Intelligent Generation of Evolutionary Series in a Time‐Variant Physical System via Series Pattern Recognition
Intelligent generation of time‐variant control series remains the critical challenge for acquiring the desired system evolution, due to the difficulties in perceiving temporal correlation and conducting appropriate feedback propagation. A machine learning (ML) algorithm named time‐series generative...
Main Authors: | , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Wiley
2021-02-01
|
Series: | Advanced Intelligent Systems |
Subjects: | |
Online Access: | https://doi.org/10.1002/aisy.202000172 |
id |
doaj-2643ab4cbfb4452cabd019ddb812c4fc |
---|---|
record_format |
Article |
spelling |
doaj-2643ab4cbfb4452cabd019ddb812c4fc2021-02-22T15:24:48ZengWileyAdvanced Intelligent Systems2640-45672021-02-0132n/an/a10.1002/aisy.202000172Intelligent Generation of Evolutionary Series in a Time‐Variant Physical System via Series Pattern RecognitionChao Liang0Hailin Jiang1Shaopeng Lin2Huashan Li3Biao Wang4School of Physics Sun Yat-Sen University Ganugzhou 510275 ChinaSchool of Physics Sun Yat-Sen University Ganugzhou 510275 ChinaSchool of Physics Sun Yat-Sen University Ganugzhou 510275 ChinaSchool of Physics Sun Yat-Sen University Ganugzhou 510275 ChinaSchool of Physics Sun Yat-Sen University Ganugzhou 510275 ChinaIntelligent generation of time‐variant control series remains the critical challenge for acquiring the desired system evolution, due to the difficulties in perceiving temporal correlation and conducting appropriate feedback propagation. A machine learning (ML) algorithm named time‐series generative adversarial network (TSGAN) is developed to overcome the difficulties, by incorporating a long short‐term memory (LSTM) kernel for recognizing multirange temporal patterns beyond the Markovian approximation and an adversarial training mechanism for efficient optimization. A variety of time series are examined by temperature‐control experiments, and the results demonstrate an exceptional accuracy (>95%, 35% higher than prevalent ML methods) as well as strong transferability and stability of the TSGAN algorithm. The dependence of generation performance on underlying statistical mechanisms associated with different ML algorithms, including the deep neural network (DNN), hidden Markov model (HMM), LSTM, and TSGAN, is elucidated by analyzing the generation quality of characteristic temporal patterns. The capability of generating arbitrarily complex response series opens an opportunity for inverse design of time‐variant functionals as strenuously pursued in material science and modern technology.https://doi.org/10.1002/aisy.202000172accurate generationdistribution patternsinverse designmachine learningtime series |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Chao Liang Hailin Jiang Shaopeng Lin Huashan Li Biao Wang |
spellingShingle |
Chao Liang Hailin Jiang Shaopeng Lin Huashan Li Biao Wang Intelligent Generation of Evolutionary Series in a Time‐Variant Physical System via Series Pattern Recognition Advanced Intelligent Systems accurate generation distribution patterns inverse design machine learning time series |
author_facet |
Chao Liang Hailin Jiang Shaopeng Lin Huashan Li Biao Wang |
author_sort |
Chao Liang |
title |
Intelligent Generation of Evolutionary Series in a Time‐Variant Physical System via Series Pattern Recognition |
title_short |
Intelligent Generation of Evolutionary Series in a Time‐Variant Physical System via Series Pattern Recognition |
title_full |
Intelligent Generation of Evolutionary Series in a Time‐Variant Physical System via Series Pattern Recognition |
title_fullStr |
Intelligent Generation of Evolutionary Series in a Time‐Variant Physical System via Series Pattern Recognition |
title_full_unstemmed |
Intelligent Generation of Evolutionary Series in a Time‐Variant Physical System via Series Pattern Recognition |
title_sort |
intelligent generation of evolutionary series in a time‐variant physical system via series pattern recognition |
publisher |
Wiley |
series |
Advanced Intelligent Systems |
issn |
2640-4567 |
publishDate |
2021-02-01 |
description |
Intelligent generation of time‐variant control series remains the critical challenge for acquiring the desired system evolution, due to the difficulties in perceiving temporal correlation and conducting appropriate feedback propagation. A machine learning (ML) algorithm named time‐series generative adversarial network (TSGAN) is developed to overcome the difficulties, by incorporating a long short‐term memory (LSTM) kernel for recognizing multirange temporal patterns beyond the Markovian approximation and an adversarial training mechanism for efficient optimization. A variety of time series are examined by temperature‐control experiments, and the results demonstrate an exceptional accuracy (>95%, 35% higher than prevalent ML methods) as well as strong transferability and stability of the TSGAN algorithm. The dependence of generation performance on underlying statistical mechanisms associated with different ML algorithms, including the deep neural network (DNN), hidden Markov model (HMM), LSTM, and TSGAN, is elucidated by analyzing the generation quality of characteristic temporal patterns. The capability of generating arbitrarily complex response series opens an opportunity for inverse design of time‐variant functionals as strenuously pursued in material science and modern technology. |
topic |
accurate generation distribution patterns inverse design machine learning time series |
url |
https://doi.org/10.1002/aisy.202000172 |
work_keys_str_mv |
AT chaoliang intelligentgenerationofevolutionaryseriesinatimevariantphysicalsystemviaseriespatternrecognition AT hailinjiang intelligentgenerationofevolutionaryseriesinatimevariantphysicalsystemviaseriespatternrecognition AT shaopenglin intelligentgenerationofevolutionaryseriesinatimevariantphysicalsystemviaseriespatternrecognition AT huashanli intelligentgenerationofevolutionaryseriesinatimevariantphysicalsystemviaseriespatternrecognition AT biaowang intelligentgenerationofevolutionaryseriesinatimevariantphysicalsystemviaseriespatternrecognition |
_version_ |
1724256613679759360 |