Exploration and Application of Regulatory PM10 Measurement Data for Developing Long-term Prediction Models in South Korea

2016 ◽  
Vol 32 (1) ◽  
pp. 114-126 ◽  
Author(s):  
Seon-Ju Yi ◽  
Ho Kim ◽  
Sun-Young Kim
2014 ◽  
Vol 2014 ◽  
pp. 1-14 ◽  
Author(s):  
Wei Ming ◽  
Yukun Bao ◽  
Zhongyi Hu ◽  
Tao Xiong

The hybrid ARIMA-SVMs prediction models have been established recently, which take advantage of the unique strength of ARIMA and SVMs models in linear and nonlinear modeling, respectively. Built upon this hybrid ARIMA-SVMs models alike, this study goes further to extend them into the case of multistep-ahead prediction for air passengers traffic with the two most commonly used multistep-ahead prediction strategies, that is, iterated strategy and direct strategy. Additionally, the effectiveness of data preprocessing approaches, such as deseasonalization and detrending, is investigated and proofed along with the two strategies. Real data sets including four selected airlines’ monthly series were collected to justify the effectiveness of the proposed approach. Empirical results demonstrate that the direct strategy performs better than iterative one in long term prediction case while iterative one performs better in the case of short term prediction. Furthermore, both deseasonalization and detrending can significantly improve the prediction accuracy for both strategies, indicating the necessity of data preprocessing. As such, this study contributes as a full reference to the planners from air transportation industries on how to tackle multistep-ahead prediction tasks in the implementation of either prediction strategy.


2009 ◽  
Vol 43 (11) ◽  
pp. 1611-1620 ◽  
Author(s):  
M. Pietrella ◽  
L. Perrone ◽  
G. Fontana ◽  
V. Romano ◽  
A. Malagnini ◽  
...  

2018 ◽  
Vol 71 (4) ◽  
pp. 955-970 ◽  
Author(s):  
Jicang Lu ◽  
Chao Zhang ◽  
Yong Zheng ◽  
Ruopu Wang

As Satellite Clock Bias (SCB) prediction may be affected by various factors such as periodic items, sampling length, and stochastic items, a fusion-based prediction method is proposed by considering characteristics of SCB and fitted residue. On this basis, an instance algorithm is presented by fusing four typical prediction models. First, we use Empirical Mode Decomposition (EMD) to pre-process and decompose the SCB series into multiple components with various characteristics. Then, we analyse the fitting performance of each model for different components and prediction length, namely short-, mid- and long-term prediction, and select models with the best performance. Next, we analyse fitted residue of the reconstructed SCB, and select the model with the best fitting results. Finally, we fuse the multiple selected models for SCB prediction. The method is tested using Global Positioning System (GPS) precise clock products provided by the International Global Navigation Satellite System Service (IGS). Experimental results show that, compared with single prediction models and existing combination models, the proposed fusion-based prediction method improves accuracy and stability. In particular, the proposed method is more stable and has better performance for mid- and long-term prediction.


2019 ◽  
Vol 157 ◽  
pp. 248-258 ◽  
Author(s):  
Ahmed H. Ali ◽  
Hamdy M. Mohamed ◽  
Brahim Benmokrane ◽  
Adel ElSafty ◽  
Omar Chaallal

2012 ◽  
Vol 134 (4) ◽  
Author(s):  
Ryan Sangjun Lee ◽  
Gregery T. Buzzard ◽  
Peter H. Meckl

For nonlinear multi-input multi-output (MIMO) systems such as multilink robotic manipulators, finding a correct, physically derived model structure is almost impossible, so that significant model mismatch is nearly inevitable. Moreover, in the presence of model mismatch, the use of least-squares minimization of the one-step-ahead prediction error (residual error) to estimate unknown parameters in a given model structure often leads to model predictions that are extremely inaccurate beyond a short time interval. In this paper, we develop a method for optimal parameter estimation for accurate long-term prediction models in the presence of significant model mismatch in practice. For many practical cases, where a correct model and the correct number of degrees of freedom for a given model structure are unknown, we combine the use of long-term prediction error with frequency-based regularization to produce more accurate long-term prediction models for actual MIMO nonlinear systems.


2021 ◽  
Author(s):  
Atina Husnayain ◽  
Eunha Shim ◽  
Anis Fuad ◽  
Emily Chia-Yu Su

BACKGROUND Given the ongoing coronavirus disease 2019 (COVID-19) pandemic situation, accurate predictions could greatly help in the health resource management for future waves. However, as a new entity, COVID-19’s disease dynamics seemed difficult to predict. External factors, such as internet search data, need to be included in the models to increase the accuracy of these models. However, it remains unclear whether incorporating online search volumes into models leads to better predictive performances for a long-term prediction. OBJECTIVE This study aimed to analyze whether search engine query data are important variables that should be included in the models predicting short- and long-term periods of new daily COVID-19 cases and deaths. METHODS We used country-level case-related data, NAVER search volumes, and mobility data obtained from Google and Apple for the period of January 20, 2020 to July 31, 2021 in South Korea. Data were aggregated into four subsets (3, 6, 12, and 18 months). The first 80% of the data in all subsets were used as the training set and remaining data served as the test set. Generalized linear models (GLMs) with normal, Poisson, and negative binomial distribution were developed along with linear regression (LR) models with lasso, adaptive lasso, and elastic net regularization. Value of the root mean squared error (RMSE) were defined as a loss function and were used to assess the performance of the models. All analyses and visualizations were conducted in SAS Studio, which is part of the SAS OnDemand for Academics. RESULTS GLMs with different types of distribution functions may have been beneficial in predicting new daily COVID-19 cases and deaths in the early stages of the outbreak. Non-normal distributions of cases and deaths were better predicted using the Poisson or negative binomial function. Over longer periods, as the distribution of cases and deaths became more normally distributed, LR models with regularization may have outperform the GLMs. This study also found that better performances of the models were achieved in predicting new daily deaths compared to new daily cases. In addition, an evaluation of effect of features in the models showed that NAVER search volumes were useful variables in predicting new daily COVID-19 cases, particularly in the first six months of the outbreak. Searches related to logistical needs, particularly for “thermometer” and “mask strap” showed higher feature effects in that period. For longer prediction periods, NAVER search volumes were still found to be an important variable, although with a lower feature effect. This finding suggests that term utilization should be considered to maintain the predictive performance. CONCLUSIONS NAVER search volumes were important variables in the short- and long-term prediction with higher feature effects for predicting new daily COVID-19 cases in the first six months of the outbreak. Similar results were also found for death predictions.


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