Hybridization of Persistent Homology with Neural Networks for Time-Series Prediction: A Case Study in Wave Height
- URL: http://arxiv.org/abs/2409.01519v1
- Date: Tue, 3 Sep 2024 01:26:21 GMT
- Title: Hybridization of Persistent Homology with Neural Networks for Time-Series Prediction: A Case Study in Wave Height
- Authors: Zixin Lin, Nur Fariha Syaqina Zulkepli, Mohd Shareduwan Mohd Kasihmuddin, R. U. Gobithaasan,
- Abstract summary: We introduce a feature engineering method that enhances the predictive performance of neural network models.
Specifically, we leverage computational topology techniques to derive valuable topological features from input data.
For time-ahead predictions, the enhancements in $R2$ score were significant for FNNs, RNNs, LSTM, and GRU models.
- Score: 0.0
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Time-series prediction is an active area of research across various fields, often challenged by the fluctuating influence of short-term and long-term factors. In this study, we introduce a feature engineering method that enhances the predictive performance of neural network models. Specifically, we leverage computational topology techniques to derive valuable topological features from input data, boosting the predictive accuracy of our models. Our focus is on predicting wave heights, utilizing models based on topological features within feedforward neural networks (FNNs), recurrent neural networks (RNNs), long short-term memory networks (LSTM), and RNNs with gated recurrent units (GRU). For time-ahead predictions, the enhancements in $R^2$ score were significant for FNNs, RNNs, LSTM, and GRU models. Additionally, these models also showed significant reductions in maximum errors and mean squared errors.
Related papers
- How neural networks learn to classify chaotic time series [77.34726150561087]
We study the inner workings of neural networks trained to classify regular-versus-chaotic time series.
We find that the relation between input periodicity and activation periodicity is key for the performance of LKCNN models.
arXiv Detail & Related papers (2023-06-04T08:53:27Z) - Continuous time recurrent neural networks: overview and application to
forecasting blood glucose in the intensive care unit [56.801856519460465]
Continuous time autoregressive recurrent neural networks (CTRNNs) are a deep learning model that account for irregular observations.
We demonstrate the application of these models to probabilistic forecasting of blood glucose in a critical care setting.
arXiv Detail & Related papers (2023-04-14T09:39:06Z) - Brain-Inspired Spiking Neural Network for Online Unsupervised Time
Series Prediction [13.521272923545409]
We present a novel Continuous Learning-based Unsupervised Recurrent Spiking Neural Network Model (CLURSNN)
CLURSNN makes online predictions by reconstructing the underlying dynamical system using Random Delay Embedding.
We show that the proposed online time series prediction methodology outperforms state-of-the-art DNN models when predicting an evolving Lorenz63 dynamical system.
arXiv Detail & Related papers (2023-04-10T16:18:37Z) - A predictive physics-aware hybrid reduced order model for reacting flows [65.73506571113623]
A new hybrid predictive Reduced Order Model (ROM) is proposed to solve reacting flow problems.
The number of degrees of freedom is reduced from thousands of temporal points to a few POD modes with their corresponding temporal coefficients.
Two different deep learning architectures have been tested to predict the temporal coefficients.
arXiv Detail & Related papers (2023-01-24T08:39:20Z) - Learning Low Dimensional State Spaces with Overparameterized Recurrent
Neural Nets [57.06026574261203]
We provide theoretical evidence for learning low-dimensional state spaces, which can also model long-term memory.
Experiments corroborate our theory, demonstrating extrapolation via learning low-dimensional state spaces with both linear and non-linear RNNs.
arXiv Detail & Related papers (2022-10-25T14:45:15Z) - An advanced spatio-temporal convolutional recurrent neural network for
storm surge predictions [73.4962254843935]
We study the capability of artificial neural network models to emulate storm surge based on the storm track/size/intensity history.
This study presents a neural network model that can predict storm surge, informed by a database of synthetic storm simulations.
arXiv Detail & Related papers (2022-04-18T23:42:18Z) - Probabilistic AutoRegressive Neural Networks for Accurate Long-range
Forecasting [6.295157260756792]
We introduce the Probabilistic AutoRegressive Neural Networks (PARNN)
PARNN is capable of handling complex time series data exhibiting non-stationarity, nonlinearity, non-seasonality, long-range dependence, and chaotic patterns.
We evaluate the performance of PARNN against standard statistical, machine learning, and deep learning models, including Transformers, NBeats, and DeepAR.
arXiv Detail & Related papers (2022-04-01T17:57:36Z) - Spatio-Temporal Neural Network for Fitting and Forecasting COVID-19 [1.1129587851149594]
We established a Spatio-Temporal Neural Network, namely STNN, to forecast the spread of the coronavirus COVID-19 outbreak worldwide in 2020.
Two improved STNN architectures, namely the STNN with Augmented Spatial States (STNN-A) and the STNN with Input Gate (STNN-I), are proposed.
Numerical simulations demonstrate that STNN models outperform many others by providing more accurate fitting and prediction, and by handling both spatial and temporal data.
arXiv Detail & Related papers (2021-03-22T13:59:14Z) - Spatio-Temporal Functional Neural Networks [11.73856529960872]
We propose two novel extensions of the Neural Functional Network (FNN), a temporal regression model whose effectiveness has been proven by many researchers.
The proposed models are then deployed to solve a practical and challenging precipitation prediction problem in the meteorology field.
arXiv Detail & Related papers (2020-09-11T21:32:35Z) - Industrial Forecasting with Exponentially Smoothed Recurrent Neural
Networks [0.0]
We present a class of exponential smoothed recurrent neural networks (RNNs) which are well suited to modeling non-stationary dynamical systems arising in industrial applications.
Application of exponentially smoothed RNNs to forecasting electricity load, weather data, and stock prices highlight the efficacy of exponential smoothing of the hidden state for multi-step time series forecasting.
arXiv Detail & Related papers (2020-04-09T17:53:49Z) - Rectified Linear Postsynaptic Potential Function for Backpropagation in
Deep Spiking Neural Networks [55.0627904986664]
Spiking Neural Networks (SNNs) usetemporal spike patterns to represent and transmit information, which is not only biologically realistic but also suitable for ultra-low-power event-driven neuromorphic implementation.
This paper investigates the contribution of spike timing dynamics to information encoding, synaptic plasticity and decision making, providing a new perspective to design of future DeepSNNs and neuromorphic hardware systems.
arXiv Detail & Related papers (2020-03-26T11:13:07Z)
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.