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ENGINEERING OPTIMIZATION Vol ENGINEERING OPTIMIZATION Vol. 45 - 2013 SPIS TREŚCI nr 1/3 1 Topology optimization by minimizing the geometric average displacement / Beting Qiao and Shutian Liu 19 Autonomous robot navigation based on the evolutionary multi-objective optimization of potential fields / Juan Arturo Herrera Ortiz, Katya Rodríguez-Vázquez, Miguel A. Padilla Castañeda and Fernando Arámbula Cosío 45 Project scheduling: A multi-objective evolutionary algorithm that optimizes the effectiveness of human resources and the project makespan / Virginia Yannibelli and Analia Amandi 67 Simulated annealing and metaheuristic for randomized priority search algorithms for the aerial refuelling parallel machine scheduling problem with due date-to-deadline windows and release times / Sezgin Kaplan and Ghaith Rabadi 89 Heuristic for two-dimensional homogeneous two-segment cutting patterns / Yaodong Cui 107 New conceptual design of aeroelastic wing structures by multi-objective optimization / S. Sleesongsom and S. Bureerat 123 Optimal shapes of clamped-simply supported columns under distributed axial load and stress constraint / Izzet U. Cagdas and Sarp Adali 141 An evolutionary based Bayesian design optimization approach under incomplete information / Rupesh Srivastava and Kalyanmoy Deb 167 Electronic enclosure design using distributed particle swarm optimization / Ian Scriven, Junwei Lu and Andrew Lewis 185 An adaptive multiquadric radial basis function method for expensive black-box mixed-integer nonlinear constrained optimization / Kashif Rashid , Saumil Ambani and Eren Cetinkaya 207 An artificial bee colony algorithm for locating the critical slip surface in slope stability analysis / Fei Kang , Junjie Li and Zhenyue Ma 225 A robust search paradigm with Enhanced Vine Creeping Optimization / C.N. Young, C. Le Brese, J.J. Zou and C.J. Leo 245 Robust optimization of front members in a full frontal car impact / David Aspenberg (né Lönn), Johan Jergeus and Larsgunnar Nilsson 265 A two-stage approach for a multi-objective component assignment problem for a stochastic-flow network / Yi-Kuei Lin and Cheng-Ta Yeh 287 Sequential approximate optimization-based robust design of SiC-Si 3N4 nanocomposite microstructures / Gilberto Mejía-Rodríguez, John E. Renaud, Han Sung Kim and Vikas Tomar 311 Constrained optimization using a multipoint type chaotic Lagrangian method with a coupling structure / Takashi Okamoto and Hironori Hirata 337 Durability-based shape optimization with application to a steering system / Katrin Martini , Christoph Tobias and Peter Eberhard 357 Coupled finite element simulation and optimization of single- and multi-stage sheet-forming processes / Cynthia M. Tamasco, Masoud Rais-Rohani and Arjaan Buijk 375 Assessing hypermutation operators of a clonal selection algorithm for the unequal area facility layout problem / Berna Haktanirlar Ulutas and Sadan Kulturel-Konak nr 4/6 397 Structural optimization based on internal energy distribution / Michael Öman and Larsgunnar Nilsson 415 Design optimization of cold-formed steel portal frames taking into account the effect of building topology / Duoc T. Phan, James B.P. Lim, Wei Sha, Calvin YM Slew, Tiku T. Tanyimboh, Honar K. Issa and Fouad A. Mohammad 435 A single-loop deterministic method for reliability-based design optimization / Fan Li, Teresa Wu, Adedeji Badiru, Mengqi Hu and Som Soni 459 A simulated weed colony system with subregional differential evolution for multimodal optimization / Subhrajit Roy, Sk. Minhazul Islam, Swagatam Das, Saurav Ghosh and Athanasios V. Vasilakos 483 A hybrid water flow algorithm for multi-objective flexible flow shop scheduling problems / Trung Hieu Tran and Kien Ming Ng 503 A bi-objective constrained optimization algorithm using a hybrid evolutionary and penalty function approach / Kalyanmoy Deb and Rituparna Datta 529 Combining radial basis function surrogates and dynamic coordinate search in high-dimensional expensive black-box optimization / Rommel G. Regis and Christine A. Shoemaker 557 A surrogate-based particle swarm optimization algorithm for solving optimization problems with expensive black box functions / Yuanfu Tang, Jianqiao Chen and Junhong Wei 577 Iterative projection on critical states for reliability-based design optimization / R. Croquet, D. Lemosse, E. Souza de Cursi and A. El Hami 591 A TIPSO algorithm assessment for aerothermodynamic optimization of hypersonic compression systems / Ali Sarosh, Hu Di and Dong Yun-Feng 609 Matheuristic approaches for Q-coverage problem versions in wireless sensor networks / Alok Singh, ,André Rossi and Marc Sevaux 627 Shape optimization of structures for frequency constraints by sequential harmony search algorithm / S. Gholizadeh and A. Barzegar 647 Task-based design optimization of serial robot