DocumentCode :
707469
Title :
Optimum Growth Ensemble in Agroforestry (OGEA)
Author :
Ahuja, Sangeeta ; Choubey, A.K.
Author_Institution :
IASRI, New Delhi, India
fYear :
2015
fDate :
11-13 March 2015
Firstpage :
1296
Lastpage :
1300
Abstract :
Agroforestry describes the land use management system in which trees or shrubs are grown around or among crops or pastureland. It combines agricultural and forestry technologies to create more diverse, productive, profitable, healthy, and sustainable land-use systems[1]. The treatment combinations of doses, fertilizers, variety of crops and their spacing i. e. geometrical arrangements, canopy manipulations, crop harvest intervals, irrigation schedules etc. are standardized and judged specifically to develop different Agriculture and Forestry Models. Cluster ensemble technique has been proved to be better than any of the traditional clustering algorithms for discovering complicated structures in data. Cluster ensembles can provide robust and stable solutions by leveraging the consensus across multiple clustering results, while averaging out emergent spurious structures that arise due to the various biases to which each participating algorithm is tuned. In this paper, a cluster ensemble technique for Optimum Growth Ensemble in Agroforestry (OGEA) has been proposed. OGE Aaims at improving robustness and quality of clustering scheme, particularly in Agroforestry sector which in turn enhance the production and productivity of any crop. OGEA consists of four phases. First phase generates the various clustering schemes. This phase does the relabeling to avoid the label correspondence problem. The second phase predicts the tuples by using the three different techniques of prediction viz., Discriminant Analysis, Multilayer perceptron and Logistic regression. In the phase III, depending upon the results of the best technique and threshold of the consensus function obtained by various clustering schemes, consensus partition is generated. In the phase IV, Performance Groups are determined in descending order of optimum results i. e. Performance Group 1 gives the maximum yield or survival percentage followed by other Performance Groups respectively. Extensive experimentation ha- been done on the data set by varying the number of partitions and clusters in cluster ensemble. Different Performance Groups are achieved by using this technique that segregates the various treatment combinations in order to achieve the optimum production.
Keywords :
crops; forestry; irrigation; multilayer perceptrons; productivity; regression analysis; Coefficient of Variation; OGEA; adjusted rand index; agricultural technologies; agriculture models; canopy manipulations; cluster ensemble technique; crop; crop harvest intervals; discriminant analysis; fertilizers; forestry models; forestry technologies; geometrical arrangements; irrigation schedules; logistic regression; multilayer perceptron; normalized mutual information; optimum growth ensemble in agroforestry; pastureland; productivity; standard deviation; sustainable land-use systems; Agriculture; Clustering algorithms; Indexes; Productivity; Robustness; Standards; Agroforestry; Cluster Ensemble; Performance; Quality;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computing for Sustainable Global Development (INDIACom), 2015 2nd International Conference on
Conference_Location :
New Delhi
Print_ISBN :
978-9-3805-4415-1
Type :
conf
Filename :
7100459
Link To Document :
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