›› 2016, Vol. 24 ›› Issue (8): 952-962.DOI: 10.1016/j.cjche.2016.05.039
• Review • Previous Articles Next Articles
Xinqing Gao1,2, Fan Yang1,2, Chao Shang1,2, Dexian Huang1,2
Received:
2015-11-06
Revised:
2016-02-29
Online:
2016-09-21
Published:
2016-08-28
Supported by:
Xinqing Gao1,2, Fan Yang1,2, Chao Shang1,2, Dexian Huang1,2
通讯作者:
Dexian Huang
基金资助:
Xinqing Gao, Fan Yang, Chao Shang, Dexian Huang. A review of control loop monitoring and diagnosis: Prospects of controller maintenance in big data era[J]. , 2016, 24(8): 952-962.
Xinqing Gao, Fan Yang, Chao Shang, Dexian Huang. A review of control loop monitoring and diagnosis: Prospects of controller maintenance in big data era[J]. , 2016, 24(8): 952-962.
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URL: https://cjche.cip.com.cn/EN/10.1016/j.cjche.2016.05.039
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