|
|
Parameter state analysis of grate cooler based on Bayesian structure algorithm based on classification optimization& and convergence analysis |
LIU Hao-ran1,2,SUN Mei-ting1,2,WANG Hai-yu1,2,ZHANG Li-yue1,2,FAN Rui-xing1,2,LIU Bin1,2 |
1. Hebei Province Key Laboratory of Special Optical Fiber & Optical Fiber Sensing, Qinhuangdao, Hebei 066004, China
2. Electrical Engineering College of Yanshan University, Qinhuangdao, Hebei 066004, China |
|
|
Abstract Aiming at the problem that population algorithms of Bayesian structure learning have many parameters and easily fall into local optimum, an improved Bayesian structure learning algorithms is proposed. The algorithm combines the advantage of teaching learning based optimization without parameters and the random search of mutation mechanism. Teaching learning based optimization and mutation mechanism contrapuntally optimize candidate structures to learn the best Bayesian network structure. Teaching learning based optimization optimizes excellent set of structures to preserve entity. Mutation mechanism optimizes poor set of structures to increase structural diversity. By these operations, this algorithm not only accelerates the convergence speed , but also the balance between solutions quality and computational effort. Finally, the convergence of the algorithm is analyzed by Markov chain. The simulation results have shown that these properties can be achieved.
|
Received: 30 January 2018
Published: 10 June 2019
|
|
|
|
|
[1]Ojha R, Ghadge D A, Tiwari M K, et al. Bayesian network modelling for supply chain risk propagation [J]. International Journal of Production Research, 2018, 56(17): 5795-5819.
[2]Mcnally R J, Mair P, Mugno B L, et al. Co-morbid obsessive 2013 compulsive disorder and depression: a Bayesian network approach [J]. Psychological Medicine, 2017, 47(7): 1-11.
[3]刘浩然, 李轩, 马明, 等. 一种针对水泥回转窑故障诊断的贝叶斯网络模型[J]. 计量学报, 2014, 35(5): 500-506.
Liu H R, Li X, Ma M, et al. A Fault Diagnosis Bayesian Network Model for Cement Rotary Kiln [J]. Acta Metrologica Sinica, 2014, 35(5): 500-506.
[4]Mcnally R J, Heeren A, Robinaugh D J. A Bayesian network analysis of posttraumatic stress disorder symptoms in adults reporting childhood sexual abuse [J]. European Journal of Psychotraumatology, 2017, 8: 1341276.
[5]Yang C, Ji J, Liu J, et al. Structural Learning of Bayesian Networks by Bacterial Foraging Optimization [J]. International Journal of Approximate Reasoning, 2016, 6(9): 147-167.
[6]Larranaga P, Poza M, Yurramendi Y, et al. Structure learning of bayesian networks by genetic algorithms: a performance analysis of control parameters [J]. IEEE Transactions on Pattern Analysis & Machine Intelligence, 1996, 18(9): 912-926.
[7]刘浩然, 吕晓贺, 李轩, 等. 基于Bayesian改进算法的回转窑参数控制模型研究[J]. 仪器仪表学报, 2015, 36(7): 1554-1561.
Liu H R, Lü X H, Li X, et al. A study on the fault diagnosis model of rotary kiln based on an improved algorithm of Bayesian [J]. Chinese Jourmal of Scientific Instrument, 2015, 36(7): 1554-1561.
[8]Koopman R, Wang S.
Mutual information based labelling and comparing clusters [J]. Sciento
metrics, 2017, 111(2): 1157-1167.
[9]Chow C K, Liu C N. Approximating discrete probability distributions with dependence trees [J]. IEEE Transactions on Information Theory, 1968, 14(3): 462-467.
[10]邸若海, 高晓光, 郭志高. 基于改进BIC评分的贝叶斯网络结构学习[J]. 系统工程与电子技术, 2017, 39(2): 437-444.
Di R H, Gao X G, Guo Z G. Bayesian networks structure learning based on improved BIC scoring [J]. Systems Engineering and Electronics, 2017, 39(2): 437-444.
[11]李冰寒. 基于蚁群优化的贝叶斯网结构学习算法[D]. 西安: 西安电子科技大学, 2011.
[12]Franois O C H, Leray P. BNT Structure Learning Package: Documentation and Experiments [R]. 2004.
[13]Lauritzen S L, Spiegelhalter D J. Local Computations with Probabilities on Graphical Structures andtheir Application to Expert Systems [J]. Journal of the Royal Statistical Society, 1988, 50(2): 157-224.
[14]Alan M B. The Use of The BIC Set in The Characterization of Used Nuclear Fuel Assemblies by Nondestructive Assay [J]. Annals of Nuclear Energy, 2014, 66(4): 31-50.
[15]Beinlich I A, Suermondt H J, Chavez R M, et al. The ALARM monitoring mystem: a case study with two probabilistic inference techniques for belief networks [J]. Lecture Notes in Medical Informatics, 1989, 38: 247-256.
[16]刘彬, 赵朋程, 高伟, 等. 基于粒子群算法与连续型深度信念网络的水泥熟料游离氧化钙预测[J]. 计量学报, 2018, 39(3): 420-424.
Liu B, Zhao P C, Gao W, et al. Prediction of Cement fCaO Based on Particle Swarm Optimization and Continuous Deep Belief Network [J]. Acta Metrologica Sinica, 2018, 39(3): 420-424.
[17]Wang M Q, Liu B,Wen Y, et al. Numerical Simulation and Analytical Characterization of Heat Transfer between Cement Clinker and Air in Grate Cooler [J]. Journal of Chemical Engineering of Japan, 2016, 49(1): 10-15.
[18]Wei S, Zheng C, Lin C. Multi-objective optimization of cooling air distributions of grate cooler with different clinker particles diameters and air chambers by genetic algorithm [J]. Science China Technological Sciences, 2017, 60(3): 345-354.
[19]Sadinle M. Bayesian Estimation of Bipartite Matchings for Record Linkage [J]. Journal of the American Statistical Association, 2017, 112(518): 1-35. |
|
|
|