problems. The proposed approach was validated us-
ing the standard methodology currently adopted for
the evolutionary multiobjective optimization commu-
nity. Results indicate that our approach is a viable al-
ternative since its performance is highly competitive
with respect to some of the best dynamic multiobjec-
tive evolutionary algorithms known-to-date.
One aspect that we would like to explore in the fu-
ture is to study how the DPSO behaves with a differ-
ent the particles’ interconnection topology. Further-
more, we would like to explore the use of different
values for W , C1, and C2.
ACKNOWLEDGEMENTS
Acknowledgements The first author acknowledges
support from CONACyT through a scholarship to
pursue graduate studies at the Information Tech-
nology Laboratory at CINVESTAV-IPN. The sec-
ond author gratefully acknowledges support from
CONACyT through project 90548. Also, This re-
search was partially funded by project number 51623
from “Fondo Mixto Conacyt-Gobierno del Estado de
Tamaulipas”. Finally, we would like to thank to
Fondo Mixto de Fomento a la Investigaci
´
on cient
´
ıfica
y Tecnol
´
ogica CONACyT - Gobierno del Estado de
Tamaulipas for the support to publish this paper.
REFERENCES
Bingul, Z. (2007). Adaptive Genetic Algorithms Applied to
Dynamic Multi-ObjectiveProblems. Appl. Soft Com-
put., 7(3):791–799.
Blinded (2005). Blinded. PhD thesis, Blinded, Blinded.
Deb, K., Agrawal, S., Pratab, A., and Meyarivan, T. (2000).
A Fast Elitist Non-Dominated Sorting Genetic Al-
gorithm for Multi-Objective Optimization: NSGA-II.
KanGAL report 200001, Indian Institute of Technol-
ogy, Kanpur, India.
Deb, K., N., U. B. R., and Karthik, S. (2006). Dynamic
multi-objective optimization and decision-making us-
ing modified NSGA-II: A case study on hydro-thermal
power scheduling. In EMO, pages 803–817.
Farina, M., Deb, K., and Amato, P. (2004). Dynamic Mul-
tiobjective Optimization Problems: Test Cases, Ap-
proximations, and Applications. IEEE Transactions
on Evolutionary Computation, 8(5):425–442.
Hatzakis, I. and Wallace, D. (2006). Dynamic Multi-
Objective Optimization with Evolutionary Algo-
rithms: A Forward-Looking Approach. In et al.,
M. K., editor, 2006 Genetic and Evolutionary Compu-
tation Conference (GECCO’2006), volume 2, pages
1201–1208, Seattle, Washington, USA. ACM Press.
ISBN 1-59593-186-4.
Kennedy, J. and Eberhart, R. C. (2001). Swarm intelli-
gence. Morgan Kaufmann Publishers Inc., San Fran-
cisco, CA, USA.
Ray, T., Isaacs, A., and Smith, W. (2009). A memetic
algorithm for dynamic multiobjective optimization.
In Multi-Objective Memetic Algorithms, volume 171
of Studies in Computational Intelligence, pages 353–
367. Springer Berlin / Heidelberg.
Talukder, A. K. A. and Kirley, M. (2008). A pareto follow-
ing variation operator for evolutionary dynamic multi-
objective optimization. In Proceedings of the IEEE
Congress on Evolutionary Computation 2008 (CEC
2008), Hong Kong, China. IEEE Press, Piscataway,
NJ.
Veldhuizen, D. A. V. and Lamont, G. B. (1998). Multiob-
jective Evolutionary Algorithm Research: A History
and Analysis. Technical Report TR-98-03, Depart-
ment of Electrical and Computer Engineering, Gradu-
ate School of Engineering, Air Force Institute of Tech-
nology, Wright-Patterson AFB, Ohio.
Veldhuizen, D. A. V. and Lamont, G. B. (2000). On Mea-
suring Multiobjective Evolutionary Algorithm Perfor-
mance. In 2000 Congress on Evolutionary Computa-
tion, volume 1, pages 204–211, Piscataway, New Jer-
sey. IEEE Service Center.
Yuping Wang, C. D. (2008). An evolutionary algorithm for
dynamic multi-objective optimization. Applied Math-
ematics and ComputationIn Press.
Zeng, S., Chen, G., Zheng, L., Shi, H., de Garis, H., Ding,
L., and Kang, L. (2006). A Dynamic Multi-Objective
Evolutionary Algorithm Based on an Orthogonal De-
sign. In 2006 IEEE Congress on Evolutionary Com-
putation (CEC’2006), pages 2588–2595, Vancouver,
BC, Canada. IEEE.
Zhou, A., Jin, Y., Zhang, Q., Sendhoff, B., and Tsang, E.
(2006). Prediction-based population re-initialization
for evolutionary dynamic multi-objective optimiza-
tion. In Obayashi, S., Deb, K., Poloni, C., Hiroyasu,
T., and Murata, T., editors, The 4th Int. Conf. on Evo-
lutionary Multi-Criterion Optimization, volume 4403,
pages 832–846. Springer.
ICAART 2010 - 2nd International Conference on Agents and Artificial Intelligence
342