M. Argany, F. Karimipour, F. Mafi, and A. Afghantoloee, Optimization of wireless sensor networks deployment based on probabilistic sensing models in a complex environment, J. Sens. Actuator Netw, vol.7, issue.2, p.20, 2018.

S. Bechikh, L. Ben-said, and K. Ghédira, Searching for knee regions of the Pareto front using mobile reference points, Soft Comput, vol.15, issue.9, pp.1807-1823, 2011.

J. Branke, K. Deb, K. Miettinen, and R. Slowinski, Multiobjective Optimization: Interactive and Evolutionary Approaches, 2008.

X. Cheng, D. Z. Du, L. Wang, and B. Xu, Relay sensor placement in wireless sensor networks, ACM/Springer J. Wirel. Netw, vol.14, issue.3, pp.347-355, 2008.

K. Deb and H. Jain, An evolutionary many-objective optimization algorithm using reference point-based non-dominated sorting approach, part I: solving problems with box constraints, IEEE Trans. Evol. Comput, vol.18, issue.4, pp.577-601, 2014.

K. Deb, L. Thiele, M. Laumanns, and E. Zitzler, Scalable test problems for evolutionary multiobjective optimization. Evolutionary multiobjective optimization, Advanced Information and Knowledge Processing, pp.105-145, 2005.

K. Deb, S. Chaudhuri, and K. Miettinen, Towards estimating nadir objective vector using evolutionary approaches, 8th Genetic and Evolutionary Computation Conference (GECCO), pp.643-650, 2006.

F. Domingo-perez, J. L. Lazaro-galilea, I. Bravo, A. Gardel, and D. Rodriguez, Optimization of the coverage and accuracy of an indoor positioning system with a variable number of sensors, Sensors, issue.6, p.934, 2016.

N. Drechsler, A. Sülflow, and R. Drechsler, Incorporating user preferences in many-objective optimization using relation e-preferred, Nat. Comput, vol.14, p.469, 2015.

R. Elhabyan, W. Shi, and M. St-hilaire, Coverage protocols for wireless sensor networks: review and future directions, J. Commun. Netw, vol.21, issue.1, pp.45-60, 2019.

C. M. Fonseca, L. Paquete, and M. López-ibáñez, An improved dimension-sweep algorithm for the hypervolume indicator, Congress on Evolutionary Computation, pp.1157-1163, 2006.

D. Gong, G. Wang, and X. Sun, Set-based genetic algorithms for solving many-objective optimization problems, 13th UK Workshop on Computational Intelligence (UKCI), pp.96-103, 2013.

J. Guo and H. Jafarkhani, Movement-efficient sensor deployment in wireless sensor networks with limited communication range, IEEE Trans. Wirel. Commun, vol.18, issue.7, pp.3469-3484, 2019.

B. Huang, W. Liu, T. Wang, X. Li, H. Song et al., Deployment optimization of data centers in vehicular networks, IEEE Access, vol.7, pp.20644-20663, 2019.

X. Huang, S. Cheng, K. Cao, P. Cong, T. Wei et al., A survey of deployment solutions and optimization strategies for hybrid SDN networks, IEEE Commun. Surv. Tutor, vol.21, issue.2, pp.1483-1507, 2019.

H. Ishibuchi, N. Akedo, and Y. Nojima, EMO algorithms on correlated many-objective problems with different correlation strength. World Automation Congress, vol.22, pp.1-6, 2012.

A. H. Ko and F. Gagnon, Process of 3D wireless decentralized sensor deployment using parsing crossover scheme, Appl. Comput. Inform, vol.11, issue.2, pp.89-101, 2015.

K. Li, K. Deb, Q. Zhang, and S. Kwong, An evolutionary many-objective optimization algorithm based on dominance and decomposition, IEEE Trans. Evol. Comput, vol.19, issue.5, pp.694-716, 2015.

X. Liu, T. Qui, X. Zhou, T. Wang, L. Yang et al., Latency-aware anchor-point deployment for disconnected sensor networks with mobile sinks, IEEE Trans. Ind. Inf, 2019.

X. Luo, X. Li, J. Wang, and X. Guan, Potential-game based optimally rigid topology control in wireless sensor networks, IEEE Access, vol.6, pp.16599-16609, 2018.

P. Mitra, C. A. Murthy, and S. K. Pal, Unsupervised feature selection using feature similarity, IEEE Trans. Pattern Anal. Mach. Intell, vol.24, issue.3, pp.301-312, 2002.

