語系:
繁體中文
English
說明(常見問題)
登入
回首頁
切換:
標籤
|
MARC模式
|
ISBD
Genetic Programming for Production S...
~
Nguyen, Su.
Genetic Programming for Production Scheduling = An Evolutionary Learning Approach /
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
正題名/作者:
Genetic Programming for Production Scheduling/ by Fangfang Zhang, Su Nguyen, Yi Mei, Mengjie Zhang.
其他題名:
An Evolutionary Learning Approach /
作者:
Zhang, Fangfang.
其他作者:
Zhang, Mengjie.
面頁冊數:
XXXIII, 336 p. 154 illus., 105 illus. in color.online resource. :
Contained By:
Springer Nature eBook
標題:
Operations Research/Decision Theory. -
電子資源:
https://doi.org/10.1007/978-981-16-4859-5
ISBN:
9789811648595
Genetic Programming for Production Scheduling = An Evolutionary Learning Approach /
Zhang, Fangfang.
Genetic Programming for Production Scheduling
An Evolutionary Learning Approach /[electronic resource] :by Fangfang Zhang, Su Nguyen, Yi Mei, Mengjie Zhang. - 1st ed. 2021. - XXXIII, 336 p. 154 illus., 105 illus. in color.online resource. - Machine Learning: Foundations, Methodologies, and Applications,2730-9916. - Machine Learning: Foundations, Methodologies, and Applications,.
Part I Introduction -- 1 Introduction -- 2 Preliminaries -- Part II Genetic Programming for Static Production Scheduling Problems -- 3 Learning Schedule Construction Heuristics -- 4 Learning Schedule Improvement Heuristics -- 5 Learning to Augment Operations Research Algorithms -- Part III Genetic Programming for Dynamic Production Scheduling Problems -- 6 Representations with Multi-tree and Cooperative Coevolution -- 7 Efficiency Improvement with Multi-fidelity Surrogates -- 8 Search Space Reduction with Feature Selection -- 9 Search Mechanism with Specialised Genetic Operators -- Part IV Genetic Programming for Multi-objective Production Scheduling Problems -- 10 Learning Heuristics for Multi-objective Dynamic Production Scheduling Problems -- 11 Cooperative Coevolutionary for Multi-objective Production Scheduling Problems -- 12 Learning Scheduling Heuristics for Multi-objective Dynamic Flexible Job Shop Scheduling -- Part V Multitask Genetic Programming for Production Scheduling Problems -- 13 Multitask Learning in Hyper-heuristic Domain with Dynamic Production Scheduling -- 14 Adaptive Multitask Genetic Programming for Dynamic Job Shop Scheduling -- 15 Surrogate-Assisted Multitask Genetic Programming for Learning Scheduling Heuristics -- Part VI Conclusions and Prospects -- 16 Conclusions and Prospects.
This book introduces readers to an evolutionary learning approach, specifically genetic programming (GP), for production scheduling. The book is divided into six parts. In Part I, it provides an introduction to production scheduling, existing solution methods, and the GP approach to production scheduling. Characteristics of production environments, problem formulations, an abstract GP framework for production scheduling, and evaluation criteria are also presented. Part II shows various ways that GP can be employed to solve static production scheduling problems and their connections with conventional operation research methods. In turn, Part III shows how to design GP algorithms for dynamic production scheduling problems and describes advanced techniques for enhancing GP’s performance, including feature selection, surrogate modeling, and specialized genetic operators. In Part IV, the book addresses how to use heuristics to deal with multiple, potentially conflicting objectives in production scheduling problems, and presents an advanced multi-objective approach with cooperative coevolution techniques or multi-tree representations. Part V demonstrates how to use multitask learning techniques in the hyper-heuristics space for production scheduling. It also shows how surrogate techniques and assisted task selection strategies can benefit multitask learning with GP for learning heuristics in the context of production scheduling. Part VI rounds out the text with an outlook on the future. Given its scope, the book benefits scientists, engineers, researchers, practitioners, postgraduates, and undergraduates in the areas of machine learning, artificial intelligence, evolutionary computation, operations research, and industrial engineering.
ISBN: 9789811648595
Standard No.: 10.1007/978-981-16-4859-5doiSubjects--Topical Terms:
669176
Operations Research/Decision Theory.
LC Class. No.: Q325.5-.7
Dewey Class. No.: 006.31
Genetic Programming for Production Scheduling = An Evolutionary Learning Approach /
LDR
:04609nam a22004215i 4500
001
1057113
003
DE-He213
005
20211112150616.0
007
cr nn 008mamaa
008
220103s2021 si | s |||| 0|eng d
020
$a
9789811648595
$9
978-981-16-4859-5
024
7
$a
10.1007/978-981-16-4859-5
$2
doi
035
$a
978-981-16-4859-5
050
4
$a
Q325.5-.7
050
4
$a
TK7882.P3
072
7
$a
UYQM
$2
bicssc
072
7
$a
COM004000
$2
bisacsh
072
7
$a
UYQM
$2
thema
082
0 4
$a
006.31
$2
23
100
1
$a
Zhang, Fangfang.
$e
author.
$4
aut
$4
http://id.loc.gov/vocabulary/relators/aut
$3
1362509
245
1 0
$a
Genetic Programming for Production Scheduling
$h
[electronic resource] :
$b
An Evolutionary Learning Approach /
$c
by Fangfang Zhang, Su Nguyen, Yi Mei, Mengjie Zhang.
