Full text: Proceedings, XXth congress (Part 7)

  
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004 
popular application of GIS in agriculture, which may be 
classified as micro application nowadays is digital agriculture, 
tailoring soil and crop management to fit the specific conditions 
found within a field with the aim to improve production 
efficiency and/or environmental stewardship. 
2.3 The Complexity of Agricultural Field Management 
Agriculture production is a spatial ecological system that shows 
uncertain, fuzzy characters in management. To get maximal 
benefit and minimal side effect, it is necessary to vary 
management method on different agriculture farm field due to 
the variation on field properties. There are two kinds of 
agriculture field model: regular grid field in digital agriculture 
and irregular field grid typical in rugged regions. Digital 
agriculture, also known as precision agriculture, usually 
regularly partitions a large area into groups of small cells (Fig. 
2 (a)). In practice, however, it is almost impossible to get 
regular farm field due to scatted farm location and rugged land 
(as in mountainous region). Figure 2 (b) shows decision-making 
grid for large-scale farm-level fields. Those fields are irregular, 
scatted and ill shaped. Because of this fact, it is much more 
complicated for farm-level agricultural field management than 
that for digital agriculture because the diversity of living 
condition for crop should be considered when decision on field 
management is made. To get a valid and acceptable result it is 
essential to have the support of expert knowledge, which 
impose great challenge to users, as they must acquire full 
knowledge through various ways. 
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(b Irregular farm-level field distributio 
(a) Regular grid in digital agriculture 
Fig. 2 Comparison between two kinds of field model 
3. INTEGRATION OF EXPERT KNOWLEDGE AND 
GIS MODELS 
3.1 Knowledge acquisition and representation 
Knowledge acquisition (KA) is the first step to make an expert 
system. KA is the process of transferring conceptual knowledge 
from the knowledge source to knowledge engineer (or expert 
system builder) To acquire the required knowledge, we 
followed the KA procedure discussed in Morpurgo and Mussi 
(2001) and Wada et al. (2001). The expert knowledge can be 
obtained from specific literature and descriptions and the rules 
from domain experts. In this process knowledge engineer is the 
centre of the task. The following steps will be included to 
complete the knowledge base construction and application 
(Figure 3). 
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3.2 Model organization 
Model organization must be efficient to simplify the real world. 
In the past few years, varied models have been developed and 
integrated with GIS to solve difficult problems. Valuable 
models have been put in practice as environment quality 
evaluation, resource allocation, etc.. Models can also be used to 
agriculture resource planning, soil erosion, and plant growing. 
Three ways are put in use: database expression (DE), logical 
expression (LE) and program-based expression (PE), with each 
has its advantages and disadvantages. The basic principle to 
decide which way should be used depends on the to be solved 
problem feature. Generally speaking, if the problem needs 
continuous numerical calculation, DE will be adopted. In the 
other hand if the problem is discrete numerical calculation or 
logic judgment, LE is better and more suitable to realize 
complex reasoning. In this sense LE will integrates numerical 
calculation and logic judgment. In this study both DE and LE 
methods are used to cooperate and database is used to store 
them, as models can be easily maintained in this way. 
In the process of models construction through database, 
grammar and implication should be defined first. Grammar and 
implication bridge the communication channels for model 
constructor and user. This model structure can express complex 
mathematical functions like this: 
F(x (,X2,X3,-- Xn)=ax p""+asxap"""a;x3p""+. …+anXap"* 
Where X;, X2, X3> 
a, coefficient for each factor. 
The most distinct feature of LE lies on its power to relate with 
expert knowledge. Productive rules can be represented in LE, 
which paves the possibility to use more complex rules stored in 
expert knowledge base. In this way LE model representation 
opens the gate into expert knowledge utilization and makes the 
ill-structured problem diagnosis possible in GIS applications. 
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