An Exploration for the Analysis of Ground Water Possibility in Case Based Recommendation System using Hybrid Cuckoo Search and Artificial Honey Bee Algorithm

Main Article Content

Sheetal Jethi
Harsh Sadawarti

Abstract

Groundwater Possibility Exploration is one of the prime problems in human life. Human and other social species are directly or indirectly dependent on water resources. But with increasing population and instant changing environmental conditions, groundwater resources are also becoming less day by day. One approach of manual exploration can be used but that is most laborious and time consuming task. So, there is need of some autonomous approach with which we can find the more groundwater resources without digging the bore well. This paper presents an autonomous approach in case based recommendation system using hybrid cuckoo search and artificial honey bee algorithm for groundwater possibility detection. The proposed concept is structured in the manner to have the input in the form six attributes of slope, geology, landuse, lineament, soil & landform and give output in the form of low, intermediate and high possibility. In this method, case based reasoning used in the manner to retrieve the previous knowledge of use cases. The cases are actually the host bird’s nest and input is cuckoo’s egg. CS originates from the behaviour of certain species of cuckoo which lay eggs in other birds nest in parasitic manner. If cuckoo’s egg adapts the behaviour of host nests it will exist otherwise the host bird will discard cuckoo’s egg. The minimum similarity value is calculated using ABC algorithm. CBR life cycle further uses the information from this metaphor. The overall method is evaluated using the parameters of sensitivity, specificity and accuracy.

Downloads

Download data is not yet available.

Article Details

Section
Articles

References

. Daily, Gretchen. Nature's services: societal dependence on natural ecosystems. Island Press, 1997.

. Famiglietti, J. S. "The global groundwater crisis." Nature Climate Change 4, no. 11 (2014): 945-948.

. Gleeson, Tom, Yoshihide Wada, Marc FP Bierkens, and Ludovicus PH van Beek. "Water balance of global aquifers revealed by groundwater footprint." Nature 488, no. 7410 (2012): 197-200.

. Teeuw, Richard M. "Groundwater exploration using remote sensing and a low-cost geographical information system." Hydrogeology Journal 3, no. 3 (1995): 21-30.

. Panchal, V.K., Bidisha Das, and Daya Gupta. "Applying case based reasoning in cuckoo search for the expedition of groundwater exploration." In Proceedings of Seventh International Conference on Bio-Inspired Computing: Theories and Applications (BIC-TA 2012), pp. 341-353. Springer India, 2013.

. Subramaniam, Chandrasekaran, V. D. Dhandayudhapani, Niveditha Narendhran, and MohammedNazim Feroz. "Distributed Case Based Reasoning Model with Semantic Intelligence." International Journal of Information and Electronics Engineering 3, no. 2 (2013): 136.

. Bisht, Dinesh, Shilpa Jain, and M. Mohan Raju. "Prediction of water table elevation fluctuation through fuzzy logic & artificial neural networks."International Journal of Advanced Science and Technology 51, no. 7 (2013): 107-120.

. Panchal, V. K., Harish Kundra, and Navpreet Kaur. "A Novel Approach to Integration of waves of swarms with case based reasoning to detect groundwater potential." In 8 th Annual Asian Conference & Exhibition of Geospatial information technology & application, Map Asia, Singapore. 2009.

. Panchal, V., Harish Kundra, and Amanpreet Kaur. "An integrated approach to biogeography based optimization with case based reasoning for retrieving groundwater possibility." International Journal of Computer Applications 1, no. 8 (2010): 975-8887.

. Richter, Michael M., and Rosina O. Weber. "Case-Based Reasoning." A Textbook (2013).

. Watson, Ian, and Farhi Marir. "Case-based reasoning: A review." The knowledge engineering review 9, no. 04 (1994): 327-354.

. de Mantaras, Ramon Lopez. "Case-based reasoning." In Machine Learning and Its Applications, pp. 127-145. Springer Berlin Heidelberg, 2001.

. Yang, Xin-She, and Suash Deb. "Cuckoo search via Lévy flights." In Nature & Biologically Inspired Computing, 2009. NaBIC 2009. World Congress on, pp. 210-214. IEEE, 2009.

. Yang, Xin-She, and Suash Deb. "Engineering optimisation by cuckoo search." International Journal of Mathematical Modelling and Numerical Optimisation 1, no. 4 (2010): 330-343.

. Karaboga, Dervis. An idea based on honey bee swarm for numerical optimization. Vol. 200. Technical report-tr06, Erciyes university, engineering faculty, computer engineering department, 2005.

. Karaboga, Dervis, and Bahriye Basturk. "A powerful and efficient algorithm for numerical function optimization: artificial bee colony (ABC) algorithm." Journal of global optimization 39, no. 3 (2007): 459-471.