S. Mnasri, N. Nasri, A. Van-den-bossche, and T. Val, The 3D deployment multi-objective problem in mobile WSN: optimizing coverage and localization, Int. Res. J Innov. Eng. (IRJIE), vol.1, issue.5, pp.1-14, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01377337

S. Mnasri, N. Nasri, A. Van-den-bossche, and T. Val, A hybrid ant-genetic algorithm to solve a real deployment problem: a case study with experimental validation, Ad hoc, Mobile, and Wireless Networks. ADHOC-NOW 2017, vol.10517, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01913676

S. Mnasri, N. Nasri, A. Van-den-bossche, and T. Val, 3D indoor redeployment in IoT collection networks: a real prototyping using a hybrid PI-NSGA-III-VF, The 14th International Wireless Communications and Mobile Computing Conference, pp.780-785, 2018.

B. Y. Qu, P. N. Suganthan, and J. J. Liang, Differential evolution with neighborhood mutation for multimodal optimization, IEEE Trans. Evol. Comput, vol.16, issue.5, pp.601-614, 2012.

S. Rostami, Preference focussed many-objective evolutionary computation, pp.15-21, 2014.

L. K. Saul, K. Q. Weinberger, J. H. Ham, F. Sha, and D. D. Lee, Spectral methods for dimensionality reduction, Semisupervised Learning, 2006.

A. V. Savkin and H. Huang, A method for optimized deployment of a network of surveillance aerial drones, IEEE Syst. J, 2019.

D. K. Saxena, J. A. Duro, A. Tiwari, K. Deb, and Q. Zhang, Objective reduction in many-objective optimization: linear and nonlinear algorithms, IEEE Trans. Evol. Comput, vol.17, issue.1, pp.77-99, 2013.

J. Shlens, A tutorial on principal component analysis, 2009.

A. Sinha, P. Korhonen, J. Wallenius, and K. Deb, An improved progressively interactive evolutionary multiobjective optimization algorithm with a fixed budget of decision maker calls, Eur. J. Oper. Res, vol.233, issue.3, pp.674-688, 2014.

A. Sinha, O. K. Saxena, K. Deb, and A. Tiwari, Using objective reduction and interactive procedure to handle many-objective optimization problems, Appt. Soft Comput, vol.13, issue.1, pp.41-68, 2013.

Y. Tian, R. Cheng, X. Zhang, and Y. Jin, PlatEMO: a MATLAB platfonn for evolutionary mufti-objective optimization, IEEE Comput. InteII. Mag, vol.12, issue.4, p.42868, 2017.

Y. P. Tsang, K. L. Choy, C. H. Wu, and G. T. Ho, Mufti-objective mapping method for 3D environmental sensor network deployment, IEEE Commun. Lett, vol.23, issue.7, pp.1231-1235, 2019.

A. Van-den-bossche, R. Dalce, and T. Val, OpenWiNo: an open hardware and software frarnework for fast-prototyping in the IoT, 23rd International Conference on Telecommunications, pp.1-6, 2016.

H. Wang, L. Jiao, and X. Yao, Two_Arch2: an improved two-archive algorithm for many-objective optimiza tion, IEEE Trans. Evol. Comput, vol.19, issue.4, pp.524-541, 2015.

K. Q. Weinberger and L. K. Saul, Unsupervised learning of image manifolds by semidefinite prograrnming. lot, J. Comput. Vis, vol.70, issue.1, pp.77-90, 2006.

H. Xu, Z. Lai, and H. Liang, A nove( mathematical morphology based antenna deployment scheme for indoor wireless coverage, IEEE80th VehicularTechnology Conference(VTCFall), pp.1-5, 2014.

Y. Yuan, H. Xu, B. Wang, B. Zhang, and X. Yao, Balancing convergence and diversity in decomposition based many-objective optimizers, IEEE Trans. Evol. Comput, vol.20, issue.2, pp.180-198, 2016.

X. Zhang, Y. Tian, and Y. Jin, A knee point-driven evolutionary algorithm for many-objective optimization, IEEE Trans. Evol. Comput, vol.19, issue.6, pp.761-776, 2015.

H. Zhang, Y. Liu, and J. Zhou, Balanoed-evolution genetic algorithm for combinatorial optimization problems: the general outline and implementation of balanced evolution strategy based on linear diversity index, Nat. Comput, 2018.