In parallel, we develop a convolutional autoencoder combined with climate data to reduce the dimensionality of climatic region similarities across the United States.
arXiv Detail & Related papers (2022-11-20T06:46:35Z) - Measuring Wind Turbine Health Using Drifting Concepts [55.87342698167776]
We propose two new approaches for the analysis of wind turbine health.
The first method aims at evaluating the decrease or increase in relatively high and low power production.
The second method evaluates the overall drift of the extracted concepts.
arXiv Detail & Related papers (2021-12-09T14:04:55Z) - Deep Spatio-Temporal Wind Power Forecasting [4.219722822139438]
We develop a deep learning approach based on encoder-decoder structure.
Our model forecasts wind power generated by a wind turbine using its spatial location relative to other turbines and historical wind speed data.
arXiv Detail & Related papers (2021-09-29T16:26:10Z) - Spatio-temporal estimation of wind speed and wind power using machine
learning: predictions, uncertainty and technical potential [0.0]
The wind power estimate presented here represents an important input for planners to support the design of energy systems with increased wind power generation.
The methodology is applied to the study of hourly wind power potential on a grid of $250times 250$ m$2$ for turbines of 100 meters hub height in Switzerland.
arXiv Detail & Related papers (2021-07-29T09:52:36Z) - Application of ERA5 and MENA simulations to predict offshore wind energy
potential [1.4699455652461724]
This study explores wind energy resources in different locations through the Gulf of Oman.
Results show that selected locations have a suitable potential for wind power turbine plan and constructions.
arXiv Detail & Related papers (2020-02-24T00:25:29Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.