manipulators / Hatem Al-Dois, A.K. Jha and R.B. Mishra 659 Optimization of sensor placement to detect damage in flexible plates / Matteo Bruggi and Stefano Mariani 677 Finite element model updating approach to damage identification in beams using particle swarm optimization / Mohamed M. Saada, Mustafa H. Arafa and Ashraf O. Nassef 697 An uncertain multidisciplinary design optimization method using interval convex model / Fangyi Li, Zhen Luo, Guangyong Sun and Nong Zhang 719 New algorithms for optimal reduction of technical risks / M.T. Todinov 745 Reliable design of a closed loop supply chain network under uncertainty: An interval fuzzy possibilistic chance-constrained model / Behnam Vahdani, Reza Tavakkoli-Moghaddam, Fariborz Jolai and Arman Baboli No. 7/9 767 Robust engineering design optimization with non-uniform rational B-splines-based metamodels / John C. Steuben, Cameron J. Turner and Richard H. Crawford 787 Identifying the redundant, and ranking the critical, constraints in practical optimization problems / Dhish Saxena, Alessandro Rubino, João A. Duro and Ashutosh Tiwari 811 Fuzzy random non-cooperative two-level linear programming through fractile models with possibility and necessity / Masatoshi Sakawa and Takeshi Matsui 835 Fast dynamic performance optimization of complicated beam-type structures based on two new reduced physical models / Wensheng Wang, Gengdong Cheng and Quhao Li 851 A dynamic programming-based particle swarm optimization algorithm for an inventory management problem under uncertainty / Jiuping Xu, Ziqiang Zeng, Bernard Han and Xiao Lei 881 International express courier routing and scheduling under uncertain demands / J.-R. Lin, S. Van and C. W. Lai 899 Fuzzy logic-based diversity-controlled self-adaptive differential evolution / S. Miruna Joe Amali and S. Baskar 917 Multi-objective optimization by a new hybridized method: applications to random mechanical systems / H. Zidani, E. Pagnacco, R. Sampaio, R. Ellaia and J.E. Souza de Cursi 941 Adjoint-based constrained topology optimization for viscous flows, including heat transfer / E.A. Kontoleontos, E.M. Papoutsis-Kiachagias , A.S. Zymaris, D.I. Papadimitriou and K. C. Giannakoglou 963 Handling constraints with an evolutionary tool for scheduling oil wells maintenance visits / A. Villagra, D. Pandolfi and G. Leguizamón 983 A hybrid heuristic for the multiple choice multidimensional knapsack problem / Raïd Mansi, Cláudia Alves, J.M. Valéria de Carvalho and Saïd Hanafi 1005 An efficient and practical approach to obtain a better optimum solution for structural optimization / Ting- Yu Chen and Jyun-Hao Huang 1027 Optimization of structures under material parameter uncertainty using evidence theory / S. Salehghaffari, M. Rais-Rohani, E.B. Marin and D.J. Bammann 1043 Minimization of railhead edge stresses through shape optimization / Nannan Zong and Manicka Dhanasekar 1061 A move limit strategy for level set based structural optimization / Qi Xia , Michael Yu Wang and Tielin Shi 1073 RePAMO: Recursive Perturbation Approach for Multimodal Optimization / Bhaskar Dasgupta, Kotha Divya, Vivek Kumar Mehta and Kalyanmoy Deb 1091 New approximation algorithms for flow shop total completion time problem / Danyu Bai and Tao Ren 1107 Decomposition-based multi-objective differential evolution particle swarm optimization for the design of a tubular permanent magnet linear synchronous motor / Guanghui Wang, Jie Chen, Tao Cai and Bin Xin 1129 Dynamic optimization of chemical engineering problems using a control vector parameterization method with an iterative genetic algorithm / Feng Qian, Fan Sun, Weimin Thong and Na Luo No. 10/12 1147 Reliability-based design optimization of reinforced concrete structures including soil-structure interaction using a discrete gravitational search algorithm and a proposed metamodel / M. Khatibinia, E. Salajegheh, J. Salajegheh and M.J. Fadaee 1167 Performance index and meta-optimization of a direct search optimization method / P. Krus and J. Ölvander 1187 Energy optimization in chiller plants: A novel formulation and solution using a hybrid optimization technique / Aparna Aravelli and Singiresu S. Rao 1205 Chemical process dynamic optimization based on the differential evolution algorithm with an adaptive scheduling mutation strategy / Jun Zhu , Xuefeng Yan and Weixiang Zhao 1223 A possibilistic programming approach for the location problem of multiple cross-docks and vehicle routing scheduling under uncertainty / S. Meysam Mousavi, Reza Tavakkoli-Moghaddam and Fariborz Jolai 1251 Enhancing particle swarm optimization algorithm using two new strategies for optimizing design of truss structures / Y.C. Lu, J.C. Jan, S.L. Hung and G.H. Hung 1273 A cuckoo search algorithm by Lévy flights for solving reliability redundancy allocation problems
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