Grey double exponential smoothing model and its application on pig price forecasting in China
L Wu, S Liu, Y Yang - Applied Soft Computing, 2016 - Elsevier
To resolve the conflict between our desire for a good smoothing effect and desire to give
additional weight to the recent change, a grey accumulating generation operator that can …
additional weight to the recent change, a grey accumulating generation operator that can …
A multiwavelet-based time-varying model identification approach for time–frequency analysis of EEG signals
Y Li, ML Luo, K Li - Neurocomputing, 2016 - Elsevier
An efficient multiwavelet-based time-varying modeling scheme is proposed for time–
frequency analysis (TFA) of electroencephalogram (EEG) data. In the new multiwavelet …
frequency analysis (TFA) of electroencephalogram (EEG) data. In the new multiwavelet …
A novel double deep ELMs ensemble system for time series forecasting
G Song, Q Dai - Knowledge-Based Systems, 2017 - Elsevier
Abstract Extreme Learning Machine (ELM) has proved to be well suited to different kinds of
classification and regression problems. However, failing to seek deep representation of raw …
classification and regression problems. However, failing to seek deep representation of raw …
On application of machine learning method for history matching and forecasting of times series data from hydrocarbon recovery process using water flooding
M Pal - Petroleum Science and Technology, 2021 - Taylor & Francis
The focus of this paper is on application of advance data analytics and deep machine
learning methods for time series forecasting of injection/production data from subsurface …
learning methods for time series forecasting of injection/production data from subsurface …
Optimal sub-models selection algorithm for combination forecasting model
JX Che - Neurocomputing, 2015 - Elsevier
It has been widely demonstrated in forecasting that combining forecasts can improve the
forecast performance compared to individual forecasts. However, how to select the optimal …
forecast performance compared to individual forecasts. However, how to select the optimal …
Weighted moving averaging revisited: an algebraic approach
M Landauskas, Z Navickas, A Vainoras… - … and Applied Mathematics, 2017 - Springer
An algebraic approach for the selection of weight coefficients for weighted moving averaging
is proposed in this paper. The algebraic complexity of the sequence transformed by …
is proposed in this paper. The algebraic complexity of the sequence transformed by …
Several novel dynamic ensemble selection algorithms for time series prediction
C Yao, Q Dai, G Song - Neural Processing Letters, 2019 - Springer
The goal to improve prediction accuracy and robustness of predictive models is quite
important for time series prediction (TSP). Multi-model predictions ensemble exhibits …
important for time series prediction (TSP). Multi-model predictions ensemble exhibits …
[图书][B] Production and Operations Analysis: Traditional, Latest, and Smart Views
S Bandyopadhyay - 2019 - taylorfrancis.com
The aim of this book is to cover various aspects of the Production and Operations Analysis.
Apart from the introduction to basic understanding of each topic, the book will also provide …
Apart from the introduction to basic understanding of each topic, the book will also provide …
Finite-time stabilization of the fractional model of the driven dissipative nonlinear pendulum
I Timofejeva, G Laukaitis, Z Rinkevicius… - International Journal of …, 2022 - World Scientific
Finite-time stabilization of the driven dissipative nonlinear pendulum is investigated in this
paper. First, asymptotic and nonasymptotic convergence towards stable and unstable orbits …
paper. First, asymptotic and nonasymptotic convergence towards stable and unstable orbits …
On the use of evolutionary time series analysis for segmenting paleoclimate data
Recent studies propose that different dynamical systems, such as climate, ecological and
financial systems, among others, present critical transition points named to as tipping points …
financial systems, among others, present critical transition points named to as tipping points …