Tesis
Mineração de dados espaciais aplicada no delineamento de unidades de gestão diferenciada em agricultura de precisão
Fecha
2017-09-12Registro en:
Autor
Speranza, Eduardo Antonio
Institución
Resumen
Precision Agriculture (PA) is an agricultural cultivation strategy which uses technologies
and principles to manage the spatial and temporal variability related to all aspects that surround
a crop, in order to increase yield in a sustainable way, enabling both the reduction of
environmental risks and the increase of profits. One of the processes used by this strategy
to achieve this goal is the delineation of the crop area in smaller plots with similar characteristics,
known as differentiated management units (DMUs). In order to achieve success
in this process, dissimilarities between the DMUs must be properly identified from spatial
data collected through field or remote sensors. Therefore, the delineation of DMUs may
be considered as a spatial data clustering oriented process, in which a clustering solution
corresponds to a map of DMUs. The computational approaches found in literature in order
to assist in automating this process, usually based in fuzzy clustering algorithms, do
not consider, for the most part, the geographic coordinates which compose the collected
samples during their methods execution, which can make the DMU maps overly stratified.
Therefore, it is possible to observe the lack of a consensus approach in the literature which
may allow expert users to obtain DMU maps with minimum internal variability and which,
at the same time, are easily interpreted by expert users. Given the above, the process for
the delineation of DMUs in PA is discussed in this thesis, whose main contributions are: (i)
the SD-Spatial internal validation criteria, which considers issues related to clusters cohesion
and separation both in the attribute space and in the coordinate space; (ii) the SWMU
Clustering spatial clustering approach, which explores in a weighted way the dissimilarities
of the conventional and spatial attributes, using parameters provided by the expert user
without the determinism of the solutions being impaired; and (iii) the complementary approach
SWMU Polygon, which allows to represent the DMU maps in polygonal shape. Based
on the experiments, the SWMU Clustering approach presented average gains of 31.94%
in the validation measure considering both the attribute space and the coordinate space, in
comparison to approaches using fuzzy clustering; and the complementary approach SWMU
Polygon provided average performance gains of 61.14% in the retrieval of DMU maps stored
in spatial databases.