Passa al contenuto principale

A Blockwise Embedding for Multi-Day-Ahead Prediction of Energy Time Series by Randomized Deep Neural Networks

A randomized CNN-LSTM learns energy data in daily blocks to forecast entire future days with high efficiency.

When Time Series Are Learned in Blocks: A New Path for Multi-Day Energy Forecasting

Forecasting energy time series has always been a delicate balance between accuracy and computational cost. As systems become more complex and data grows in volume, traditional deep learning models, while powerful, often require significant training effort and careful tuning. The work described here moves in a different direction, exploring how part of this complexity can be reduced without sacrificing predictive performance. At the core of the proposed solution lies a rethinking of both how temporal data is structured and how neural networks are trained. Instead of relying entirely on fully trained deep architectures, the model introduces controlled randomization within a hybrid structure, combining convolutional processing and recurrent memory in a more efficient framework.

From Sequential Samples to Blockwise Representations

A key innovation concerns the way time series are embedded before entering the learning model. Rather than treating past observations as a simple sequence of lagged values, the data is reorganized into blocks corresponding to entire days. Each input is constructed as a matrix where rows represent different past days and columns represent samples within those days. This blockwise embedding transforms a one-dimensional time series into a two-dimensional structure that can be processed by convolutional layers. The result is a representation that captures not only temporal evolution but also recurring daily patterns, making it particularly suitable for energy data characterized by strong periodicity. This shift is not merely a format change. It enables the model to detect correlations both within a single day and across multiple days, effectively enriching the information available for prediction.

A Hybrid Architecture with Controlled Randomization

Once the data is embedded into this structured format, it is processed by a deep architecture that combines a two-dimensional convolutional layer with an LSTM network. The convolutional layer extracts features from the blockwise representation, while the LSTM captures temporal dependencies and generates the final predictions. The distinctive aspect of the approach lies in the randomization of the convolutional layer. Instead of learning all parameters through backpropagation, part of the network is initialized randomly and kept fixed during training. This significantly reduces the number of trainable parameters, leading to faster training times while maintaining competitive accuracy. The diagram on page 3 clearly shows this pipeline, where the convolutional feature maps are flattened and passed to the LSTM layer, which then produces a full-day prediction in a single step.

Predicting Entire Days in a Single Step

Another important contribution is the shift from point-wise forecasting to block prediction. Instead of predicting one time step at a time, the model outputs an entire day of values simultaneously. This is achieved by formulating the problem as a regression task over a vector of future samples, rather than a single scalar value. This approach aligns well with real-world energy management scenarios, where decisions are often made on daily or multi-day horizons. It also avoids the accumulation of errors that typically arise in recursive forecasting strategies.

Evidence from Real-World Energy Data

The proposed method is evaluated using real photovoltaic power data collected over an entire year, with hourly resolution. The experimental setup considers both short-term and multi-day forecasting scenarios, reflecting realistic operational needs in energy systems. The results show that the proposed architecture achieves lower prediction errors than a standard LSTM model in most cases, particularly in multi-day forecasting scenarios. At the same time, the randomized version of the model demonstrates a clear advantage in terms of training efficiency. An additional insight emerges from the training time analysis: the model can be retrained in a matter of seconds on standard hardware, making it suitable for real-time or near-real-time applications.

Toward Efficient Deep Learning for Time Series

The broader significance of this work lies in its perspective on deep learning design. Rather than pushing toward increasingly complex and fully trainable architectures, it explores a middle ground where randomization and structure are used to control complexity. The combination of blockwise embedding, convolutional feature extraction, and recurrent modelling suggests a general strategy for handling structured temporal data. At the same time, the introduction of partially randomized layers highlights a promising direction for reducing computational cost without compromising model effectiveness. In this view, the future of time series forecasting may not depend solely on deeper networks, but on smarter ways of representing data and distributing learning across the architecture.

Autori

F. Di Luzio, A. Rosato, F. Succetti, M. Panella
Settembre 20, 2021

Consigliati

Consigliati

Altri articoli da leggere
Renewable energy

A Review of the Enabling Methodologies for Knowledge Discovery from Smart Grids Data

A KDD-driven pipeline turns smart meter streams into multi-step load forecasts, benchmarking feature reduction and models.
Biomedical

Enhancing Autism Detection Through Gaze Analysis Using Eye Tracking Sensors and Data Attribution with Distillation in Deep Neural Networks

A deep learning model enhances early autism diagnosis by analyzing visual patterns with eye tracking.
Quantum computing

Quantum Generative Modeling via Straightforward State Preparation

A lightweight quantum generative model creates high-fidelity data samples with minimal parameters and efficient state preparation.
Quantum computing

Enhancing QAOA Ansatz via Multi-Parameterized Layer and Blockwise Optimization

A novel quantum-classical algorithm boosts QAOA performance with fewer layers, enabling real-world optimization on NISQ devices.
Renewable energy

A Deep Learning-based Approach for Battery Life Classification

A deep learning-based LSTM network accurately classifies battery health, optimizing energy storage and predictive maintenance.
Biomedical

An explainable fast deep neural network for emotion recognition

A fast, explainable deep neural network enhances emotion recognition by optimizing facial landmark analysis.
Renewable energy

Multi-label classification with imbalanced classes by fuzzy deep neural networks

A fuzzy deep neural network accurately classifies household appliances in real time using symbolic data and multi-label AI.
Quantum computing

Quantum enhanced knowledge distillation

Classical-to-quantum knowledge distillation boosts hybrid AI performance using efficient quantum circuits and reduced model sizes.
Quantum computing

A variational approach to quantum gated recurrent units

A faster and efficient Quantum Gated Recurrent Unit (QGRU) improves time series forecasting.
Aerospace

A Neural Network Symbolic Approach to Structural Health Monitoring in Aerospace Applications

A symbolic deep learning approach enhances structural health monitoring in aerospace achieving near-perfect damage classification.

Hai un'esigenza
specifica? 

Compila il form e parlaci del tuo progetto.
Ti proponiamo la soluzione più adatta al tuo contesto.
Impossibile salvare l'abbonamento. Riprova.
Grazie per aver inviato il modulo.

Hai un'esigenza
specifica? 

Compila il form e parlaci del tuo progetto.
Ti proponiamo la soluzione più adatta al tuo contesto.
GRID+ Copyright © 2026. All Rights Reserved.
P. IVA 17387741006 | Il capitale è stato interamente versato 10.000€ | RM – 1715269
GRID+ Copyright © 2026. All Rights Reserved.
P. IVA 17387741006 · Il capitale è stato interamente versato 10.000€ | RM – 1715269
P. IVA 17387741006 · Il capitale è stato interamente versato 10.000€ | RM – 1715269