n-hits
On autoregressive deep learning models for day-ahead wind power forecasting with irregular shutdowns due to redispatching
Meisenbacher, Stefan, Selzer, Silas Aaron, Dado, Mehdi, Beichter, Maximilian, Martin, Tim, Zdrallek, Markus, Bretschneider, Peter, Hagenmeyer, Veit, Mikut, Ralf
Renewable energies and their operation are becoming increasingly vital for the stability of electrical power grids since conventional power plants are progressively being displaced, and their contribution to redispatch interventions is thereby diminishing. In order to consider renewable energies like Wind Power (WP) for such interventions as a substitute, day-ahead forecasts are necessary to communicate their availability for redispatch planning. In this context, automated and scalable forecasting models are required for the deployment to thousands of locally-distributed onshore WP turbines. Furthermore, the irregular interventions into the WP generation capabilities due to redispatch shutdowns pose challenges in the design and operation of WP forecasting models. Since state-of-the-art forecasting methods consider past WP generation values alongside day-ahead weather forecasts, redispatch shutdowns may impact the forecast. Therefore, the present paper highlights these challenges and analyzes state-of-the-art forecasting methods on data sets with both regular and irregular shutdowns. Specifically, we compare the forecasting accuracy of three autoregressive Deep Learning (DL) methods to methods based on WP curve modeling. Interestingly, the latter achieve lower forecasting errors, have fewer requirements for data cleaning during modeling and operation while being computationally more efficient, suggesting their advantages in practical applications.
- Europe > Germany > Baden-Württemberg > Karlsruhe Region > Karlsruhe (0.05)
- North America > Trinidad and Tobago > Trinidad > Arima > Arima (0.04)
- North America > United States (0.04)
- (4 more...)
- Energy > Renewable > Wind (1.00)
- Energy > Power Industry (1.00)
An Evaluation of Deep Learning Models for Stock Market Trend Prediction
Gil, Gonzalo Lopez, Duhamel-Sebline, Paul, McCarren, Andrew
The stock market is a fundamental component of financial systems, reflecting economic health, providing investment opportunities, and influencing global dynamics. Accurate stock market predictions can lead to significant gains and promote better investment decisions. However, predicting stock market trends is challenging due to their non-linear and stochastic nature. This study investigates the efficacy of advanced deep learning models for short-term trend forecasting using daily and hourly closing prices from the S&P 500 index and the Brazilian ETF EWZ. The models explored include Temporal Convolutional Networks (TCN), Neural Basis Expansion Analysis for Time Series Forecasting (N-BEATS), Temporal Fusion Transformers (TFT), Neural Hierarchical Interpolation for Time Series Forecasting (N-HiTS), and Time-series Dense Encoder (TiDE). Furthermore, we introduce the Extended Long Short-Term Memory for Time Series (xLSTM-TS) model, an xLSTM adaptation optimised for time series prediction. Wavelet denoising techniques were applied to smooth the signal and reduce minor fluctuations, providing cleaner data as input for all approaches. Denoising significantly improved performance in predicting stock price direction. Among the models tested, xLSTM-TS consistently outperformed others. For example, it achieved a test accuracy of 72.82% and an F1 score of 73.16% on the EWZ daily dataset. By leveraging advanced deep learning models and effective data preprocessing techniques, this research provides valuable insights into the application of machine learning for market movement forecasting, highlighting both the potential and the challenges involved.
- North America > Trinidad and Tobago > Trinidad > Arima > Arima (0.05)
- Europe > Ireland > Leinster > County Dublin > Dublin (0.04)
- South America > Brazil > São Paulo (0.04)
- Research Report > New Finding (1.00)
- Research Report > Experimental Study (0.88)
Interpretable Time Series Models for Wastewater Modeling in Combined Sewer Overflows
Chiaburu, Teodor, Biessmann, Felix
Climate change poses increasingly complex challenges to our society. Extreme weather events such as floods, wild fires or droughts are becoming more frequent, spontaneous and difficult to foresee or counteract. In this work we specifically address the problem of sewage water polluting surface water bodies after spilling over from rain tanks as a consequence of heavy rain events. We investigate to what extent state-of-the-art interpretable time series models can help predict such critical water level points, so that the excess can promptly be redistributed across the sewage network. Our results indicate that modern time series models can contribute to better waste water management and prevention of environmental pollution from sewer systems. All the code and experiments can be found in our repository: https://github.com/TeodorChiaburu/RIWWER_TimeSeries.
N-HiTS: Neural Hierarchical Interpolation for Time Series Forecasting – Towards AI
Originally published on Towards AI the World's Leading AI and Technology News and Media Company. If you are building an AI-related product or service, we invite you to consider becoming an AI sponsor. At Towards AI, we help scale AI and technology startups. Let us help you unleash your technology to the masses. This article describes a new architecture to solve previous models' issues: 1.
- Information Technology > Artificial Intelligence (0.76)
- Information Technology > Data Science > Data Mining (0.40)