ARAUJO, P.; http://lattes.cnpq.br/9909741140351243; ARAUJO, Pabllo da Silva.
Resumo:
The cover layer applied to Municipal Solid Waste (MSW), in landfills, generally made of
compacted soil, as it is in direct contact with the external environment, presents changes
in its physical, chemical and biological conditions. These variations can occur due to the
exposure of the soil to natural environmental agents that cause the layer to lose its
tightness over time, in terms of simultaneous flows of water and air, thus prevailing the
unsaturated condition of the soil in semi-arid regions. As a result, excess flows can harm
the useful life of the landfill, the safety of its operation and negatively affect public health.
The existing ways to monitor these parameters only use the measurement of the water
permeability coefficient, based on analytical approaches, numerous experimental and
numerical analyses, which are insufficient to predict the behavior of the covering layer in
the face of water and air flows. Therefore, it is necessary to use predictive models, for
example, Artificial Neural Networks (ANN), which are versatile tools that have the
capacity to make decisions and make them available for use and application in other
landfills. Thus, the objective of this work is to propose predictive models using ANN to
predict soil permeability coefficients for water and air in the cover layer of a landfill in a
semi-arid region. As a methodology, an experimental design was used to carry out tests
in the laboratory and in the field, to verify the conditions of the layer and soil used.
Through statistical analyses, the soil parameters that influenced water and gas flows
through the cover layer were defined. Subsequently, by developing multiple linear
regression models and numerical modeling using neural networks, based on a synthetic
database, the topology and architecture of the ANN were defined. The results indicated
that the physical variation of the soil used in the cover layer influences gas emissions and
water infiltration. The compaction efficiency parameters have less variability, indicating
uniformity in the energy applied, however, they do not reflect the homogeneity of the soil
in the layer. The optimum compaction moisture value is similar to the air entry point of
the characteristic curve, and at this point the unsaturated water and air permeabilities are
similar. The soil parameters that most influence unsaturated soil permeability to water
and air are the degree of saturation, volumetric moisture and gravimetric moidture. The
developed ANN showed good performance for predicting soil water and air permeability
coefficients. Given this, it can be concluded that soil parameters that are related to the
water content present in the soil have greater influences on flows. The execution and
monitoring of the cover layer must be regulated by standards that include the
environmental and physical-chemical parameters of the soil. The developed ANN can be
applied to analyze flows in landfills with similar characteristics.