Scientific Research An Academic Publisher
OPEN ACCESS
Add your e-mail address to receive free newsletters from SCIRP.
Select Journal AA AAD AAR AASoci AAST ABB ABC ABCR ACES ACS ACT AD ADR AE AER AHS AID AiM AIT AJAC AJC AJCC AJCM AJIBM AJMB AJOR AJPS ALAMT ALC ALS AM AMI AMPC ANP APD APE APM ARS ARSci AS ASM BLR CC CE CellBio ChnStd CM CMB CN CRCM CS CSTA CUS CWEEE Detection EMAE ENG EPE ETSN FMAR FNS GEP GIS GM Graphene GSC Health IB ICA IIM IJAA IJAMSC IJCCE IJCM IJCNS IJG IJIDS IJIS IJMNTA IJMPCERO IJNM IJOC IJOHNS InfraMatics JACEN JAMP JASMI JBBS JBCPR JBiSE JBM JBNB JBPC JCC JCDSA JCPT JCT JDAIP JDM JEAS JECTC JEMAA JEP JFCMV JFRM JGIS JHEPGC JHRSS JIBTVA JILSA JIS JMF JMGBND JMMCE JMP JPEE JQIS JSBS JSEA JSEMAT JSIP JSS JSSM JST JTR JTST JTTs JWARP LCE MC ME MI MME MNSMS MPS MR MRC MRI MSA MSCE NJGC NM NR NS OALib OALibJ ODEM OJA OJAB OJAcct OJAnes OJAP OJApo OJAppS OJAPr OJAS OJBD OJBIPHY OJBM OJC OJCB OJCD OJCE OJCM OJD OJDer OJDM OJE OJEE OJEM OJEMD OJEpi OJER OJF OJFD OJG OJGas OJGen OJI OJIC OJIM OJINM OJL OJM OJMC OJMetal OJMH OJMI OJMIP OJML OJMM OJMN OJMP OJMS OJMSi OJN OJNeph OJO OJOG OJOGas OJOp OJOph OJOPM OJOTS OJPathology OJPC OJPChem OJPed OJPM OJPP OJPS OJPsych OJRA OJRad OJRD OJRM OJS OJSS OJSST OJST OJSTA OJTR OJTS OJU OJVM OPJ POS PP PST PSYCH SAR SCD SGRE SM SN SNL Soft SS TEL TI UOAJ VP WET WJA WJCD WJCMP WJCS WJET WJM WJNS WJNSE WJNST WJV WSN YM
More>>
Johnson, D.S., Aragon, C.R., Mcgeoch, L.A. and Schevon, C. (1989) Optimization by Simulated Annealing: An Experimental Evaluation. Part I, Graph Partitioning. Operations Research, 37, 865-892. https://doi.org/10.1287/opre.37.6.865
has been cited by the following article:
TITLE: Revenue Optimization of Pipelines Construction and Operation Management Based on Quantum Genetic Algorithm and Simulated Annealing Algorithm
AUTHORS: Kang Tan
KEYWORDS: Quantum Genetic Algorithm, Simulated Annealing Algorithm, Pipelines Construction Management, Operation Optimization
JOURNAL NAME: Journal of Applied Mathematics and Physics, Vol.6 No.6, June 14, 2018
ABSTRACT: For the optimization of pipelines, most researchers are mainly concerned with designing the most reasonable section to meet the requirements of strength and stiffness, and at the same time reduce the cost as much as possible. It is undeniable that they do achieve this goal by using the lowest cost in design phase to achieve maximum benefits. However, for pipelines, the cost and incomes of operation management are far greater than those in design phase. Therefore, the novelty of this paper is to propose an optimization model that considers the costs and incomes of the construction and operation phases, and combines them into one model. By comparing three optimization algorithms (genetic algorithm, quantum genetic algorithm and simulated annealing algorithm), the same optimization problem is solved. Then the most suitable algorithm is selected and the optimal solution is obtained, which provides reference for construction and operation management during the whole life cycle of pipelines.
Related Articles:
Decision-Making Optimization of TMT: A Simulated Annealing Algorithm Analysis
Yueming Chen, Yuhui Ge, Zhiqiang Song, Mingyang Lv
DOI: 10.4236/jssm.2010.33042 4,515 Downloads 8,051 Views Citations
Pub. Date: October 8, 2010
Optimization of Geometry at Hartree-Fock level Using the Generalized Simulated Annealing
Luiz Augusto Carvalho Malbouisson, Antonio Moreira de Cerqueira Sobrinho, Marco Antônio Chear Nascimento, Miceal Dias de Andrade
DOI: 10.4236/am.2012.330212 5,244 Downloads 7,540 Views Citations
Pub. Date: November 1, 2012
Adaptive Control of DC-DC Converter Using Simulated Annealing Optimization Method
Amin Alqudah, Ahmad Malkawi, Abdullah Alwadie
DOI: 10.4236/jsip.2014.54021 3,484 Downloads 4,259 Views Citations
Pub. Date: November 26, 2014
Exploration and Research on the Teaching of Operations Research Experimental Basis on MOOCs
Yazheng Dang, Zhonghui Xue
DOI: 10.4236/oalib.1106001 97 Downloads 179 Views Citations
Pub. Date: January 8, 2020
A Computational Comparison between Optimization Techniques for Wells Placement Problem: Mathematical Formulations, Genetic Algorithms and Very Fast Simulated Annealing
Ghazi D. AlQahtani, Ahmed Alzahabi, Timothy Spinner, Mohamed Y. Soliman
DOI: 10.4236/msce.2014.210009 4,993 Downloads 5,730 Views Citations
Pub. Date: October 28, 2014