250
$a
1st ed. 2021.
264
1
$a
Singapore :
$b
Springer Singapore :
$b
Imprint: Springer,
$c
2021.
300
$a
XXXIII, 336 p. 154 illus., 105 illus. in color.
$b
online resource.
336
$a
text
$b
txt
$2
rdacontent
337
$a
computer
$b
c
$2
rdamedia
338
$a
online resource
$b
cr
$2
rdacarrier
347
$a
text file
$b
PDF
$2
rda
490
1
$a
Machine Learning: Foundations, Methodologies, and Applications,
$x
2730-9916
505
0
$a
Part I Introduction -- 1 Introduction -- 2 Preliminaries -- Part II Genetic Programming for Static Production Scheduling Problems -- 3 Learning Schedule Construction Heuristics -- 4 Learning Schedule Improvement Heuristics -- 5 Learning to Augment Operations Research Algorithms -- Part III Genetic Programming for Dynamic Production Scheduling Problems -- 6 Representations with Multi-tree and Cooperative Coevolution -- 7 Efficiency Improvement with Multi-fidelity Surrogates -- 8 Search Space Reduction with Feature Selection -- 9 Search Mechanism with Specialised Genetic Operators -- Part IV Genetic Programming for Multi-objective Production Scheduling Problems -- 10 Learning Heuristics for Multi-objective Dynamic Production Scheduling Problems -- 11 Cooperative Coevolutionary for Multi-objective Production Scheduling Problems -- 12 Learning Scheduling Heuristics for Multi-objective Dynamic Flexible Job Shop Scheduling -- Part V Multitask Genetic Programming for Production Scheduling Problems -- 13 Multitask Learning in Hyper-heuristic Domain with Dynamic Production Scheduling -- 14 Adaptive Multitask Genetic Programming for Dynamic Job Shop Scheduling -- 15 Surrogate-Assisted Multitask Genetic Programming for Learning Scheduling Heuristics -- Part VI Conclusions and Prospects -- 16 Conclusions and Prospects.
520
$a
This book introduces readers to an evolutionary learning approach, specifically genetic programming (GP), for production scheduling. The book is divided into six parts. In Part I, it provides an introduction to production scheduling, existing solution methods, and the GP approach to production scheduling. Characteristics of production environments, problem formulations, an abstract GP framework for production scheduling, and evaluation criteria are also presented. Part II shows various ways that GP can be employed to solve static production scheduling problems and their connections with conventional operation research methods. In turn, Part III shows how to design GP algorithms for dynamic production scheduling problems and describes advanced techniques for enhancing GP’s performance, including feature selection, surrogate modeling, and specialized genetic operators. In Part IV, the book addresses how to use heuristics to deal with multiple, potentially conflicting objectives in production scheduling problems, and presents an advanced multi-objective approach with cooperative coevolution techniques or multi-tree representations. Part V demonstrates how to use multitask learning techniques in the hyper-heuristics space for production scheduling. It also shows how surrogate techniques and assisted task selection strategies can benefit multitask learning with GP for learning heuristics in the context of production scheduling. Part VI rounds out the text with an outlook on the future. Given its scope, the book benefits scientists, engineers, researchers, practitioners, postgraduates, and undergraduates in the areas of machine learning, artificial intelligence, evolutionary computation, operations research, and industrial engineering.
650
2 4
$a
Operations Research/Decision Theory.
$3
669176
650
2 4
$a
Industrial and Production Engineering.
$3
593943
650
2 4
$a
Knowledge based Systems.
$3
1226866
650
1 4
$a
Machine Learning.
$3
1137723
650
0
$a
Decision making.
$3
528319
650
0
$a
Operations research.
$3
573517
650
0
$a
Production engineering.
$3
566269
650
0
$a
Industrial engineering.
$3
679492
650
0
$a
Knowledge representation (Information theory) .
$3
1281840
650
0
$a
Machine learning.
$3
561253
700
1
$a
Zhang, Mengjie.
$4
aut
$4
http://id.loc.gov/vocabulary/relators/aut
$3
683546
700
1
$a
Mei, Yi.
$e
author.
$4
aut
$4
http://id.loc.gov/vocabulary/relators/aut
$3
1362511
700
1
$a
Nguyen, Su.
$e
author.
$4
aut
$4
http://id.loc.gov/vocabulary/relators/aut
$3
1362510
710
2
$a
SpringerLink (Online service)
$3
593884
773
0
$t
Springer Nature eBook
776
0 8
$i
Printed edition:
$z
9789811648588
776
0 8
$i
Printed edition:
$z
9789811648601
776
0 8
$i
Printed edition:
$z
9789811648618
830
0
$a
Machine Learning: Foundations, Methodologies, and Applications,
$x
2730-9916
$3
1362512
856
4 0
$u
https://doi.org/10.1007/978-981-16-4859-5
912
$a
ZDB-2-SCS
912
$a
ZDB-2-SXCS
950
$a
Computer Science (SpringerNature-11645)
950
$a
Computer Science (R0) (SpringerNature-43710)
筆 0 讀者評論
多媒體
評論
新增評論
分享你的心得
Export
取書館別
處理中
...
變更密碼[密碼必須為2種組合(英文和數字)及長度為10碼以上]
登入