Evolving artificial neural networks using an improved PSO and DPSO J Yu, S Wang, L Xi Neurocomputing 71 (4-6), 1054-1060, 2008 | 269 | 2008 |
Empirical analysis of support vector machine ensemble classifiers S Wang, A Mathew, Y Chen, L Xi, L Ma, J Lee Expert Systems with applications 36 (3), 6466-6476, 2009 | 205 | 2009 |
An effective heuristic for flexible job-shop scheduling problem with maintenance activities S Wang, J Yu Computers & Industrial Engineering 59 (3), 436-447, 2010 | 183 | 2010 |
One-dimensional convolutional auto-encoder-based feature learning for fault diagnosis of multivariate processes S Chen, J Yu, S Wang Journal of Process Control 87, 54-67, 2020 | 147 | 2020 |
Bi-objective identical parallel machine scheduling to minimize total energy consumption and makespan S Wang, X Wang, J Yu, S Ma, M Liu Journal of cleaner production 193, 424-440, 2018 | 144 | 2018 |
An improved particle swarm optimization for evolving feedforward artificial neural networks J Yu, L Xi, S Wang Neural Processing Letters 26, 217-231, 2007 | 133 | 2007 |
Multi-objective optimization of parallel machine scheduling integrated with multi-resources preventive maintenance planning S Wang, M Liu Journal of Manufacturing Systems 37, 182-192, 2015 | 131 | 2015 |
Cyber Physical System and Big Data enabled energy efficient machining optimisation YC Liang, X Lu, WD Li, S Wang Journal of cleaner Production 187, 46-62, 2018 | 127 | 2018 |
Bi-objective optimization of a single machine batch scheduling problem with energy cost consideration S Wang, M Liu, F Chu, C Chu Journal of cleaner production 137, 1205-1215, 2016 | 118 | 2016 |
A branch and bound algorithm for single-machine production scheduling integrated with preventive maintenance planning S Wang, M Liu International Journal of Production Research 51 (3), 847-868, 2013 | 114 | 2013 |
An energy-efficient two-stage hybrid flow shop scheduling problem in a glass production S Wang, X Wang, F Chu, J Yu International Journal of Production Research 58 (8), 2283-2314, 2020 | 113 | 2020 |
A genetic algorithm for two-stage no-wait hybrid flow shop scheduling problem S Wang, M Liu Computers & Operations Research 40 (4), 1064-1075, 2013 | 100 | 2013 |
A deep autoencoder feature learning method for process pattern recognition J Yu, X Zheng, S Wang Journal of Process Control 79, 1-15, 2019 | 89 | 2019 |
A branch-and-bound algorithm for two-stage no-wait hybrid flow-shop scheduling S Wang, M Liu, C Chu International Journal of Production Research 53 (4), 1143-1167, 2015 | 89 | 2015 |
Two-stage hybrid flow shop scheduling with preventive maintenance using multi-objective tabu search method S Wang, M Liu International Journal of Production Research 52 (5), 1495-1508, 2014 | 88 | 2014 |
A modified support vector data description based novelty detection approach for machinery components S Wang, J Yu, E Lapira, J Lee Applied Soft Computing 13 (2), 1193-1205, 2013 | 86 | 2013 |
Big Data enabled Intelligent Immune System for energy efficient manufacturing management S Wang, YC Liang, WD Li, XT Cai Journal of cleaner production 195, 507-520, 2018 | 85 | 2018 |
A heuristic method for two-stage hybrid flow shop with dedicated machines S Wang, M Liu Computers & Operations Research 40 (1), 438-450, 2013 | 71 | 2013 |
Fog computing and convolutional neural network enabled prognosis for machining process optimization YC Liang, WD Li, X Lu, S Wang Journal of Manufacturing Systems 52, 32-42, 2019 | 68 | 2019 |
Multichannel one-dimensional convolutional neural network-based feature learning for fault diagnosis of industrial processes J Yu, C Zhang, S Wang Neural Computing and Applications 33 (8), 3085-3104, 2021 | 61 | 2021 |