Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

An Improved State Filter Algorithm for SIR Epidemic Forecasting

View through CrossRef
In epidemic modeling, state filtering is an excellent tool for enhancing the performance of traditional epidemic models. We introduce a novel state filter algorithm to further improve the performance of state-of-the-art approaches based on Susceptible-Infected-Recovered (SIR) models. The proposed algorithm merges two techniques, which are typically used separately: linear correction, as seen in the Ensemble Kalman Filter (EnKF), and resampling, as used in the Particle Filter (PF). We compare the inferential accuracy of our approach against the EnKF and the Ensemble Adjustment Kalman Filter (EAKF), using algorithms employing both an uncentered covariance matrix (UCM) and the standard column-centered covariance matrix (CCM). Our algorithm requires O(DN) more time than EnKF does, where D is the ensemble dimension and N denotes the ensemble size. We demonstrate empirically that our algorithm with UCM achieves the lowest root-mean-square-error (RMSE) and the highest correlation coefficient (CORR) amongst the selected methods, in 11 out of 14 major real-world scenarios. We show that the EnKF with UCM outperforms the EnKF with CCM, while the EAKF gains better accuracy with CCM in most scenarios.
Title: An Improved State Filter Algorithm for SIR Epidemic Forecasting
Description:
In epidemic modeling, state filtering is an excellent tool for enhancing the performance of traditional epidemic models.
We introduce a novel state filter algorithm to further improve the performance of state-of-the-art approaches based on Susceptible-Infected-Recovered (SIR) models.
The proposed algorithm merges two techniques, which are typically used separately: linear correction, as seen in the Ensemble Kalman Filter (EnKF), and resampling, as used in the Particle Filter (PF).
We compare the inferential accuracy of our approach against the EnKF and the Ensemble Adjustment Kalman Filter (EAKF), using algorithms employing both an uncentered covariance matrix (UCM) and the standard column-centered covariance matrix (CCM).
Our algorithm requires O(DN) more time than EnKF does, where D is the ensemble dimension and N denotes the ensemble size.
We demonstrate empirically that our algorithm with UCM achieves the lowest root-mean-square-error (RMSE) and the highest correlation coefficient (CORR) amongst the selected methods, in 11 out of 14 major real-world scenarios.
We show that the EnKF with UCM outperforms the EnKF with CCM, while the EAKF gains better accuracy with CCM in most scenarios.

Related Results

CFD Simulation and Optimization of a Cake Filtration System
CFD Simulation and Optimization of a Cake Filtration System
Abstract This study presents a simulation of filter cake formation during the filtration of rice hull ash and liquid mixture using ANSYS Fluent software. Filter cake...
Coupling the Data-driven Weather Forecasting Model with 4D Variational Assimilation
Coupling the Data-driven Weather Forecasting Model with 4D Variational Assimilation
In recent years, the development of artificial intelligence has led to rapid advances in data-driven weather forecasting models, some of which rival or even surpass traditional met...
Establishment and Application of the Multi-Peak Forecasting Model
Establishment and Application of the Multi-Peak Forecasting Model
Abstract After the development of the oil field, it is an important task to predict the production and the recoverable reserve opportunely by the production data....
Forecasting
Forecasting
The history of forecasting goes back at least as far as the Oracle at Delphi in Greece. Stripped of its mystique, this was what we now refer to as “unaided judgment,” the only fore...
Tight or Loose: Analysis of the Organization Cognition Process of Epidemic Risk and Policy Selection
Tight or Loose: Analysis of the Organization Cognition Process of Epidemic Risk and Policy Selection
In the context of Disease X risks, how governments and public health authorities make policy choices in response to potential epidemics has become a topic of increasing concern. Th...
Environmental data in epidemic forecasting: Insights from predictive analytics
Environmental data in epidemic forecasting: Insights from predictive analytics
Epidemic forecasting plays a critical role in public health preparedness and response, enabling proactive measures to mitigate the impact of infectious diseases. Environmental data...
Optimal design of LCL filter in grid‐connected inverters
Optimal design of LCL filter in grid‐connected inverters
As an essential part in technologies for energy storage systems (ESSs) or renewable energy systems (RESs), grid‐connected inverters need power passive filters to meet grid regulati...

Back to Top